Accepted Manuscript Public health risk assessment from drinking water from vending machines in Seri Kembangan (Malaysia)
Sarva Mangala Praveena, Nurul Fatihah Kamal Huyok, Claire de Burbure PII:
S0956-7135(18)30025-2
DOI:
10.1016/j.foodcont.2018.01.019
Reference:
JFCO 5950
To appear in:
Food Control
Received Date:
11 September 2017
Revised Date:
07 December 2017
Accepted Date:
14 January 2018
Please cite this article as: Sarva Mangala Praveena, Nurul Fatihah Kamal Huyok, Claire de Burbure, Public health risk assessment from drinking water from vending machines in Seri Kembangan (Malaysia), Food Control (2018), doi: 10.1016/j.foodcont.2018.01.019
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ACCEPTED MANUSCRIPT TITLE PAGE
1 2 Title
Public health risk assessment from drinking water from vending machines in Seri Kembangan (Malaysia)
Authors
Sarva Mangala Praveena1, Nurul Fatihah Kamal Huyok1, Claire de Burbure2
Affiliations
1Department
of Environmental and Occupational Health, Faculty of Medicine and Health Sciences, Universiti Putra Malaysia 43400 UPM Serdang, Selangor Darul Ehsan, Malaysia 2Faculty
3 4 5 6 7 8 9 10 11 12 13
of Medicine, Université Catholique de Louvain, Louvain, Belgium
Name : Sarva Mangala Praveena (*Corresponding author) Phone : +603-89472692 Fax : +603-89472395 Email :
[email protected] Complete mailing address : Department of Environmental and Occupational Health, Faculty of Medicine and Health Sciences, Universiti Putra Malaysia 43400 UPM Serdang, Selangor Darul Ehsan, Malaysia
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Abstract
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This study investigated the public health risk linked with microbial quality of drinking water
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from vending machines in Seri Kembangan city (Malaysia) using epidemiological and
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Quantitative Microbial Risk Assessment (QMRA) approaches. This study was also conducted
32
to understand associations between reported health symptoms and daily water intake
33
information. Following WHO guidelines on water safety, QMRA were performed was to
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estimate burden of disease from E. coli from water vending machines. Triplicate drinking
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water samples from water vending machines were collected from six sampling areas around
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the city, analysed for E. coli, information of health symptoms and daily water intake was
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obtained from 121 respondents by questionnaires. The results indicated the highest
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numbers of E. coli levels were found in Seri Serdang (45 – 68 CFU/ 100 mL) and Taman
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Pinggiran Putra (45 – 62 CFU/ 100 mL). Escherichia coli levels in drinking water samples
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from water vending machines obtained from Seri Serdang, Taman Pinggiran Putra, Taman
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Equine, Balakong and Serdang Jaya exceeded both Malaysian Drinking Water Quality and
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WHO Drinking Water Quality guidelines. Reported health symptoms were only significantly
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linked to brand which likely to be associated with regular maintenance of water vending
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machine. All the drinking water samples from water vending machines except from Lestari
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Perdana have exceeded the health based target outcomes by QMRA. Combination of
46
epidemiology
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understanding of public health risks and gateway for a better management of water vending
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machines.
and
quantitative
microbial
risk
assessment
have
provided
a
clear
49 50
Keywords: Public health; risk assessment; vending machine; drinking water
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1. Introduction
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There has been an exponential increase in the public availability of drinking water vending
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machines in urban areas, driven by modern working and public infrastructures, lifestyles
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changes as well as drinking habits. Sales of water vending machines are also influenced by
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local conditions such as ease of access to clean drinking water, convenience of the location,
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human friendly services, low setup cost and labour (Schillinger & Du Vall Knorr 2015).
60
However, microbiological quality of the drinking water made available to the public from
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vending machines has been severely put to the test lately. Several recent studies have
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shown, not only in Malaysia but across the world, that water vending machine samples are
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not necessarily pathogen-free, as there is a risk of contamination by fecal coliform bacteria
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(Ee Yau et al., 2016; Schillinger & Du Vall Knorr, 2015; Simforian, Nonga, & Ndabikunze,
65
2015). Indeed, the quality of the drinking water obtained from vending machines depends
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not only on water source, machine design and maintenance, but as reported by Dufour et
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al.
