Skip to main content
Advertisement
  • Loading metrics

Cryptosporidium infection in rural Gambian children: Epidemiology and risk factors

  • M. Jahangir Hossain ,

    Roles Conceptualization, Data curation, Formal analysis, Investigation, Methodology, Project administration, Resources, Supervision, Validation, Visualization, Writing – original draft

    jhossain@mrc.gm

    Affiliation Medical Research Council Unit The Gambia at the London School of Hygiene & Tropical Medicine (LSHTM), London School of Hygiene & Tropical Medicine, Banjul, The Gambia

  • Debasish Saha,

    Roles Investigation, Methodology, Project administration, Validation, Visualization, Writing – review & editing

    Affiliations Medical Research Council Unit The Gambia at the London School of Hygiene & Tropical Medicine (LSHTM), London School of Hygiene & Tropical Medicine, Banjul, The Gambia, Medicine and Clinical, GlaxoSmithKline Vaccines, Wavre, Belgium

  • Martin Antonio,

    Roles Investigation, Project administration, Resources, Supervision, Writing – review & editing

    Affiliation Medical Research Council Unit The Gambia at the London School of Hygiene & Tropical Medicine (LSHTM), London School of Hygiene & Tropical Medicine, Banjul, The Gambia

  • Dilruba Nasrin,

    Roles Investigation, Project administration, Resources, Writing – review & editing

    Affiliation Center for Vaccine Development and Global Health, University of Maryland School of Medicine, Baltimore, MD, USA

  • William C. Blackwelder,

    Roles Data curation, Formal analysis, Validation, Visualization, Writing – review & editing

    Affiliation Institute for Global Health, University of Maryland, Baltimore, MD, United States of America

  • Usman N. Ikumapayi,

    Roles Investigation, Project administration, Resources, Supervision, Visualization, Writing – review & editing

    Affiliation Medical Research Council Unit The Gambia at the London School of Hygiene & Tropical Medicine (LSHTM), London School of Hygiene & Tropical Medicine, Banjul, The Gambia

  • Grant A. Mackenzie,

    Roles Project administration, Supervision, Writing – review & editing

    Affiliations Medical Research Council Unit The Gambia at the London School of Hygiene & Tropical Medicine (LSHTM), London School of Hygiene & Tropical Medicine, Banjul, The Gambia, GM Murdoch Children’s Research Institute, Melbourne, Australia

  • Mitchell Adeyemi,

    Roles Project administration, Resources, Supervision, Validation, Visualization, Writing – review & editing

    Affiliation Medical Research Council Unit The Gambia at the London School of Hygiene & Tropical Medicine (LSHTM), London School of Hygiene & Tropical Medicine, Banjul, The Gambia

  • Momodou Jasseh,

    Roles Project administration, Resources, Supervision, Writing – review & editing

    Affiliation Medical Research Council Unit The Gambia at the London School of Hygiene & Tropical Medicine (LSHTM), London School of Hygiene & Tropical Medicine, Banjul, The Gambia

  • Richard A. Adegbola,

    Roles Conceptualization, Investigation, Methodology, Project administration, Resources, Writing – review & editing

    Affiliations Medical Research Council Unit The Gambia at the London School of Hygiene & Tropical Medicine (LSHTM), London School of Hygiene & Tropical Medicine, Banjul, The Gambia, Medicine and Clinical, GlaxoSmithKline Vaccines, Wavre, Belgium

  • Anna W. Roose,

    Roles Data curation, Formal analysis, Methodology, Project administration, Resources, Validation, Visualization, Writing – review & editing

    Affiliation Center for Vaccine Development and Global Health, University of Maryland School of Medicine, Baltimore, MD, USA

  • Karen L. Kotloff,

    Roles Conceptualization, Data curation, Formal analysis, Investigation, Methodology, Project administration, Resources, Supervision, Validation, Visualization, Writing – review & editing

    Affiliation Center for Vaccine Development and Global Health, University of Maryland School of Medicine, Baltimore, MD, USA

  • Myron M. Levine

    Roles Conceptualization, Data curation, Formal analysis, Funding acquisition, Investigation, Methodology, Project administration, Resources, Supervision, Validation, Visualization, Writing – review & editing

    Affiliation Center for Vaccine Development and Global Health, University of Maryland School of Medicine, Baltimore, MD, USA

Abstract

Background

Cryptosporidium is a major pathogen associated with diarrheal disease in young children. We studied Cryptosporidium diarrhea in children enrolled in the Global Enteric Multicenter Study (GEMS) in rural Gambia.

Methods

We recruited children <5 years of age with moderate-to-severe diarrhea (MSD) for 3 years (2008–2010), and children with either MSD or less severe diarrhea (LSD) for one year (November 2011-November 2012) at sentinel health centers. One or more randomly selected controls were matched to each case. Stool samples were tested to identify Cryptosporidium by immunoassay. A subset of randomly selected case-controls pairs were tested for Cryptosporidium species. We investigated the epidemiology of, and evaluated possible risk factors for, Cryptosporidium-positive diarrhea.

Results

We enrolled 1938 cases (1381 MSD, 557 LSD) and 2969 matched controls; 231/1929 (12.0%) of diarrhea cases and 141/2962 (4.8%) of controls were positive for Cryptosporidium. Most Cryptosporidium diarrhea cases (85.7%, 198/231) were aged 6–23 months, and most (81.4%, 188/231) occurred during the rainy season. Cryptosporidium hominis (C. hominis) was the predominant (82.6%) species. We found associations between increased risk of Cryptosporidium-positive MSD or LSD, or both, with consumption of stored drinking water and certain animals living in the compound—cow, cat (MSD only) and rodents (LSD only). Larger households, fowl living in the compound, and the presence of Giardia infection were associated with decreased risk of Cryptosporidium MSD and LSD.

