Accepted Manuscript Succession of bacterial and fungal communities within biofilms of a chlorinated drinking water distribution system I. Douterelo, K.E. Fish, J.B. Boxall PII:
S0043-1354(18)30353-1
DOI:
10.1016/j.watres.2018.04.058
Reference:
WR 13755
To appear in:
Water Research
Received Date: 14 December 2017 Revised Date:
5 April 2018
Accepted Date: 25 April 2018
Please cite this article as: Douterelo, I., Fish, K.E., Boxall, J.B., Succession of bacterial and fungal communities within biofilms of a chlorinated drinking water distribution system, Water Research (2018), doi: 10.1016/j.watres.2018.04.058. This is a PDF file of an unedited manuscript that has been accepted for publication. As a service to our customers we are providing this early version of the manuscript. The manuscript will undergo copyediting, typesetting, and review of the resulting proof before it is published in its final form. Please note that during the production process errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain.
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% relative abundance
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Fungal-Bacterial Interactions in Drinking Water Biofilms
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ACCEPTED MANUSCRIPT Succession of bacterial and fungal communities within
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biofilms of a chlorinated drinking water distribution system
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I. Douterelo*, K.E. Fish and J.B. Boxall
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Authors Affiliation
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Pennine Water Group, Department of Civil and Structural
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Engineering, Mappin Street, University of Sheffield, Sheffield,
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S1 3JD, UK.
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∗Corresponding Author:
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Isabel Douterelo
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E-mail:
[email protected]
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Abstract
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Understanding the temporal dynamics of multi-species biofilms
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in Drinking Water Distribution Systems (DWDS) is essential to
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ensure safe, high quality water reaches consumers after it
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passes through these high surface area reactors. This research
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studied the succession characteristics of fungal and bacterial
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communities under controlled environmental conditions fully
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representative of operational DWDS.
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Microbial
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complexity after one month of biofilm development but they
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did not reach stability after three months. Changes in cell
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numbers were faster at the start of biofilm formation and tended
communities
were
observed
to
increase
in
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ACCEPTED MANUSCRIPT to decrease over time, despite the continuing changes in
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bacterial community composition. Fungal diversity was
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markedly less than bacterial diversity and had a lag in
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responding to temporal dynamics. A core-mixed community of
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bacteria including Pseudomonas, Massillia and Sphingomonas
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and the fungi Acremonium and Neocosmopora were present
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constantly and consistently in the biofilms over time and
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conditions studied.
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Monitoring and managing biofilms and such ubiquitous core
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microbial communities are key control strategies to ensuring
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the delivery of safe drinking water via the current ageing
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DWDS infrastructure.
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Keywords: fungal-bacterial interactions, biofilm, drinking
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water, selection, succession
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Highlights
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Succession of multi-species biofilms was studied under
representative conditions
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continuously over time
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Bacteria responded rapidly while fungi had a lag in
responding to biofilm dynamics
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A core fungal-bacterial community was observed
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Core microorganisms are a potential tool to develop new control strategies
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ACCEPTED MANUSCRIPT 1. Introduction
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The delivery of high-quality, safe drinking water depends, to a
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large extent, on the optimal operation of the transportation
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infrastructure known as Drinking Water Distribution Systems
50
(DWDS). DWDS are complex pipe networks which function as
51
dynamic ecosystems where microorganisms, dominated by
52
those attached within biofilms on the inner pipe surfaces, are
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involved in a range of processes that ultimately determine the
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quality of the delivered water. Microbial dynamics in any
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ecosystem
56
microorganisms and environmental factors. However, within
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DWDS these microbial dynamics and their temporal variation
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regarding inter-taxa biofilms remain largely unexplored.
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Most DWDS management strategies consider only planktonic
60
microorganisms, free organisms transported in the bulk water.
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Reinforced by legislation that only obliges water utilities to
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analyse bulk water samples from service reservoirs and
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customer taps and using plate counting techniques and faecal
determined
by
interactions
between
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indicators as a measurement of failures in the system. However,
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the majority of the microbial biomass in DWDS is found
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attached to the inner surfaces of pipes forming microbial
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consortiums known as biofilms, rather than in the water column
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(Flemming 1998). Biofilms provide advantages to embedded
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microorganisms, including sharing of nutrients and metabolic
70
products and facilitation of resistance to environmental stress 3
ACCEPTED MANUSCRIPT (Chao et al. 2015). Microorganisms within biofilms can be
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associated with several processes occurring in DWDS. Biofilms
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can affect directly the infrastructure via biocorrosion of metal
74
pipes (Wang et al. 2012) and/or modify general water
75
characteristics (Lehtola et al. 2004) and trigger discolouration
76
events through the mobilisation of the attached biofilm into the
77
bulk water (Husband et al. 2016). Another major concern is the
78
potential for biofilms to act as reservoirs of opportunistic
79
pathogens (Wingender & Flemming 2011; Douterelo et al.
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2014a). The most widespread strategies used to control
81
microorganisms in the bulk water of DWDS is the quality of
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the water as it leave the treatment works and / or the use of a
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disinfectant residual in the bulk water, mainly chlorine or
84
chloramine. The efficiency of these strategies to control biofilm
85
formation and properties is limited (Schwering et al. 2013).
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There are no standard methods to monitor or control the growth
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of biofilms in DWDS and, despite their importance, biofilms
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are normally neglected when management and control
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strategies are designed.
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Biofilm formation is a successional process (Martiny et al.
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2003; Prest et al. 2016) beginning when free-living
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microorganisms colonize and attach to pipe surfaces, growing
93
whilst generating extracellular polymeric substances (EPS) and
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modifying the pipe environment in a way that supports or
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excludes the incorporation of other microorganisms into the
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biofilm. However, most of the studies reporting data on the
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microbiology of DWDS occur over relatively short time frames
98
(Simoes et al. 2010; Douterelo et al. 2013)
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mainly the temporal-spatial dynamics in bulk water samples
100
(Hoefel et al. 2005; van der Wielen & van der Kooij 2010;
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Roeselers et al. 2015) or biofilm growth in reactors (Gomes et
102
al. 2014; Revetta et al. 2016). Improving our understanding of
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biofilm behaviour in these systems requires long-term series
104
data of the attached microbial phase.
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Commonly overlooked in DWDS studies is the fact that
106
biofilms
107
microorganisms. Microbiologists working in DWDS often
108
focus on one taxonomic group, predominately bacteria (Revetta
109
et al. 2010; Liu et al. 2014a; Vaz-Moreira et al. 2017) or a
110
specific group of bacteria (Gomez-Alvarez et al. 2016) despite
111
evidence that other microbial taxa such as fungi, viruses and
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amoeba are present in biofilms (Wingender & Flemming 2011;
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Buse et al. 2013; Ashbolt 2015; Fish et al. 2015; Douterelo et
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and evaluate
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al. 2016a). Knowledge on the interactions between different
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microbial strains in actual biofilms is still at its infancy,
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understanding how the full microbial consortium forms, how
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different microbial strains interact, when these interactions start
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and who the main drivers of change are remains largely
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unknown. Advances in microscopy and molecular methods are
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ACCEPTED MANUSCRIPT now available that allow a better understanding of microbial
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communities dynamics including new sequencing platforms.
