Optimization-driven framework to understand health care network costs and resource allocation

Abstract In the last several decades, the U.S. Health care industry has undergone a massive consolidation process that has resulted in the formation of large delivery networks. However, the integration of these networks into a unified operational system faces several challenges. Strateg...

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Main Authors: Bravo, Fernanda, Braun, Marcus, Farias, Vivek, Levi, Retsef, Lynch, Christine, Tumolo, John, Whyte, Richard
Format: Article
Language:English
Published: Springer US 2021
Online Access:https://hdl.handle.net/1721.1/133156
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author Bravo, Fernanda
Braun, Marcus
Farias, Vivek
Levi, Retsef
Lynch, Christine
Tumolo, John
Whyte, Richard
author_facet Bravo, Fernanda
Braun, Marcus
Farias, Vivek
Levi, Retsef
Lynch, Christine
Tumolo, John
Whyte, Richard
author_sort Bravo, Fernanda
collection MIT
description Abstract In the last several decades, the U.S. Health care industry has undergone a massive consolidation process that has resulted in the formation of large delivery networks. However, the integration of these networks into a unified operational system faces several challenges. Strategic problems, such as ensuring access, allocating resources and capacity efficiently, and defining case-mix in a multi-site network, require the correct modeling of network costs, network trade-offs, and operational constraints. Unfortunately, traditional practices related to cost accounting, specifically the allocation of overhead and labor cost to activities as a way to account for the consumption of resources, are not suitable for addressing these challenges; they confound resource allocation and network building capacity decisions. We develop a general methodological optimization-driven framework based on linear programming that allows us to better understand network costs and provide strategic solutions to the aforementioned problems. We work in collaboration with a network of hospitals to demonstrate our framework applicability and important insights derived from it.
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spelling mit-1721.1/1331562021-11-01T14:36:56Z Optimization-driven framework to understand health care network costs and resource allocation Bravo, Fernanda Braun, Marcus Farias, Vivek Levi, Retsef Lynch, Christine Tumolo, John Whyte, Richard Abstract In the last several decades, the U.S. Health care industry has undergone a massive consolidation process that has resulted in the formation of large delivery networks. However, the integration of these networks into a unified operational system faces several challenges. Strategic problems, such as ensuring access, allocating resources and capacity efficiently, and defining case-mix in a multi-site network, require the correct modeling of network costs, network trade-offs, and operational constraints. Unfortunately, traditional practices related to cost accounting, specifically the allocation of overhead and labor cost to activities as a way to account for the consumption of resources, are not suitable for addressing these challenges; they confound resource allocation and network building capacity decisions. We develop a general methodological optimization-driven framework based on linear programming that allows us to better understand network costs and provide strategic solutions to the aforementioned problems. We work in collaboration with a network of hospitals to demonstrate our framework applicability and important insights derived from it. 2021-10-27T16:37:27Z 2021-10-27T16:37:27Z 2021-05-03 2021-05-09T03:11:16Z Article http://purl.org/eprint/type/JournalArticle https://hdl.handle.net/1721.1/133156 Bravo, Fernanda, Braun, Marcus, Farias, Vivek, Levi, Retsef, Lynch, Christine et al. 2021. "Optimization-driven framework to understand health care network costs and resource allocation." PUBLISHER_CC en https://doi.org/10.1007/s10729-021-09565-1 Creative Commons Attribution https://creativecommons.org/licenses/by/4.0/ The Author(s) application/pdf Springer US Springer US
spellingShingle Bravo, Fernanda
Braun, Marcus
Farias, Vivek
Levi, Retsef
Lynch, Christine
Tumolo, John
Whyte, Richard
Optimization-driven framework to understand health care network costs and resource allocation
title Optimization-driven framework to understand health care network costs and resource allocation
title_full Optimization-driven framework to understand health care network costs and resource allocation
title_fullStr Optimization-driven framework to understand health care network costs and resource allocation
title_full_unstemmed Optimization-driven framework to understand health care network costs and resource allocation
title_short Optimization-driven framework to understand health care network costs and resource allocation
title_sort optimization driven framework to understand health care network costs and resource allocation
url https://hdl.handle.net/1721.1/133156
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