Conclusion

Cryptosporidium-positive diarrhea is prevalent in this setting, especially at 6–23 months of age. The preponderance of Cryptosporidium infection in the rainy season and increased risk of Cryptosporidium-positive diarrhea with consumption of stored drinking water suggest water-borne transmission. Further investigation is needed to clarify the role of animals and contamination of stored drinking water in Cryptosporidium transmission.

Author summary

Cryptosporidium, a protozoan parasite, is one of the most common diarrheal pathogens in young children living in developing countries. We describe the prevalence and risk factors for Cryptosporidium diarrhea in under-five children in The Gambia using data from the Global Enteric Study (GEMS), conducted in seven developing countries in Asia and Africa (2008–2012). We enrolled 1938 diarrhea cases and 2969 matched controls. We found that 12.0% of diarrhea cases and 4.8% controls were positive for Cryptosporidium. Most (85.7%) Cryptosporidium diarrhea cases were aged 6–23 months, and most (81.4%) occurred during the rainy season. Cryptosporidium hominis was the predominant species (82.6%). We found that consumption of stored drinking water and animals (cow, cat, rodents) living in the compound are potential risk factors for Cryptosporidium diarrhea. Improved drinking water storage may reduce the burden of Cryptosporidium diarrhea in a resource poor hygienic and sanitation setting.

Introduction

Diarrhea is the second leading cause of morbidity and mortality in children less than 5 years old, causing approximately 600,000 annual deaths, mostly in developing countries [1]. Cryptosporidium, a protozoan parasite, is transmitted like other diarrheal pathogens by the fecal-oral route and is more prevalent in patients with HIV/AIDS, in whom it causes severe and prolonged gastrointestinal illness [25]. However, the recent Global Enteric Multicenter Study (GEMS) found that Cryptosporidium was the third most common pathogen contributing to moderate-to-severe diarrhea (MSD) in children aged less than 5 years, irrespective of HIV prevalence [6, 7]. A multisite birth cohort community-based study (MAL-ED) also detected a high burden of Cryptosporidium associated mild and severe infectious diarrhea among children aged 0–24 months [8, 9]. In addition to the substantial burden of gastroenteritis, Cryptosporidium with or without concomitant diarrhea has been associated with growth faltering and weight loss [1013], and with lowered physical fitness, decreased cognitive function [14] and increased mortality [2, 6, 7]. Cryptosporidium is associated with an estimated 48,000 global deaths per year in children aged less than five years [12].

In sub-Saharan Africa, the prevalence of, and risk factors for Cryptosporidium infection have been studied mostly through cross-sectional surveys over limited time periods with relatively few Cryptosporidium-positive cases [1518]. The MAL-ED study documented risk factors of Cryptosporidium only in diarrhea cases of any severity and the effect of co-infection with other enteric pathogens were not assessed [19]. In contrast with the global burden and severity of diarrheal disease with Cryptosporidium, information on transmission in developing countries is limited [20, 21]. GEMS was a comprehensive study conducted for several years and using standardised diagnostic methods to determine the disease burden, epidemiology and risk factors for a wide variety of pathogens that may cause diarrhea (23–26). The GEMS study detected that Cryptosporidium was among the leading etiologies of MSD in eastern Gambia, accounting for 12% and 8% of MSD in 0–11 months and 12–23 months, respectively [6]. In this paper we report secondary analyses of GEMS data in The Gambia in order to characterize the epidemiology of Cryptosporidium infection in diarrhea cases and their controls and to identify risk factors for Cryptosporidium-associated diarrhea.

Methods

Ethics statement

The study was approved by The Gambia Government/MRC joint Ethics Committee (SCC # 1054) and IRB of University of Maryland, Baltimore (HM-HP-00040030). Written informed consent was obtained from parents or guardians of study participants.

Study population and study subjects

Study area.

The Gambia GEMS site was located in Basse, a rural area of 1,111 km2 in the Upper River Region (URR) of eastern Gambia with a population included in Basse Health and Demographic Surveillance System (BHDSS). The population was enumerated at household visits every four months with records of births, deaths, vaccination, marriage, and migration in and out of the surveillance area. HIV prevalence is low (<2%) in this setting [22], but malaria is endemic. Houses usually have walls and floors of mud or clay bricks. Roofs are usually thatched of long grass or made of corrugated tin. The average number of household members is about 25, and many families live together in the same courtyard. Most of the households (97%) have a traditional pit latrine. The households usually have domestic animals, including chickens, goats, cattle, donkeys, and horses. Most of the inhabitants (75%) are subsistence farmers producing maize and groundnuts; and a much smaller proportion are involved in small-trade business. The mean per capita income in The Gambia is US$ 440 per annum [23]. There are two distinct seasons, the dry season from November to April, and the wet and rainy season from May to October.

Cases.

The case definition, selection and enrollment criteria have been described elsewhere [6, 24]. In summary, children aged 0–59 months with diarrhea who resided in the BHDSS area and sought care at any of six sentinel health centres were eligible for screening. Diarrhea was defined as passage of 3 or more loose or watery stools (as perceived by the mother or caretaker) in a 24-hour period [25]. Enrollment was confined to children with an acute diarrheal episode, defined by onset of illness within the last 7 days and no diarrhea for at least 7 days before the onset of the current episode. For the initial 3 years (December 2007-December 2010), only children with MSD were enrolled. MSD was defined as diarrhea with the presence of at least one of the following criteria: sunken eyes, reduced skin turgor, visible or reported blood in the stool, administration or prescription of intravenous fluid, or recommendation of hospitalization. In the final year (November 2011-November 2012), children with either MSD or less severe diarrhea (LSD) were eligible for enrollment. LSD was defined as diarrhea that did not meet any of the criteria for MSD. Eligible children were enrolled after obtaining consent and adequate stool (at least 3 gm).