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The aim of the research reported here was to study the
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dynamics and temporal patterns of fully representative DWDS
124
biofilm community development and succession over a three-
125
month period. We particularly aimed to study correlations
126
between bacteria and fungi and biofilm cellular developmental
127
rates that have been traditionally overlooked in drinking water
128
studies. Such bacterial-fungal community characteristics and
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their impact upon biofilm development/formation needs to be
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understood in order to find patterns of microbial behaviour that
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can inform modelling, and management strategies such as
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disinfectant residual.
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3. Methods
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In order to meet the specific aims, a holistic approach was
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adopted combining environmental physico-chemical analysis,
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microscopy and molecular methods to study the process of
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biofilm formation and maturation. These were applied to
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samples obtained from the pipe wall of a full scale, temperature
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controlled experimental pipe facility that fully replicates the
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conditions of an operational DWDS. This study comprises a
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range of methods that allow characterization at physiological
142
(cell volume and spread) and phylogenetic levels (gene
143
quantification and taxonomic characterization) yielding a more
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comprehensive understanding of microbial dynamics over time. 6
ACCEPTED MANUSCRIPT 3.1 Experimental facility
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The experiment was carried out using a DWDS test facility
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which comprised a pipe loop fed with water from the local
148
water supply via an independent tank and pump (Figure 1),
149
which recirculated water around the pipe loop. An independent
150
system residence time of 24 h was set using a trickle-feed and
151
drain to provide representative water quality. The pipe loop
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consists of 9.5 × 21.4 m long coils of 79.3 mm internal
153
diameter High-Density Polyethylene (HDPE) pipe, thus has a
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total length of 203 m such that pipe surface area is dominant
155
over ancillaries (Figure 1B). HDPE was selected as it is a
156
prevalent and representative material used in DWDS world-
157
wide (WHO, 2006). The room temperature of the experimental
158
facility was set to 16 °C for all results reported here; this is
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representative
160
temperatures in UK DWDS.
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Before experiments commenced, the pipe loop was set to an
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average
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summer
water
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initial state by disinfection with 20 mg/l of RODOLITE H
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(RODOL Ltd, Liverpool, UK); a solution of sodium
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hypochlorite with less than 16% free chlorine. Then the system
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was run at maximum flow rate (4.2 l/s) for 24 h and flushed
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afterwards at the maximum flow rate with fresh water until the
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levels of chlorine were similar to those of the local tap water.
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After disinfecting the system, sterile PWG coupons (Deines et
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each pipe loop. The PWG coupons have an insert suitable for
171
direct microscopy observations and an outer part that allows for
172
obtaining biofilm biomass for subsequent molecular analysis
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(Figure 1A).
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For the experiments reported here a varied flow hydraulic
175
profile was applied based on daily patterns observed in real
176
DWDS in the UK. The regime follows a typical domestic
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dominated diurnal pattern with night time low flow of 0.2l/s
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and morning peak flow of 0.5l/s. This is the low varied flow
179
regime originally reported and used in (Husband et al. 2008).
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The daily regime was repeated for a growth phase of 84 days.
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3.2 Physico-chemical analysis of water quality
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Triplicate bulk water samples were collected on days 0, 14, 34,
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42, 52, 70 and 84 during the growth phase. Free chlorine was
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measured on site at the time of sampling using a HACH
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DR/2010 spectrophotometer. Measurements of temperature and
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pH were also made on site at the time of sampling using a
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Hanna H1991003 meter. Water samples for Total Organic
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Carbon (TOC), iron and manganese were sent to an
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independent accredited laboratory; AlControl Laboratories
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(Rotherham, UK) for analysis. Turbidity was constantly
191
measured by an ATI A15/76 turbidity monitor (ATI, Delph,
192
UK) installed in the experimental facility. 8
ACCEPTED MANUSCRIPT 3.3 Confocal Laser Scanning Microscopy (CLSM)
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CLSM was used to obtain images of biofilm and enable the
195
quantification of the cell coverage on the coupon surfaces.
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Three coupons were studied for each sampling day from day 0
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(used as a control) to days 14, 34, 42, 52, 70 and 84. For this
198
analysis the insert of the PWG coupon was removed and fixed
199
in 5 % formaldehyde for 24 h and then transferred to phosphate
200
buffer solution (PBS) and stored at 4 °C until analysed. After
201
fixing, the inserts were stained with 20 µmol l−1 Syto® 63, a
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cell-permeative
203
Invitrogen, UK) for 30 min at room temperature. Imaging was
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performed using a Zeiss LSM 510 Meta Confocal Florescent
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Microscope at the Kroto Imaging Facility at The University of
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Sheffield and the LSM 510 Image Examiner Software (Zeiss,
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UK). Each insert was imaged for seven random fields of view
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(FOV) to generate lambda z-stacks from which the cell stain
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signal was isolated and quantified, as described in detail in Fish
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et al (2015). The images were then processed to obtain a
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acid
stain,
(Molecular
Probes,
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relative quantification of the cell coverage (i.e. volume of cells
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and their spread) at each layer (Fish et al. 2015). The resultant
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dataset was analysed using Python and R to calculate the
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volume and spread of the cells (see Fish et al. 2015 for detailed
215
methods). For each sample day replication was n=21, apart
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from Day 0 (n=20) and Day 82 (n=19) where FOV were
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corrupted or removed as an outlier. 9
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Differences among days in biofilm cell volume and spread
219
were tested statistically using
220
Kruskall-Wallis test for comparison of all time points and a
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Tukey and Kramer (Nemenyi) test for pairwise comparisons
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between two specific time points.
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3.4 DNA extraction
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To extract biofilm DNA from the coupons, the outer area of
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each coupon was brushed to remove biofilm following the
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procedure used by Deines et al. (2010). After brushing, biofilm
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suspensions were concentrated by filtering through 0.22-µm
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nitrocellulose membrane filters (Millipore, Corp.) as previously
229
explained (Douterelo et al. 2013). Biofilm samples taken over
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the course of the experiment (n=18) were then preserved in the
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dark at −80 °C until DNA was extracted. To extract DNA, a
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method based on proteinase K digestion followed by a standard
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phenol/chloroform/isoamyl
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(Neufeld et al. 2007).
alcohol
extraction
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used
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non-parametric tests; the
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3.5 Q-PCR
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Real-time PCR was used to quantify changes in the number of
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bacterial 16S and fungal ITS gene copies over time (see Table
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1 for primer details). Quantification of samples involved the
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use of internal standard curves prepared by using a serial
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dilution of each targeted gene amplified from biofilm samples
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facility. For each gene, a standard was generated by running
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PCRs using the primers in Table 1 then purifying via gel-
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purification (Qiagen Gel-Extraction Kit) and combining the
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purified amplicons into one “DWDS biofilm” standard per
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gene. The number of gene copies in each standard was
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determined by quantifying the DNA content via a Nanodrop
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8000
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calculating gene copies using the equation:
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Gene number = 6.023 × 1023 (copies mol-1) × concentration of
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standard (g µl-1) MW (g mol-1).
