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Shared Sanitation in Madhya Pradesh, India 
Kali Nelson, MPH Candidate 
Department of Epidemiology and Biostatistics 
The George Washington University
Outline 
•Background 
•Objectives 
•Methods 
•Results 
•Discussion
http://www.nationsonline.org/oneworld/india_map.html
http://www.wssinfo.org/definitions-methods/watsan-categories/
http://thefarthesthousecall.files.wordpress.com/2011/04/vip-latrine.jpg 
IMPROVED 
VENTILATED IMPROVED 
PIT (VIP) LATRINE 
UNIMPROVED 
HANGING LATRINE 
http://www.flickr.com/photos/waterdotorg/3695499855/sizes/l/in/photostream/
Background: Global Sanitation Trends 
•Millennium Development Goals Sanitation Target: 75% covered with sustainable access to improved sanitation by 2015 1 
•37% of the global population lacked access to improved sanitation 2 
•15% of the global population practiced open defecation 2 
•86% rural 
1 WHO/UNICEF 2006, 2 WHO/UNICEF 2012
Sanitation in India 
•66% of India lacked access to improved sanitation 1 
•42% urban 
•77% rural 
•51% of India practiced open defecation 1 
•14% urban 
•67% rural 
•Madhya Pradesh 2 
•2006 - 27% households with toilets 
•2010 - 54% households with toilets 
1 WHO/UNICEF 2012, 2 WHO/UNICEF 2011
Sanitation Ladder - India 
http://www.wssinfo.org/fileadmin/user_upload/resources/IND_san.pdf 
= open defecation 
= other unimproved facilities 
= shared 
= improved 
URBAN 
RURAL 
TOTAL
Background: Shared Sanitation 
•Shared sanitation definition 
•In 2010, 11% of the global population utilized shared sanitation 
•39% rural 
•Shared sanitation in India: 9% in 2010 
•19% urban 
•4% rural
Background: Health Outcomes 
•Research on shared sanitation is very limited: 
•Alexandria, Egypt: infection with soil- transmitted helminthes 1 
•Rural Tanzania: trachoma risk 2 
•Dhaka, Bangladesh: parasite and diarrheal disease prevalence 3 
•Botswana, Ghana, and Zambia: infection with intestinal parasites 4 
•Bhopal, India: open defecation 5 
•Urban Bangladesh: weight-for-height scores 6 
1 Curtale, et. al., 1998 2 Montgomery, et. al., 2010 3 Khan, 1987 
4 Feachem, et. al., 1983 5 Biran, et. al., 2011 6 WHO/UNICEF 2012
Objectives 
•Describe sanitation access among households in Madhya Pradesh, India. 
•Analyze the relationship between sanitation access and diarrheal disease prevalence, safety of female users, cleanliness, and user satisfaction. 
•Recommend changes to the current definition of improved sanitation based on research results.
Methods 
•World Bank Water and Sanitation Program 
Global Scaling Up Rural Sanitation intervention 
•2009 baseline survey 
•Cross-sectional study of Impact Evaluation survey: 
•Household questionnaire 
•Children < 5 years health questionnaire
Methods 
•Sanitation facility characteristics 
•Sanitation status 
•Sharing status 
•Health outcome 
•Two-week prevalence of diarrheal disease 
•3 or more bowel movements per day 
•Cleanliness outcome 
•Presence of flies
Methods 
•Female safety outcomes 
•Safety of sanitation facility during the day 
•Safety of sanitation facility during the night 
•Privacy 
•Satisfaction with sanitation facility 
•Potential confounders
Data Analysis 
•Descriptive statistics 
•Pearson’s Chi-square tests for association among sanitation variables and health, safety, and cleanliness outcomes 
•Logistic regression analysis 
•Proportional Odds Model
Descriptive Statistics 
Madhya Pradesh 
n (%) 
Survey data 
Households 
1,978 
Children 
3,464 
Sanitation status 
Improved 
261 (14.1%) 
Unimproved 
1,856 (85.9%) 
Sharing status 
Not shared 
253 (12.8%) 
Shared 
1,717 (87.2%) 
Health Outcome 
Two-week diarrheal disease 
prevalence 
510 (14.7%)
Madhya Pradesh 
n (%) 
Female safety 
Daytime 
968 (49.0%) 
Nighttime 
452 (22.9%) 
Privacy 
542 (27.5%) 
Cleanliness – presence of flies 
Always 
1,671 (84.5%) 
Sometimes 
201 (10.2%) 
Rarely 
104 (5.3%) 
Satisfaction 
Satisfied 
774 (39.3%) 
Not satisfied 
1,193 (60.7%)
Child Health Results 
Variable 
Outcome modeled 
Odds Ratio 
95% Confidence Interval 
Shared 
Shared (v. not shared) 
1.534 
0.765, 3.074 
Location 