Controls.

For each case, one or more randomly selected controls were enrolled. Controls were residents of the BHDSS population, had no diarrhea in the last seven days, and were matched by age (± 2 months for cases aged 0–11 and ± 4 months for cases aged 12–59 months), sex and community. Controls were enrolled within 2 weeks of the corresponding case’s enrollment.

Stool sample collection and laboratory testing.

Both cases and controls provided a stool sample at the time of enrollment. GEMS used a standardized protocol for stool collection, transport and processing [24, 26]. Samples were tested for a wide range of pathogens, including Cryptosporidium [24, 26]. A commercial immunoassay (Tech Lab, Inc, Blacksburg, VA, USA) was used for Cryptosporidium testing. Samples from a randomly selected subset of case-control pairs, as well as 10 subjects who died, were tested to by TaqMan Array Card (TAC)-based real-time polymerase chain reaction (PCR) [27].

Cryptosporidium diarrhea cases.

MSD or LSD cases positive for Cryptosporidium by EIA were designated as Cryptosporidium diarrheal cases. Cryptosporidium diarrheal cases and their matched controls were used to investigate risk factors for Cryptosporidium-associated diarrhea (Fig 1).

thumbnail
Fig 1. Flow chart of enrollment of Cryptosporidium diarrhea cases and their matched controls.

*Crypto -Cryptosporidium MSD = Moderate-to-severe diarrhea LSD = Less Severe Diarrhea.

https://doi.org/10.1371/journal.pntd.0007607.g001

Data collection.

Data collection in GEMS has been described elsewhere [6, 24]. In brief, we collected information on socio-demographic, drinking water sources, sanitation and hygienic facilities and the presence of animals in the compound from parents or caretakers during enrollment of cases at Sentinel Health Centres (SHCs) and controls at home. Anthropometric measurements including weight and height or recumbent length were taken using standardized procedures [24].

Data management and analysis

Analysis was done using SAS version 9.4 (SAS Institute, Cary, NC, USA), Stata SE 12.0 (StataCorp. 2011, College Station, Texas, USA), R 3.5.1 [28] and Microsoft Excel. Results with p < 0.05 were generally considered statistically significant; we used p < 0.10 in evaluating differences between associations with Cryptosporidium-positive MSD and LSD in multivariable modeling (i.e., in evaluating interaction terms).

Proportions were measured for categorical data. Differences in proportions were assessed by chi-square test. Continuous data were described by means (SD) or medians (range). Data on building materials and household possessions (e.g., electricity, television, radio, phone, bicycle, car, boat, refrigerator and finished floor and number of sleeping rooms in the dwellings) were used to construct a wealth index [24, 29] as a measure of socio-economic status.

Length or height was determined as the median of three repeated measurements. A height-for-age Z-score (HAZ) was calculated according to WHO guidelines (31), with HAZ < -2 used to define low height-for-age or stunting. Extreme HAZ values of (<-6 or >+6) were excluded from analysis.

The attributable fraction in the exposed (AFE) was calculated for the age range (0–23 months) for which Cryptosporidium was a significant pathogen for the entire GEMS study. From the population attributable fractions and total estimated cases with Cryptosporidium identified at the Gambia site [6, 30], the number of cases attributable to Cryptosporidium was estimated for the age groups 0–11 months and 12–23 months, separately for MSD and LSD. AFE is the ratio of the number of cases attributable to Cryptosporidium to the total cases positive for Cryptosporidium.

Associations of Cryptosporidium with diarrhea overall and within strata of age, sex, season, and type of diarrhea (MSD or LSD) were evaluated using conditional logistic regression.

Analysis of associations with Cryptosporidium-positive diarrhea was restricted to Cryptosporidium-positive cases and their matched controls. First we fit univariate conditional logistic regression models for any Cryptosporidium-positive diarrhea with single factors as covariates. Starting with variables associated with Cryptosporidium-positive diarrhea with a p ≤ 0.2 threshold, we fit multivariable conditional logistic regression models using a backward elimination stepwise process to identify a set of factors, each associated with p < 0.05. We then developed separate models for MSD and LSD by including the interaction of each factor with an indicator variable for MSD or LSD. We could not include a “main effect” for MSD/LSD because cases and controls were matched on MSD/LSD. We evaluated associations with socio-demographic variables, breastfeeding status, water source and hygiene variables, animals living in the compound, HAZ score, and presence of other potential pathogens (rotavirus, Shigella, norovirus, adenovirus 40/41, ETEC-ST, Giardia, Entamoeba histolytica, and Ascaris lumbricoides).

Results

Descriptive Epidemiology of Cryptosporidium infection in cases and controls

We enrolled 1938 cases (1381 MSD and 557 LSD) and 2969 matched controls (Fig 1). Of the study participants tested for Cryptosporidium, 231 of 1929 cases (12.0%) and 141 of 2962 controls (4.8%) were positive (p = <0.001); data for Cryptosporidium were missing for 9 cases and 7 controls.

Table 1 shows the prevalence of Cryptosporidium in cases and controls within categories of age, sex, season, and type of diarrhea (MSD or LSD). Prevalence was higher in cases than in controls for both MSD (12.2% vs. 4.8%, p<0.001) and LSD (11.5% vs. 4.6%, p<0.001). Cryptosporidium prevalence was similar in children with MSD (167/1381, 12.1%) and LSD (64/557, 11.5%) (p = 0.71 by z-test for proportions).

thumbnail
Table 1. Prevalence of Cryptosporidium in diarrhea cases and their matched controls by age, sex, season of enrollment and type of diarrhea.

https://doi.org/10.1371/journal.pntd.0007607.t001

Proportion of Cryptosporidium-positive cases attributable to Cryptosporidium

AFE was estimated as 76% and 70% for MSD at ages 0–11 months and 12–23 months, respectively. The corresponding estimates for LSD were 65% and 64%. For the age range 0–23 months, AFE was 73% for MSD and 65% for LSD.