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Where:
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molecular weight of the targeted gene.
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Standards, no template controls and samples were amplified (in
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triplicate) via qPCR reactions according to the QuantiFast
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SYBR Green PCR kit (Qiagen, UK). Briefly, qPCR reactions
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were 25 µl in total volume, which contained 12.5 µl of
(Thermo
Scientific, UK)
and
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6.023 × 1023 is Avogadro’s constant, MW is the
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QuantiFast® SYBR® Green PCR MasterMix, 9 µl of nuclease-
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free water (Ambion, Warrington, UK), 1.25 µl of each primer
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(10 µM; Table 1) and 1 µl of DNA template. Real-time PCR
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was carried out using an Applied Biosystems StepOne qPCR
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machine and the cycling conditions advised in the Qiagen kit
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(95 °C for 5 min, then 35 cycles of: 95 °C for 10 seconds, 60
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°C for 30 seconds, melting curve analysis was also run for 11
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determined using the StepOne software.
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3.6 Illumina sequencing
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Sequencing was performed by Illumina MiSeq technology with
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the paired-end protocol by Mr DNA Laboratory (TX, USA)
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using primers 28F (GAGTTTGATCNTGGCTCAG) and 519
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(RGTNTTACNGCGGCKGCTG) and the fungal 18S rRNA
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gene
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SSUfungiF(TGGAGGGCAAGTCTGGTG)/SSUFungiR
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(TCGGCATAGTTTATGGTTAAG) (Hume et al. 2012).
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Paired-end reads were merged and de-noised to remove short
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sequences, singletons, and noisy reads. Chimeras were detected
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using UCHIME (Edgar et al. 2011) and removed from further
278
analysis. Sequences were clustered in Operational Taxonomic
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Units (OTUs) and selected using UPARSE (Edgar 2013).
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Taxonomic assignments were made with USEARCH global
281
alignment program (Edgar, 2013). The software PAST v3.12
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(Hammer et al. 2008) was used to estimate Alpha-diversity at
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amplified
using
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97% sequence similarity and the Shannon diversity index,
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Chao-I and Dominance-H were calculated. Briefly, the
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Shannon index (H) measures diversity and indicates the
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proportion of OTUs abundance to the whole community, this
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index varies from 0 for communities with only a single taxon to
288
higher values (max < 5 in this study). Chao 1, is an estimate of
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total richness and estimates total number of OTUS in a 12
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sample (Chao 1984). In a sample with many singletons, the
292
probability of having more undetected OTUs is higher, and the
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Chao 1 index will estimate greater richness than for a sample
294
without rare OTUs. The evenness of a sample is a measure of
295
the distribution of the samples in a community, and
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communities dominated by one or few species have low
297
evenness. The Dominance index (1-Simpson index) ranges
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from 0 (all taxa are equally present) to 1 (one taxon dominates
299
the community completely) (Harper 1999). Approximate
300
confidence intervals for these indexes were computed with a
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bootstrap procedure (default 9999) and a 95% confidence
302
interval was then calculated.
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Bray Curtis dissimilarity matrixes at 97% sequence similarity
304
cut off were calculated and visualised using non-metric multi-
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dimensional scaling (MDS) diagrams generated using the
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software PAST v3.12 (Hammer et al. 2008). Stress of the non-
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metric MDS was determined to estimate the statistical fit; stress
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varies between 0 and 1, with values near 0 indicating better fit.
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The analysis of group similarities (ANOSIM) was performed
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based on Bray–Curtis dissimilarity distance matrices to test the
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differences in community composition among groups of
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samples using the software Primer6 (Clarke & Warwick 2005).
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From this analysis gobal-R statistic values were calculated
314
showing the strength of the impact that the factors analysed had
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ACCEPTED MANUSCRIPT on the samples, in this case time (days). Global-R values vary
316
between 0 and 1, where 1 indicates high separation of the
317
samples between levels of the factor (time) and 0 indicates no
318
separation.
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3.7 Statistical analysis of microbiological parameters and
320
key taxonomic groups
321
Correlations
322
explored by Spearman's rank non parametric correlations using
323
SPSS Statistics 24 (IBM, USA). Alpha-diversity metrics, the
324
relative abundance of the most representative taxonomic class
325
and the measurement of cells and genes for bacteria and fungi
326
respectively were used as biological parameters in the
327
establishment of correlations.
328
4 Results
329
4.1 Water physico-chemical analysis
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As shown in Table 2 pH values were near neutral (7.08-7.99)
331
for all the samples over time. Temperature ranged between
microbiological
parameters
were
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14.6-15.9 °C for all samples, within an average of 15 +/- 0.4
333
°C. Free chlorine levels were slighted elevated on Day 0. This
334
was due to initial filling of the system with fresh water that has
335
a slightly higher residual than is ultimately established with the
336
24 hour residence time from the trickle drain and feed, and the
337
use of an elevated residual over night from cleaning to the start
338
of the experiment. This elevated value was less than the final 14
ACCEPTED MANUSCRIPT water quality leaving the local water treatment works, and
340
dropped to the experimental level within 24 hours. The average
341
chlorine residual in the system was then maintained at 0.42 +/-
342
0.2 mg/l.
343
Higher turbidity levels were observed on Day 0 (1.51 NTU) but
344
subsequently were consistently at an average of 0.05 +/- 0.03
345
NTU, this slight elevation is again associated with the filling of
346
the system and upstream effects from the external network
347
supplying the laboratories. TOC values were stable over time
348
ranging from 1.13 to 1.83 mg/l. Iron was the physico-chemical
349
factor that fluctuated the most, with minimum values of 9.9
350
µg/l on Day 34 to a maximum of 37.0 µg/l on Day 84.
351
Manganese levels were very low over time, generally below
352
detection limits (< 3.6 µg/l) except for Day 14 which was 0.1
353
µg/l higher.
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4.2 Volume and spread of cells
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Figure 2 shows the volume and spread of cells within the
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DWDS biofilms over the 84-day period. Note that Figure 2A
357
and Figure 2B are the same data plotted on different vertical
358
scales in order to visualise the variability of all the samples
359
over the 3 months studied. As anticipated, the cell volume
360
within the DWDS biofilms increased from Day 0 throughout
361
the experiment as the biofilm developed (Figure 2A) and
362
significant difference were observed among data time points 15
ACCEPTED MANUSCRIPT (Kruskall Wallis, χ2 = 80.80, P-value< 0.01). This increase in
364
the cells volume was not linear, rather the volume oscillates
365
with cell volume dropping at Day 52 to volumes comparable to
366
those seen at Day 14 (Figure 2B). However, no significant
367
differences were detected using the pairwise comparison
368
Nemeyi test among Day 52 and any other time points.
