“There Is No Link Between Resource Allocation and Use of Local Data”: A Qualitative Study of District-Based Health Decision-Making in West Bengal, India
Abstract
:1. Introduction
Context: Health System Connectivity at the District Level
2. Methods
2.1. Data Collection
2.2. Data Analysis
3. Results
3.1. The Health Decision-Making Process in Districts
“Bottom-up approach should be adopted while making district health plans… Suggestions from the community can be considered and discussed …But we have to adhere to the priorities set by (the) Government of India and State Government.”(Health Department Representative)
“Sometimes, issues related to funds shortage for implementing programmes can be taken care (of) by DHS… District specific useful ideas which need funds can be decided at the DHS.”(Health Department Representative)
“Interactions with other departments is only need based … otherwise, there are no such regular interactions other than DHS forum.”(Health Department Representative)
“Our department is not getting much importance in DHS meetings. One representative from our end just attends the meeting and is not aware of DHS functions... and the health department is also not taking the initiative to motivate us… Our role is poorly defined.”(Other department Representative)
3.2. Use of Data for Decision-Making
“HMIS is a structured format with (a) specific set of columns (indicators)... all data coming from different divisions can’t be uploaded on HMIS… MCTS are specifically reproductive and child health-based data portal, rather than for other public health programmes.....”(Health Department Representative)
“Data sharing between Health and the Department of Women and Child is a major challenge. There is no concordance between these two departments. At the district level, data sharing should be mandatory at DHS.”(other department Representative)
3.3. Extent of Data Use for Planning and Decision-Making
“Yes data is useful for planning (e.g., bed occupancy rate). When (the) Mission Director of NHM (National Health Mission) visited this hospital found bed occupancy rate at 130%. Then we send the proposal of increasing beds in maternity ward from 85 to 120 and was discussed in DHS meeting...”(Health Department Representative)
“We are not monitoring our programmes on the basis of our own data... we are not utilising the data... in fact, we are not benefiting from the large volume of data that we are collecting.“(Health Department Representative)
“Data is very much useful while preparing (the) district health plan. Data supports us every time, but it is also true that due to lack of time and inadequate manpower... it is not utilised. Data is a fascinating tool if we use it properly.”(Health Department Representative)
“There is no such link between funding and data; in my personal opinion, funding is particular (predefined state guideline) and never linked with data.”(other department Representative)
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
VHND | Village Health Nutrition Days organised once a month aimed at promoting Reproductive Maternal Newborn Child Health initiatives. |
ASHA | Accredited Social Health Activists are community health workers recruited under National Rural Health Mission who work as health promoters in the community. |
Anganwadi workers | Anganwadi is the basic unit of the Integrated Child Development Services scheme and covers a population of 1000. The workers are females recruited from the local community and trained in non-formal pre-school education, nutrition and health. |
JSSK Nischay Yan | Provision of free referral transport to pregnant women under Janani Shishu Suraksha Karyakram |
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Methods | Source of Data | Sample in Two Districts |
---|---|---|
Observations | District decision-making meetings. | 4 |
In-depth interviews | Respondents from the Health Department | 16 |
Respondents from government departments that provide indirect public health services | 6 | |
Respondents from the district administration | 2 | |
Collection of data templates, which contribute to HMIS |
|
Health System Categories | Type of Maternal and Child Health Issues Discussed | Use of Data (Yes/No) * | Availability of Data (Yes/No) # | Availability of Indicators in HMIS # (per Month) |
---|---|---|---|---|
Service delivery | 1. Immunisation coverage: sub-district percentage | Y | Y | Number of infants 0–11 months who received: OPV1,2,3; BCG; DPT |