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maintenance process and in particular when handling the machine nozzle (Barrell, Hunter, &
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Nichols, 2000; Dufour et al., 2003)
(2003) on the cleaning and hygiene standards practised during the machine's
70 71
Quantitative Microbial Risk Assessment (QMRA) is a technique used in burden of
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disease estimation for particular pathogenic bacteria, and it would be suitable for studying
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the quality of the drinking water obtained from vending machines. However, implementation
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individual QMRA for each bacterial pathogen in turn would be highly impractical in terms of
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time and money and would not necessarily yield the necessary information. Therefore, the
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World Health Organization (2008) recommends the use of certain enteric bacteria in QMRAs
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as indicators for the potential presence of pathogens. Escherichia coli is often used as a
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reference bacterium for enteric bacterial pathogens and therefore an indicator of possible
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faecal contamination (World Health Organization, 2016). The use of an indicator organism in
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QMRA introduces layers of uncertainty (e.g. model suitability, cohort representativeness),
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which can be overcome by performing a Monte Carlo simulation. However, the Monte Carlo
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simulation is a complicated mathematical technique, which limitedly especially in developing
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and under-developed countries due to data availability. Therefore, the QRMA approach can
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also be used by limiting the scope of an exposure scenario to overcome data limitations and
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resources to estimate burden of disease from pathogenic bacteria and to ensure the results
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will help to protect public health (Haas et al. 2014; U.S. Environmental Protection Agency
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2002).
88 89
Investigations by The Straits Times (2014) indicated that 29 drinking water samples
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taken from vending machines within cities of the Klang Valley of Malaysia were found to be
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contaminated with E. coli, coliforms and Clostridium perfringens. This raised concerns about
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Malaysia's drinking water quality and safety. There have been previous studies focused on
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the microbiological quality of water vending machines in Malaysia (Dufour et al. 2003; Ee
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Yau et al. 2016; Gurpreet et al. 2011). However, little information is available with regards
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to QMRA in drinking water systems. Despite the fact that waterborne outbreaks linked to
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drinking water supply have been well documented in Malaysia (Gurpreet et al. 2011) to
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date, it appears that quantitative associated risk assessments related to drinking water have
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not yet been reported. Therefore, the present study aimed to determine the frequency of E.
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coli in drinking water samples from water vending machines in the city of Seri Kembangan
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and to understand the associations between its presence and reported health symptoms and
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daily water intake information. Ultimately, by applying a simplified QMRA, the intent of this
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work was to estimate a preliminary burden of disease linked to water vending machines in
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Seri Kembangan (Malaysia). To the best of the authors' knowledge, this study is believed to
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be the first to perform a quantitative health risk assessment of the water obtained from
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vending machines, in the hope that it will help local authorities and other stakeholders to
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understand any potential risk to public health.
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2. Materials and Methods
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2.1 Water Sampling and Analysis
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A total of 90 drinking water samples were collected randomly in triplicates from 30 water
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vending machines located in six areas (Balakong, Serdang Jaya, Seri Serdang, Taman
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Pinggiran Putra, Taman Equine, Lestari Perdana) in Seri Kembangan, Selangor (Malaysia)
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located at 3.03’N 101.7’E. These represented the most densely populated areas around Seri
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Kembangan city. High density areas in Seri Kembangan also resulted in increased numbers
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of water vending machines which mainly serve as drinking water sources due to their
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convenience, easy accessibility and backup drinking water supply during watermains
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interruptions (Zulzaha, 2015). A checklist was created for the purpose of recording the
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observed working condition of each water vending machine at the time of sampling, with
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the intent of obtaining information about its current surroundings, its direct environment,
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and most recent maintenance date (Table 1). The drinking water samples from water
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vending machines were collected using pre-sterilized Schott Duran bottles and analysed for
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E. coli using membrane filtration technique (American Public Health Association, 1998). The
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drinking water samples were placed immediately in an ice box, maintained between 1-4oC
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and analyzed within 12 hours from time of collection. A total of 100 mL of drinking water
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was passed through 0.45 μm Whatman membrane filters, placed on M-Lauryl Sulfate Agar
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incubated for 4 hours at 30ºC and followed by 14 hours at 44ºC. Yellow colonies on the
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filter membranes were counted as E. coli and reported as colony-forming units per 100 mL
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(cfu/100 mL). All glassware was sterilized to avoid any contamination during sample
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analysis. Additionally, drinking water samples were analysed in triplicates to ensure precision
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and accuracy of the analysis process.
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2.2 Resident Questionnaires
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Questionnaires were prepared and distributed to respondents who purchased water from
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the designated vending machines. The questionnaire was used to obtain water intake
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information and data regarding the presence or absence of health symptoms following the
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consumption of water obtained from vending machines. The number of total respondents (n
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= 121) was calculated according to Kirkwood & Sterne (2003) taking into account an
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additional 20% for potential non-responses. The questionnaire survey was pretested on 60
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residents of Sri Serdang (Malaysia) and found to have a Cronbach alpha value of 0.76, an
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acceptable measure of internal consistency of the questionnaire. Sri Serdang area was
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selected for the pretest session as respondents from this area had similar drinking water
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characteristics with high numbers of vending machines. The respondents were contacted
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after a week to obtain the accurate description, if any, of any health symptoms they may
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have experienced.
