Research article

Associations between the household environment and stunted child growth in rural India: a cross-sectional analysis

Authors
  • Charlotte Lee (Whittington Health NHS Trust, Magdala Avenue, London N19 5NF, UK)
  • Monica Lakhanpaul (Whittington Health NHS Trust, Magdala Avenue, London N19 5NF, UK)
  • Bernardo Maza Stern (Engineering for International Development Centre, University College London, Bartlett School of Construction and Project Management, 1–19 Torrington Place, London WC1E 7HB, UK)
  • Kaushik Sarkar (Aceso Global Health Consultants Limited, B-78-A FF Front Side, Chanakya Place–1, Uttam Nagar, New Delhi 110059, India)
  • Priti Parikh (Engineering for International Development Centre, University College London, Bartlett School of Construction and Project Management, 1–19 Torrington Place, London WC1E 7HB, UK)

This is version 1 of this article, the published version can be found at: https://doi.org/10.14324/111.444/ucloe.000014

Abstract

Stunting is a major unresolved and growing health issue for India. There is a need for a broader interdisciplinary cross-sectoral approach in which disciplines such as the environment and health have to work together to co-develop integrated socio-culturally tailored interventions. However, there remains scant evidence for the development and application of such integrated, multifactorial child health interventions across India’s most rural communities. In this paper we explore and demonstrate the linkages between environmental factors and stunting thereby highlighting the scope for interdisciplinary research. We examine the associations between household environmental characteristics and stunting in children under 5 years of age across rural Rajasthan, India. We used Demographic and Health Survey (DHS)-3 India (2005–2006) data from 1194 children living across 109,041 interviewed households. Multiple logistic regression analyses independently examined the association between (i) the primary source of drinking water, (ii) primary type of sanitation facilities, (iii) primary cooking fuel type, and (iv) agricultural land ownership and stunting adjusting for child age. The results suggest, after adjusting for child age, household access to (i) improved drinking water source was associated with 23% decreased odds [odds ratio (OR) = 0.77, 95% confidence interval (CI) 0.5–1.00], (ii) improved sanitation facility was associated with 41% decreased odds (OR = 0.51, 95% CI 0.3–0.82), and (iii) agricultural land ownership was associated with 30% decreased odds of childhood stunting (OR 0.70, 95% CI 0.51–0.94]. The cooking fuel source was not associated with stunting. Our findings indicate that a shift is needed from nutrition-specific to contextually appropriate interdisciplinary solutions, which incorporate environmental improvements. This will not only improve living conditions in deprived communities but also help to tackle the challenge of childhood malnutrition across India’s most vulnerable communities.

Keywords: interdisciplinary, environment, water, sanitation, agriculture, cooking fuel, malnutrition, stunting, India, rural

Rights: © 2021 The Authors.

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Published on
22 Feb 2021
Peer Reviewed

 Open peer review from Karishma Sinha

Reviewer: Karishma Sinha
ORCID: orcid logo https://orcid.org/0000-0002-0071-3727
DOI: 10.14293/S2199-1006.1.SOR-SOCSCI.AJVEQI.v1.RZGJWM
Date Completed: 2020-12-12

Review

Review information

DOI:: 10.14293/S2199-1006.1.SOR-SOCSCI.AJVEQI.v1.RZGJWM
License:
This work has been published open access under Creative Commons Attribution License CC BY 4.0 , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. Conditions, terms of use and publishing policy can be found at www.scienceopen.com .

ScienceOpen disciplines: Civil engineering , General behavioral science , Environmental engineering
Keywords: water , sanitation , environment , stunting , agriculture , fuel , Sanitation, health, and the environment , People and their environment , malnutrition , rural , growth , India

Review text

General assessment:

This article addresses the very important and chronic issue of child stuntedness across the world with particular focus on developing countries and low-income households. Zero hunger, good health and well-being are the second and third targets under the Sustainable Development Goals (UNDP), and reducing Child stuntedness is an important step towards achieving these goals and is also a key indicator in achieving Global Nutritional Targets for 2025 under WHO. There exists a good number of recent review papers and investigative studies on nutritional and associated environmental influences on child stunting across various South East Asian and African countries. Some examples include “Child stunting is associated with child, maternal and environmental factors in Vietnam” by Beal et al. (2019); “Risk factors of stunting among children living in an urban slum of Bangladesh: findings of a prospective cohort study” by Islam et al. (2018), Understanding correlates of child stunting in Ethiopia using generalized linear mixed models by Takele et al. (2019).  This study follows similar trends in that it focuses on child growth and associated factors in the rural region of Rajasthan, India. Majority of these studies have looked into both malnutrition and some environmental factors, or specific ones such as drought, this paper differs from other studies in its focus on environmental factors (drinking water quality according to source, sanitation facilities, cooking fuel type and agricultural land ownership) rather than nutritional shortcomings in influencing child growth which gives it novelty and strong justification.

