Improving health outcomes through better capacity allocation in a community-based chronic care model

Deo, S and Iravani, S and Jiang, T and Smilowitz, K and Samuelson, S (2013) Improving health outcomes through better capacity allocation in a community-based chronic care model. Operations Research, 61 (6). pp. 1277-1294.

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Abstract

This paper studies a model of community-based healthcare delivery for a chronic disease. In this setting, patients periodically visit the healthcare delivery system, which influences their disease progression and consequently their health outcomes. We investigate how the provider can maximize community-level health outcomes through better operational decisions pertaining to capacity allocation across different patients. To do so, we develop an integrated capacity allocation model that incorporates clinical (disease progression) and operational (capacity constraint) aspects. Specifically, we model the provider's problem as a finite horizon stochastic dynamic program, where the provider decides which patients to schedule at the beginning of each period. Therapy is provided to scheduled patients, which may improve their health states. Patients that are not seen follow their natural disease progression. We derive a quantitative measure for comparison of patients' health states and use it to design an easy-to-implement myopic heuristic that is provably optimal in special cases of the problem. We employ the myopic heuristic in a more general setting and test its performance using operational and clinical data obtained from Mobile C.A.R.E. Foundation, a community-based provider of pediatric asthma care in Chicago. Our extensive computational experiments suggest that the myopic heuristic can improve the health gains at the community level by up to 15% over the current policy. The benefit is driven by the ability of our myopic heuristic to alter the duration between visits for patients with different health states depending on the tightness of the capacity and the health states of the entire patient population. © 2013 INFORMS.

Affiliation: Indian School of Business
ISB Creators:
ISB CreatorsORCiD
Deo, SUNSPECIFIED
Item Type: Article
Uncontrolled Keywords: Capacity allocation; Capacity constraints; Computational experiment; Disease progression; Healthcare delivery; Operational decisions; Quantitative measures; Stochastic dynamic program
Subjects: Health care and delivery
Depositing User: Users 13 not found.
Date Deposited: 16 Nov 2014 09:59
Last Modified: 17 Jun 2015 07:47
URI: http://eprints.exchange.isb.edu/id/eprint/279
Publisher URL: http://dx.doi.org/10.1287/opre.2013.1214
Publisher OA policy: http://www.sherpa.ac.uk/romeo/issn/0030-364X/
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