145 146
Statistical analysis was performed using IBM SPSS Version 21. Descriptive statistics
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were applied to determine variations in the levels of E. coli in drinking water samples, while
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the Chi Square test was used to ascertain associations between reported health symptoms
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and daily water intake information with a 5% level of significance.
150 151
2.3 Quantitative Microbial Risk Assessment
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In this study, a simplified QMRA was performed as described by Haas et al. (2014) for
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quantifying risk of infection. Disease burden was calculated based on the method described
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by the World Health Organization (World Health Organization, 2016) and Howard et al.
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(2006). A summary of the procedure can be found in Table 2.
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The indicator organism chosen for QMRA in this study was E. coli based its detection in
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drinking samples from water vending machines. Since there is lack of specific pathogen data
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from the water supplies, we had to use indicator organisms as surrogates in a similar
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approach as the one applied by George et al. (2015) in quantifying microbial risk to estimate
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burden of disease due to particular microbial pathogen exposure in drinking water systems.
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In this study, the ratio used for generic E. coli: pathogenic E. coli was 1:0.08 (Haas et al.
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2000). A log reduction value of 105 was applied for treatment effect based on published
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reports on conventional treatment systems (World Health Organization 2008). The estimated
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mean daily consumption of water from the vending machines obtained from the
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questionnaires was 1.659 L/day. In order to get an estimate of the dose-response for this
167
study the Beta-Poisson model was chosen as it provides an effective microbial dose-
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response relationship and designates the observed infectivity as a function of dosage (Haas
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et al. 2000). Disease burden related to gastroenteritis was adapted from previous published
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studies in the literature (Havelaar & Melse 2003) due to lack of disease occurrences and
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infection data representing developing countries such as Malaysia. Since there are to date
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very limited data available concerning exposed and susceptible populations in Seri
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Kembangan, a susceptible fraction value of 10% was taken from Howard et al. (2006), and
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the target reference level for tolerable risk for pathogenic E. coli was based on the value of
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10-6 set by the WHO Health-Based Targets.
176 177
3. Results And Discussion
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Data presented in Table 3 shows E. coli levels (CFU/100 mL) in sampling areas from around
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the city of Seri Kembangan (Malaysia). The highest numbers of E. coli were found in Seri
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Serdang (45 – 68 CFU/ 100 mL) and Taman Pinggiran Putra (45 – 62 CFU/ 100 mL). These
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areas are surrounded by densely populated residential zones as they are located near
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several higher institutions and industries. E. coli enumerations for water samples collected
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from vending machines in Taman Equine, Serdang Jaya and Balakong ranged from 1 to 31
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CFU/ 100 mL); however, water samples from Lestari Perdana showed no detectable E. coli.
185
In general, drinking water samples from water vending machines of sampling areas (Seri
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Serdang, Taman Pinggiran Putra, Taman Equine, Balakong and Serdang Jaya) exceeded the
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Malaysian Drinking Water Quality and World Health Organization Drinking Water Quality
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guidelines. Detection of E. coli in water vending machines in these areas can be associated
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with regular maintenance and location (Table 1). Small number of samples were collected
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from Lestari Perdana has also impacted the probability of E. coli detection. Inappropriate
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maintenance/ cleaning can result in biofilm formation which may have contributed to the
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presence of E. coli in water samples from water vending machines. Moreover, if the
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machines are located near dirty drains or unsanitary environments this may also contribute
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to bacteria contaminating samples. Contamination of the drinking water from these areas
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may results from aerosols or carriage by insect vectors (flies and cockroaches) contacting
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water vending machine compartments (Chaidez et al. 1999).
197 198
Microbiological analyses of water samples obtained from vending machines around
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the world, have shown a large proportion to be contaminated with E.coli (Chaidez et al.