The introductory paragraph states that  ”India is the priority target to set the pace of progress towards a better-nourished world” but does not explain why India specifically; is it because of India’s significant population, economic leadership or geographical area? How does the lasting impact of malnutrition transcend generations? (second paragraph under ‘Introduction’). In the list of household factors that positively impact nutrition, under no 1, what is Scheduled Castes or Tribes?. In no 2, does women’s education influencing nutrition positively include all women or mothers and household managers? Under aim of study, I feel more justification is needed for why four specific household environmental factors were chosen and I am curious to know how authors came to the decision of focusing on these four environmental factors. Are there other existing factors such as population size, seasonality, geographic location, communicable diseases such as malaria and dengue? .

Under Methods, in sec 3.2, "each household respondent was invited to provide informed consent...." does not specify if all members were interviewed or not, a clearer description of the process would be helpful. In sec 3.2.1 the method of respondents selecting one sub-category under the four main categories is also not clear. How was data collected consistently if focus was on different sub categories for interviews in individual households? Under statistical analyses section the part on household characteristics as independent variables, and stunting as dependent variables could be mentioned prior to, or along with the previous section on age as a confounding variable to provide better perspective to the reader. Under sec 3.1.1 “of the 1194 cases, 72.3% of cases belonged to families…” are these cases of stunting? Overall, the methods section is weak in comprehensibility.

The discussion section provided a comprehensive picture of the above existing environmental conditions in rural India but better comparisons could have been done using more recent studies (2015 to 2020) conducted in countries with similar socio-economic backgrounds such as Vietnam, Myanmar and so on, not just Bangladesh. This study does refer to correlation between parental formal education and improved child health under 5 in Indonesia and Bangladesh in 2008 and also brings up randomized controlled trials conducted in Bangladesh on handwashing, sanitation and water quality showing no significant impact on child growth versus when only sanitation was addressed in 2018.

Limitations were well articulated and displayed adequate self-reflection. The conclusion highlighted the importance of diversifying the causes of child stuntedness to include environmental factors. Improved sanitaion had the highest odds on reduction of child stuntedness; followed by agricultural land ownership and better drinking water supply, while use of biofuel type had little infleunce. I found the result for agricultural land ownership and child stuntedness eye opening in particular. This  study has broadened my understanding of the environment and health nexus and will contribute towards inclusive policy making and better environmental practices (sanitation in particular based on the results) in low-income households across developing countries.

Presentation style:

The introduction and methods sections are weaker than the results and discussion and requires further clarification on certain points and statements made as mentioned under general assessment above. The results section is well presented with clear tables followed by brief interpretations. I found the methods section particularly confusing in that it did not describe and provide a clear picture of the way the surveys and interviews were conducted in the field. There is a small language edit in the second sentence of the introductory paragraph ‘remains unmet’ vs ‘remains to be unmet’.

Given that a plethora of recent literature exists on the issue of child stuntedness and many studies have already been conducted, including extensive review papers such as “Relative importance of 13 correlates of child stunting in South Asia: Insights from nationally representative data from Afghanistan, Bangladesh, India, Nepal, and Pakistan” (Kim et al. 2016) the discussion could be further strengthened using these studies. This will make the literature review more rigorous and current (unless the authors are looking at the timeline of this study , data collection and matching it with studies within that time line).The authors could also include some pictures of children and environmental conditions of households  in the area  where the study was conducted for better visualization of existing conditions.

Conclusion: Correlates child stuntedness and environmental factors thoroughly, needs more recent literature review and clarification under methods



License: Creative Commons Attribution 4.0

Attribution — You must give appropriate credit, provide a link to the license, and indicate if changes were made. You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use. No additional restrictions — You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.

Note:
This review refers to round 2 of peer review and may pertain to an earlier version of the document.

 Open peer review from UCL Open: Environment Editorial Office

Reviewer: UCL Open: Environment Editorial Office
ORCID: orcid logo https://orcid.org/0000-0003-4641-5714
DOI: 10.14293/S2199-1006.1.SOR-SOCSCI.A0MZVI.v1.RBVPGN
Date Completed: 2020-07-30

Review

Review information

DOI:: 10.14293/S2199-1006.1.SOR-SOCSCI.A0MZVI.v1.RBVPGN
License:
This work has been published open access under Creative Commons Attribution License CC BY 4.0 , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. Conditions, terms of use and publishing policy can be found at www.scienceopen.com .

