Journal Pre-proof Succession of phytoplankton community during intensive shrimp (Litopenaeus vannamei) cultivation and its effects on cultivation systems
Wen Yang, Jinyong Zhu, Cheng Zheng, Betina Lukwambe, Regan Nicholaus, Kaihong Lu, Zhongming Zheng PII:
S0044-8486(19)31600-X
DOI:
https://doi.org/10.1016/j.aquaculture.2019.734733
Reference:
AQUA 734733
To appear in:
aquaculture
Received date:
29 June 2019
Revised date:
9 October 2019
Accepted date:
10 November 2019
Please cite this article as: W. Yang, J. Zhu, C. Zheng, et al., Succession of phytoplankton community during intensive shrimp (Litopenaeus vannamei) cultivation and its effects on cultivation systems, aquaculture (2018), https://doi.org/10.1016/ j.aquaculture.2019.734733
This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. 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.
© 2018 Published by Elsevier.
Journal Pre-proof
Succession of phytoplankton community during intensive shrimp (Litopenaeus vannamei) cultivation and its effects on cultivation systems
Wen Yang a, Jinyong Zhu
a,#
, Cheng Zheng a, Betina Lukwambe a, Regan Nicholaus a, Kaihong Lu
a,b
,
Zhongming Zheng a,* School of Marine Science, Ningbo University, Ningbo, 315800, China
b
Ningbo Ocean and Fishery Bureau, Ningbo, 315010, China
pr
oo
f
a
Pr
Email:
[email protected];
e-
*Corresponding author
Mailing address: Ningbo University Meishan Branch, No.169 Qixingnan Road, Beilun District, Ningbo
rn
Co-first author
Jo u
#
al
City, Zhejiang Province, China.
Journal Pre-proof
Abstract As the basic biological element in shrimp cultivation systems, phytoplankton performs irreplaceable ecological functions in aquaculture ecosystem, but knowledge of the its community succession is currently not sufficient. To fill this gap, we performed longitudinal dense sampling in six intensive shrimp (Litopenaeus vannamei) aquaculture ponds to track the time-series shift of
f
phytoplankton community at the community and species levels and to discuss the effects of its
oo
succession on rearing environment and shrimp. We detected a distinct successional pattern in the
pr
phytoplankton community by principal coordinates analysis and time-lag regression analysis, and this
dissolved
oxygen,
salinity,
pH
and
bacterioplankton
(Actinobacteria,
Pr
temperature,
e-
pattern could be divided into 3 clusters. Canonical correspondence analysis indicated that water
Gammaproteobacteria, Verrucomicrobiae, and Acidimicrobiia) were the extrinsic factors that were
al
correlated with the phytoplankton community variation. The α-diversity and taxonomic composition of
rn
communities in different clusters were discrepant. By random forest regression, we identified
Jo u
biomarkers of phytoplankton succession which was corelated with shrimp cultivation time. Spearman’s rank correlation showed that at least one environmental variable was correlated with the biomarkers, which emphasized the interaction between phytoplankton and rearing environment. Moreover, network analysis revealed that correlations among individual phytoplankton and biotic and abiotic factors at different clusters were also discrepant. The decline in biomarkers indicated a bloom of pathogenic Gammaproteobacteria at the end of cultivation, which contribute to disease outbreaks. Overall, our findings imply that the succession of the phytoplankton community during shrimp cultivation follows a process in which phytoplankton succeed from initial establishment driven by abiotic and biotic factors, and this process might affect the function of the aquaculture ecosystem and the health of reared shrimp
Journal Pre-proof
to some extent.
Keywords:
Phytoplankton
community;
Rearing
environment;
Biomarker;
Random
forest;
Opportunistic pathogen
f
1 Introduction
oo
Phytoplankton are ubiquitous in various aquatic environments, and shrimp ponds are among the
pr
habitats in which phytoplankton can grow and survive well. As the primary producers of aquaculture
e-
ecosystems, phytoplankton play an irreplaceable role in energy flow and nutrient cycling (Behrenfeld
Pr
& Boss, 2014; Falkowski et al., 2003). During shrimp cultivation, the residual feed and metabolites from cultured shrimp are decomposed into nutrients by bacteria (Kumar et al., 2016; Tan et al., 2016),
al
and these nutrients are then used by phytoplankton, increasing their abundance (Burford et al., 2003).
rn
In return, the proliferation of phytoplankton could take away ammonia and nitrite suppressing the
Jo u
immune system of shrimp (Liao et al., 2012; Liu & Chen, 2004) from the cultivation system, which could serve as an excellent regulator and indicator of water quality (Case et al., 2008; Cremen et al., 2007). Additionally, the dissolved organic matter (DOM) exudated from healthy phytoplankton or lysed of senescent and dead ones also affect the assembly of bacteria communities (Landa et al., 2016; Logue et al., 2016; Lucas et al., 2010), which furnish a source of infectious agents and provide probiotics for reared shrimp (Zhu et al., 2016). As a consequence, phytoplankton have the capacity to manage rearing environment, and conversely, an accurate representation of the shrimp’ and rearing water’s current conditions can also be derived by observing phytoplankton in the ponds. Each phytoplankton species requires specific nutrients and conditions for healthy growth (Kilham,
Journal Pre-proof
1975). Along with cultivation activities progress, the nutrients and conditions of the rearing water change (Ma et al., 2013), which causes the composition of the phytoplankton community to also change dynamically (Burford & Glibert, 1997; Lemonnier et al., 2016). In other words, the process of cultivation is also a process in which the phytoplankton community continues to succeed from its establishment. The succession of phytoplankton community during shrimp cultivation has gained
f
substantial research attention, with some promising results (Burford, 1997; Cremen et al., 2007;
oo
Lukwambe et al., 2015). However, our knowledge of phytoplankton community composition and
pr
dynamics in rearing ponds is still insufficient to explore the mechanisms underlying community
e-
succession. To better gain insight into the successional mechanism, it is necessary to study the
Pr
community’s composition, biomass and variation pattern at the whole-community level (Xiong et al., 2014; Zhang et al., 2014) and to study the correlations between species at the individual species level
al
(Lima-Mendez et al., 2015; Yang et al., 2018c). High-speed development of statistical techniques has
rn
provided a promising avenue for analyzing these three aspects, principally in bacterial ecology (Xiong
Jo u
et al., 2017; Yang et al., 2018a; Yang et al., 2018b; Zhang et al., 2018). However, research on these three aspects of the phytoplankton community is still insufficient (Dai et al., 2017; Yang et al., 2018c). In our previous study, we revealed the successional mechanism of the bacterioplankton community in ponds with intensive rearing of shrimp and its effects on rearing environment (Yang et al., 2018a), whereas these information on phytoplankton community, which is as important as that of bacterioplankton in aquaculture systems, is fragmentary. For this reason, here, we explored the successional pattern of phytoplankton in the same intensive shrimp (Litopenaeus vannamei) aquaculture systems and its potential interactions with rearing environment and shrimp. To this end, we performed longitudinal dense sampling during intensive shrimp cultivation and then integrated
Journal Pre-proof
multivariate statistical analysis and network analysis (i) to study the successional process of the phytoplankton community at the community and species levels; (ii) to reveal the relationship between phytoplankton succession and rearing environmental variability; and (iii) to assess the potential effects of phytoplankton succession on rearing environment and shrimp performance. Our results have both basic and applied implications for maintaining healthy aquaculture environments and supplement the
oo
f
knowledge of microbial ecology in aquaculture ecosystems.
pr
2 Material and methods
e-
2.1 Experimental design and sample collection
Pr
An 87-day sampling was conducted to investigate the physicochemical factors and phytoplankton and bacterioplankton communities in six intensive rearing ponds selected from a shrimp farm located
al
in Zhanqi, Ningbo, eastern China (29°32′N, 121°31′E). These ponds were cement bottomed,
rn
approximately 2000 m2 in size and 1.5 m in depth and each housed within a greenhouse to maintain a
Jo u
relatively stable temperature. Bottom aeration was applied to maintain a suitable level of dissolved oxygen. Congeneric larval shrimp (L. vannamei) were introduced into the ponds on 8 April 2016. The growth of phytoplankton was stimulated by adding 2 g/m 3 commercial inorganic fertilizer urea (Tianchen Biotechnology Institute, Wuhan, China) 3 days prior to introducing. All these ponds were identically managed in terms of the 5% daily water exchange, stocking density (360,000 ind./pond), feeding type and schedule (feed ingredients were shown in Table A.1). To remove microorganisms and suspended particles, rearing seawater was disinfected with sodium hypochlorite and alum, and then was aerated in open reservoirs for 3 weeks before usage. No biological agent was introduced during the cultivation activities.