Prevalence of Cryptosporidium infection by age and sex

Cryptosporidium prevalence was higher in cases than in controls within all age groups and for both males and females (Table 1). Prevalence in cases was much higher in children aged 6–23 months than in younger infants or children aged 24–59 months, and similar between males and females. Odds ratios for Cryptosporidium prevalence in cases versus controls were also highest at ages 6–23 months. Prevalence in cases was similar for males and females.

Prevalence of Cryptosporidium by season

Cryptosporidium prevalence was higher in cases than in controls in both the dry and wet seasons (Table 1). Furthermore, relative to dry season, Cryptosporidium is much more prevalent in both cases and controls during the wet and rainy season (May-October). The overall prevalence of Cryptosporidium in both cases and controls usually started to rise in May, with a peak between July and October (Fig 2). Cryptosporidium diarrhea cases peaked in September (28.3% of all cases) and October (28.2% of cases); prevalence was low between January and April (range, 0.64%-2.8%).

thumbnail
Fig 2. Prevalence of Cryptosporidium in diarrhea cases and controls in relation with months, years (2008–2012) and rainfall.

https://doi.org/10.1371/journal.pntd.0007607.g002

Prevalence of Cryptosporidium species

Cryptosporidium results from the TaqMan assay were available for 1506 stool samples (759 cases and 747 controls); 280 (18.6%) of these were positive for Cryptosporidium by TaqMan PCR, 121 (8.0%) were positive by EIA, and 104 (6.9%) were positive by both assays. The TaqMan assay was used to identify samples positive for C. hominius or C. parvum. Of the 280 positives by Taqman, 119 (42.5%) were positive for C. hominis, and 20 (7.1%) were positive for C. parvum and 5 (1.8%) were positive for both. Among 144 samples with both species identified, only C. hominis was in 119 (82.6%), only C. parvum in 20 (13.9%), and both C. hominis and C. parvum was in 5 (3.5%). C. hominis was more frequently positive in cases than in controls (78/753, 10.4% vs. 46/741, 6.2%; p = 0.004). The frequencies of C. parvum were similar in cases and controls (12/746, 1.6% vs. 13/739, 1.8%; p = 0.82).

Risk factors for Cryptosporidium-positive diarrhea

Analysis of risk factors included 231 Cryptosporidium-positive diarrhea cases and 349 matched controls; 36 (10.3%) of the controls were positive for Cryptosporidium infection (Table 2). One hundred sixty-seven (72.3%) of the cases had MSD and 64 (27.7%) had LSD. Since controls were matched to cases by age and sex, no analysis of these variables was done. Results of univariable conditional regression analyses are summarized in Table 2 for socioeconomic characteristics, animals living in the compound, water source and hygiene, breast feeding status, nutritional status, and the presence of other putative pathogens.

thumbnail
Table 2. Association of risk factors with Cryptosporidium diarrhea: univariable conditional logistic regression analysis.

https://doi.org/10.1371/journal.pntd.0007607.t002

In Table 2, the median numbers of household members for Cryptosporidium-positive diarrhea cases and their matched controls were 25 (range, 3–112) and 34 (range, 3–118), respectively. The mean number of household members and the proportion households with more than 20 members were significantly higher in controls than in cases.

Children with Cryptosporidium-positive diarrhea were significantly more likely than their matched controls to live in a compound with a cat, cow or rodents. Fowl (chicken, duck or other birds) living in the compound was more common in controls than cases.

Cryptosporidium-positive diarrhea was significantly associated with drinking stored water at home in the last two weeks and drinking water usually filtered through a cloth. The proportions of cases and controls currently being breast fed, as well as the proportions of cases and controls with stunting, were similar and not significantly different.

The proportion of Cryptosporidium-positive diarrhea cases co-infected with Giardia, the most common protozoal co-infection, was significantly lower than the proportion in their matched controls. No other co-infection evaluated was significantly associated with Cryptosporidium-positive diarrhea.

Table 3 summarizes the results of multivariable conditional logistic regression modeling for associations with Cryptosporidium-positive diarrhea. Inclusion of interactions with an MSD/LSD indicator variable allowed development of separate models for Cryptosporidium-positive MSD and Cryptosporidium-positive LSD. All factors in the table were significantly associated (95% confidence interval for odds ratio did not include 1) for either MSD, LSD, or both. There was an increased risk of Cryptosporidium-positive MSD and/or LSD for certain animals (cow, cat, rodents) in the household, as well as the child drinking stored drinking water at home in the last two weeks. There were significant differences (p < 0.05 for interaction term) between MSD and LSD for odds ratios for a cow or cat living in the compound and a suggestion of a difference (p = 0.069) for rodents in the compound. There was no evidence of a difference between MSD and LSD in the association with number of people living in the household (in units of 5 individuals), child consuming stored drinking water at home in the last two weeks, fowl living in the compound or mixed infection with Giardia.

thumbnail
Table 3. Association of risk factors with Cryptosporidium-positive MSD and LSD separately: Multivariable conditional logistic regression analysis.