ScienceOpen disciplines: Civil engineering , General behavioral science , Environmental engineering
Keywords: water , sanitation , environment , stunting , agriculture , fuel , Sanitation, health, and the environment , People and their environment , malnutrition , rural , growth , India

Review text

This statistical analysis of DHS data should be using survey statistics (survey logistic regression), not asymptotic-theory “normal” logistic regression. Specifically, the authors should do a subpopulation analysis of the Rajasthan State data to correct the weights for exclusion of some of the survey sample. This is not a self-weighted random sample, it is a multistate cluster sample (from which a single state is being included in this analysis). Failure to use appropriate survey weights / survey estimation techniques (even before getting into subpopulation estimation issues) can sometimes lead to completely different conclusions from the “same” dataset. See for example: https://pubmed.ncbi.nlm.nih.gov/19713856/

The authors used SPSS to do their analysis; an overview of how to do survey estimation (the right way for these logistic regressions to be done) in SPSS is available here: https://digitalcommons.wayne.edu/cgi/viewcontent.cgi?article=3253&context=jmasm


Also in Methods 2.1, they have a “c” bullet point listed but the text is empty.

on behalf of Dr Matthew Gribble

Theme Editor, UCL Open Environment



License: Creative Commons Attribution 4.0

Attribution — You must give appropriate credit, provide a link to the license, and indicate if changes were made. You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use. No additional restrictions — You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.

Note:
This review refers to round 2 of peer review and may pertain to an earlier version of the document.

 Open peer review from UCL Open: Environment Editorial Office

Reviewer: UCL Open: Environment Editorial Office
ORCID: orcid logo https://orcid.org/0000-0003-4641-5714
DOI: 10.14293/S2199-1006.1.SOR-SOCSCI.AUCWSY.v1.RVLZKG
Date Completed: 2020-02-14

Review

Review information

DOI:: 10.14293/S2199-1006.1.SOR-SOCSCI.AUCWSY.v1.RVLZKG
License:
This work has been published open access under Creative Commons Attribution License CC BY 4.0 , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. Conditions, terms of use and publishing policy can be found at www.scienceopen.com .

ScienceOpen disciplines: Engineering , Civil engineering , Social & Behavioral Sciences , General behavioral science , Environmental engineering
Keywords: water , sanitation , environment , stunting , agriculture , fuel , Sanitation, health, and the environment , People and their environment , malnutrition , rural , growth , India

Review text

Thank you for submitting your paper ‘Associations between the household environment and stunted child growth in rural India: a cross-sectional analysis’ for consideration to UCL Open: Environment . Prof Dan Osborn, Editor-in-Chief, has reviewed the paper and here provides a combined editorial pre-review of the submitted paper to help and encourage the authors to revise this version 1 for open peer review.

General comments

This paper is potentially very interesting as it looks across the economic social and environmental conditions in children who have and have not suffered stunting in an Indian state. It thus examines three main pillars of sustainable development.

The data is complex if in part somewhat old (15 years) and more needs to be done to describe the study’s findings about the two populations of stunted and unstunted children and to set the background of these two groups of children in a wider context much of which currently appears too late in the paper to inform the reader in a timely way. The context setting should explain more fully how this study sits in relation to other studies on stunting in India (e.g. with respect to urban vs rural communities) so that it can be more clearly established in the reader’s mind what this study contributes. There has been a lot of work on stunting and spelling this out will help the reader appreciate the importance of the work and may help guide the discussion of the results which at present is rather too short on explaining the wider significance of the work and how it relates to the policy positions of the state concerned on such issues as open defecation.

It may be more productive to conduct other forms of statistical analysis than the ones chosen. Some calculation of relative risk rather than the odds-ratio approach may allow for a more rounded interpretation of the results. The issues involved here seem to be much more in the public health rather than the medical domain. The study is fundamentally examining the wider determinants of health where the Bradford Hill criteria can be helpful in organising data and analysis.  Much depends on the authors’ view of their data and whether they are viewing the study as being exploratory of a real world situation or one where the unstunted children are a de facto control group such that the study becomes one where the intervention is the unimproved economic, social and environmental circumstances of the child. The first approach may be preferable, in which case perhaps the whole data set could be analysed by some approach based on the principle components of the dataset or on some simple multiple regression that might in effect allow the relative importance of the large number of variables (some of which are parametric and some non-parametric) to be more clearly set out for a reader. Such approaches may have the advantage of allowing a re-examination of the data once main principle components have been established and consideration given to underlying mechanistic or process-based cause and effect pathways. The authors may think this approach too discursive but it may avoid corralling a wide ranging study into a narrow interpretation set determined by the odds-ration format.