Journal Pre-proof
A vibriosis outbreak on 4 July 2016 (87 days after introduction), which caused massive mortalities thereafter (Fig. A. 1). For this reason, cultivation was forcefully terminated on 10 July 2016. The diseased shrimp exhibited inactivity, lack of appetite, red hepatopancreas and white guts, and white fecal strings (Fig. A. 1), thus referred as white feces syndrome (Thitamadee et al., 2016). The growth status of shrimp over cultivation was shown in Table A.2. Samples were taken every 6 to 10 days from
f
15 April 2016 (7 days after introduction) to 10 July 2016 (93 days after introduction). Considering the
oo
potential spatial variability within the ponds, we collected water samples from four representative
pr
points and mixed them to form a composite biological replicate sample (3 L) representing a given pond.
e-
The samples were stored in the dark at 4°C during transportation to the laboratory. In total, 78 water
Pr
samples (6 ponds × 13 time points) were collected for further processing. 2.2 Phytoplankton analysis
al
A 250-mL phytoplankton sample was obtained from the water sample and immediately fixed with
rn
Lugol’s solution. Phytoplankton taxa were counted in sedimentation chambers (Hydro-Bios
Jo u
Apparatebau GmbH, Kiel, Germany) with an inverted microscope (CK2, Olympus Corporation, Tokyo, Japan) according to Utermöhl (1958). Phytoplankton biomass was calculated by geometric approximations
by
using
a
computerized
counting
program
(OptiCount,
http://science.do-mix.de/software_opticount.php). 2.3 Environmental analysis Water temperature (WT), pH, salinity (SAL) and dissolved oxygen (DO) were recorded in situ with a YSI 6000 multiparameter probe (YSI Inc., Yellow Springs, USA) at a depth of 50 cm. The chlorophyll a (Chla) content was measured with a FluoroProbe fluorometer (FluoroProbe-III, bbe Moldaenke, Schwentinental, Germany). The levels of chemical oxygen demand (COD) and
Journal Pre-proof
biochemical oxygen demand (BOD) were analyzed following standard methods (AQSIQ, 2007), while the levels of ammonium (NH4+), nitrate (NO3−), nitrite (NO2−) and orthophosphate (PO43−) were measured with an automated spectrophotometer (Smart-Chem 200 Discrete Analyzer, Westco Scientific Instruments, Brookfield, USA). For bacterioplankton, we used paired-end 16S rRNA gene Illumina sequencing data (DDBJ accession number: DRA006634, http://www.ddbj.nig.ac.jp/) from our previous
Saprospirae,
Gammaproteobacteria,
Verrucomicrobiae,
oo
Planctomycetia,
f
study (Yang et al., 2018a). Ten classes (Alphaproteobacteria, Actinobacteria, Flavobacteriia, Deltaproteobacteria,
pr
Acidimicrobiia and Cytophagia) were selected as representative based on their relative abundances.
e-
2.4 Data analysis
Pr
All data analyses were performed using the ‘vegan’ and ‘stats’ packages in R v3.2.1 (Dixon, 2003), unless otherwise indicated. Before data analyses, all of the biotic data were transformed by Hellinger
al
transformation and the abiotic data were normalized by Chord transformation using the function
rn
decostand to improve normality and homoscedasticity (Legendre & Gallagher, 2001).
Jo u
2.4.1 Community level analysis of phytoplankton succession Permutational multivariate analysis of variance (PERMANOVA) was conducted to quantitatively evaluate the contribution of sampling time and ponds to the variation in community composition by using the function adonis (Anderson, 2001). The overall structure of phytoplankton communities was ordinated using a principal coordinate analysis (PCoA) based on Bray-Curtis distance metrics by using the functions cmdscale. Cluster analysis and analysis of similarity (ANOSIM) were performed to categorize successional pattern of phytoplankton community by using the functions hclust and anosim, respectively. To quantify the temporal variation in phytoplankton community dynamics, linear regressions were performed on Bray-Curtis dissimilarity (dependent variables) versus the square root
Journal Pre-proof
of the time lags (independent variables) through time-lag analysis (TLA) (Collins et al., 2000; Xiong et al., 2014). Mantel tests were performed to assess the relationship between the phytoplankton community and environmental variables (physicochemical factors and bacterioplankton classes) by using the function mantel (Mantel, 1967). To determine the factors shaping phytoplankton succession, a forward-selection
f
procedure with Monte Carlo permutation tests was performed with the function ordistep to select a
oo
parsimonious set of factors that explained a significant (p < 0.05) amount of variation in the
pr
phytoplankton data in each sample (Borcard et al., 2011). To eliminate collinearity between the selected
e-
factors, we sequentially removed the explanatory variables with the highest variance inflation factor
Pr
(VIF) by using the function VIF in the “fmsb” package until all VIFs were less than 20. Finally, a canonical correspondence analysis (CCA) was used to analyze the links between the selected factors
al
and the variations in community structure by using the function cca.
rn
2.4.2 Species-level analysis of phytoplankton succession
Jo u
Alpha diversity indices (Shannon-Wiener index, Simpson index and Pilou's evenness) were calculated using the function diversity. One-way analysis of variance (ANOVA) was used to compare differences in α-diversity among clusters using the function aov (Churchill, 2004). To acquire the biomarker taxa of phytoplankton succession correlated with shrimp cultivation time, random forest regression was applied to regress the biomass of phytoplankton taxa against shrimp cultivation time using default parameters in the ‘randomForest’ package (Liaw & Wiener, 2002; Strobl et al., 2007). The model was constructed at the genus level in consideration of diagnose accuracy and ecological significance simultaneously. The top-ranking time-discriminatory populations were identified as biomarker genera using 10-fold cross-validation implemented with the function rfcv over
Journal Pre-proof
100 iterations (Zhang et al., 2018). The correlations between biomarkers and environmental variables were tested by Spearman’s rank correlation using the function cor.test. To reveal correlations among individual phytoplankton and environmental variables, extended local similarity analysis (eLSA) was performed to determine the correlations of the phytoplankton species with each other and with bacterioplankton and physicochemical factors over time using a delay
f
of up to 1 week (Ruan et al., 2006). The standardized biomass of 85 phytoplankton species and 10
oo
bacterioplankton classes and standardized data of 10 physicochemical factors were included in the
pr
analysis. The significance of the local similarity (LS) score was based on 1000 permutations.
e-
Correlations with an LS score > 0.20 and a p-value < 0.05 were considered significant (Shade et al.,
Pr
2010). In total, 3 networks were constructed in this study to display network correlations in 3 clusters categorized by phytoplankton succession. The networks were visualized in Cytoscape v.3.2.1 (Shannon
al
et al., 2003). Subnetworks were extracted from the entire network. The topological parameters of the
3 Results
Jo u
undirected.
rn
networks were calculated by using Network Analyzer in Cytoscape v.3.2.1, treating edges as
3.1 Dynamics of phytoplankton community structure during shrimp cultivation The PERMANOVA demonstrated that the variations in phytoplankton community composition were significantly explained by sampling time rather than by sampling ponds or the interaction of sampling time and ponds (Table 1). These results suggested that the phytoplankton community underwent a distinct pattern of succession over time during shrimp cultivation and that the successional processes of the six ponds we sampled were basically identical. Thus, we took the average of sampling
Journal Pre-proof
ponds in subsequent PCoA and Cluster to highlight the successional process of community dynamics (Fig. 1A). The PCoA and Cluster revealed that the community succession could be clustered into three distinct phases: cluster I, which included samples from 7 day to 28 day; cluster II, which included samples from 34 day to 56 day; and cluster III, which included samples from 63 day to 93 day (Fig. 1A, Fig. A. 2). This pattern was further corroborated by the ANOSIM statistical test, revealing that the
f
community structure significantly differed between clusters (R2 = 0.487, p < 0.01). In addition, a
oo
significant time-lag regression between phytoplankton community dissimilarity and cultivation time
pr
was detected with a positive slope (0.090) and a good fit to the predicted line (adjusted R2 = 0.150, p <
Pr
consistently increased over time (Fig. 1B).