https://doi.org/10.1371/journal.pntd.0007607.t003

Discussion

Our findings in this comprehensive population-based epidemiological study of endemic Cryptosporidium infection in young Gambian children show a striking association of Cryptosporidium-positive diarrhea with age, with nearly all cases (86%) occurring in children 6–23 months of age. A similar trend with a lower overall prevalence of Cryptosporidium-positive diarrhea, was observed in a study conducted in urban Gambia during 1991–1992 [18]. Other studies in sub-Saharan Africa have shown roughly similar prevalence but may lack the representativeness of long-term population-based studies with improved diagnostic techniques [21]. The low prevalence in infants 0–5 months of age may be explained by exclusive breast feeding [31] or transfer of immunity from mother to child. The high prevalence at 6–23 months of age may be due to exposure to contaminated food and/or water in the weaning period. Stenberg et al. demonstrated in a sero-prevalence study in Guatemala that the prevalence of antibody to Cryptosporidium parvum increased at older ages compared to those aged 6–12 months [32]. Furthermore, a study in healthy adult volunteers showed that higher anti-Cryptosporidium IgG antibody levels were associated with a reduced chance of infection and illness when challenged with low Cryptosporidium oocyst doses [33]. Thus, the low prevalence of Cryptosporidium in children 24–59 months of age may relate to the development of immunity following earlier infection. A decreased risk of infection in older children due to the development of partial immunity from earlier exposure would suggest that a vaccine may protect against Cryptosporidium infection.

The population HIV prevalence is low in our study area (<2%) [22]. Our findings show that Cryptosporidium is an important infection in young children even in a population with low HIV prevalence.

C. hominis is the predominant among identified species of C. hominis and C. Parvum (82.6% vs. 13.9%) in the Gambia. This finding is consistent with results from other studies in Kenya, Malawi, Uganda, Bangladesh and India [5, 11, 16, 34, 35]. It suggests that the primary mode of transmission in The Gambia is anthroponotic transmission, although there may also be zoonotic transmission. Either may occur through contact with contaminated drinking water [19]. Accordingly, we found consumption of stored drinking water to be associated with increased risk of Cryptosporidium diarrhea.

In our study, 81% of Cryptosporidium-positive diarrhea cases and 79% of Cryptosporidium-positive controls occurred during the rainy season. Earlier studies in The Gambia [18], Madagascar [36], Guinea-Bissau [37], Brazil [38, 39] and India [40] found associations between Cryptosporidium diarrhea and rainy season. The association of rainfall and Cryptosporidium infection could be due to domestic use of surface water, contamination of unprotected wells, and poor hygiene practices. In the rainy season, surface water may be more often contaminated with human and animal feces, so that children playing in the contaminated surface or stagnant water could facilitate the transmission of Cryptosporidium. However, Cryptosporidium infection has also been observed predominantly in the dry season in Kenya and Guatemala, when drinking water is limited [34, 41].

In our study area, drinking water is usually stored in wide-mouth containers. Household members and children use their hands to dip a cup into the water storage container to obtain drinking water, which may further contaminate the water. The chance of contamination may be increased with prolonged storage and handling if the storage container is not frequently cleaned. Further exploration of storage practices, sanitation and hygiene measures for collection of water and removing water from the container, as well as further laboratory analysis of potable water from the source to storage and point of consumption may all help to establish the source of infection.

Contrary to the findings of an association of household overcrowding with increased risk of cryptosporidiosis, our study found the opposite. The reasons for this negative association are not clear. In an urban area, close proximity of houses, overcrowding, close personal contract and lack of sanitary facilities may contribute to the spread of C. hominis infection [42]. Perhaps in a rural setting, the greater physical space available per person leads to less close contact between children in the household.

We found that the presence in the compound of domestic animals (cattle and cats) and the presence of rodents in the compound were potential risk factors for Cryptosporidium diarrhea. Association of Cryptosporidium diarrhea with the presence of animals was also found in Guinea Bissau and Guatemala [41, 43]. We believe that our study is the first to suggest an association between rodents living in a household and the presence of Cryptosporidium diarrhea. Human carriage of Cryptosporidium muris, a predominantly rodent pathogen, and rodents have been identified as reservoirs of C. parvum and C. hominis [44, 45].

The presence of Giardia was inversely associated with Cryptosporidium diarrhea. Similarly, a longitudinal analysis in another study showed no evidence of an association between Giardia infection and an increased risk of diarrhea [46]. In a systematic review, giardiasis was associated with decreased risk of acute diarrhea in children in developing countries [47]; however, the same review found that Giardia infection was positively associated with persistent diarrhea and suggested that initial Giardia infections early in infancy may be positively associated with diarrhea. Giardia may secrete mucins and glycoproteins in the intestinal mucosal layer, which may protect against attachment of other pathogens including Cryptosporidium, and such a mechanism may protect against Cryptosporidium-positive diarrhea [48].

A limitation of the study is that only about 68% of Cryptosporidium-positive diarrhea cases can be attributed to Cryptosporidium. Thus, some of the risk factor associations that we found could be at least partially due to factors other than the presence of Cryptosporidium. However, it is clear both from the present study and other studies that infants and young children in developing countries with Cryptosporidium-positive diarrhea are at risk of negative health consequences and that reducing the level of Cryptosporidium infection is an important public health concern in these countries.

Conclusion

Our study establishes that Cryptosporidium is an important cause of childhood diarrhea in The Gambia. Data from the ongoing rotavirus vaccine impact study will help us understand the burden of Cryptosporidium infection in Africa after introduction of rotavirus vaccine in routine immunization programs. The drinking stored water and animals living in the household are associated with Cryptosporidium-positive diarrhea. The predominance of C. hominis suggests anthroponotic transmission of Cryptosporidium infection. Associations of Cryptosporidium-positive diarrhea with drinking of stored water and animals living in the household suggest there may also be zoonotic transmission. Thus, general improved hygienic practices to store drinking water may reduce transmission of Cryptosporidium. The role of animals in the transmission of Cryptosporidium, the methods of drinking water storage, and sanitation and hygiene measures used for taking water from the water storage containers merit further study.