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2016; Ebrahim et al. 2015; Ee Yau et al. 2016; Schillinger and Du Vall Knorr 2015). The
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quality of drinking water obtained from such machines depends on water source, design and
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maintenance of machines (Barrell et al. 2000). According to Ee Yau et al. (2016), bacteria
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including E. coli, can grow on the filters of water vending machines reaching substantial
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levels. Ee Yau et al. (2016) also reported that contamination with faecal bacteria may occur
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due to unsanitary hygiene practices of people handling the machines. Furthermore, old
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machines or those generally in poor working condition (corrosion) may be contributing
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factors not only for bacterial contamination but may also results in toxic chemicals entering
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the drinking water (Chaidez et al. 2016; Ebrahim et al. 2015). 8
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3.1 Consumer questionnaire
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Results of the consumer water intake survey are presented in Table 4. Overall, 47.1% of
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respondents consumed 5-7 cups of water daily in response to the recommendations of the
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Malaysian Dietary Guidelines (2013), which propose that an adult should drink 6 to 8 glasses
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of plain water daily to stay well hydrated and healthy. Most respondents bought water from
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shops, 56% for accessibility reasons. In terms of quantities, 47.1% of respondents chose to
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use 1.5 L bottles. The respondents were also asked about what they took into consideration
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before buying water, and brand appeared to be the most important factor (38.0%), due to
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their perception that only certain brands guarantee good drinking water quality. The
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preferred brand was Dr Sukida (57.0%) while Sipsipwater (15.7%), Imtiyaaz Bio Energy
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(14.9%), Water Drops (11.6%) and others (0.8%) were not as popular. Figure 2 shows the
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respondents' perceived health symptoms following the consumption ofwater from water
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vending machines. According to the questionnaire survey, 71.1% of respondents
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experienced no deleterious health symptoms after consuming the water, while 3.3% of
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respondents experienced gastroenteritis, which included symptoms such as vomiting,
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diarrhoea, nausea, abdominal cramps or stomach aches. About 9.9% had experienced
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headaches or dizziness while 15.7% of respondents said they experienced respiratory
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symptoms such as coughs, sore throats or runny noses.
227 228
There was no association between reported health symptoms and quantity of daily
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water intake or perception of water vending machines (Table 5). However, results showed
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an association between reported health symptoms and preferred brand (Chi Square =
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26.497, 12) (p value = 0.009). Preferred brand of water is likely to be associated with the
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condition of water vending machines. Therefore those machines receiving regular
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maintenance provide a better margin of safety since procedures generally include steps to
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ensure compartments are clean and overall are more aesthetically pleasing. The lack of clear
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association between the few reported health symptoms and the consumption of water from
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vending machines shown to be contaminated with E. coli may be linked to the increasing
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diversity E. coli strains expressing virulence factors. E. coli are common occupants of the
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intestinal tracts of healthy humans and animal and are known to play an important role in
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luminal microbial flora stability and maintenance of normal intestinal homeostasis. However,
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a small subset of pathogenic strains have been identified which cause a broad spectrum of
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diseases when infecting the gastrointestinal and urinary tracts, as well as various other
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organs in the body (Mainil 2013). In humans, pathogenic E.coli strains are generally
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categorized as enteroinvasive, enterotoxigenic, enteropathogenic, enterohaemorrhagic,
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enteroaggregative, or necrotoxigenic. Their pathogenicity is linked to several virulence
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factors such as adhesins, which help them attach to host cells, reproduce and multiply, and
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variety of toxins including shiga-toxins and haemolysins (Kaper, Nataro & Mobley, 2004;
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Mainil, 2013).
248 249
According to Soller et al. (2016), a low frequency of health symptoms being
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reported, coupled with unclear relationships between such symptoms or illness and E.coli
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detected in drinking water does not guarantee that the water is microbiologically safe.
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QMRA offers an alternative approach in terms of a quantitative measure to offer a more
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robust estimation risk. Results for the QMRA conducted here for each sampling area of Seri
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Kembangan city are given in Table 6. In general, the disease burden values showed that all
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drinking water samples from water vending machines from the four sampling areas (Seri
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Serdang, Taman Pinggiran Putra, Taman Equine, Balakong and Serdang Jaya) exceeded the
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WHO guidelines for health based target outcomes. It is noted that there were number of
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water vending machines in these areas were lacking in terms of maintenance service
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information. The only area with QMRA results meeting the WHO guidelines for acceptable
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microbiological quality was Lestari Perdana. Acceptable QMRA outcomes for Lestari Perdana
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may be related to information gather regarding regular machine maintenance and
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cleanliness surrounding areas where the water vending machines were installed. It should
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also be noted that only three water samples were collected from this area which would
264
impact the probability of E. coli detection.
265 266
Nevertheless, the overall results of this study imply that consumers of products from
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current water vending machines may be at risk of gastrointestinal illness. These results are
268
in line with findings from other studies conducted in Mysore, India (George et al. 2015) and
269
Kampala, Uganda (Howard et al. 2006). Detection of E.coli in water vending machines is
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most likely associated with poor machine maintenance by the vendor (Table 1).
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Contamination is possibly due to biofilms on the tubes which in turn impacts drinking water
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quality (Tsvetanova and Hoekstra 2012). Although the Ministry of Health (Malaysia) has
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required all water vending machines to be licensed under Regulation 360C(4) of the Food
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Regulations 1985, further strict actions and inspections need to take place (Hashim and
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Yusop 2016). Further actions such as replacement of proper pipes and periodic inspection of
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the water distribution systems are necessary for effective management of microbiologic
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quality of water vending machines.
