Planning a Community Approach to Diabetes Care in Low- and Middle-Income
Countries Using Optimization
- URL: http://arxiv.org/abs/2305.06426v1
- Date: Wed, 10 May 2023 19:15:19 GMT
- Title: Planning a Community Approach to Diabetes Care in Low- and Middle-Income
Countries Using Optimization
- Authors: Katherine B. Adams, Justin J. Boutilier, Sarang Deo, Yonatan Mintz
- Abstract summary: We introduce an optimization framework to determine personalized CHW visits that maximize glycemic control at a community-level.
By estimating patients' health and motivational states, our model builds visit plans that account for patients' tradeoffs when deciding to enroll in treatment.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Diabetes is a global health priority, especially in low- and-middle-income
countries, where over 50% of premature deaths are attributed to high blood
glucose. Several studies have demonstrated the feasibility of using Community
Health Worker (CHW) programs to provide affordable and culturally tailored
solutions for early detection and management of diabetes. Yet, scalable models
to design and implement CHW programs while accounting for screening,
management, and patient enrollment decisions have not been proposed. We
introduce an optimization framework to determine personalized CHW visits that
maximize glycemic control at a community-level. Our framework explicitly models
the trade-off between screening new patients and providing management visits to
individuals who are already enrolled in treatment. We account for patients'
motivational states, which affect their decisions to enroll or drop out of
treatment and, therefore, the effectiveness of the intervention. We incorporate
these decisions by modeling patients as utility-maximizing agents within a
bi-level provider problem that we solve using approximate dynamic programming.
By estimating patients' health and motivational states, our model builds visit
plans that account for patients' tradeoffs when deciding to enroll in
treatment, leading to reduced dropout rates and improved resource allocation.
We apply our approach to generate CHW visit plans using operational data from a
social enterprise serving low-income neighborhoods in urban areas of India.
Through extensive simulation experiments, we find that our framework requires
up to 73.4% less capacity than the best naive policy to achieve the same
performance in terms of glycemic control. Our experiments also show that our
solution algorithm can improve upon naive policies by up to 124.5% using the
same CHW capacity.
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