369
Following this reduction in cells, the final two sample points
370
(Day 70 and 84) have the greatest median cell volume (Figure
371
2A and B) although Day 70 biofilms had a greater cell volume
372
than Day 84.
373
Figure 2C shows the 'spread' metric calculated from the biofilm
374
CLSM data. Spread was calculated as volume divided by area
375
covered (Fish et al 2015), to provide a measure of spread or
376
compactness of the biofilm, irrespective of the total volume and
377
uncertainty in defining the edges of the distribution across the
378
z-stack. While the trends, when all time points are compared,
379
were statistically significant (Kruskal-Wallis, χ2=26.411, p-
380
value < 0.05) it is notable that the data shows again an
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oscillating pattern. This pattern appears to be inverse and
382
slightly lagged behind the volume data. When time points were
383
compared pairwise, statistically significant differences (Nemeyi
384
test, p-value < 0.05) were observed only between Day 70
385
samples and the other sampling days with the exception of Day
386
0 and Day 14.
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4.3 Bacterial and fungal gene quantification
388
The number of bacterial 16S rRNA gene copies (Figure 3A)
389
increased from Day 0 (no genes were quantified) to Day 42
390
reaching a maximum of 1.16 x107 16S rRNA gene copies mm-
391
2
392
over the rest of the experiment, despite this decline the Day 84
393
samples had a greater number of 16S rRNA genes than the Day
394
14 samples.
395
Throughout the 84 day period the fungal ITS gene (Figure 3B),
396
was present at least two magnitudes less than the bacterial gene
397
was. ITS genes mm-2 were <10000 in biofilms from Days 0 to
398
42, by Day 52 gene copies had increased reaching a peak at
399
Day 70 (max. 30000 ITS genes mm-2). This pattern highlights a
400
lag of 20-30 days in the fungi population reaching the
401
maximum quantification in comparison to the bacteria where a
402
peak was reached at Day 42. Similarly, to the bacteria, fungal
403
gene copies decreased after this peak but the Day 84 biofilms
404
had similar ITS gene copies as the Day 14 samples.
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. After Day 42 the number of gene copies decreases steadily
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If the lagged growth and decline trends in bacteria and fungi
406
(Figures 3 A and B) gene copies are combined, with some
407
weighting for relative size of organism, it is possible that the
408
cyclic trend in DNA cellular volume (Figures 2 A and B) could
409
be explained.
410
4.4 Microbial Community Structure
17
ACCEPTED MANUSCRIPT 4.4.1 Rarefaction Analysis
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The rarefaction analysis (Figure 4) yields insights into the
413
sequencing effort and compares the diversity of the observed
414
number of OTUs at 97% sequence similarity cut off in all the
415
samples over time. Most of the samples, independently of the
416
time of sampling, showed rarefaction curves that did not reach
417
a plateau. This trend in the curves was particularly marked for
418
fungal communities (Figure 4B), where the samples analysed
419
showed a steeper slope when compared with bacteria,
420
suggesting that further sequencing and time series would be
421
needed to reach a full taxonomic representation of the
422
microbial communities. This data can also be associated to the
423
fact that biofilm communities did not reach a mature or stable
424
state after three months of development in the system.
425
4.4.2 Taxonomic Analysis
426
The dominant bacterial class (Figure 5A) over time in the
427
biofilm
EP
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411
was
Proteobacteria
and
within
it
AC C
samples
428
Betaproteobacteria (representing a 70% of the total community
429
on Day 34 samples), Gammaproteobacteria (5-67 %) and
430
Alphaproteobacteria (6-28 %) were the most abundant classes.
431
However, the percentages of each of these bacterial classes
432
clearly varied over time and there was high variability between
433
replicates for each day, with Day 14 having the most extreme
434
example of this. The fungal community (Figure 5B) was
18
ACCEPTED MANUSCRIPT dominated by Ascomycota (10- 75%) and Sordaryomicetes (14-
436
75 %) but Day 14 samples from two coupons (31 and 37) were
437
dissimilar to the other samples and were dominated by
438
Dothideomycetes (22-63 %) and Saccharomyctes (yeast and
439
yeast like –fungi, 7-9%). Saccharomycetes were dominant in
440
the first stages of biofilm development until Day 42, and then
441
this fungal group was not substantially represented in the
442
community.
443
At genus level (Figure 6A), Massilia (max. 62%) and
444
Pseudomonas (max. 64%) were highly abundant on the first
445
days of biofilm development. It is notable that on Day 14, one
446
of the replicates (coupon 9) showed a different microbial
447
community when compared with the other two samples despite
448
of being biological replicates. These two samples from Day 14
449
had a higher relative abundance of Pseudomonas (38-64%),
450
this genus was dominant in the community composition and
451
showed percentages similar to those on Day 42.
AC C
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435
452
On Day 42, samples showed a more diverse community
453
enriched (coincident in time with a peak in the cell volume,
454
Figure 2 A and B) with genera such as Nevskia, Methylophilus,
455
Sphingomonas, Variovorax and Limnohabitants. The most
456
abundant genera in fungal communities (Figure 6B) at all
457
sampling times were Acremonium (8-70%) and Neocosmospora
458
(17-77%) but in two of the coupons from Day 14 (31 and 37)
19
ACCEPTED MANUSCRIPT there was high abundance of Letendraea (36%) and
460
Cladosporium (19-24%). The fugal composition of these two
461
samples was markedly different when compared with the most
462
even structure observed for the samples at other time points.
463
This has been also observed, as has been previously pointed,
464
for the bacterial communities of these two samples. The studied
465
succession finished with samples from Day 84 showing a high
466
abundance of the genus Metacordyceps in the fungal
467
community (2-12%).
468
MDS analysis of bacteria (based on the Bray-Curtis similarity
469
matrix of bacterial sequences with 97% similarity cut off) is
470
presented in Figure 7A. Variability in bacterial community
471
distribution between sample points was observed but these
472
differences were not significant (ANOSIM: global-R= 0.143 p-
473
value = 0.074) and there was no clear temporal pattern. For
474
fungi (Figure 7B) the MDS analysis revealed a tight clustering
475
of the biofilm samples, which corresponds to very little
476
variation in community composition over time as shown in the
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459
477
ANOSIM analysis (R=0.023, p-value = 0.399).
478
4.4.3 Diversity and richness indicators
479
Figure 8 shows the richness (i.e. number of different OTUs)
480
and diversity (i.e. number of different OTUs taking into
481
account their relative abundance) of bacterial and fungal
482
communities at 97% sequence similarity cut off. When 20
ACCEPTED MANUSCRIPT compared, bacterial communities were more dynamic and
484
diverse than fungi; fungal communities showed limited
485
diversity, dominated by few taxonomic groups with little
486
change over time. When analysed separately, the dominance
487
indicator for bacterial communities decreased over time,
488
increasing slightly by Day 70 and decreasing again by Day 84,
489
reaching a minimum value. This trend suggests that initially
490
there are a few bacteria that attach and colonize the pipe
491
surfaces, from which the biofilm develops towards a more
492
diverse community, with less dominating taxa. This is
493
supported by the patterns in diversity, evenness and richness
494
values. However, bacterial richness indicator did not change
495
considerably over time. Fungal communities showed a clear
496
dominance of certain OTUs, which was less marked at the
497
beginning of the data series studied and increased over time.
