Association of Livestock Ownership and Household Dietary Quality: Results from a Cross-Sectional Survey from Rural India
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design and Study Setting
2.2. Data Collection
2.3. Statistical Analysis
3. Results
3.1. Socio-Demographic Characteristics of the Study Population
3.2. Status of Health Determinants and Correlation of Household Milk Consumption with Dietary Variables
3.3. Association between Ownership of Dairy Animal(s) and Milk Consumption
4. Discussion
4.1. Interpretation from a Household Nutrition Perspective
4.2. Interpretation in the Light of WSD Projects
4.3. Interpreting Effects of Household Size and Wage Labour—Novel Results
4.4. Limitations of the Study
4.5. Scope for Future Research and Practice
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Owns Dairy Animal(s) (n = 84) | Does Not Own Dairy Animal(s) (n = 111) | Total (n = 195) |
---|---|---|---|
Respondent details | |||
Age (median [P25–75]) a in years | 34.5 (26.0–41.3) | 35 (28–47) | 35 (27–45) |
Respondent is female | 75 (89.3%) | 107 (96.4%) | 182 (93.3%) |
Respondent is illiterate | 42 (50.0%) | 69 (62.2%) | 111 (56.9%) |
Household characteristics | |||
Household size (median (P25–75)) | 5 (4.8–7) | 4 (3–5) | 5 (4–6) |
Under-5 child in household | 23 (27.4%) | 22 (19.8%) | 45 (23.1%) |
Woman-headed household | 2 (2.4%) | 25 (22.5%) | 27 (13.8%) |
Caste | |||
General category | 52 (61.9%) | 68 (61.3%) | 120 (61.5%) |
Scheduled caste (SC) | 2 (2.4%) | 13 (11.7%) | 15 (7.7%) |
Scheduled tribe (ST) | 30 (35.7%) | 30 (27.0%) | 60 (30.8%) |
Primary income source | |||
Agriculture | 61 (72.6%) | 70 (63.1%) | 131 (67.2%) |
Daily wage | 14 (16.7%) | 24 (21.6%) | 38 (19.5%) |
Livestock rearing | 3 (3.6%) | 2 (1.8%) | 5 (2.6%) |
Other | 6 (7.2%) | 15 (13.5%) | 21 (10.8%) |
Land ownership in acres b (mean [standard deviation]) | 2.75 [1.47] | 2.09 [1.46] | 2.37 [1.49] |
Access to irrigation | 49 (58.3%) | 28 (25.2%) | 77 (39.5%) |
Owns non-dairy livestock | 80 (95.2%) | 29 (26.1%) | 109 (55.9%) |
Regular travel for wage labor | 33 (39.3%) | 49 (44.1%) | 82 (42.1%) |
Undertook seasonal migration | 2 (2.4%) | 10 (9.0%) | 12 (6.2%) |
SHG membership | 35 (41.7%) | 37 (33.3%) | 72 (36.9%) |
Owning a motorizedvehicle | 78 (92.9%) | 90 (81.1%) | 168 (86.2%) |
Social welfare card | |||
Below poverty line | 77 (91.7%) | 105 (94.6%) | 182 (93.3%) |
Antyodaya scheme | 7 (8.3%) | 5 (4.5%) | 12 (6.2%) |
Variable | Owns Dairy Animal(s) (n = 84) | Does Not Own Dairy Animal (n = 111) | Total (n = 195) |
---|---|---|---|
Experienced food insecurity in the past two years | 15 (17.9%) | 25 (22.5%) | 40 (20.5%) |
Consume any milk regularly | 74 (88.1%) | 69 (62.2%) | 143 (73.3%) |
Variety of vegetables consumed previous week (median (P25–P75) a | 6 (5–7) | 6 (4–7) | 6 (5–7) |
Egg consumption frequency in a month (median (P25–P75) | 2 (2–4) | 2 (1–3) | 2 (1–4) |
Meat consumption frequency in a month | 4 (4–4.3) | 4 (3–4) | 4 (4–4) |
Fruit consumption frequency in a month (median (P25–P75) | 2 (1–3) | 1 (0–2) | 1 (0–2) |
No knowledge of any iron-rich foods | 2 (2.4%) | 11 (9.9%) | 13 (6.7%) |
Latrine ownership | 79 (94.0%) | 102 (91.9%) | 181 (92.8%) |