2. Institutional delivery: sub-district and facility-based | Y | Y | Number of facility deliveries (including C-sections); number of women discharged under 48 h after delivery | |
3. Deliveries: empanelment of private nursing homes under public private partnership scheme | Y | Y | Number of deliveries | |
4. Home births: sub-district | N | Y | Number of home deliveries | |
5. C-sections: number performed at facility | N | Y | Number of C-Section deliveries | |
6. Use of partograph | N | N | Not available | |
7. Information Education Communication (IEC), Behaviour Change Communication (BCC) activities conducted for malaria and dengue fever | N | Y | IEC/BCC activities conducted; available, usable etc. | |
Health outcome | 8. Child malnutrition: proportion of underweight children in the district | Y | Y | A number of children with severe acute malnutrition (SAM). Of children weighed, numbers found to be: moderately underweight/severely underweight |
9. Childhood diseases prevalence: sub-district | N | Y | Number of cases of childhood diseases reported | |
10. Malnutrition among pregnant women | N | Y | Pregnant women with anaemia: number having Hb level <11, <7 Deaths of mothers due to anaemia, during pregnancy or delivery | |
11. Birth weight of newborn | N | Y | Number of newborns weighed at birth; weighing less than 2.5 kg | |
12. Maternal mortality rate | N | Y | Mortality details: name, age, sex, village, causes | |
13. Newborn and child death rate | N | Y | Mortality details: name, age, sex, village, causes | |
Human Resouces | 14. Shortage of staff, e.g., at sub-district: Accrediated Social Health Activist (ASHA) Facilitator and data entry operators | Y | Y | Number of staff in post, vacancies etc. |
15. Arranging joint home-visits by ASHA and Anganwadi workers (AWW) to pregnant women near their expected delivery date: sub-district | Y | Y | Number of Village Health and Nutrition day (VHNDs) where Auxiliary Nurse and Midwife (ANM), AWW, ASHA present | |
16. Data maintenance skills of frontline workers | N | Y | Number of ASHAs fully trained (5 modules—23 days) | |
17. Counselling skills, inter-personal communication skills of Frontline workers | N | Y | Number of trained/skilled staff | |
Infrastructure and Supplies | 18. Construction and renovation of primary health centre, requirement of additional beds | Y | Y | Construction of new primary health centres, staff quarters, new MCH complex, neonatal ward |
19. Operationalising new delivery points | Y | Y | Number of facilities where deliveries take place (delivery points). Number of children referred from health facility/delivery point | |
20. Referral transport under the Janani Sishu Suraksha Karaykram (JSSK): Nischay Jan ambulance scheme, including three-wheeler motorised vehicles | Y | Y | Number of sub-districts where referral transport service is available. Ambulance type. Number of sick infants transported by referral transport services | |
21. Stock out of medicine | N | Y | Stock position: drugs and medical commodities/consumables. Number of ASHAs having regular supplies for drug kits |
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Bhattacharyya, S.; Issac, A.; Girase, B.; Guha, M.; Schellenberg, J.; Iqbal Avan, B. “There Is No Link Between Resource Allocation and Use of Local Data”: A Qualitative Study of District-Based Health Decision-Making in West Bengal, India. Int. J. Environ. Res. Public Health 2020, 17, 8283. https://doi.org/10.3390/ijerph17218283
Bhattacharyya S, Issac A, Girase B, Guha M, Schellenberg J, Iqbal Avan B. “There Is No Link Between Resource Allocation and Use of Local Data”: A Qualitative Study of District-Based Health Decision-Making in West Bengal, India. International Journal of Environmental Research and Public Health. 2020; 17(21):8283. https://doi.org/10.3390/ijerph17218283
Chicago/Turabian StyleBhattacharyya, Sanghita, Anns Issac, Bhushan Girase, Mayukhmala Guha, Joanna Schellenberg, and Bilal Iqbal Avan. 2020. "“There Is No Link Between Resource Allocation and Use of Local Data”: A Qualitative Study of District-Based Health Decision-Making in West Bengal, India" International Journal of Environmental Research and Public Health 17, no. 21: 8283. https://doi.org/10.3390/ijerph17218283
APA StyleBhattacharyya, S., Issac, A., Girase, B., Guha, M., Schellenberg, J., & Iqbal Avan, B. (2020). “There Is No Link Between Resource Allocation and Use of Local Data”: A Qualitative Study of District-Based Health Decision-Making in West Bengal, India. International Journal of Environmental Research and Public Health, 17(21), 8283. https://doi.org/10.3390/ijerph17218283