498
Similarly, evenness was higher for the first 42 days of biofilm
499
development and subsequently fluctuated at lower level after
500
that day. The fungal communities were not very diverse with
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483
501
all samples having Shannon index values below 2. Richness (<
502
100 OTUs) fluctuated only slightly among samples. Clearly,
503
few fungal OTUs dominated the composition of biofilms over
504
time.
505
4.5 Correlations between microbiological data
506
Table 3 shows a matrix of the non-parametric correlations
507
between microbiological data and indicates statistically
21
ACCEPTED MANUSCRIPT significant correlations at different p-levels. The diversity and
509
richness indicators showed a significant positive correlation for
510
bacteria but not for fungi. Only the number of fungal ITS genes
511
correlated significantly with richness and diversity for that
512
taxonomic group. The cell volume did not significantly
513
correlate with any of the other parameters. When associations
514
between different microbial groups were taken into account, the
515
different Proteobacteria class tended to be correlated positively
516
among them. The microbial groups that correlated the most
517
with other microorganisms were the bacteria Actinobacteria,
518
Cytophagia and the fungi Dothideomycetes, Basiodioycota,
519
Leotiomycetes and Ascomycota. This result shows that certain
520
microbial groups are more or less likely to co-exist within the
521
studied biofilm samples.
522
5 Discussion
523
Biofilm development was monitored over a three-month period
524
and the characteristics of inter-taxa interactions were studied to
AC C
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508
525
evaluate and detect patterns of temporal change and drivers of
526
biofilm behaviour. Sequencing results indicated that biofilm
527
developmental patterns were initially driven by bacteria. Fungi
528
showed a lag response to temporal changes in terms of ITS
529
gene copy numbers and the community structure displayed
530
limited changes over time. Generally, it was observed that an
531
initial, diverse community (dominated by bacteria) was able to
22
ACCEPTED MANUSCRIPT attach and was embedded in the biofilm. After one month of
533
development, biofilm diversity was temporally reduced,
534
coincident with a decrease in cell volume from Days 42 to 52,
535
likely due to a selective mechanism that ultimately yielded a
536
higher diversity after two months development. Confirming the
537
leading role of bacteria in the process of succession it was
538
observed that the rise in diversity from 34 to 42 days,
539
corresponded with a peak in the number of 16s rRNA gene
540
copy numbers. The observed diversity pattern could have been
541
a result of competition, with some bacteria/fungi being out-
542
competed (hence diversity decreasing) but the resultant more
543
mature biofilm then being a suitable niche for other cells to
544
subsequently colonise (hence diversity increasing again). We
545
hypothesis that the daily fluctuating hydraulic conditions were
546
acting as a selective mechanism to shape microbial diversity
547
and structure, as has been previously observed in previous
548
research carried out in the same system (Douterelo et al. 2013;
549
Fish et al. 2017). If daily patterns help to maintain natural
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532
550
diverse communities and more compact and stable biofilms,
551
this can have positive implications for the management of
552
DWDS, safeguarding these systems from the incursion of non-
553
desirable microorganisms into biofilms and avoiding their
554
survival and later mobilisation into bulk water.
555
The ability of microorganisms to respond to changing
556
environmental conditions has been previously correlated with 23
ACCEPTED MANUSCRIPT the bacterial genome size and with their cell volume (Yooseph
558
et al. 2010). Here the dominant peak in cell volume (Day 70 on
559
Figure 2A) corresponded to the peak in ITS gene numbers
560
(Figure 3B) which can be explained by the generally larger cell
561
size of fungi, particularly of filamentous fungi when forming
562
hyphae. If this hypothesis is correct, fungi may be more
563
resilient to change and persist over time, explaining the limited
564
change in diversity observed during the succession process and
565
the observed lag between the peak in bacteria and fungi genes
566
apparent when comparing Figures 4 A and B. Fungi can
567
survive and grow in DWDS within biofilms, particularly at
568
warmer temperature or in systems where the flow is low or
569
stagnant (Siqueira et al. 2012; Douterelo et al. 2016b; Oliveira
570
et al. 2016). The night time flow rate of the hydraulic regime
571
selected for these experiments was at the upper end for those
572
observed in 75-100mm pipes in real systems, thus fungi are
573
possibly even more prevalent and important in real operational
574
systems. The challenge for water utilities is how to
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557
575
manage/control these microorganisms since fungal walls
576
protect cells against mechanical damage and stop the ingress of
577
toxic molecules, making these organisms even more resistant to
578
environmental changes (Cole 1996). In addition, fungi can form
579
spores which increase their resistance to disinfection (Mamane-
580
Gravetz & Linden 2005; Sonigo 2011). This study reinforces
24
ACCEPTED MANUSCRIPT that fungi must be included in monitoring campaigns in DWDS
582
when assessing microbial risks.
583
It has been suggested that, generally, microbial communities
584
tend to develop towards a stable community (Faust et al. 2015)
585
or plateau phase. In this study, no mature/stable biofilm
586
communities were established on the pipe walls after three
587
months of development. This result suggests that longer time
588
periods may be needed to fully develop mature microbial
589
communities in DWDS. However, determining the scale of
590
change to study succession in an ecosystem is challenging,
591
given that depending on the habitat, community changes can be
592
triggered by fluctuations in environmental conditions or by a
593
transient perturbation that moves the system into an alternative
594
steady state (Fierer et al. 2010). The experimental DWDS used
595
in this study minimised any such transient perturbations, by
596
controlling hydraulics and offering a relatively stable physico-
597
chemical environment over time. While the local source water,
598
treatment works and trunk main system prior to the laboratory
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581
599
facility will have had some variations over the 3 months, Table
600
2 indicates these where minimal and they would have been
601
gradual fluctuations rather than rapid dynamic changes. Hence
602
the changes observed such as those on Day 42 are most
603
probably due to intrinsic biofilm processes, related to microbial
604
processes during development. Martiny et al. (2003) studied the
605
process of biofilm development over a 3-year period in a model 25
ACCEPTED MANUSCRIPT distribution
using
fingerprinting
and
Sanger
607
sequencing to monitor bacterial communities. Using these
608
methods, Martiny et al. (2003) established that after 500 days,
609
the biofilm entered a stable state, which was characterised by a
610
greater richness of bacteria. We have observed higher bacterial
611
diversity at the final stages of biofilm formation but after three
612
months of biofilm development our communities were not
613
mature or stable.