e-
0.01), which suggested that the magnitude of differences in phytoplankton community composition
[Table 1]
al
[Fig. 1]
rn
3.2 Links between phytoplankton community structure and rearing environmental conditions
Jo u
To link phytoplankton community succession with environmental variables, Mantel tests and CCA of the phytoplankton communities were performed for the physicochemical factors and bacterioplankton detected in our study. The correlations between the phytoplankton community and physicochemical factors (adjusted R2 = 0.196, p < 0.01) and bacterioplankton (adjusted R2 = 0.274, p < 0.01) were identified as significant by the Mantel tests. Forward selection was used to select a parsimonious set of significant factors. As a result, WT, DO, pH, SAL, Actinobacteria, Gammaproteobacteria, Verrucomicrobiae, and Acidimicrobiia were selected based on p < 0.05 and VIF < 20. The CCA biplot revealed that the variation in community composition was closely correlated with these environmental variables (Fig. 2). Specifically, the communities in cluster III were distinct
Journal Pre-proof
from those in cluster I, separated primarily by the first axis, which was positively correlated with Gamma and negatively correlated with DO, pH and SAL. In addition, communities in cluster II were separated from others by the axes of Acidi and Verruco. [Fig. 2] 3.3 Shifts in α-diversities and taxonomic composition during shrimp cultivation
f
A total of 85 species (or genera) were identified across all samples, with larger contributions of
oo
Chlorophyta (49 taxa), Bacillariophyta (12 taxa) and Pyrrophyta (10 taxa) (Fig. A. 3A). The taxonomic
pr
composition of the phytoplankton community showed large differences at the phylum level across the
e-
entire cultivation period (p < 0.01). Moreover, an upward trend in phytoplankton biomass was detected
Pr
during shrimp cultivation, with a maximum of 77 day (37.8 mg/L), which was almost 10-fold higher than the minimum of 7 day (4.0 mg/L) (Fig. A. 3B). However, their α-diversities increased in the initial
al
cluster and then declined in cluster III (Fig. 3).
rn
[Fig. 3]
Jo u
To correlate taxonomic composition with cultivation activity, a model based on the random forest machine-learning algorithm was established. Ultimately, 6 genera were defined as biomarkers when considering the time-discriminatory importance of taxa and minimum cross-validation error of the model (Fig. 4A). The majority of biomarkers showed a high relative abundance at the corresponding shrimp cultivation time (Fig. A. 4). For example, Coscinodiscus started to accumulate in cluster II and remained at high levels until 87 day. Cyclotella, Fragilaria and Cymbella accumulated beginning in cluster I and dominated in cluster II but decreased at the end of cultivation. Spearman’s rank correlation coefficients were calculated between each biomarker and each environmental variable. Five genera were significantly (p < 0.05) correlated with at least one environmental variable (Fig. 4B),
Journal Pre-proof
which suggested that the taxonomic composition of the phytoplankton community depended significantly on environmental variables. [Fig. 4] 3.4 Network correlations among individual phytoplankton and environmental variables To determine the dynamics of correlations among phytoplankton, physicochemical factors and
f
bacterioplankton classes during shrimp cultivation, 3 networks based on eLSA were constructed for
oo
each of the 3 clusters (Fig. A. 5). Furthermore, their topological properties were calculated by Network
pr
Analyzer to compare the differences among these 3 networks (Table 2). Obvious differences were
e-
observed. The correlations in cluster I had the most complex network structure, with the largest number
Pr
of edges and average number of neighbors and the shortest characteristic path length, while the network structure of cluster III was relatively simple, with the smallest average number of neighbors
al
(Table 2).
blandus,
belonging
to
the
top-ranking
time-discriminatory
biomarker
Jo u
Coscinodiscus
rn
[Table 2]
Coscinodiscus, was detected in all 3 networks. Based on correlations with the neighbors, the topologies of C. blandus in the 3 networks were dramatically changed across the clusters categorized by phytoplankton succession (Fig. 5). For example, the correlations of C. blandus were all positive in clusters I and II, but in cluster III, these correlations mostly changed to negative. Furthermore, the correlations of C. blandus were limited to interspecific interactions during clusters I and II, but in cluster III, environmental variables began to be correlated with this species and play an important role. In summary, these results suggested that the network correlations among individual phytoplankton and environmental variables were dynamic during shrimp cultivation.
Journal Pre-proof
[Fig. 5] 4 Discussion 4.1 Successional pattern of the phytoplankton community during shrimp cultivation The succession of the phytoplankton community during shrimp cultivation is typical rapid secondary succession. In our study, the phytoplankton community exhibited three distinct successional phases in terms of composition during shrimp cultivation (Fig. 1). The community’s α-diversities,
oo
f
β-diversities and interspecific interactions in different clusters were discrepant (Fig. 1, Fig. 3, Fig. A. 3).
pr
It is expected that the initial cultivation period was also the initial phase of phytoplankton community
e-
succession. Generally, pioneer species are opportunistic and can respond quickly to the appearance of
Pr
new habitats (Mackenzie et al., 2001). Accordingly, the communities in the initial phase are composed of r-strategists, such as the fast-growing diatoms Fragilaria (Weithoff et al., 2001) and Cymbella
al
(Jamet et al., 2005) in our study (Fig. 4B). In addition, during the initial phase of secondary succession,
rn
the community is characterized by abundant “empty” niches, thereby providing a resource-rich
Jo u
environment with less competitive pressure (Chaparro et al., 2013). This environment on the one hand made correlations among individual phytoplankton and environmental factors complex and positive (Table 2, Fig. A. 5) and on the other hand led to a rapid increase in the phytoplankton biomass (Fig. A. 3B). Additionally, this environment inevitably led to the dominance of stochasticity in community succession (Chase & Myers, 2011), which resulted in intense and disordered community variability (Fig. 1A). Subsequently, community complexity increases as succession progresses, often peaking in the mid-successional phase. A mid-successional community is characterized by high species diversity, which was in line with the phytoplankton communities in cluster II (Fig. 3). In most aquatic environments, after initial community establishment, the strength of competition increases as the
Journal Pre-proof
depletion of resources caused by community growth and, hence, the dominance of negative correlations among phytoplankton are expected (Dini-Andreote et al., 2015; Jackson, 2003). However, in our study, the proportion of positive correlations in cluster II increased rather than decreased (Table 2, Fig. A. 5). One possible explanation for this result is that in contrast to most aquatic environments, rearing water contains nutrients that are gradually enriched during shrimp cultivation. This means that the accessible resources for phytoplankton were not only unrestricted but more abundant in cluster II, which led to the
oo
f
increase in positive correlations. Although the communities in cluster II had the highest α-diversity (Fig.
pr
3), their compositions were relatively similar, as their dominant species were mostly diatoms (Fig. 4B,
e-
Fig. A. 3B, Fig. A. 4). All these phenomena exhibited precursors of diatom bloom outbreak (Chalar,
Pr
2009; Spatharis et al., 2007). Characteristics of the communities in cluster III with low α-diversity (Fig. 3) and dominance by Coscinodiscus (Fig. 4, Fig. A. 4) support this assertion. However, at the end of
al
shrimp cultivation (cluster III), the proportion of negative correlations began to increase (Table 2, Fig.