278 279
4. Study limitations
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This study was the first to assess quantitative health based targets via QMRA involving
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water vending machines; however QMRA findings here were based on several assumptions
282
and uncertainties due to limited availability of data on pathogenic E. coli, its fate and
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transmission related to vending machine water. Therefore, detection of E. coli needs to be a
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focal point for future QMRA studies in order to produce reliable and comparable data to
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ensure this information is adequate for the risk mitigation. Correspondingly, Boone, Van der
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Stede, Aerts, Mintiens, & Daube (2010) also recommended the importance of identifying the
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knowledge gap and ways to facilitate model improvement which should lead to more
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realistic QMRA results and its implications. This research was conducted as a cross sectional
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study from data collected from a population at a specific point in time. Therefore, there are
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several potential factors which may influence E. coli levels in drinking water samples from
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water vending machines, including seasonal patterns, daily or weekly effects, and long-term
292
trends. These factors must be controlled in order to understand the contamination of
293
drinking water from water vending machine associated with gastrointernal illness
294
(Blumenthal et al. 2001; Mann et al. 2007).
295 296
5. Conclusion
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Viable E. coli were found in water samples from vending machines situated in five areas
298
surveyed (Seri Serdang, Taman Pinggiran Putra, Taman Equine, Balakong and Serdang
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Jaya). The current epidemiological study found that there was no obvious association
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between the presence of E. coli in drinking water and the reported health symptoms,
301
quantity of daily water intake or perception on water vending machines. However, there
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appeared to be an association between reported health symptoms and preferred brand.
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With respect to the QMRA, the disease burden values showed that all drinking water
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samples from water vending machines from sampling areas (Seri Serdang, Taman Pinggiran
305
Putra, Taman Equine, Balakong and Serdang Jaya) exceeded the WHO guidelines for health
306
based targets. No detectable E. coli was found for drinking water samples from Lestari
307
Perdana may related with under-sampled (only 3 samples) and sampling was conducted
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right after the maintenance process was completed. Although there are few assumptions
309
and limitations involving QMRA output, these preliminary findings have shown that the
310
general public should be aware of microbiological water quality from water vending
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machines. These results are also critical for manufacturers to ensure regular maintenance of
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water vending machines is conducted to maintain quality and safety of drinking water their
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vending machines.
314 315 316
Acknowledgments
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The authors would like to thank the laboratory staff of the Department of Medical
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Microbiology and Parasitology (Faculty of Medicine and Health Sciences, Universiti Putra
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Malaysia) for their autoclave service. We thank two anonymous reviewers for their
320
constructive comments, which helped us to improve this manuscript.
321 322
References
323
American Public Health Association (1998). Standard Methods for the Examination of Water
324
and Wastewater 20th ed. American Water Works Association, Water Environment
325
Federation, Washington.
326 327 328
Barrell, R. A., Hunter, P. R., & Nichols, G. (2000). Microbiological standards for water and their relationship to health risk. Communicable Disease And Public Health, 3(I), 8–13. Blumenthal, U. J., Fleisher, J. M., Esrey, S. A., & Peasey, A. (2001). Epidemiology: a tool for
329
the assessment of risk. Water Quality: Guidelines, Standards and Health: Assessment of
330
risk and risk management for water-related infectious disease.
331
Boone, I., Van der Stede, Y., Aerts, M., Mintiens, K., & Daube, G. (2010). Quantitative
332
microbial risk assessment: methods and quality assurance. Flemish Veterinary
333
Magazine, 79(5), 367–380. https://uhdspace.uhasselt.be/dspace/handle/1942/11358
334
Chaidez, C., Rusin, P., Naranjo, J., & Gerba, C. P. (1999). Microbiological quality of water
335
vending machines. International Journal of Environmental Health Research, 9(3), 197–
336
206. doi:10.1080/09603129973164
337
Chaidez, C., Rusin, P., Naranjo, J., Gerba, C. P., Chaidez, C., Rusin, P., et al. (2016).
13
ACCEPTED MANUSCRIPT 338
Microbiological quality of water vending machines. International Journal of
339
Environmental Health Research, 9(May), 10–12. doi:10.1080/09603129973164
340
Dufour, A., Snozzi, M., Koster, W., Bartram, J., Ronchi, E., & Fewtrell, L. (2003). Assessing
341
Microbial Safety of Drinking Water: Improving Approaches and Methods (Vol. 85).
342
doi:10.1016/S0048-9697(04)00275-X
343
Ebrahim, M., Moosa, A., Khan, M. A., Alalami, U., & Hussain, A. (2015). Microbiological
344
Quality of Drinking Water from Water Dispenser Machines. International Journal of
345
Environmental Science and Development, 6(9), 710–713.