Household latrine/ less than 10 min. (v. no designated area) 
1.328 
0.761, 2.319 
Location 
More than 10 min. (v. no designated area) 
1.408 
1.032, 1.921* 
Visible feces 
One or more (v. none) 
0.522 
0.353, 0.773* 
Feces odor 
Yes (v. no) 
1.264 
0.857, 1.864 
Logistic regression for two-week diarrheal 
disease prevalence among children 
*Statistically significant at p < 0.05
Safety Results 
Variable 
Outcome modeled 
Odds Ratio 
95% Confidence Interval 
Sanitation status 
Improved (v. unimproved) 
14.921 
3.695, 60.247* 
Sharing status 
Not shared (v. shared) 
3.119 
1.016, 9.573* 
Toilet location 
Household latrine/ less than 10 min. (v. no designated area) 
0.927 
0.511, 1.684 
Logistic regression for female safety – daytime 
*Statistically significant at p < 0.05
Safety Results 
Variable 
Outcome modeled 
Odds Ratio 
95% Confidence Interval 
Sanitation status 
Improved (v. unimproved) 
30.438 
7.388, 125.409* 
Sharing status 
Not shared (v. shared) 
1.830 
0.581, 5.767 
Toilet location 
Household latrine/ less than 10 min. (v. no designated area) 
5.663 
2.778, 11.546* 
Toilet location 
More than 10 min. (v. no designated area) 
1.995 
1.233, 3.228* 
Logistic regression for female safety – nighttime 
*Statistically significant at p < 0.05
Safety Results 
*Statistically significant at p < 0.05 
Variable 
Outcome modeled 
Odds Ratio 
95% Confidence Interval 
Sanitation status 
Improved (v. unimproved) 
15.824 
4.874, 51.379* 
Sharing status 
Not shared (v. shared) 
3.981 
1.468, 10.796* 
Toilet location 
Household latrine/ less than 10 min. (v. no designated area) 
3.892 
2.008, 7.545* 
Toilet location 
More than 10 min. (v. no designated area) 
1.955 
1.315, 2.907* 
Logistic regression for female privacy
Cleanliness Results 
Variable 
Outcome modeled 
Odds Ratio 
95% Confidence Interval 
Sanitation status 
Improved (v. unimproved) 
5.221 
1.963, 13.883* 
Sharing status 
Not shared (v. shared) 
2.449 
1.036, 5.790* 
Toilet location 
Household latrine/ less than 10 min. (v. no designated area) 
6.248 
2.588, 15.086* 
Toilet location 
More than 10 min. (v. no area) 
1.992 
1.014, 3.911* 
Visible feces 
None (v. one or more) 
1.286 
0.719, 2.302 
Feces odor 
No (v. yes) 
0.693 
0.385, 1.246 
Open pit/ open drain nearby 
No (v. yes) 
1.269 
0.823, 1.958 
*Statistically significant at p < 0.05 
Proportional Odds Model for presence of flies
Satisfaction Results 
Variable 
Outcome modeled 
Odds Ratio 
95% Confidence Interval 
Sanitation status 
Improved (v. unimproved) 
1.085 
0.270, 4.353 
Sharing status 
Not shared (v. shared) 
9.897 
2.713, 36.097* 
Presence of flies 
Rarely (v. always) 
1.931 
0.559, 6.673 
Presence of flies 
Sometimes (v. always) 
0.721 
0.362, 1.436 
Toilet location 
Household latrine/ less than 10 min. (v. no designated area) 
0.662 
0.326, 1.346 
Toilet location 
More than 10 min. (v. no designated area) 
0.381 
0.271, 0.536* 
Logistic regression for satisfaction 
*Statistically significant at p < 0.05
Satisfaction Results 
Variable 
Outcome modeled 
Odds Ratio 
95% Confidence Interval 
Feces odor 
No (v. yes) 
1.094 
0.674, 1.775 
Open pit/ open drain nearby 
No (v. yes) 
0.541 
0.386, 0.757* 
Visible feces 
None (v. one or more) 
0.496 
0.298, 0.827* 
Female safety – day 
Yes (v. no) 
6.489 
4.539, 9.276* 
Female safety – night 
Yes (v. no) 
1.496 
0.940, 2.382 
Female privacy 
Yes (v. no) 
1.397 
0.903, 2.163 
Logistic regression for satisfaction 
*Statistically significant at p < 0.05
Conclusions 
•Health outcomes 
•Improved sanitation 
•Shared facilities
Limitations 
•Weak indicators 
•Two-week diarrheal prevalence 
•Number of households sharing 
•Cross-sectional data
Strengths 
•Large dataset 
•One of first studies to analyze shared sanitation and user satisfaction
Discussion 
•Number of households sharing 
•How shared facilities affect user satisfaction 
•Analysis of household survey data from Bangladesh, Tanzania, and Indonesia
Acknowledgments 
•Dr. Angelo Elmi 
Dept. of Epidemiology and Biostatistics 
•Dr. Jay Graham 
Dept. of Environmental and Occupational Health 
•Craig Kullmann 
World Bank Water and Sanitation Program 