rn
A. 5C), and the increase in antagonism in the ecological network indicated that the phytoplankton
Jo u
might have begun to compete with each other, even leading to death (Coyte et al., 2015). The phytoplankton fell drastically beginning on 77 days after introduction, which not only increased the pressure on the microflora to digest the DOM (Cotner & Biddanda, 2002) but also provided conditions for the bloom of opportunistic bacteria (such as the Gammaproteobacteria, as shown in Fig. 2) (Glasl et al., 2016; Skjermo et al., 1997). It is common for WT (Lv et al., 2014; Toseland et al., 2013), DO (Smith & Piedrahita, 1988; Yoshikawa et al., 2007), pH (Berge et al., 2010) and SAL (Gasiūnaitė et al., 2005; Pilkaitytë et al., 2004) to serve as extrinsic abiotic factors correlated with the succession of the phytoplankton community. However, none of the nutritional factors were found to significantly constrain the succession of the
Journal Pre-proof
phytoplankton community structure, based on our CCA results (Fig. 2), which seem to be inconsistent with the notion that nutrient levels determine the composition of the phytoplankton community (Becker et al., 2010; Lv et al., 2014). In fact, the nutrients in the intensive aquaculture system were excessive throughout the culture process and would not become the limiting factor of community succession. Positive corrections between nutrients and phytoplankton throughout shrimp cultivation also
f
substantiate this explanation (Fig. 4B, Fig. A. 5). Various field experiments and laboratory mesocosm
oo
studies have established that phytoplankton community structure is closely associated with
pr
bacterioplankton (Bruckner et al., 2008; Bunse et al., 2016; Teeling et al., 2016). On the one hand,
e-
phytoplankton could directly compete with bacterioplankton for limited living space and natural
Pr
resources (Meseck et al., 2007; Ogbebo & Ochs, 2008) or could accrete with bacterioplankton by producing growth-stimulatory compounds (Gomez-Gil et al., 2002; Mandal et al., 2011). On the other
al
hand, phytoplankton could release their primary production as DOM into the water by using up
rn
available nutrients, which indirectly creates an environment that is exploited by various bacteria (Bell
Jo u
et al., 1974; Gilbert et al., 2012). In our study, the succession of the phytoplankton community in shrimp ponds was significantly correlated with the relative abundance of various bacterioplankton classes (Fig. 2). This result occurred because Pyrrophyta had a biomass advantage in cluster I (Fig. A. 3B), and Actinobacteria were positively correlated with them (Fig. 2), which has been widely confirmed in the process of dinoflagellate blooms (Bai et al., 2011; Bashenkhaeva et al., 2017). In addition, Bunse et al. (2016) observed that the bacterial phylum Verrucomicrobia was positively associated with the diatom:dinoflagellate ratio, coinciding with the trend of the phytoplankton community composition observed here (Fig. 2, Fig. A. 3). 4.2 Effect of phytoplankton succession on rearing environment and shrimp performance
Journal Pre-proof
It is well known that the large blooms of some algae such as cyanobacteria (e.g., Phormidium tenue and Synechocystis diplococcus) and dinoflagellates (e.g., Alexandrium tamarense and Prorocentrum minimum) may induce shrimp mortality or growth diminution (Alonso-Rodriguez & Paez-Osuna, 2003; Tho et al., 2012). Previous studies have ascribed the emergence of these species to eutrophication in ponds (Brandenburg et al., 2017; Glibert et al., 2018; Lucas et al., 2010; Paerl &
f
Otten, 2013). Indeed, a resource-rich environment could produce harmful species that are mostly
oo
opportunistic, but this is not the root cause. The root cause of this phenomenon is that eutrophication
pr
disrupts community stability and thereby provides “empty” niches for these fast-growing species (De
e-
Schryver et al., 2014; Yang et al., 2018c). Therefore, phytoplankton community stability should be of
Pr
great interest during shrimp cultivation. In our study, the phytoplankton community was undergoing rapid changes (Fig. 1). The dissimilarity between phytoplankton communities in our rearing water was
al
high, even at short time intervals (Fig. 1B). In other words, the phytoplankton community was in an
rn
unstable state throughout the entire cultivation period. In addition, in contrast to previous findings, the
Jo u
dominant species and biomarkers in our study generally belonged to Bacillariophyta (Fig. 4, Fig. A. 3, Fig. A. 4), which includes algae that are beneficial in shrimp rearing water (Alonso-Rodriguez & Paez-Osuna, 2003; Lukwambe et al., 2015). However, diseases were still breaking out at the end of our study period. This phenomenon was potentially caused by the sudden collapse of phytoplankton populations, which also implied week ecosystem stability and the loss of homeostatic mechanisms (Lemonnier et al., 2016). Stimulated by high nutrients, Coscinodiscus started to accumulate in cluster II and bloom in cluster III (Fig. 4B, Fig. A. 4). However, unlike open water systems, limited living space of rearing ponds could not only limit the carrying capacity of phytoplankton community (Burns, 1971), but also exacerbate environmental change. This series of factors might eventually cause a collapse of
Journal Pre-proof
phytoplankton bloom. In view of the fact that some specific bacteria increase in abundance concurrently with the decline of phytoplankton due to their dependence on DOM from live or dead algal cells (Mayali & Azam, 2004), the collapse of Coscinodiscus indicated the rapid proliferation of opportunistic Gammaproteobacteria (Fig. 5). Similarly, the decrease in Cyclotella, Fragilaria and Cymbella in cluster III was also positively correlated with a bloom of Gammaproteobacteria.
f
According to the result of our previous study (Fig. 2 in Yang et al. (2018a)), we could confirm that
oo
these opportunistic Gammaproteobacteria were mostly pathogenic bacteria affiliated to genus
pr
Photobacterium and order Vibrionales (Liu et al., 2016; Zheng et al., 2017; Zhu et al., 2016). Moreover,
e-
algal collapse might cause anoxia and substantial release of sulfides and even produce toxins (Cremen
Pr
et al., 2007; Lukwambe et al., 2015). Such conditions could produce stress on the immune response of shrimp, which in turn made the reared shrimp more susceptible to pathogenic bacteria (Gao et al., 2017;
al
Li et al., 2017; Parrilla-Taylor & Zenteno-Savin, 2011). Furthermore, the very high ecosystem
rn
productivity caused by abundant phytoplankton in cluster III might disrupt the stability of simple food
Jo u
chains, such as that in our aquaculture ecosystem (Leibold, 1999), thereby threatening the health of reared shrimp at the upper trophic level. Combined with these results, we could determine that the algal collapse and pathogens proliferation caused by the instability of phytoplankton community were the primary cause of shrimp-disease outbreak in the present study. Therefore, when regulating the phytoplankton community during shrimp cultivation, we suggest a management strategy manipulating the composition and biomass synchronously to sustain a stable and health rearing environment. 4.3 Comparison of succession between the phytoplankton community and the bacterioplankton community Based on a comparison of the successional process of the phytoplankton community in the present
Journal Pre-proof
study (Fig. 1) and the bacterioplankton community in our previous study (Fig. 1 in Yang et al. (2018a)), their direction and turnover rate (the slope of TLA) were unsurprisingly different. Theoretically, the variation in community dynamics is stronger in phytoplankton than in bacterioplankton (Liu et al., 2015) due to the traits associated with bacteria, such as widespread dispersal (Heino et al., 2015; Soininen, 2010) and rapid evolutionary adaptation (Hanson et al., 2012). However, the succession of
f
the phytoplankton community seemed slower than that of the bacterioplankton community based on
oo
our results. Actually, the high dissimilarity between phytoplankton communities in our rearing water
pr
limited the range of the slope of time-lag regression. Therefore, we could still safely conclude that the
e-
temporal variation in the phytoplankton community was stronger than that in the bacterioplankton
Pr
community. In most cases, this conclusion implies that the phytoplankton community exhibits a stronger response to environmental changes than does the bacterioplankton community (Liu et al.,
al
2015). However, the Mantle test of our studies indicated that the correlation between physicochemical
rn
factors and the bacterioplankton community (adjusted R2 = 0.567, p = 0.001) was stronger than that
Jo u
between such factors and the phytoplankton community (adjusted R2 = 0. 196, p = 0.001) in the intensive shrimp aquaculture system. A potential reason for this contrasting result is that as mentioned above, the phytoplankton community might reach carrying capacity before cultivation terminated, which intensified the transformation of effects on community succession from extrinsic environmental constraints to intrinsic interspecific interaction forces (Fig. A. 5). Whereas, the bacterioplankton community had not exceeded their carrying capacity of the rearing water, since its α-diversity presented an upward trend (Table 2 in Yang et al. (2018a)). In addition, according to our study, the successional processes of the phytoplankton community in aquaculture aquatic environments are different from those in natural aquatic environments. Thus, given the uniqueness of rearing water, more studies are
Journal Pre-proof
expected to be implemented to further explore the mechanisms underlying phytoplankton community succession. 5 Conclusion Our research was undertaken to determine the characteristic successional pattern of phytoplankton community in intensive shrimp pond and its effects on cultivation system. The results demonstrated
f
that during shrimp cultivation, the phytoplankton community underwent a distinct pattern of succession,
oo
which could be clustered into 3 clusters. Overall, the phytoplankton community succeeded from a
pr
disordered and diverse state to a diatom bloom state along shrimp cultivation, and this process was
e-
correlated with both abiotic factors, such as WT, DO, pH and SAL, and biotic factors, such as the
Pr
bacterial classes Actinobacteria, Gammaproteobacteria, Verrucomicrobiae, and Acidimicrobiia and interspecific interactions. Moreover, the network correlations of C. blandus, which was the biomarker
al
of shrimp cultivation time, dramatically changed across clusters. At the end of shrimp cultivation, the
rn
decline in C. blandus possibly caused by the limited living space of the rearing ponds enabled a bloom
Jo u
of pathogenic Gammaproteobacteria, which provided conditions for the outbreak of the disease. Furthermore, by comparing the successional patterns of the phytoplankton community and bacterioplankton community in the same intensive shrimp aquaculture systems, we found that their underlying mechanisms were different. Our present and previous results showed that the associations between physicochemical factors, phytoplankton and bacterioplankton were inextricable. Given our observations, we recommend that in future aquaculture ecological studies, it would be better to conduct comprehensive research including these three components rather than to conduct three separate studies. Collectively, our studies contribute to an overall understanding of microbial ecology in aquaculture systems and emphasize the necessity of stability of rearing water microflora, which offers potential
Journal Pre-proof
help to optimize and develop microbial management strategies.