346
doi:10.7763/IJESD.2015.V6.685
347
Ee Yau, T., Arifullah, M., & Jan Mei, S. (2016). Identification of Escherichia coli strains from
348
water vending machines of Kelantan, Malaysia using 16S rRNA gene sequence analysis.
349
Exposure and Health, 8(2), 1–20. doi:10.1007/s12403-016-0194-x
350
George, J., An, W., Joshi, D., Zhang, D., Yang, M., & Suriyanarayanan, S. (2015).
351
Quantitative Microbial Risk Assessment to Estimate the Health Risk in Urban Drinking
352
Water Systems of Mysore, Karnataka, India. Water Quality, Exposure and Health, 331–
353
338. doi:10.1007/s12403-014-0152-4
354
Gurpreet, K., Tee, G. H., Amal, N. M., Paramesarvathy, R., & Karuthan, C. (2011). Incidence
355
and determinants of acute diarrhoea in Malaysia: A population-based study. Journal of
356
Health, Population and Nutrition, 29(2), 103–112. doi:10.3329/jhpn.v29i2.7814
357
Haas, C. N., Rose, J. B., & Gerba, C. P. (2014). Quantitative Microbial Risk Assessment:
358
Second Edition. Quantitative Microbial Risk Assessment: Second Edition. John Wiley &
359
Sons, Inc, Hoboken, New Jersey. doi:10.1002/9781118910030
360
Haas, C. N., Thayyar-Madabusi, A., Rose, J. B., & Gerba, C. P. (2000). Development of a
361
dose-response relationship for Escherichia coli O157:H7. International journal of food
362
microbiology, 56(2–3), 153–159. doi:10.1016/S0168-1605(99)00197-X
363
Hass, C. N., Thayyar-Madabusi, A., Rose, J. B., & Gerba, C. P. (2017). Development of a
14
ACCEPTED MANUSCRIPT 364
dose - response relationship for Escherichia coli. International Journal of Food
365
Microbiology, 1748, 153–159.
366
Hashim, N. H., & Yusop, H. M. (2016). Drinking Water Quality of Water Vending Machines in
367
Parit Raja, Batu Pahat, Johor. IOP Conference Series: Materials Science and
368
Engineering, 136, 12053. doi:10.1088/1757-899X/136/1/012053
369 370 371
Havelaar, A. H., & Melse, J. M. (2003). Quantifying public health risk in the WHO Guidelines
for Drinking Water Quality: a burden of disease approach. Report 734301022/2003. Howard, G., Pedley, S., & Tibatemwa, S. (2006). Quantitative microbial risk assessment to
372
estimate health risks attributable to water supply: Can the technique be applied in
373
developing countries with limited data? Journal of Water and Health, 4(1), 49–65.
374
doi:10.2166/wh.2005.058
375 376 377 378 379 380 381
Kaper, J. B., Nataro, J. P., & Mobley, H. L. T. (2004). Pathogenic Escherichia coli. Nature
Reviews Microbiology, 2(2), 123–140. doi:10.1038/nrmicro818 Kirkwood, B. R., & Sterne, J. A. C. (2003). Essential Medical Statistics, 2nd Edition (Vol. 9781405158). John Wiley and Sons Ltd. Chicester, United Kingdom. Mainil, J. (2013). Escherichia coli virulence factors. Veterinary Immunology and
Immunopathology, 152(1–2), 2–12. doi:10.1016/j.vetimm.2012.09.032 Malaysian Dietary Guidelines (2013). Malaysian Dietary Guidelines for Children and
382
Adolescents. (2013). National Coordinating Committee on Food and Nutrition, Ministry
383
of Health Malaysia. http://www.moh.gov.my/images/gallery/Garispanduan/MDG
384
Children and Adolescents Summary.pdf
385
Mann, A. G., Tam, C. C., Higgins, C. D., & Rodrigues, L. C. (2007). The association between
386
drinking water turbidity and gastrointestinal illness: a systematic review. BMC Public
387
Health, 7, 256. doi:10.1186/1471-2458-7-256
388 389
Schillinger, J., & Du Vall Knorr, S. (2015). Drinking-water quality and issues associated with water vending machines in the city of Los Angeles. Journal of Environmental Health,
15
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66(6), 25–31, 43-46. Simforian, E., Nonga, H. E., & Ndabikunze, B. K. (2015). Assessment of microbiological
392
quality of raw fruit juice vended in dar es salaam city, Tanzania. Food Control, 57, 302–
393
307. doi:10.1016/j.foodcont.2015.04.033
394
Soller, J. A., Eftim, S., Wade, T. J., Ichida, A. M., Clancy, J. L., Johnson, T. B., et al. (2016).