There would be room in a methods or approach section to describe more fully the reasoning behind the statistical approach selected. This might help the field in general. More discourse on analytical approaches is needed to avoid misunderstandings arising in operational or policy arena.

This might include something about whether the study’s objective is to examine how various variables might be related or whether there is enough evidence to describe relative causal significance.

Detailed comments on text (comments on Tables follows)

L27-29: Use of the word “unparalled” is difficult to understand in the sentence and thus the sentence if unclear.

L35-37: This text is unclear.

L60-62: The reference to UNICEF should perhaps move up the text to L56 at least. Perhaps this is part of the contextual material that sets the scene?

L70-71: A statement of robustness would be more appropriate in a medical journal in its current form it means that some of this material could be worked into to other sections of the paper and have greater impact.

L72: Are there any other factors linked to stunting that might be important that could not be studied in this work due to lack of access to relevant data? If so these could be stated in order to inform readers of the limitations of the study – perhaps describing the limitations, scope and focus of this kind of study is more important than a description or statement of robustness?

L85-92: Clarification of the wording here would again help the importance of the work come across more clearly.

L101-105: The rationale for choosing the factors included may need to be set out just a little more. For are they a standard set or are they what were available in this location?

L109: Is a comment needed about the age of the data – especially if there is a mismatch between age of data and any comparison made to more recent policy positions.

L135: Check the words about sub-categories here.

Line 151: Is a reference needed here?

Line 153: There seems to something of a jump here in the wording on risks to older children compared to younger ones. The domestic situation must be hugely complex in the social circumstances being dealt with. This piece of text is one of several that suggests the authors main interests are considering risks and how these might be reduced rather than examining interventions per se (see general comments).

Line 157: Determining age by cultural memory is an interesting approach doubtless used previously. As age classes were then determined the approach seems acceptable although some of the children may have been close to class boundaries. Can the authors comment on how many children were near class boundaries or the impact of using an approach using the absolute ages discovered. Maybe this data is not available but nonetheless should be clarified.

L162-164: More needed here perhaps on the reasons why this view of other factors is the one to go with in this study (may link back to L101-105). A little more explanation is needed as to how this importance of age vs other factors was determined.

L169: unclear sentence

L172: ditto

L174: The overall dataset is complex with many variables or even sub-variables so the wish to simplify it must be almost irresistible but the impact of dichotomising needs to be explained more clearly. It would be a shame if data richness was lost or the interpretive power of the analysis lessened.

L195-196: It is not absolutely clear why it is that age appears as the only confounding variable. Age is certainly a strong influence on the outcome of stunting but the text needs some addition to explain why it is given a confounding status when other variables are treated more as explanatory or even perhaps “causal” or at least correlative ones.

L198: It seems as if there are relatively small numbers in some of the improved categories. Are these so small that it affects the approach to statistical analysis? The problem is not uncommon. Many environmental studies suffer from this kind of issue.

Comments on Tables

Both Tables need a clear explanatory legend given their complexity. The Journal format is such that this is possible.

Should any detailed data on length and height be provided so that readers can see whether there was a clear separation between the stunted and non-stunted groups?

In the last line of Table 1 there is an arithmetical error, hopefully not found in the statistical analysis.

In describing the data in Table 2 has a sufficient amount been said about the impacts of age on the outcomes for very young and older children – this could have a major impact on policies and interventions. This might be especially important for cases where water-borne health factors are involved and the pathways by which the health factors could be managed.

The data as expressed in the Tables raises some issues about how this kind of data can best be explored/analysed. For example when considering land ownership it appears from a quick look at the data as shown in the table that there are more stunted children in situations where land is not owned and rather less when land is owned. Does this kind of clear message emerge in the text clearly enough (provided it is supported by an appropriate analysis)? I think the numbers involved are No land ownership: 116/224 stunted vs 108/224 non-stunted whereas where land is owned the ratios are the opposite way round: 416/970 vs 554/970 and of course this is only one of the factors – what would happen if these results were broken down by age class? Would the effect be stronger still in some age classes?



License: Creative Commons Attribution 4.0

Attribution — You must give appropriate credit, provide a link to the license, and indicate if changes were made. You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use. No additional restrictions — You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.

Note:
This review refers to round 1 of peer review and may pertain to an earlier version of the document.