Acknowledgments This work was supported by the Zhejiang Provincial Department of Education Scientific Research Project (Y201839309), the Zhejiang Provincial Natural Science Foundation of China (LY17C190004),
f
the Zhejiang Public Welfare Technology Research Program (LGN18C190008) and the K.C. Wong
pr
oo
Magna Fund at Ningbo University.
e-
Appendix A. Supplementary data
Pr
The following are supplementary data related to this article. Supplementary Fig. A. 1-4, Table A.1 and
al
2 show additional study details.
rn
References
Jo u
Alonso-Rodriguez, R., Paez-Osuna, F., 2003. Nutrients, phytoplankton and harmful algal blooms in shrimp ponds: a review with special reference to the situation in the Gulf of California. Aquaculture. 219, 317-336.
Anderson, M.J., 2001. A new method for non-parametric multivariate analysis of variance. Austral Ecology. 26, 32-46. AQSIQ, 2007. The Specification for Marine Monitoring of China-Part 4: Seawater Analysis (GB 17378.4e2007). General administration of quality supervision, inspection and quarantine (AQSIQ) of the People's Republic of China (in Chinese). Bai, S.J.J., Huang, L.P.P., Su, J.Q.Q., Tian, Y., Zheng, T.L., 2011. Algicidal Effects of a Novel Marine
Journal Pre-proof
Actinomycete on the Toxic Dinoflagellate Alexandrium tamarense. Curr Microbiol. 62, 1774-1781. Bashenkhaeva, M.V., Zakharova, Y.R., Galachyants, Y.P., Khanaev, I.V., Likhoshway, Y.V., 2017. Bacterial Communities during the Period of Massive under-Ice Dinoflagellate Development in Lake Baikal. Microbiology+. 86, 524-532.
f
Becker, V., Caputo, L., Ordonez, J., Marce, R., Armengol, J., Crossetti, L.O., Huszar, V.L., 2010.
oo
Driving factors of the phytoplankton functional groups in a deep Mediterranean reservoir. Water
pr
Res. 44, 3345-3354.
Pr
blooms. Ann Rev Mar Sci. 6, 167-194.
e-
Behrenfeld, M.J., Boss, E.S., 2014. Resurrecting the ecological underpinnings of ocean plankton
Bell, W.H., Lang, J.M., Mitchell, R., 1974. Selective stimulation of marine bacteria by algal
al
extracellular products1. Limnol Oceanogr. 19, 833-839.
rn
Berge, T., Daugbjerg, N., Andersen, B.B., Hansen, P.J., 2010. Effect of lowered pH on marine
Jo u
phytoplankton growth rates. Mar Ecol Prog Ser. 416, 79-91. Borcard, D., Gillet, F., Legendre, P., 2011. Numerical Ecology with R. Springer New York, USA. Brandenburg, K.M., Domis, L.N.D., Wohlrab, S., Krock, B., John, U., van Scheppingen, Y., van Donk, E., Van de Waal, D.B., 2017. Combined physical, chemical and biological factors shape Alexandrium ostenfeldii blooms in the Netherlands. Harmful Algae. 63, 146-153. Bruckner, C.G., Bahulikar, R., Rahalkar, M., Schink, B., Kroth, P.G., 2008. Bacteria Associated with Benthic Diatoms from Lake Constance: Phylogeny and Influences on Diatom Growth and Secretion of Extracellular Polymeric Substances. Appl Environ Microb. 74, 7740-7749. Bunse, C., Bertos-Fortis, M., Sassenhagen, I., Sildever, S., Sjöqvist, C., Godhe, A., Gross, S., Kremp,
Journal Pre-proof
A., Lips, I., Lundholm, N., Rengefors, K., Sefbom, J., Pinhassi, J., Legrand, C., 2016. Spatio-Temporal Interdependence of Bacteria and Phytoplankton during a Baltic Sea Spring Bloom, Front Microbiol. 7. Burford, M., 1997. Phytoplankton dynamics in shrimp ponds. Aquac Res. 28, 351-360. Burford, M.A., Glibert, P.M., 1997. Nitrogen dynamics and the role of phytoplankton in shrimp ponds.
f
Phycologia. 36, 13-13.
oo
Burford, M.A., Costanzo, S.D., Dennison, W.C., Jackson, C.J., Jones, A.B., McKinnon, A.D., Preston,
pr
N.P., Trott, L.A., 2003. A synthesis of dominant ecological processes in intensive shrimp ponds
e-
and adjacent coastal environments in NE Australia. Mar Pollut Bull. 46, 1456-1469.
Calif Fish and Game. 57: 44-57.
Pr
Burns, J.W., 1971. The carrying capacity for juveniles salmonids in some northern California streams.
al
Case, M., Leca, E.E., Leitao, S.N., Sant'Anna, E.E., Schwamborn, R., de Moraes, A.T., 2008. Plankton
rn
community as an indicator of water quality in tropical shrimp culture ponds. Marine Pollution
Jo u
Bulletin. 56, 1343-1352.
Chalar, G., 2009. The use of phytoplankton patterns of diversity for algal bloom management. Limnologica. 39, 200-208.
Chaparro, J.M., Badri, D.V., Bakker, M.G., Sugiyama, A., Manter, D.K., Vivanco, J.M., 2013. Root Exudation of Phytochemicals in Arabidopsis Follows Specific Patterns That Are Developmentally Programmed and Correlate with Soil Microbial Functions. Plos One. 8. Chase, J.M., Myers, J.A., 2011. Disentangling the importance of ecological niches from stochastic processes across scales. Philos T R Soc B. 366, 2351-2363. Churchill, G.A., 2004. Using ANOVA to analyze microarray data. Biotechniques. 37, 173-+.
Journal Pre-proof
Collins, S.L., Micheli, F., Hartt, L., 2000. A method to determine rates and patterns of variability in ecological communities. Oikos. 91, 285-293. Cotner, J.B., Biddanda, B.A., 2002. Small players, large role: Microbial influence on biogeochemical processes in pelagic aquatic ecosystems. Ecosystems. 5, 105-121. Coyte, K.Z., Schluter, J., Foster, K.R., 2015. The ecology of the microbiome: Networks, competition,
f
and stability. Science. 350, 663-666.
oo
Cremen, M.C.M., Martinez-Goss, M.R., Corre, V.L., Azanza, R.V., 2007. Phytoplankton bloom in
pr
commercial shrimp ponds using green-water technology. J Appl Phycol. 19, 615-624.
e-
Dai, W., Yu, W., Zhang, J., Zhu, J., Tao, Z., Xiong, J., 2017. The gut eukaryotic microbiota influences
Pr
the growth performance among cohabitating shrimp. Applied microbiology and biotechnology. 101, 6447-6457.
al
De Schryver, P., Defoirdt, T., Sorgeloos, P., 2014. Early Mortality Syndrome Outbreaks: A Microbial
rn
Management Issue in Shrimp Farming? Plos Pathog. 10.