Acknowledgments

The authors acknowledge the Regional Health Team (RHT), Basse for their continuous support and co-operation in conducting this study, and caregivers of the study children who provided their kind approval to participate in this study. We acknowledge also the hard work of the nursing staff and field workers in screening and recruiting study participants. We acknowledge the nurse field coordinators Edrissa Sabally and Sampa Sanneh, the field supervisors Bakary Jallow for quality control and co-ordinating the field and nursing team. Our special thanks and acknowledgment to Golam Sarwar, Ousman Bittaye, Manlafi, Salifou Sambou for co-ordinating subject tracing in DSS link, organizing the data and sending data to the Data Coordinating Center. We thank Pa Cheboh Saine for logistical support.

Dr. Hossain is a clinical epidemiologist and medical graduate working in the Disease Control and Elimination Theme of the Medical Research Council Unit The Gambia at the London School of Hygiene & Tropical Medicine. He worked in icddr,b, Bangladesh and led outbreak investigations. His research interests are diarrheal diseases, emerging infections and infectious diseases.

References

  1. 1. Liu L, Oza S, Hogan D, Perin J, Rudan I, Lawn JE, et al. Global, regional, and national causes of child mortality in 2000–13, with projections to inform post-2015 priorities: an updated systematic analysis. Lancet. 2015;385(9966):430–40. pmid:25280870.
  2. 2. Hunter PR, Nichols G. Epidemiology and clinical features of Cryptosporidium infection in immunocompromised patients. Clin Microbiol Rev. 2002;15(1):145–54. Epub 2002/01/10. pmid:11781272; PubMed Central PMCID: PMC118064.
  3. 3. Shirley DA, Moonah SN, Kotloff KL. Burden of disease from cryptosporidiosis. Curr Opin Infect Dis. 2012;25(5):555–63. Epub 2012/08/22. pmid:22907279.
  4. 4. Iqbal A, Lim YA, Surin J, Sim BL. High diversity of Cryptosporidium subgenotypes identified in Malaysian HIV/AIDS individuals targeting gp60 gene. PLoS One. 2012;7(2):e31139. Epub 2012/02/22. pmid:22347442; PubMed Central PMCID: PMC3275556.
  5. 5. Tumwine JK, Kekitiinwa A, Bakeera-Kitaka S, Ndeezi G, Downing R, Feng X, et al. Cryptosporidiosis and microsporidiosis in ugandan children with persistent diarrhea with and without concurrent infection with the human immunodeficiency virus. Am J Trop Med Hyg. 2005;73(5):921–5. Epub 2005/11/12. pmid:16282304.
  6. 6. Kotloff KL, Nataro JP, Blackwelder WC, Nasrin D, Farag TH, Panchalingam S, et al. Burden and aetiology of diarrhoeal disease in infants and young children in developing countries (the Global Enteric Multicenter Study, GEMS): a prospective, case-control study. Lancet. 2013;382(9888):209–22. Epub 2013/05/18. pmid:23680352.
  7. 7. Sow SO, Muhsen K, Nasrin D, Blackwelder WC, Wu Y, Farag TH, et al. The Burden of Cryptosporidium Diarrheal Disease among Children < 24 Months of Age in Moderate/High Mortality Regions of Sub-Saharan Africa and South Asia, Utilizing Data from the Global Enteric Multicenter Study (GEMS). PLoS Negl Trop Dis. 2016;10(5):e0004729. Epub 2016/05/25. pmid:27219054; PubMed Central PMCID: PMC4878811.
  8. 8. Platts-Mills JA, Babji S, Bodhidatta L, Gratz J, Haque R, Havt A, et al. Pathogen-specific burdens of community diarrhoea in developing countries: a multisite birth cohort study (MAL-ED). The Lancet Global health. 2015;3(9):e564–75. Epub 2015/07/24. pmid:26202075.
  9. 9. Platts-Mills JA, Liu J, Rogawski ET, Kabir F, Lertsethtakarn P, Siguas M, et al. Use of quantitative molecular diagnostic methods to assess the aetiology, burden, and clinical characteristics of diarrhoea in children in low-resource settings: a reanalysis of the MAL-ED cohort study. The Lancet Global health. 2018;6(12):e1309–e18. Epub 2018/10/06. pmid:30287127; PubMed Central PMCID: PMC6227251.
  10. 10. Molbak K, Andersen M, Aaby P, Hojlyng N, Jakobsen M, Sodemann M, et al. Cryptosporidium infection in infancy as a cause of malnutrition: a community study from Guinea-Bissau, west Africa. Am J Clin Nutr. 1997;65(1):149–52. Epub 1997/01/01. pmid:8988927.
  11. 11. Korpe PS, Haque R, Gilchrist C, Valencia C, Niu F, Lu M, et al. Natural History of Cryptosporidiosis in a Longitudinal Study of Slum-Dwelling Bangladeshi Children: Association with Severe Malnutrition. PLoS Negl Trop Dis. 2016;10(5):e0004564. Epub 2016/05/06. pmid:27144404; PubMed Central PMCID: PMC4856361.
  12. 12. Khalil IA, Troeger C, Rao PC, Blacker BF, Brown A, Brewer TG, et al. Morbidity, mortality, and long-term consequences associated with diarrhoea from Cryptosporidium infection in children younger than 5 years: a meta-analyses study. The Lancet Global health. 2018;6(7):e758–e68. Epub 2018/06/16. pmid:29903377; PubMed Central PMCID: PMC6005120.