395
Use of quantitative microbial risk assessment to improve interpretation of a recreational
396
water epidemiological study. Microbial Risk Analysis, 1, 2–11.
397
doi:10.1016/j.mran.2015.04.001
398
The Straits Times. (2014). Bacteria found in water samples from Malaysia ’ s vending
399
machines. http://www.straitstimes.com/asia/se-asia/bacteria-found-in-water-samples-
400
from-malaysias-vending-machines
401
Tsvetanova, Z. G., & Hoekstra, E. J. (2012). Assessment of microbial growth potential of
402
PVC flexible tubing in contact with drinking water. Water Science and Technology:
403
Water Supply, 12(4), 489–495. doi:10.2166/ws.2012.022
404
U.S. Environmental Protection Agency. (2002). Quantitative Microbial Risk Assessment to
405
Estimate Illness in Freshwater Impacted by Agricultural Animal Sources of Fecal
406
Contamination (Vol. 118). doi:10.1023/A:1014852201424
407 408 409 410 411
World Health Organization. (2008). WHO guidelines for drinking-water quality. (Vol. 38). doi:10.1016/S1462-0758(00)00006-6 World Health Organization. (2016). Quantitative Microbial Risk Assessment: Application for
Water Safety Management. doi:Geneva, Switzerland Zulzaha, F. F. (2015). Four days of dry taps in Balakong. The Star Online.
412
http://www.thestar.com.my/metro/community/2015/06/30/four-days-of-dry-taps-in-
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balakong-residents-say-water-tankers-not-sent-to-all-areas/
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Highlights
Public health risk linked to microbial quality of drinking water from vending machines
Escherichia coli were found in drinking water from all five sampling areas
Significant association found between reported health symptoms and preferred brand
Only Lestari Perdana showed none for burden of disease estimation
SERDANG JAYA LESTARI PERDANA
Seri Kembangan
Sampling locations
Fig. 1 Drinking water sampling from water vending machines in Seri Kembangan area
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Percentange
120
80
Yes
84.3
71.1
28.9
20
3.3
0
497 498
90.1
60 40
496
No
96.7
100
None
9.9
Health Symptoms Headache, dizziness
Gastroenteritis
15.7
Respiratory symptoms
Fig. 2 Perceived health symptoms after respondents consumed drinking water from water vending machines (total respondents n = 121)
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Table 1. Water vending machines checklist 428 Water Vending Machine
Location
Environment
Condition
1. 2. 3. 4. 5. 6. 7. 8. 9.
Seri Serdang
Nearby dustbin Nearby dustbin Nearby drain Nearby dustbin Nearby drain Nearby dustbin and drain In laundry shop Nearby drain Nearby drain and dustbin
Good and well functioning Good and well functioning Good and well functioning Bit rusty and well functioning Good and well functioning Good and well functioning Rusty and not function well Good and well functioning Good and well functioning
Length since last service during sampling in February 2016 (days) 12 12 NA 79 486 12 NA NA 492
10.
Serdang Jaya
Nearby dustbin and workshop Nearby drain Nearby dustbin Nearby laundry shop Nearby drain Nearby dustbin
Good and well functioning
NA
Rusty and not well maintained Bit rusty and well functioning Rusty and well functioning Rusty and not function well Not function well and full with sticker
NA 15 5 NA NA
11. 12. 13. 14. 15. 16.
Lestari Perdana
Nearby drain
Good and well functioning
0
17. 18. 19. 20. 21. 22. 23.
Taman Pinggiran Putra
Nearby drain Nearby drain Nearby drain and dustbin Nearby drain Nearby clothing stores Nearby dustbin Nearby stores
Good and well functioning Rusty and not function well Good and well functioning Good and well functioning Good and well functioning Good and well functioning Good and well functioning
11 NA NA 6 6 6 1
24. 25.
Taman Equine
Nearby drain Nearby grocery stores
Good and well functioning Had bird droppings and well functioning Good and well functioning Good and well functioning Good and well functioning
0 30
26. 27. 28. 29. 30.