•Prof. Ann Goldman 
Dept. of Epidemiology and Biostatistics
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Impact of Shared Sanitation Facilities in Madhya Pradesh, India (2012)

  • 1. Shared Sanitation in Madhya Pradesh, India Kali Nelson, MPH Candidate Department of Epidemiology and Biostatistics The George Washington University
  • 2. Outline •Background •Objectives •Methods •Results •Discussion
  • 5. http://thefarthesthousecall.files.wordpress.com/2011/04/vip-latrine.jpg IMPROVED VENTILATED IMPROVED PIT (VIP) LATRINE UNIMPROVED HANGING LATRINE http://www.flickr.com/photos/waterdotorg/3695499855/sizes/l/in/photostream/
  • 6. Background: Global Sanitation Trends •Millennium Development Goals Sanitation Target: 75% covered with sustainable access to improved sanitation by 2015 1 •37% of the global population lacked access to improved sanitation 2 •15% of the global population practiced open defecation 2 •86% rural 1 WHO/UNICEF 2006, 2 WHO/UNICEF 2012
  • 7. Sanitation in India •66% of India lacked access to improved sanitation 1 •42% urban •77% rural •51% of India practiced open defecation 1 •14% urban •67% rural •Madhya Pradesh 2 •2006 - 27% households with toilets •2010 - 54% households with toilets 1 WHO/UNICEF 2012, 2 WHO/UNICEF 2011
  • 8. Sanitation Ladder - India http://www.wssinfo.org/fileadmin/user_upload/resources/IND_san.pdf = open defecation = other unimproved facilities = shared = improved URBAN RURAL TOTAL
  • 9. Background: Shared Sanitation •Shared sanitation definition •In 2010, 11% of the global population utilized shared sanitation •39% rural •Shared sanitation in India: 9% in 2010 •19% urban •4% rural
  • 10. Background: Health Outcomes •Research on shared sanitation is very limited: •Alexandria, Egypt: infection with soil- transmitted helminthes 1 •Rural Tanzania: trachoma risk 2 •Dhaka, Bangladesh: parasite and diarrheal disease prevalence 3 •Botswana, Ghana, and Zambia: infection with intestinal parasites 4 •Bhopal, India: open defecation 5 •Urban Bangladesh: weight-for-height scores 6 1 Curtale, et. al., 1998 2 Montgomery, et. al., 2010 3 Khan, 1987 4 Feachem, et. al., 1983 5 Biran, et. al., 2011 6 WHO/UNICEF 2012
  • 11. Objectives •Describe sanitation access among households in Madhya Pradesh, India. •Analyze the relationship between sanitation access and diarrheal disease prevalence, safety of female users, cleanliness, and user satisfaction. •Recommend changes to the current definition of improved sanitation based on research results.
  • 12. Methods •World Bank Water and Sanitation Program Global Scaling Up Rural Sanitation intervention •2009 baseline survey •Cross-sectional study of Impact Evaluation survey: •Household questionnaire •Children < 5 years health questionnaire
  • 13. Methods •Sanitation facility characteristics •Sanitation status •Sharing status •Health outcome •Two-week prevalence of diarrheal disease •3 or more bowel movements per day •Cleanliness outcome •Presence of flies
  • 14. Methods •Female safety outcomes •Safety of sanitation facility during the day •Safety of sanitation facility during the night •Privacy •Satisfaction with sanitation facility •Potential confounders
  • 15. Data Analysis •Descriptive statistics •Pearson’s Chi-square tests for association among sanitation variables and health, safety, and cleanliness outcomes •Logistic regression analysis •Proportional Odds Model
  • 16. Descriptive Statistics Madhya Pradesh n (%) Survey data Households 1,978 Children 3,464 Sanitation status Improved 261 (14.1%) Unimproved 1,856 (85.9%) Sharing status Not shared 253 (12.8%) Shared 1,717 (87.2%) Health Outcome Two-week diarrheal disease prevalence 510 (14.7%)
  • 17. Madhya Pradesh n (%) Female safety Daytime 968 (49.0%) Nighttime 452 (22.9%) Privacy 542 (27.5%) Cleanliness – presence of flies Always 1,671 (84.5%) Sometimes 201 (10.2%) Rarely 104 (5.3%) Satisfaction Satisfied 774 (39.3%) Not satisfied 1,193 (60.7%)