Jo u
Dini-Andreote, F., Stegen, J.C., van Elsas, J.D., Salles, J.F., 2015. Disentangling mechanisms that mediate the balance between stochastic and deterministic processes in microbial succession. P Natl Acad Sci USA. 112, E1326-E1332. Dixon, P., 2003. VEGAN, a package of R functions for community ecology. J Veg Sci. 14, 927-930. Falkowski, P.G., Laws, E.A., Barber, R.T., Murray, J.W., 2003. Phytoplankton and Their Role in Primary, New, and Export Production. in: Fasham, M.J.R. (Ed.), Ocean Biogeochemistry: The Role of the Ocean Carbon Cycle in Global Change. Springer Berlin Heidelberg, Berlin, Heidelberg, pp. 99-121. Gao, J.F., Zuo, H.L., Yang, L.W., He, J.H., Niu, S.W., Weng, S.P., He, J.G., Xu, X.P., 2017. Long-term
Journal Pre-proof
influence of cyanobacterial bloom on the immune system of Litopenaeus vannamei. Fish Shellfish Immun. 61, 79-85. Gasiūnaitė, Z.R., Cardoso, A.C., Heiskanen, A.S., Henriksen, P., Kauppila, P., Olenina, I., Pilkaitytė, R., Purina, I., Razinkovas, A., Sagert, S., Schubert, H., Wasmund, N., 2005. Seasonality of coastal phytoplankton in the Baltic Sea: Influence of salinity and eutrophication. Estuarine, Coastal and
f
Shelf Science. 65, 239-252.
oo
Gilbert, J.A., Steele, J.A., Caporaso, J.G., Steinbrueck, L., Reeder, J., Temperton, B., Huse, S.,
pr
McHardy, A.C., Knight, R., Joint, I., Somerfield, P., Fuhrman, J.A., Field, D., 2012. Defining
e-
seasonal marine microbial community dynamics. Isme Journal. 6, 298-308.
Pr
Glasl, B., Herndl, G.J., Frade, P.R., 2016. The microbiome of coral surface mucus has a key role in mediating holobiont health and survival upon disturbance. Isme Journal. 10, 2280-2292.
al
Glibert, P.M., Al-Azri, A., Icarus Allen, J., Bouwman, A.F., Beusen, A.H.W., Burford, M.A., Harrison,
rn
P.J., Zhou, M., 2018. Key Questions and Recent Research Advances on Harmful Algal Blooms in
Jo u
Relation to Nutrients and Eutrophication. in: Glibert, P.M., Berdalet, E., Burford, M.A., Pitcher, G.C., Zhou, M. (Eds.), Global Ecology and Oceanography of Harmful Algal Blooms. Springer International Publishing, Cham, pp. 229-259. Gomez-Gil, B., Roque, A., Velasco-Blanco, G., 2002. Culture of Vibrio alginolyticus C7b, a potential probiotic bacterium, with the microalga Chaetoceros muelleri. Aquaculture (Amsterdam, Netherlands). 211, 43-48. Hanson, C.A., Fuhrman, J.A., Horner-Devine, M.C., Martiny, J.B.H., 2012. Beyond biogeographic patterns: processes shaping the microbial landscape. Nat Rev Microbiol. 10, 497-506. Heino, J., Melo, A.S., Siqueira, T., Soininen, J., Valanko, S., Bini, L.M., 2015. Metacommunity
Journal Pre-proof
organisation, spatial extent and dispersal in aquatic systems: patterns, processes and prospects. Freshwater Biol. 60, 845-869. Jackson, C.R., 2003. Changes in community properties during microbial succession. Oikos. 101, 444-448. Jamet, J.L., Jean, N., Boge, G., Richard, S., Jamet, D., 2005. Plankton succession and assemblage
f
structure in two neighbouring littoral ecosystems in the north-west Mediterranean Sea. Mar
oo
Freshwater Res. 56, 69-83.
pr
Kilham, P., 1975. Some Biological Effects of Atmospheric Inputs to Lakes: Nutrient Ratios and
e-
Competitive Interactions Between Phytoplankton. Journal of Great Lakes Research. 2, 187-191.
Pr
Kumar, V., Roy S., Meena, D.K., Sarkar, U.K., 2016. Application of probiotics in shrimp aquaculture: importance, mechanisms of action, and methods of administration. Rev Fish Sci Aquac. 24,
al
342-368.
rn
Landa, M., Blain, S., Christaki, U., Monchy, S., Obernosterer, I., 2016. Shifts in bacterial community
Jo u
composition associated with increased carbon cycling in a mosaic of phytoplankton blooms. Isme J. 10, 39-50.
Legendre, P., Gallagher, E., 2001. Ecologically meaningful transformations for ordination of species data. Oecología. 129, 271-280. Leibold, M.A., 1999. Biodiversity and nutrient enrichment in pond plankton communities. Evol Ecol Res. 1, 73-95. Lemonnier, H., Lantoine, F., Courties, C., Guillebault, D., Nezan, E., Chomerat, N., Escoubeyrou, K., Galinie, C., Blockmans, B., Laugier, T., 2016. Dynamics of phytoplankton communities in eutrophying tropical shrimp ponds affected by vibriosis. Mar Pollut Bull. 110, 449-459.
Journal Pre-proof
Li, T.Y., Li, E.C., Suo, Y.T., Xu, Z.X., Jia, Y.Y., Qin, J.G., Chen, L.Q., Gu, Z.M., 2017. Energy metabolism and metabolomics response of Pacific white shrimp Litopenaeus vannamei to sulfide toxicity. Aquat Toxicol. 183, 28-37. Liao, S.A., Li, Q., Wang, A.L., Xian, J.A., Chen, X.D., Gou, N.N., Zhang, S.P., Wang, L., Xu, X.R., 2012. Effect of nitrite on immunity of the white shrimp Litopenaeus vannamei at low temperture
f
and low salinity. Ecotoxicology. 21, 1603-1608.
oo
Liaw, A., Wiener, M., 2002. Classification and Regression by RandomForest. Forest. 2, 18-22.
pr
Lima-Mendez, G., Faust, K., Henry, N., Decelle, J., Colin, S., Carcillo, F., Chaffron, S.,
e-
Ignacio-Espinosa, J.C., Roux, S., Vincent, F., 2015. Determinants of community structure in the
Pr
global plankton interactome. Science. 348, 1262073.
Liu, C.H., Chen, J.C., 2004. Effect of ammonia on the immune response of white shrimp Litopenaeus
al
vannamei and its susceptibility to Vibrio alginolyticus. Fish Shellfish Immun. 16, 321-334.
rn
Liu, F., Liu, G.X., Li, F.H., 2016. Characterization of two pathogenic Photobacterium strains isolated
Jo u
from Exopalaemon carinicauda causing mortality of shrimp. Aquaculture. 464, 129-135. Liu, L.M., Yang, J., Lv, H., Yu, X.Q., Wilkinson, D.M., Yang, J., 2015. Phytoplankton Communities Exhibit a Stronger Response to Environmental Changes than Bacterioplankton in Three Subtropical Reservoirs. Environ Sci Technol. 49, 10850-10858. Logue, J.B., Stedmon, C.A., Kellerman, A.M., Nielsen, N.J., Andersson, A.F., Laudon, H., Lindstrom, E.S., Kritzberg, E.S., 2016. Experimental insights into the importance of aquatic bacterial community composition to the degradation of dissolved organic matter. Isme J. 10, 533-545. Lucas, R., Courties, C., Herbland, A., Goulletquer, P., Marteau, A.L., Lemonnier, H., 2010. Eutrophication in a tropical pond: Understanding the bacterioplankton and phytoplankton
Journal Pre-proof
dynamics during a vibriosis outbreak using flow cytometric analyses. Aquaculture. 310, 112-121. Lukwambe, B., Qiuqian, L.L., Wu, J.F., Zhang, D.M., Wang, K., Zheng, Z.M., 2015. The effects of commercial microbial agents (probiotics) on phytoplankton community structure in intensive white shrimp (Litopenaeus vannamei) aquaculture ponds. Aquaculture International. 23, 1443-1455.
f
Lv, H., Yang, J., Liu, L.M., Yu, X.Q., Yu, Z., Chiang, P.C., 2014. Temperature and nutrients are
oo
significant drivers of seasonal shift in phytoplankton community from a drinking water reservoir,
pr
subtropical China. Environmental Science and Pollution Research. 21, 5917-5928.
e-
Ma, Z., Song, X.F., Wan, R., Gao, L., 2013. A modified water quality index for intensive shrimp ponds
Pr
of Litopenaeus vannamei. Ecol Indic. 24, 287-293.