429 430 431 432
Nearby grocery stores Nearby drain Nearby dustbin and drain Balakong
Nearby drain and workshop Nearby drain and workshop
Rusty and not function well Full with sticker and not well maintained
NA NA 40 NA NA
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433
434 435 436 437 438 439 440 441 442 443 444 445 446 447 448 449 450
Table 2. Summary of equations applied for disease burden calculation Equation Drinking water quality (CD) Consumption of drinking water (V) Exposure by drinking water(E) Dose response (r) Risk of infection (P inf, d) Risk of infection (P inf, y)
Unit Organisms per liter Liters per day
Formula CR x (1 – PT) Estimated
Organisms per liter Probability of infection Per day Per year
Risk of diarrhoeal illness given infection (Pill/inf) Risk of diarrhoeal disease (Pill) Disease burden (db)
Probability of illness per infection
CD x V From literature Exr 1 – (1 - P inf, d) x 365 (Haas et al., 2014) From literature
Susceptible fraction (fs) Disease burden (db)/health outcome target (HT)
% of population DALY per year
Per year DALY per case
Pinf,y x Pill,inf Calculated from available data in literature From literature Pill x db x fs
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451
452 453 454 455 456 457 458 459 460 461 462 463 464 465 466 467 468 469 470 471 472 473 474
Table 3. E. coli colonies in sampling areas from Seri Kembangan city (Malaysia) Areas
Number of samples
Lestari Perdana Taman Pinggiran Putra Serdang Jaya Seri Serdang Balakong Taman Equine
3 21 18 27 6 15
E. coli level variation (CFU/ 100 mL) 0 45 - 62 10 - 21 45 - 68 15 - 31 1-6
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475 476
477
Table 4. Water intake information (n = 121) Water intake information Frequency of drinking water daily 1-2 cups 2-4 cups 5-7 cups 8-10 cups More than 10 cups
Number of respondents
Percentage (%)
2 19 57 28 15
1.7 15.7 47.1 23.1 12.4
Location of buying water Shops College Others
69 34 18
57.0 28.1 14.9
Quantity to buy water 500ml 1L 1.5L 3L 5L 10L
22 14 57 4 23 1
18.2 11.6 47.1 3.3 19.0 0.8
Consideration before buying water Price Brand Availability Don’t care
31 46 33 11
25.6 38.0 27.3 9.1
Prefer brand for buying water Desa Dr Sukida Imtiyaaz Bio Energy Sipsipwater RO water Water drops
1 69 18 19 14
0.8 57.0 14.9 15.7 11.6
Heard of news on water vending machines contamination No Yes
53 68
43.8 56.2
Perception on water vending machine Good Fair Very good Very bad Bad
65 41 4 3 8
53.7 33.9 3.3 2.5 6.6
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491 492
Table 5. Chi-square test of contingency between reported health symptoms and daily water intake. Variables None Daily water intake 1-2 cups 2-4 cups 5-7 cups 8-10 cups More than 10 cups
2 15 33 23 13
0 2 2 0 0
0 1 8 2 1
0 1 14 3 1
Preferred brand Desa Dr Sukida Imtiyaaz Bio Energy Sipsipwater Water drops
1 56 11 8 10
0 1 0 3 0
0 8 1 2 1
0 4 6 6 3
Perception on water vending machines Good Fair Best Bad Significant at p<0.05 493
Reported health symptoms Gastroentritis Headache, Respiratory dizziness symptoms
42 28 4 12
2 1 0 1
7 4 1 0
8 8 3 0
ᵡ2 (df)
p
14.951 (12)
0.244
26.497 (12)
0.009
9.068 (9)
0.431
494
Table 6. Quantitative Microbial Risk Assessment for E.coli in drinking water from water vending machines Taman Equine Raw water quality (Cr)
495
Serdang Jaya
Seri Serdang
Taman Pinggiran Putra
Balakong
Lestari Perdana
3
10
55
23
54
0
Treatment effect Drinking water quality (CD) Exposure by drinking water(E) Dose response (r)
0.999
0.999
0.999
0.999
0.999
0.999
3.0E-2 4.9E-3 1.0E-03
1.0E-2 1.66E-2 1.0E-03
5.5E-2 9.12E-2 1.0E-03
2.3E-2 3.8E-2 1.0E-03
5.4E-2 9.0E-2 1.0E-03
0 0 1.0E-03
Risk of infection (P
inf, d)
5.0E-06
1.7E-05
9.1E-05
3.8E-05
9.0E-05
0
Risk of infection (P
inf, y)
1.8E-3
6.0E-3
3.3E-2
1.4E-2
3.2E-2
0
2.5E-1
2.5E-1
2.5E-1
2.5E-1
2.5E-1
2.5E-1
4.5E-4 4.5E-01 1E-1
1.5E-3 4.5E-01 1E-1
8.2E-3 4.5E-01 1E-1
3.5E-3 4.5E-01 1E-1
8.0E-3 4.5E-01 1E-1
0 4.5E-01 1E-1
2.0E-05
6.8E-05
3.7E-04
1.6E-04
3.6E-04
0
Risk of diarrhoeal illness given infection (Pill/inf) Risk of diarrhoeal disease (Pill) Disease burden (db) Susceptible fraction (fs) Disease burden (db)/health outcome target (HT)