  13. 13. Rogawski ET, Liu J, Platts-Mills JA, Kabir F, Lertsethtakarn P, Siguas M, et al. Use of quantitative molecular diagnostic methods to investigate the effect of enteropathogen infections on linear growth in children in low-resource settings: longitudinal analysis of results from the MAL-ED cohort study. The Lancet Global health. 2018;6(12):e1319–e28. Epub 2018/10/06. pmid:30287125; PubMed Central PMCID: PMC6227248.
  14. 14. Guerrant DI, Moore SR, Lima AA, Patrick PD, Schorling JB, Guerrant RL. Association of early childhood diarrhea and cryptosporidiosis with impaired physical fitness and cognitive function four-seven years later in a poor urban community in northeast Brazil. Am J Trop Med Hyg. 1999;61(5):707–13. Epub 1999/12/10. pmid:10586898.
  15. 15. Wegayehu T, Adamu H, Petros B. Prevalence of Giardia duodenalis and Cryptosporidium species infections among children and cattle in North Shewa Zone, Ethiopia. BMC Infect Dis. 2013;13:419. Epub 2013/09/10. pmid:24010794; PubMed Central PMCID: PMC3849630.
  16. 16. Morse TD, Nichols RA, Grimason AM, Campbell BM, Tembo KC, Smith HV. Incidence of cryptosporidiosis species in paediatric patients in Malawi. Epidemiol Infect. 2007;135(8):1307–15. Epub 2007/01/17. pmid:17224087; PubMed Central PMCID: PMC2870691.
  17. 17. Adjei AA, Armah H, Rodrigues O, Renner L, Borketey P, Ayeh-Kumi P, et al. Cryptosporidium Spp., a frequent cause of diarrhea among children at the Korle-Bu Teaching Hospital, Accra, Ghana. Jpn J Infect Dis. 2004;57(5):216–9. Epub 2004/10/28. pmid:15507781.
  18. 18. Adegbola RA, Demba E, De Veer G, Todd J. Cryptosporidium infection in Gambian children less than 5 years of age. J Trop Med Hyg. 1994;97(2):103–7. Epub 1994/04/01. pmid:8169999.
  19. 19. Korpe PS, Valencia C, Haque R, Mahfuz M, McGrath M, Houpt E, et al. Epidemiology and Risk Factors for Cryptosporidiosis in Children from Eight Low-income Sites: Results from the MAL-ED Study. Clinical infectious diseases: an official publication of the Infectious Diseases Society of America. 2018. Epub 2018/04/28. pmid:29701852.
  20. 20. Xiao L. Molecular epidemiology of cryptosporidiosis: an update. Exp Parasitol. 2010;124(1):80–9. Epub 2009/04/11. pmid:19358845.
  21. 21. Mor SM, Tzipori S. Cryptosporidiosis in children in Sub-Saharan Africa: a lingering challenge. Clinical infectious diseases: an official publication of the Infectious Diseases Society of America. 2008;47(7):915–21. Epub 2008/08/22. pmid:18715159; PubMed Central PMCID: PMC2724762.
  22. 22. The Gambia Global AIDS Response Progress Report, 15th April 2015. National AIDS Secretariat Office of The President 15 April 2015. http://www.unaids.org/sites/default/files/country/documents/GMB_narrative_report_2015.pdf (accessed on May 1, 2017).
  23. 23. World Bank, World Development Indicators, 2018 The World Bank Group. https://databank.worldbank.org/data/reports.aspx?source=2&country=GMB. Accessed on December 24, 2018
  24. 24. Kotloff KL, Blackwelder WC, Nasrin D, Nataro JP, Farag TH, van Eijk A, et al. The Global Enteric Multicenter Study (GEMS) of diarrheal disease in infants and young children in developing countries: epidemiologic and clinical methods of the case/control study. Clinical infectious diseases: an official publication of the Infectious Diseases Society of America. 2012;55 Suppl 4:S232–45. Epub 2012/11/28. pmid:23169936; PubMed Central PMCID: PMC3502307.
  25. 25. WHO. The treatment of diarrhoea. A mannual for physicians and other serior health workers. Geneva, Switzerland; 2005. http://whqlibdoc.who.int/publications/2005/9241593180.pdf
  26. 26. Panchalingam S, Antonio M, Hossain A, Mandomando I, Ochieng B, Oundo J, et al. Diagnostic microbiologic methods in the GEMS-1 case/control study. Clinical infectious diseases: an official publication of the Infectious Diseases Society of America. 2012;55 Suppl 4:S294–302. Epub 2012/11/28. pmid:23169941; PubMed Central PMCID: PMC3502308.
  27. 27. Liu J, Kabir F, Manneh J, Lertsethtakarn P, Begum S, Gratz J, et al. Development and assessment of molecular diagnostic tests for 15 enteropathogens causing childhood diarrhoea: a multicentre study. The Lancet Infectious diseases. 2014;14(8):716–24. pmid:25022434.
  28. 28. Team RC. R: A language and environment for statistical computing. R Foundation for Statistical Computing, Vienna, Austria. http://www.R-project.org/. 2014.
  29. 29. Filmer D, Pritchett LH. Estimating wealth effects without expenditure data—or tears: an application to educational enrollments in states of India. Demography. 2001;38(1):115–32. Epub 2001/03/03. pmid:11227840.
  30. 30. Kotloff KL, Nasrin D, Blackwelder WC, Wu Y, Farag T, Panchalingham S, et al. The incidence, aetiology, and adverse clinical consequences of less severe diarrhoeal episodes among infants and children residing in low-income and middle-income countries: a 12-month case-control study as a follow-on to the Global Enteric Multicenter Study (GEMS). The Lancet Global health. 2019;7(5):e568–e84. Epub 2019/04/20. pmid:31000128; PubMed Central PMCID: PMC6484777.