614
We have observed that specific microbial taxa were dominant
615
throughout the succession process with a core microbial
616
population present in the biofilms over time but at different
617
relative abundances. Thus, it can be suggested these particular
618
microbial taxa are fundamental in directing the process of
619
succession. The taxa in this core community include the
620
bacteria Pseudomonas, Massillia and Sphingomonas and the
621
fungi Acremonium and Neocosmopora. In a previous study, the
622
role of Pseudomonas as primary and initial colonizer of the
623
same experimental facility was established in the first 28 days
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systems
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606
624
of biofilm development (Douterelo et al. 2014b) and here its
625
continual key role in shaping biofilm structure over a longer
626
period of time has been confirmed. Species belonging to the
627
genus Pseudomonas might benefit from what is known as the
628
founder effect, as an initial member of biofilms in the pipe
629
surface it will have the advantage over secondary colonizers
630
and will remain dominant over time (Kelly et al. 2014). The 26
ACCEPTED MANUSCRIPT 631
presence of core populations have been observed before in
632
water meters of DWDS (Ling et al. 2016),
633
chloraminated DWDS (Kelly et al., 2014) and in DWDS of
634
chlorinated systems (Douterelo et al., 2017). Kelly et al., 2014
635
showed in chloraminated systems that the core community was
636
enriched
637
Methylobacteria and Methylophylus were also important
638
representatives of bacterial communities over time in this study
639
and the relative abundance of Methylophylus increased after
640
two months of biofilm development. Methylotrophic bacteria
641
have been found in several drinking water-related ecosystems
642
(McCoy & VanBriesen 2012; Douterelo et al. 2014b; Liu et al.
643
2014b) but the reasons behind their abundance in these systems
644
are unclear. However, methylotrophic bacteria
645
related with the generation of holoacetic acid which is a
646
common disinfectant by-product in chlorinated systems (Kelly
647
et al. 2014), therefore it is possible that this group is promoted
648
due to the decay of residuals within DWDS.
and
RI PT
methanotrophs
methylotrophs.
have been
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SC
with
biofilms of a
649
The fungi Acremonium and Neocosmopora were also forming
650
part of the fungal-bacteria core community. Acremonium is a
651
filamentous fungus which has been previously isolated in water
652
supply reservoirs, drinking water treatment plants and in bulk
653
water of drinking water distribution systems (Zacheus &
654
Martikainen 1995; Pereira et al. 2010; Oliveira et al. 2016; Bai
655
et al. 2017; Douterelo et al. 2017) and has been associated with 27
ACCEPTED MANUSCRIPT the occurrence of taste and odour issues in drinking water (Bai
657
et al. 2017). Neocosmopora is commonly found in soils and
658
some species are phytophatogenic (Aoki et al. 2014). It has
659
been found that Neocomospora, under laboratory conditions is
660
able to uptake chloride (Miller & Budd 1975) and can produce
661
cyclosporine a fungal metabolite with antifungal activity; these
662
abilities can explain its supremacy over other microorganisms
663
in mixed-species microbial communities in chlorinated DWDS.
664
This study confirms the presence of Acremonium and
665
Neocomospora from the early stages of biofilm formation to a
666
more developed biofilm in chlorinated systems forming core
667
communities with bacteria. Despite of fungi involvement in the
668
organoleptic deterioration of water, act as potential pathogens
669
and toxin producers, fungi are usually omitted from drinking
670
water regulation and there are no limits or standards regarding
671
their presence in drinking water. This study shows the ubiquity
672
of fungi in forming mix-species consortium with the most
673
common bacteria in DWDS biofilms. Taking into account these
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656
674
results, further consideration should be given to these
675
microorganisms in order to guarantee the delivery of good
676
quality water and to control biofilm formation at the initial
677
stages of development in DWDS.
678
Environmental stressors such as chlorine, can influence
679
successional trajectories in the early stages of succession
680
(Fierer et al. 2010) by increasing the abundance of taxa that are 28
ACCEPTED MANUSCRIPT resistant to the particular stress and can subsequently modify
682
the habitat by producing EPS (extracellular polymeric
683
substances) to protect the cells from oxidative stress (Besemer
684
et al. 2007). This study indicates the capability of
685
microorganisms to proliferate despite the presence of chlorine
686
residual throughout biofilm development, from initial stages
687
with low cell numbers and thinner and more environmentally
688
exposed biofilms, to more developed biofilms exhibiting larger
689
biomass and diversity. From these results, it can be
690
hypothesised that the microbial communities involved in initial
691
attachment to the pipes are more resistant to chlorine, then once
692
more EPS is produced, other species which are less resistant
693
can join the biofilm and survive within it protected against the
694
action of chlorine by the EPS, hence the biofilm environment
695
may favour more diverse communities over time. This suggests
696
that, despite its widespread use to control planktonic
697
microorgansims, the application of chlorine to control the
698
attached microbial life within DWDS is questionable. In
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681
699
agreement with our observations, Simões et al. (2016) under
700
controlled laboratory conditions, studied the role of inter-
701
kingdom interactions in chlorine resistance and showed that
702
associations between fungi and bacteria were ecologically
703
beneficial and promoted resistance to disinfection.
704
The stable state of a biofilm is not entirely determined by
705
external factors and interactions among microbial community 29
ACCEPTED MANUSCRIPT 706
members might play a key role in determining biofilm status
707
(Faust et al. 2015). These complex interactions between
708
microorganisms
709
contributors to biofilm dynamics and are relatively unexplored
710
in the context of DWDS. Here the relative abundance of certain
711
bacterial and fungal taxa correlated together including
712
Proteobacteria and Basidiomycota (Table 3), both members of
713
a core microbial community present continuously over the
714
successional process in this study. Fungal-bacteria associations
715
can lead to changes in nutrient availability, even in the case of
716
DWDS where the level of nutrients such as TOC in the system
717
are controlled to a certain extent. The presence of certain taxa
718
can ease nutrient limitation and it is well known that in other
719
ecosystems bacterial and fungal consortium are able to increase
720
nutrient bioavailability and mobilization of key nutrients
721
(Rashid et al. 2016) and this can support the process of
722
succession. However, if biofilms are to a certain extent self-
723
sufficient, independent of the concentration of available
with
their
environment
are
key
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and
724
nutrients in the bulk-water, manipulating or changing external
725
nutrient parameters is not going to stop biofilm formation and
726
development in DWDS.
727
6. Conclusions
728
Diverse bacterial communities cohabiting with more stable
729
fungal communities, with the more common taxa
30
ACCEPTED MANUSCRIPT ubiquitous and constantly present over time and a temporal
731
variability that does not follow a specific pattern driven by
732
bacteria.
733
To deal with the heterogeneity of the process of biofilm
734
development in DWDS and to model these systems, the
735
focus needs to be on targeting dominant and ubiquitous
736
microorganisms.
737
In order to manage microbial risks in DWDS we need to
738
better
739
microorganisms, to design monitoring strategies and assess
740
their use as bioindicators of overall biofilm status in the
741
system.