Any member consumesalcohol | 7 (8.3%) | 20 (18.0%) | 27 (13.8%) |
Any member smokes | 11 (13.1%) | 20 (18.0%) | 31 (15.9%) |
Any member chews tobacco | 21 (25.0%) | 25 (22.5%) | 46 (23.6%) |
First choice healthcare provider for fever | |||
Local government hospital | 50 (59.5%) | 91 (82.0%) | 141 (72.3%) |
Local private doctor | 32 (38.1%) | 17 (15.3%) | 49 (25.1%) |
Health insurance cover | |||
Governmental schemes | 34 (40.5%) | 51 (45.9%) | 85 (43.6%) |
Private | 1 (1.2%) | 0 (0.0%) | 1 (0.5%) |
None | 49 (58.3%) | 60 (54.1%) | 109 (55.9%) |
Factor Related to Dietary Quality | Kendall’s tau | p-Value |
---|---|---|
Variety of vegetables consumed | 0.163 | 0.017 * |
Frequency of fruit consumption | 0.016 | 0.816 |
Frequency of egg consumption | 0.265 | <0.001 * |
Frequency of meat consumption | 0.139 | 0.049 * |
Variable | Crude OR (95% CI) | Adjusted OR (95% CI) | SA: Adjusted OR (95% CI) |
---|---|---|---|
Owns dairy animal(s) | 4.50 (2.17–10.14) *** | 2.11 (0.87–5.45) | 2.20 (0.77–6.45) |
Household size | 2.00 (1.56–2.66) *** | 1.88 (1.34–2.77) *** | 1.62 (1.06–2.77) |
Woman-headed household | 0.19 (0.08–0.43) *** | 0.78 (0.25–2.58) | NA |
Whether SC a | 2.50 (0.66–16.35) | - | - |
Whether ST a | 1.13 (0.57–2.32) | - | - |
Whether general caste | 0.71 (0.36–1.37) | 0.71 (0.31–1.58) | 0.36 (0.1–1.14) |
Child in household | 1.92 (0.86–4.73) | 0.48 (0.16–1.45) | 0.73 (0.15–4.16) |
Wage labor main income source | 0.87 (0.4–1.97) | 2.89 (1.04–9.03) | 2.01 (0.52–9.17) |
Land owned | 1.67 (1.23–2.35) ** | 1.06 (0.8–1.47) | 1.8 (0.96–3.92) |
Irrigation access | 3.19 (1.57–6.99) ** | 1.30 (0.53–3.29) | 1.75 (0.55–5.74) |
SHG member | 1.29 (0.67–2.56) | 1.04 (0.47–2.37) | 3.38 (0.97–14.98) |
Owns motorised vehicle | 9.72 (4.04–25.4) *** | 4.08 (1.23–14.31) * | 1.21 (0.19–6.53) |
Any non-dairy livestock owned b | 3.71 (1.92–7.42) *** | - | - |
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Pradyumna, A.; Winkler, M.S.; Utzinger, J.; Farnham, A. Association of Livestock Ownership and Household Dietary Quality: Results from a Cross-Sectional Survey from Rural India. Int. J. Environ. Res. Public Health 2021, 18, 6060. https://doi.org/10.3390/ijerph18116060
Pradyumna A, Winkler MS, Utzinger J, Farnham A. Association of Livestock Ownership and Household Dietary Quality: Results from a Cross-Sectional Survey from Rural India. International Journal of Environmental Research and Public Health. 2021; 18(11):6060. https://doi.org/10.3390/ijerph18116060
Chicago/Turabian StylePradyumna, Adithya, Mirko S. Winkler, Jürg Utzinger, and Andrea Farnham. 2021. "Association of Livestock Ownership and Household Dietary Quality: Results from a Cross-Sectional Survey from Rural India" International Journal of Environmental Research and Public Health 18, no. 11: 6060. https://doi.org/10.3390/ijerph18116060
APA StylePradyumna, A., Winkler, M. S., Utzinger, J., & Farnham, A. (2021). Association of Livestock Ownership and Household Dietary Quality: Results from a Cross-Sectional Survey from Rural India. International Journal of Environmental Research and Public Health, 18(11), 6060. https://doi.org/10.3390/ijerph18116060