  31. 31. Korpe PS, Liu Y, Siddique A, Kabir M, Ralston K, Ma JZ, et al. Breast milk parasite-specific antibodies and protection from amebiasis and cryptosporidiosis in Bangladeshi infants: a prospective cohort study. Clinical infectious diseases: an official publication of the Infectious Diseases Society of America. 2013;56(7):988–92. pmid:23243179; PubMed Central PMCID: PMC3588117.
  32. 32. Steinberg EB, Mendoza CE, Glass R, Arana B, Lopez MB, Mejia M, et al. Prevalence of infection with waterborne pathogens: a seroepidemiologic study in children 6–36 months old in San Juan Sacatepequez, Guatemala. Am J Trop Med Hyg. 2004;70(1):83–8. Epub 2004/02/20. pmid:14971703.
  33. 33. Chappell CL, Okhuysen PC, Sterling CR, Wang C, Jakubowski W, Dupont HL. Infectivity of Cryptosporidium parvum in healthy adults with pre-existing anti-C. parvum serum immunoglobulin G. Am J Trop Med Hyg. 1999;60(1):157–64. Epub 1999/02/13. pmid:9988341.
  34. 34. Gatei W, Wamae CN, Mbae C, Waruru A, Mulinge E, Waithera T, et al. Cryptosporidiosis: prevalence, genotype analysis, and symptoms associated with infections in children in Kenya. Am J Trop Med Hyg. 2006;75(1):78–82. Epub 2006/07/14. pmid:16837712.
  35. 35. Kattula D, Jeyavelu N, Prabhakaran AD, Premkumar PS, Velusamy V, Venugopal S, et al. Natural History of Cryptosporidiosis in a Birth Cohort in Southern India. Clinical infectious diseases: an official publication of the Infectious Diseases Society of America. 2017;64(3):347–54. Epub 2016/12/26. pmid:28013266; PubMed Central PMCID: PMC5241779.
  36. 36. Areeshi M, Dove W, Papaventsis D, Gatei W, Combe P, Grosjean P, et al. Cryptosporidium species causing acute diarrhoea in children in Antananarivo, Madagascar. Ann Trop Med Parasitol. 2008;102(4):309–15. Epub 2008/05/31. pmid:18510811.
  37. 37. Perch M, Sodemann M, Jakobsen MS, Valentiner-Branth P, Steinsland H, Fischer TK, et al. Seven years' experience with Cryptosporidium parvum in Guinea-Bissau, West Africa. Ann Trop Paediatr. 2001;21(4):313–8. Epub 2001/12/06. pmid:11732149.
  38. 38. Pereira MD, Atwill ER, Barbosa AP, Silva SA, Garcia-Zapata MT. Intra-familial and extra-familial risk factors associated with Cryptosporidium parvum infection among children hospitalized for diarrhea in Goiania, Goias, Brazil. Am J Trop Med Hyg. 2002;66(6):787–93. Epub 2002/09/13. pmid:12224593.
  39. 39. Newman RD, Sears CL, Moore SR, Nataro JP, Wuhib T, Agnew DA, et al. Longitudinal study of Cryptosporidium infection in children in northeastern Brazil. J Infect Dis. 1999;180(1):167–75. pmid:10353875.
  40. 40. Das P, Roy SS, MitraDhar K, Dutta P, Bhattacharya MK, Sen A, et al. Molecular characterization of Cryptosporidium spp. from children in Kolkata, India. J Clin Microbiol. 2006;44(11):4246–9. Epub 2006/09/15. pmid:16971647; PubMed Central PMCID: PMC1698361.
  41. 41. Cruz JR, Cano F, Caceres P, Chew F, Pareja G. Infection and diarrhea caused by Cryptosporidium sp. among Guatemalan infants. Journal of clinical microbiology. 1988;26(1):88–91. pmid:3343318; PubMed Central PMCID: PMC266196.
  42. 42. Lake IR, Harrison FC, Chalmers RM, Bentham G, Nichols G, Hunter PR, et al. Case-control study of environmental and social factors influencing cryptosporidiosis. European journal of epidemiology. 2007;22(11):805–11. pmid:17891460; PubMed Central PMCID: PMC2071968.
  43. 43. Molbak K, Aaby P, Hojlyng N, da Silva AP. Risk factors for Cryptosporidium diarrhea in early childhood: a case-control study from Guinea-Bissau, West Africa. American journal of epidemiology. 1994;139(7):734–40. pmid:8166134.
  44. 44. Palmer CJ, Xiao L, Terashima A, Guerra H, Gotuzzo E, Saldias G, et al. Cryptosporidium muris, a rodent pathogen, recovered from a human in Peru. Emerg Infect Dis. 2003;9(9):1174–6. Epub 2003/10/02. pmid:14519260; PubMed Central PMCID: PMC3016761.
  45. 45. Danisova O, Valencakova A, Stanko M, Luptakova L, Hatalova E, Canady A. Rodents as a reservoir of infection caused by multiple zoonotic species/genotypes of C. parvum, C. hominis, C. suis, C. scrofarum, and the first evidence of C. muskrat genotypes I and II of rodents in Europe. Acta tropica. 2017;172:29–35. pmid:28433573.
  46. 46. Rogawski ET, Bartelt LA, Platts-Mills JA, Seidman JC, Samie A, Havt A, et al. Determinants and Impact of Giardia Infection in the First 2 Years of Life in the MAL-ED Birth Cohort. J Pediatric Infect Dis Soc. 2017;6(2):153–60. Epub 2017/02/17. pmid:28204556; PubMed Central PMCID: PMC5907871.
  47. 47. Muhsen K, Levine MM. A systematic review and meta-analysis of the association between Giardia lamblia and endemic pediatric diarrhea in developing countries. Clinical infectious diseases: an official publication of the Infectious Diseases Society of America. 2012;55 Suppl 4:S271–93. Epub 2012/11/28. pmid:23169940; PubMed Central PMCID: PMC3502312.
  48. 48. Muller N, von Allmen N. Recent insights into the mucosal reactions associated with Giardia lamblia infections. Int J Parasitol. 2005;35(13):1339–47. Epub 2005/09/27. pmid:16182298.