Mandal, S.K., Singh, R.P., Patel, V., 2011. Isolation and Characterization of Exopolysaccharide
al
Secreted by a Toxic Dinoflagellate, Amphidinium carterae Hulburt 1957 and Its Probable Role in
rn
Harmful Algal Blooms (HABs). Microbial Ecology. 62, 518-527.
Jo u
Mantel, N., 1967. The detection of disease clustering and a generalized regression approach. Cancer research. 27, 209-220.
Mayali, X., Azam, F., 2004. Algicidal Bacteria in the Sea and their Impact on Algal Blooms. J Eukaryot Microbiol. 51, 139-144. Meseck, S.L., Smith, B.C., Wikfors, G.H., Alix, J.H., Kapareiko, D., 2007. Nutrient interactions between phytoplankton and bacterioplankton under different carbon dioxide regimes. J Appl Phycol. 19, 229-237. Ogbebo, F.E., Ochs, C., 2008. Bacterioplankton and phytoplankton production rates compared at different levels of solar ultraviolet radiation and limiting nutrient ratios. Journal of Plankton
Journal Pre-proof
Research. 30, 1271-1284. Paerl, H.W., Otten, T.G., 2013. Harmful Cyanobacterial Blooms: Causes, Consequences, and Controls. Microb Ecol. 65, 995-1010. Parrilla-Taylor, D.P., Zenteno-Savin, T., 2011. Antioxidant enzyme activities in Pacific white shrimp (Litopenaeus vannamei) in response to environmental hypoxia and reoxygenation. Aquaculture.
f
318, 379-383.
oo
Pilkaitytë, R., Schoor, A., Schubert, H., 2004. Response of phytoplankton communities to salinity
pr
changes – a mesocosm approach. Hydrobiologia. 513, 27-38.
e-
Ruan, Q.S., Dutta, D., Schwalbach, M.S., Steele, J.A., Fuhrman, J.A., Sun, F.Z., 2006. Local similarity
Pr
analysis reveals unique associations among marine bacterioplankton species and environmental factors. Bioinformatics. 22, 2532-2538.
al
Shade, A., Chiu, C.Y., McMahon, K.D., 2010. Differential bacterial dynamics promote emergent
rn
community robustness to lake mixing: an epilimnion to hypolimnion transplant experiment.
Jo u
Environmental Microbiology. 12, 455-466. Shannon, P., Markiel, A., Ozier, O., Baliga, N.S., Wang, J.T., Ramage, D., Amin, N., Schwikowski, B., Ideker, T., 2003. Cytoscape: A software environment for integrated models of biomolecular interaction networks. Genome Res. 13, 2498-2504. Skjermo, J., Salvesen, I., Oie, G., Olsen, Y., Vadstein, O., 1997. Microbially matured water: A technique for selection of a non-opportunistic bacterial flora in water that may improve performance of marine larvae. Aquacult Int. 5, 13-28. Smith, D.W., Piedrahita, R.H., 1988. The relation between phytoplankton and dissolved oxygen in fish ponds. Aquaculture. 68, 249-265.
Journal Pre-proof
Soininen, J., 2010. Species Turnover along Abiotic and Biotic Gradients: Patterns in Space Equal Patterns in Time? Bioscience. 60, 433-439. Spatharis, S., Tsirtsis, G., Danielidis, D.B., Chi, T.D., Mouillot, D., 2007. Effects of pulsed nutrient inputs on phytoplankton assemblage structure and blooms in an enclosed coastal area. Estuar Coast Shelf S. 73, 807-815.
f
Strobl, C., Boulesteix, A.-L., Zeileis, A., Hothorn, T., 2007. Bias in random forest variable importance
oo
measures: Illustrations, sources and a solution. BMC Bioinformatics. 8, 25.
pr
Tan, L.T.H., Chan, K.G., Lee, L.H., Goh, B.H., 2016. Streptomyces bacteria as potential probiotics in
e-
aquaculture. Front Microbiol. 7.
Pr
Teeling, H., Fuchs, B.M., Bennke, C.M., Krüger, K., Chafee, M., Kappelmann, L., Reintjes, G., Waldmann, J., Quast, C., Glöckner, F.O., Lucas, J., Wichels, A., Gerdts, G., Wiltshire, K.H.,
rn
blooms, eLife, pp. e11888.
al
Amann, R.I., 2016. Recurring patterns in bacterioplankton dynamics during coastal spring algae
Jo u
Thitamadee, S., Prachumwat, A., Srisala, J., Jaroenlak, P., Salachan, P.V., Sritunyalucksana, K., W.Flegel, T., Itsathitphaisarn, O., 2016. Review of current disease threats for cultivated penaeid shrimp in Asia. Aquaculture. 452:69-87. Tho, N., Merckx, R., Ut, V.N., 2012. Biological characteristics of the improved extensive shrimp system in the Mekong delta of Vietnam. Aquac Res. 43, 526-537. Toseland, A., Daines, S.J., Clark, J.R., Kirkham, A., Strauss, J., Uhlig, C., Lenton, T.M., Valentin, K., Pearson, G.A., Moulton, V., Mock, T., 2013. The impact of temperature on marine phytoplankton resource allocation and metabolism. Nat Clim Change. 3, 979-984. Vadstein, O., Attramadal, K.J.K., Bakke, I., Olsen, Y., 2018. K-Selection as Microbial Community
Journal Pre-proof
Management Strategy: A Method for Improved Viability of Larvae in Aquaculture. Front Microbiol. 9. Weithoff, G., Walz, N., Gaedke, U., 2001. The intermediate, disturbance hypothesis - species diversity or functional diversity? J Plankton Res. 23, 1147-1155. Xiong, J., Zhu, J., Dai, W., Dong, C., Qiu, Q., Li, C., 2017. Integrating gut microbiota immaturity and
f
disease-discriminatory taxa to diagnose the initiation and severity of shrimp disease. Environ
oo
Microbiol. 19, 1490-1501.
pr
Xiong, J.B., Zhu, J.L., Wang, K., Wang, X., Ye, X.S., Liu, L., Zhao, Q.F., Hou, M.H., Qiuqian, L.L.,
e-
Zhang, D.M., 2014. The Temporal Scaling of Bacterioplankton Composition: High Turnover and
Pr
Predictability during Shrimp Cultivation. Microb Ecol. 67, 256-264. Yang, W., Zhu, J., Zheng, C., Qiu, H., Zheng, Z., Lu, K., 2018a. Succession of bacterioplankton
al
community in intensive shrimp (Litopenaeus vannamei) aquaculture systems. Aquaculture. 497,
rn
200-213.
Jo u
Yang, W., Zheng, Z.M., Zheng, C., Lu, K.H., Ding, D.W., Zhu, J.Y., 2018b. Temporal variations in a phytoplankton community in a subtropical reservoir: An interplay of extrinsic and intrinsic community effects. Sci Total Environ. 612, 720-727. Yang, W., Zheng, C., Zheng, Z.M., Wei, Y.M., Lu, K.H., Zhu, J.Y., 2018c. Nutrient enrichment during shrimp cultivation alters bacterioplankton assemblies and destroys community stability. Ecotox Environ Safe. 156, 366-374. Yoshikawa, T., Murata, O., Furuya, K., Eguchi, M., 2007. Short-term covariation of dissolved oxygen and phytoplankton photosynthesis in a coastal fish aquaculture site. Estuarine, Coastal and Shelf Science. 74, 515-527.