SC
the
behaviour
of
these
key
M AN U
understand
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730
Acknowledgements
743
The research reported here was supported by the UK
744
Engineering and Physical Sciences Research Council (EPSRC).
745
EPSRC-LWEC Challenge Fellowship EP/N02950X/1, the
746
Challenging Engineering Grant EP/G029946/1 and the EPSRC
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742
747
Platform Grant Funding EP/1029346/1.
748
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926
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962
triphosphate concentration in unchlorinated drinking water in
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distribution systems using water of different quality. Can J
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Microbiol, 41, 1088-1094.
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41
ACCEPTED MANUSCRIPT Gene target (organisms) 16S rRNA
Primer Pair Eub338
Primer sequences (5’ – 3’)
Primer reference
ACTCCTACGGGAGGCAGCAG
Lane, 1991
Eub518
ATTACCGCGGCTGCTGG
Muyzer et al. 1993
ITS (fungi)
ITS1F 5.8S
TCCGTAGGTGAACCTGCGG CGCTGCGTTCTTCATCG
Gardes & Bruns, 1993 Vilgalys & Hester 1990
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SC
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(bacteria)
ACCEPTED MANUSCRIPT Free Chlorine (mg/l)
Turbidity (NTU)
0.98 ± 0.06 0.43 ± 0.01 0.43 ± 0.02 0.44 ± 0.03 0.36 ± 0.01 0.42 ± 0.00 0.39 ± 0.05
1.51 ± 0.05 0.08 ± 0.00 0.05 ± 0.00 0.04 ± 0.00 0.05 ± 0.00 0.05 ± 0.00 0.06 ± 0.00
TOC (mg/l)
Fe (µg/l)
1.13 ± 0.04 18 ± 0.81 1.30 ± 0.08 21 ± 1.41 1.37 ± 0.09 9.90 ± 0.00 * 18.33 ± 2.62 1.17 ± 0.04 14.33 ± 0.93 1.33 ± 0.00 17 ± 0.00 1.83 ± 0.11 37 ± 0.00
EP
TE D
M AN U
SC
7.46 ± 0.04 14.60 ± 0.00 7.42 ± 0.37 14.70 ± 0.10 7.61 ± 0.17 14.83 ± 0.00 7.12 ± 0.15 15.03 ± 0.20 7.99 ± 0.31 15.20 ± 0.20 7.07 ± 0.20 15.9 ± 0.10 7.49 ± 0.22 15.03 ± 0.40
AC C
Day 0 Day 14 Day 34 Day 42 Day 52 Day 70 Day 84
T (°C)
Mn (µg/l) < 3.6 ± 0.00 3.7 ± 0.00 < 3.6 ± 0.00 < 3.6 ± 0.00 < 3.6 ± 0.00 < 3.6 ± 0.00 < 3.6 ± 0.00
RI PT
pH
Saccharomycetes
Basidiomycota
Taphrinomycetes
Dothideomycetes
Sordariomycetes
Ascomycota
Cytophagia
Actinobacteria
Clostridia
Sphingobacteria
Bacilli
Actinobacteria
Planctomycetacia
Gammaproteobacteria
Alphaproteobacteria
Mediam cell volume
Genes ITS/mm2
Genes 16S /mm2
Shannon F
Betaproteobacteria
RI PT
Shannon B
Chao 1 F
Chao 1 B
Shannon B
ACCEPTED MANUSCRIPT
.513*
1.000
-0.012
-0.045
-0.302
-0.181
0.084
1.000
0.047
-0.078
-0.216
-0.254
1.000
0.292
0.266
.455*
-.442*
-0.257
1.000
-0.066
0.223
0.311
-0.254
-0.029
0.086
Betaproteobacteria
.728**
0.224
-0.193
-.472*
0.129
-0.028
0.185
1.000
Alphaproteobacteria
.635**
0.271
0.060
-.728**
0.034
0.335
0.185
.744**
1.000
-0.307
-0.259
*
.520
0.257
0.009
*
.461
-0.047
-.641**
-.401*
1.000
.546**
.428*
-0.326
-0.349
0.094
0.251
-.489*
0.353
.475*
-0.261
1.000
-0.238
-0.018
-0.027
0.288
-0.323
0.103
-0.154
-.420*
-0.284
0.375
-0.065
1.000
.453*
.470*
-0.081
-0.042
-0.317
0.367
-0.034
0.170
0.098
0.096
0.344
.525*
1.000
*
**
-0.070
-0.290
0.147
0.229
*
.505
0.368
0.106
-0.170
0.080
-0.123
.455*
1.000
0.076
**
.627
-0.023
-0.039
-0.201
0.216
0.194
-0.169
0.077
0.049
0.088
0.390
0.354
0.305
1.000
-0.203
0.150
0.123
.428*
-0.386
0.135
-0.254
-.531*
-.441*
.422*
-0.006
.715**
.422*
-0.018
0.292
.610**
.449*
0.258
0.015
-0.060
0.342
0.072
0.399
0.245
0.158
0.269
0.034
.593**
.470*
0.051
0.255
1.000
0.230
-0.148
0.185
-0.185
0.129
0.160
0.354
0.344
0.379
-0.079
-0.144
-0.176
-0.220
-0.011
-0.266
-.432*
-0.141
1.000
0.038
0.075
.477*
-.558**
0.129
0.335
0.223
0.038
.437*
0.100
0.074
-.414*
-0.273
-0.046
0.116
-0.179
-0.065
-0.022
1.000
0.220
0.257
0.017
.449*
-.430*
-0.116
-0.223
0.117
-0.220
-0.156
0.086
0.092
0.354
0.226
-0.070
.420*
.575**
-.482*
-.418*
1.000
-0.115
-0.011
.614**
-0.321
0.160
0.285
0.348
-0.123
0.311
0.249
-0.145
-0.383
-.484*
-0.187
0.139
-0.327
-0.245
0.271
.835**
-.587**
1.000
.466*
0.089
-0.050
-0.219
0.329
-0.342
0.000
.677**
.512*
-.630**
0.273
-.466*
-0.265
0.089
-0.336
-.411*
0.222
0.159
0.069
0.229
-0.032
1.000
0.019
0.183
-0.028
.480*
-.408*
-0.223
-0.220
-0.018
-0.197
-0.145
0.166
0.058
0.281
-0.147
-0.149
.403*
0.382
-0.320
-0.227
.592**
-0.377
0.032
1.000
0.082
-0.036
.514*
-0.116
0.189
0.186
0.396
0.274
.405*
0.096
-0.141
-0.372
-.460*
-0.076
-0.147
-.410*
0.145
.607**
0.283
-0.236
.589**
0.326
-0.191
Gammaproteobacteria Planctomycetacia Actinobacteria Bacilli Sphingobacteria Clostridia Actinobacteria Cytophagia Ascomycota Sordariomycetes Dothideomycetes Taphrinomycetes Basidiomycota Saccharomycetes Leotiomycetes
.418
.639
1.000
SC
Mediam cell volume
M AN U
Genes ITS/mm2
TE D
Genes 16S /mm2
1.000
EP
Shannon F
AC C
Chao 1 F
1.000
ACCEPTED MANUSCRIPT
M AN U
SC
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A)
AC C
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B)
Figure 1: A) Temperature controlled pipe-test facility at the University of Sheffield. PWG coupons were inserted along the length of each loop to allow for subsequent biofilm removal and examination. B) Schematic showing the characteristics of the loop used in this study to report biofilm development.