  • 18. Child Health Results Variable Outcome modeled Odds Ratio 95% Confidence Interval Shared Shared (v. not shared) 1.534 0.765, 3.074 Location Household latrine/ less than 10 min. (v. no designated area) 1.328 0.761, 2.319 Location More than 10 min. (v. no designated area) 1.408 1.032, 1.921* Visible feces One or more (v. none) 0.522 0.353, 0.773* Feces odor Yes (v. no) 1.264 0.857, 1.864 Logistic regression for two-week diarrheal disease prevalence among children *Statistically significant at p < 0.05
  • 19. Safety Results Variable Outcome modeled Odds Ratio 95% Confidence Interval Sanitation status Improved (v. unimproved) 14.921 3.695, 60.247* Sharing status Not shared (v. shared) 3.119 1.016, 9.573* Toilet location Household latrine/ less than 10 min. (v. no designated area) 0.927 0.511, 1.684 Logistic regression for female safety – daytime *Statistically significant at p < 0.05
  • 20. Safety Results Variable Outcome modeled Odds Ratio 95% Confidence Interval Sanitation status Improved (v. unimproved) 30.438 7.388, 125.409* Sharing status Not shared (v. shared) 1.830 0.581, 5.767 Toilet location Household latrine/ less than 10 min. (v. no designated area) 5.663 2.778, 11.546* Toilet location More than 10 min. (v. no designated area) 1.995 1.233, 3.228* Logistic regression for female safety – nighttime *Statistically significant at p < 0.05
  • 21. Safety Results *Statistically significant at p < 0.05 Variable Outcome modeled Odds Ratio 95% Confidence Interval Sanitation status Improved (v. unimproved) 15.824 4.874, 51.379* Sharing status Not shared (v. shared) 3.981 1.468, 10.796* Toilet location Household latrine/ less than 10 min. (v. no designated area) 3.892 2.008, 7.545* Toilet location More than 10 min. (v. no designated area) 1.955 1.315, 2.907* Logistic regression for female privacy
  • 22. Cleanliness Results Variable Outcome modeled Odds Ratio 95% Confidence Interval Sanitation status Improved (v. unimproved) 5.221 1.963, 13.883* Sharing status Not shared (v. shared) 2.449 1.036, 5.790* Toilet location Household latrine/ less than 10 min. (v. no designated area) 6.248 2.588, 15.086* Toilet location More than 10 min. (v. no area) 1.992 1.014, 3.911* Visible feces None (v. one or more) 1.286 0.719, 2.302 Feces odor No (v. yes) 0.693 0.385, 1.246 Open pit/ open drain nearby No (v. yes) 1.269 0.823, 1.958 *Statistically significant at p < 0.05 Proportional Odds Model for presence of flies
  • 23. Satisfaction Results Variable Outcome modeled Odds Ratio 95% Confidence Interval Sanitation status Improved (v. unimproved) 1.085 0.270, 4.353 Sharing status Not shared (v. shared) 9.897 2.713, 36.097* Presence of flies Rarely (v. always) 1.931 0.559, 6.673 Presence of flies Sometimes (v. always) 0.721 0.362, 1.436 Toilet location Household latrine/ less than 10 min. (v. no designated area) 0.662 0.326, 1.346 Toilet location More than 10 min. (v. no designated area) 0.381 0.271, 0.536* Logistic regression for satisfaction *Statistically significant at p < 0.05
  • 24. Satisfaction Results Variable Outcome modeled Odds Ratio 95% Confidence Interval Feces odor No (v. yes) 1.094 0.674, 1.775 Open pit/ open drain nearby No (v. yes) 0.541 0.386, 0.757* Visible feces None (v. one or more) 0.496 0.298, 0.827* Female safety – day Yes (v. no) 6.489 4.539, 9.276* Female safety – night Yes (v. no) 1.496 0.940, 2.382 Female privacy Yes (v. no) 1.397 0.903, 2.163 Logistic regression for satisfaction *Statistically significant at p < 0.05
  • 25. Conclusions •Health outcomes •Improved sanitation •Shared facilities
  • 26. Limitations •Weak indicators •Two-week diarrheal prevalence •Number of households sharing •Cross-sectional data
  • 27. Strengths •Large dataset •One of first studies to analyze shared sanitation and user satisfaction
  • 28. Discussion •Number of households sharing •How shared facilities affect user satisfaction •Analysis of household survey data from Bangladesh, Tanzania, and Indonesia
  • 29. Acknowledgments •Dr. Angelo Elmi Dept. of Epidemiology and Biostatistics •Dr. Jay Graham Dept. of Environmental and Occupational Health •Craig Kullmann World Bank Water and Sanitation Program •Prof. Ann Goldman Dept. of Epidemiology and Biostatistics