Journal Pre-proof
Zhang, D.M., Wang, X., Xiong, J.B., Zhu, J.L., Wang, Y.N., Zhao, Q.F., Chen, H.P., Guo, A.N., Wu, J.F., Dai, H.P., 2014. Bacterioplankton assemblages as biological indicators of shrimp health status. Ecol Indic. 38, 218-224. Zhang, J.Y., Zhang, N., Liu, Y.X., Zhang, X.N., Hu, B., Qin, Y., Xu, H.R., Wang, H., Guo, X.X., Qian, J.M., Wang, W., Zhang, P.F., Jin, T., Chu, C.C., Bai, Y., 2018. Root microbiota shift in rice
f
correlates with resident time in the field and developmental stage. Sci China Life Sci. 61, 613-621.
oo
Zheng, Y.F., Yu, M., Liu, J.W., Qiao, Y.L., Wang, L., Li, Z.T., Zhang, X.H., Yu, M.C., 2017. Bacterial
pr
Community Associated with Healthy and Diseased Pacific White Shrimp (Litopenaeus vannamei)
e-
Larvae and Rearing Water across Different Growth Stages. Front Microbiol. 8.
Pr
Zhu, J.Y., Dai, W.F., Qiu, Q.F., Dong, C.M., Zhang, J.J., Xiong, J.B., 2016. Contrasting Ecological Processes and Functional Compositions Between Intestinal Bacterial Community in Healthy and
Jo u
rn
al
Diseased Shrimp. Microbial Ecology. 72, 975-985.
Journal Pre-proof
Figures legends Fig. 1 Principal coordinate analysis (PCoA) ordination biplot (A) and time-lag regression analysis (B) based on Bray-Curtis dissimilarities in phytoplankton community composition. Different colors indicate samples in different clusters. The number represents cultivation days after introduction. The lines denote the least-square linear regressions across time lags and their 95% confidence intervals
oo
f
(gray-shaded areas). **P < 0.01.
pr
Fig. 2 Canonical correspondence analysis (CCA) of phytoplankton communities and the
e-
forward-selected environmental variables. WT: water temperature; DO: dissolved oxygen; SAL:
Pr
salinity; Actino: relative abundance of the Actinobacteria class; Verruco: relative abundance of the Verrucomicrobiae class; Acidi: relative abundance of the Acidimicrobiia class; Gamma: relative
rn
al
abundance of the Gammaproteobacteria class. Different colors indicate samples in different clusters.
Jo u
Fig. 3 Comparison of phytoplankton community α-diversity indices over clusters. a,b: Different lowercase letters denote significant differences (p < 0.05) among clusters based on one-way ANOVA.
Fig. 4 Phytoplankton biomarkers of shrimp cultivation time identified by random forest regression (A) and the dynamics of their relative biomass against cultivation time (B). The insert of A represents the 10-fold cross-validation error as a function of the number of input genera used to regress against the shrimp cultivation time in order of variable importance. The correlations between biomarkers and environmental variables in B were tested by Spearman’s rank correlation. A red line indicates a positive correlation, while a blue line indicates a negative correlation.
Journal Pre-proof
Fig. 5 The dynamics of network correlations among Coscinodiscus blandus, belonging to the biomarker Coscinodiscus, other phytoplankton species and environmental variables in clusters I (A), II (B) and III (C) categorized by the succession of the phytoplankton community. Circles are phytoplankton species, diamonds are bacterioplankton, and squares are physicochemical factors. Colors
f
of the nodes indicate the phytoplankton species affiliated with different phyla. A red edge indicates a
pr
oo
positive association, whereas a blue edge indicates a negative association.
e-
Fig. A. 1 Photos of diseased shrimp. A shrimp disease (white feces syndrome) occurred at 87 days after
Pr
introduction, which caused massive mortalities thereafter. Red arrows indicate disease signs and dead
al
shrimp in ponds.
Jo u
species level.
rn
Fig. A. 2 Hierarchical clustering of samples based on the phytoplankton community profiles at the
Fig. A. 3 The variation of phyla composition and biomass of phytoplankton community along shrimp cultivation.
Fig. A. 4 The variation of the relative biomass of phytoplankton biomarkers along shrimp cultivation.
Fig. A. 5 Network interactions among phytoplankton species, bacterioplankton and physicochemical factors in clusters I (A), II (B) and III (C) categorized by the succession of the phytoplankton
Journal Pre-proof
community. Circles are phytoplankton species, diamonds are bacterioplankton, and squares are physicochemical factors. Colors of the nodes indicate the species affiliated with different phyla (color code on the bottom). A red line indicates a positive correlation between two individual nodes, while a
Jo u
rn
al
Pr
e-
pr
oo
f
blue line indicates a negative correlation.
Journal Pre-proof
Table 1 Quantitative effects of sampling time and ponds on variation in phytoplankton community structure and environmental variables (physicochemical factors and bacterioplankton classes) obtained using nonparametric permutational multivariate analysis of variance (PERMANOVA). Sampling ponds
Time : pond
p
R2
p
R2
p
Phytoplankton community structure
0.141
0.001
0.011
0.460
0.008
0.658
Physicochemical factors
0.713
0.001
0.003
0.376
0.001
0.996
Bacterioplankton classes
0.283
0.001
0.013
0.225
0.004
0.784
pr
oo
R2
f
Sampling time
e-
Note: The R2 values represent the proportion of the community variation explained by each of the
Jo u
rn
al
Pr
variables and their interaction.
Journal Pre-proof
Table 2 Topological parameters of extended local similarity analysis (eLSA) networks of correlations among phytoplankton, bacterioplankton and physicochemical factors in clusters categorized by the succession of phytoplankton community. Cluster I
Cluster II
Cluster III
Nodes (n)
56
27
38
Edges (n)
439
95
93
Clustering coefficient
0.702
0.619
Network centralization
0.496
Characteristic path length
1.909
Average number of neighbors
15.679
Network density Network heterogeneity
oo pr
0.455
e-
1.994
0.402 2.363
0.285
0.271
0.132
0.779
0.712
1.085
99.0/1.0
80.6/19.4
Pr
4.895
al
Jo u
0.479
7.037
96.5/3.5
rn
Positive/negative correlation (%)
f
Topological properties
Journal Pre-proof
Table A.1 The percentages of shrimp feed ingredients over cultivation. To eliminate potential pathogens, feed is sterilized by irradiation during production. Postlarvae
Juveniles and Adults
Fish meal
55
38
Yeast powder
4
4
Soybean lecithin
6
5
Soybean powder
14
Peanut powder
0
Shrimp shell powder
7
Wheat gluten powder
rn Jo u
Pre-mixture
al
Salt
Ca(H2PO4)2
oo pr
e2.5
Pr
Marine algae powder
Vegetable oil
f
Ingredients
18 6 10 0
7.1
10.5
0.4
0
0
1.5
0
3
4
4
Journal Pre-proof
Table A.2 The growth status of shrimp over cultivation. Final
Initial
Final
Culture
Specific
length
length
weight
weight
days
growth rate
(cm)
(cm)
(cm)
(cm)
(d)
(%)
Shrimps
1.11 ±
8.17 ±
0.019 ±
7.625 ±
93
7.04 ±
(n=15)
0.07
0.29
0.005
0.407
rn
al
Pr
e-
pr
oo
f
Initial
Jo u
Characteristics
0.28
Journal Pre-proof
Succession of phytoplankton community during intensive shrimp (Litopenaeus vannamei) cultivation and its effects on cultivation systems Wen Yang a, Jinyong Zhu
a,#
, Cheng Zheng a, Betina Lukwambe a, Regan Nicholaus a, Kaihong Lu
a,b
,
Zhongming Zheng a,*
Significant directional temporal change in phytoplankton assemblages was occurred during
oo
f
Highlights:
Phytoplankton community succeed from a disordered and diverse state to a diatom bloom state
e-
pr
shrimp cultivation.
Pr
along shrimp cultivation.
Algal collapse and pathogens proliferation induced by the instability of phytoplankton community
rn
The interaction among physicochemical factors, phytoplankton and bacterioplankton were inextricable and indivisible.
Jo u
al
were the primary cause of shrimp-disease outbreak.
Journal Pre-proof
Conflict of interest We declare that we do not have any commercial or associative interest that represents a conflict of interest in connection with our manuscript entitled ‘Succession of phytoplankton community during
Jo u
rn
al
Pr
e-
pr
oo
f
intensive shrimp (Litopenaeus vannamei) cultivation and its effects on cultivation systems’.
Figure 1
Figure 2
Figure 3
Figure 4
Figure 5