A data envelopment analysis model for optimizing transfer time of ischemic stroke patients under endovascular thrombectomy

This study applies Data Envelopment Analysis (DEA) to optimize transfer times and futile transfers of eligible ischemic stroke patients receiving Endovascular Thrombosis (EVT) in Primary Stroke Centers (PSC) in Nova Scotia. The study aims to assess healthcare delivery in Nova Scotia over two periods...

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Main Authors: Mirpouya Mirmozaffari, Noreen Kamal
Format: Article
Language:English
Published: Elsevier 2024-12-01
Series:Healthcare Analytics
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Online Access:http://www.sciencedirect.com/science/article/pii/S2772442524000662
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author Mirpouya Mirmozaffari
Noreen Kamal
author_facet Mirpouya Mirmozaffari
Noreen Kamal
author_sort Mirpouya Mirmozaffari
collection DOAJ
description This study applies Data Envelopment Analysis (DEA) to optimize transfer times and futile transfers of eligible ischemic stroke patients receiving Endovascular Thrombosis (EVT) in Primary Stroke Centers (PSC) in Nova Scotia. The study aims to assess healthcare delivery in Nova Scotia over two periods. It seeks to improve stroke care for rural populations by examining nine inputs, including age and distance between PSCs and the Comprehensive Stroke Centre (CSC) that provided EVT treatment, concerning a single output variable: whether EVT is performed or not. In the first phase, 115 patients were treated as Decision-Making Units (DMUs) for ten PSCs by applying an input-oriented Variable Returns to Scale (VRS) assisted by super-efficiency analysis using the Python-based PyDEA tool. This tool is known for its unrestricted capacity to handle DMUs, inputs, and outputs. In the second phase, eight PSCs with low patient numbers were merged into four DMUs, each consisting of two PSCs. These two merged PSCs have limited patients, and the selected PSCs are also geographically close. Two PSCs have been kept separate because they had sufficient patient volume. In the first phase, VRS generated more reasonable efficiency scores for evaluation, while in the second phase, Constant Returns to Scale (CRS) outperformed VRS, yielding better results. In the initial stage of the second phase, ten PSCs were considered as six DMUs using the input-oriented CRS and VRS for 115 patients. Super-efficiency measures were applied in this stage to improve the evaluation process further. In the second part of the second phase, a comparison between the first period (2018–2019) and the second period (2020–2021) was conducted using the Malmquist Productivity Index (MPI), considering CRS and VRS to evaluate the relative efficiency and productivity change of six DMUs over time.
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spelling doaj-art-42a6d6962dc8441c872fcac54f3f608e2025-08-20T02:52:30ZengElsevierHealthcare Analytics2772-44252024-12-01610036410.1016/j.health.2024.100364A data envelopment analysis model for optimizing transfer time of ischemic stroke patients under endovascular thrombectomyMirpouya Mirmozaffari0Noreen Kamal1Corresponding author.; Department of Industrial Engineering, Dalhousie University, 5269 Morris Street, Halifax, NS, B3H 4R2, CanadaDepartment of Industrial Engineering, Dalhousie University, 5269 Morris Street, Halifax, NS, B3H 4R2, CanadaThis study applies Data Envelopment Analysis (DEA) to optimize transfer times and futile transfers of eligible ischemic stroke patients receiving Endovascular Thrombosis (EVT) in Primary Stroke Centers (PSC) in Nova Scotia. The study aims to assess healthcare delivery in Nova Scotia over two periods. It seeks to improve stroke care for rural populations by examining nine inputs, including age and distance between PSCs and the Comprehensive Stroke Centre (CSC) that provided EVT treatment, concerning a single output variable: whether EVT is performed or not. In the first phase, 115 patients were treated as Decision-Making Units (DMUs) for ten PSCs by applying an input-oriented Variable Returns to Scale (VRS) assisted by super-efficiency analysis using the Python-based PyDEA tool. This tool is known for its unrestricted capacity to handle DMUs, inputs, and outputs. In the second phase, eight PSCs with low patient numbers were merged into four DMUs, each consisting of two PSCs. These two merged PSCs have limited patients, and the selected PSCs are also geographically close. Two PSCs have been kept separate because they had sufficient patient volume. In the first phase, VRS generated more reasonable efficiency scores for evaluation, while in the second phase, Constant Returns to Scale (CRS) outperformed VRS, yielding better results. In the initial stage of the second phase, ten PSCs were considered as six DMUs using the input-oriented CRS and VRS for 115 patients. Super-efficiency measures were applied in this stage to improve the evaluation process further. In the second part of the second phase, a comparison between the first period (2018–2019) and the second period (2020–2021) was conducted using the Malmquist Productivity Index (MPI), considering CRS and VRS to evaluate the relative efficiency and productivity change of six DMUs over time.http://www.sciencedirect.com/science/article/pii/S2772442524000662Data envelopment analysisEndovascular thrombectomyVariable returns to scaleConstant returns to scaleMalmquist productivity indexSuper efficiency
spellingShingle Mirpouya Mirmozaffari
Noreen Kamal
A data envelopment analysis model for optimizing transfer time of ischemic stroke patients under endovascular thrombectomy
Healthcare Analytics
Data envelopment analysis
Endovascular thrombectomy
Variable returns to scale
Constant returns to scale
Malmquist productivity index
Super efficiency
title A data envelopment analysis model for optimizing transfer time of ischemic stroke patients under endovascular thrombectomy
title_full A data envelopment analysis model for optimizing transfer time of ischemic stroke patients under endovascular thrombectomy
title_fullStr A data envelopment analysis model for optimizing transfer time of ischemic stroke patients under endovascular thrombectomy
title_full_unstemmed A data envelopment analysis model for optimizing transfer time of ischemic stroke patients under endovascular thrombectomy
title_short A data envelopment analysis model for optimizing transfer time of ischemic stroke patients under endovascular thrombectomy
title_sort data envelopment analysis model for optimizing transfer time of ischemic stroke patients under endovascular thrombectomy
topic Data envelopment analysis
Endovascular thrombectomy
Variable returns to scale
Constant returns to scale
Malmquist productivity index
Super efficiency
url http://www.sciencedirect.com/science/article/pii/S2772442524000662
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AT mirpouyamirmozaffari dataenvelopmentanalysismodelforoptimizingtransfertimeofischemicstrokepatientsunderendovascularthrombectomy
AT noreenkamal dataenvelopmentanalysismodelforoptimizingtransfertimeofischemicstrokepatientsunderendovascularthrombectomy