ACCEPTED MANUSCRIPT
C)
M AN U
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A)
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B)
Figure 2: Confocal analysis of biofilm cell development over time (n=21). A) showing cell volume without data outliers, B) reduced Y-axis
scale to appreciate differences in cell volume at first stages of biofilm development C) graph showing results from cell spread on coupons. (n=21, in all cases apart from Day 0 where n=20 and Day 82 where n=19). In all cases box and whisker plots show the entire range of the data, the interquartile range and the median.
ACCEPTED MANUSCRIPT 1.80E+07 1.60E+07 1.40E+07
RI PT
1.20E+07 1.00E+07
8.00E+06 6.00E+06
SC
4.00E+06 2.00E+06 0.00E+00 0
10
20
M AN U
Bacterial 16S rRNA genes mm-2
A)
30
40
50
60
70
80
90
50
60
70
80
90
Day
B)
TE D
8.00E+04 7.00E+04
EP
5.00E+04 4.00E+04 3.00E+04
AC C
Fungal ITS genes mm-2
6.00E+04
2.00E+04 1.00E+04 0.00E+00 -1.00E+04 -2.00E+04
0
10
20
30
40
Day
Figure 3: Quantitative-PCR showing the number of genes per mm2 of biofilm over time for the A) 16S rRNA gene for bacteria and B) ITS gene for fungi.
ACCEPTED MANUSCRIPT
B)
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A)
Figure 4: Rarefaction analysis of microbial communities at 97% sequence similarity cut off , consider as species level for ; A) bacteria and B) fungi. Numbers indicate the day of sampling ( D14, D34, D42, D52, D70, D84) and the biological replicate (1, 2 , 3).
ACCEPTED MANUSCRIPT
B)
80
60
sordariomycetes 90
dothideomycetes eurotiomycetes
80
70
60
50
taphrinomycetes fungi unclassified basidiomycota
exobasidiomycetes saccharomycetes tremellomycetes
M AN U
50
40
30
20
10
0 9 31 37 10 11 12 13 15 33 16 17 18 19 20 34 22 24 32 D34
D42
D52
D70
D84
40
agaricomycetes
30
ustilaginomycetes ascomycota
20
leotiomycetes 10
neocallimastigomycetes pezizomycotina
0 9 31 37 10 11 12 13 15 33 16 17 18 19 20 34 22 24 32 D14
D34
D42
D52
D70
D84
basidiomycota unspecified class
AC C
D14
TE D
% relative abundance
70
ascomycota unspecified class
100
RI PT
90
acidimicrobiia sphingobacteria cytophagia op8 (candidate division) alphaproteobacteria bacilli nostocophycideae gammaproteobacteria verrucomicrobiae actinobacteria (class) fusobacteria (class) acidobacteria flavobacteria spartobacteria thermoleophilia thermomicrobia nitrospira (class) betaproteobacteria deltaproteobacteria anaerolineae synechococcophycideae deinococci subsectionii subsectioniv epsilonproteobacteria planctomycetacia clostridia erysipelotrichi class unspecified bacteroidia actinobacteria tm7 (candidate division) gemmatimonadetes opitutae
SC
100
EP
A)
Figure 5: Temporal changes in the microbial community structure over time at class level for A) bacteria and B) fungi. Numbers within each sampling day (D14, D34, D42, D52, D70 and D84) indicates the number of the coupon sampled.
ACCEPTED MANUSCRIPT
A)
brevundimonas
100
B) 100
acremonium
pseudomonas
neocosmospora
massilia 90
sphingomonas
didymella
90
aspergillus mesorhizobium
RI PT
80
metacordyceps
80
herbaspirillum sphingobium achromobacter
70
70
bradyrhizobium
60
bosea
flavobacterium 50
60
fungi unclassified scolecobasidium letendraea
M AN U
% relative abundance
methylobacterium
ascomycota
SC
methylophilus
taphrina
cladophialophora
50
cladosporium
sediminibacterium nevskia
40
TE D
variovorax
basidiomycota
40
pyrenochaeta pyricularia
limnohabitans arenimonas
30
malassezia
30
EP
hydrocarboniphaga
chaetomium
blastobacter
20
AC C
opitutus
saccharomyces
20
eurotium
mucilaginibacter gemmata
10
0 9 31 37 10 11 12 13 15 33 16 17 18 19 20 34 22 24 32 D14
D34
D42
D52
D70
D84
physalospora 10
sporotalea
hypocrea
rhodococcus
fusarium
escherichia_shigella op8 (candidate division)
0 9 31 37 10 11 12 13 15 33 16 17 18 19 20 34 22 24 32 D14
D34
D42
D52
D70
D84
capronia acantholichen
Figure 6: Analysis of microbial community data at genus level , showing the relative abundance of the most abundant genera inhabiting biofilms A) bacteria B) fungi. Numbers within each sampling day (D14, D34, D42, D52, D70 and D84) indicates the number of the coupon sampled.
ACCEPTED MANUSCRIPT
Stress= 0.1106
Stress= 0.1208
AC C
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B)
M AN U
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A)
Day 14
Day 34
Day 42
Day 52
Day 70
Day 84
Figure 7: Nonmetric multidimensional scaling plot of biofilm samples (n=18 ) from various sampling times (days). The analysis was based on Bray–Curtis similarity matrix calculated from the relative abundance of OTUs at 97% sequence similarity cut off. A)bacteria and B) fungi.
ACCEPTED MANUSCRIPT
Dominance
A)
Shannon
B) 4
0.6
0.5
3
2
0.3
0.2
1
SC
0.1
0
0.0 D34
D42
D52
D70
D84
D14
Eveness
D)
0.14
TE D
0.12 0.10
EP
0.08 0.06
0.02 0.00 D14
AC C
0.04
D34
D42
D52
D34
M AN U
D14
C)
RI PT
0.4
D70
D42
D52
D70
D84
D70
D84
Chao I
700 600 500 400 300 200 100
0 D84
Bacteria
D14
D34
D42
D52
Fungi
Figure 8: Result for A) dominance, B) diversity (Shannon), C) evenness and D) Chao I indexes for bacteria and fungi at 97% sequence similarity cut off over time. Bars indicate standard deviation (n=3).
ACCEPTED MANUSCRIPT Highlights
Succession of multi-species biofilms was studied under representative conditions
•
A core fungal-bacterial community was observed continuously over time
•
Bacteria responded rapidly while fungi had a lag in responding to biofilm dynamics
•
Core microorganisms are a potential tool to develop new control strategies
AC C
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•