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Autores principales: Sharifnia, Seyed Mohammad Ebrahim, Bagheri, Faezeh, Sawhney, Rupy, Kobza, John E., De Anda, Enrique Macias, Hajiaghaei-Keshteli, Mostafa, Mirrielees, Michael
Formato: Preprint
Publicado: 2023
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Acceso en línea:https://arxiv.org/abs/2311.00696
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author Sharifnia, Seyed Mohammad Ebrahim
Bagheri, Faezeh
Sawhney, Rupy
Kobza, John E.
De Anda, Enrique Macias
Hajiaghaei-Keshteli, Mostafa
Mirrielees, Michael
author_facet Sharifnia, Seyed Mohammad Ebrahim
Bagheri, Faezeh
Sawhney, Rupy
Kobza, John E.
De Anda, Enrique Macias
Hajiaghaei-Keshteli, Mostafa
Mirrielees, Michael
contents Population aging is a global challenge, leading to increased demand for health care and social services for the elderly. Home Health Care (HHC) is a vital solution to serve this segment of the population. Given the increasing demand for HHC, it is essential to coordinate and regulate caregiver allocation efficiently. This is crucial for both budget-optimized planning and ensuring the delivery of high-quality care. This research addresses a fundamental question in home health agencies (HHAs): "How can caregiver allocation be optimized, especially when caregivers prefer flexibility in their visit sequences?". While earlier studies proposed rigid visiting sequences, our study introduces a decision support framework that allocates caregivers through a hybrid method that considers the flexibility in visiting sequences and aims to reduce travel mileage, increase the number of visits per planning period, and maintain the continuity of care; a critical metric for patient satisfaction. Utilizing data from an HHA in Tennessee, United States, our approach led to an impressive reduction in average travel mileage (up to 42%, depending on discipline) without imposing restrictions on caregivers. Furthermore, the proposed framework is used for caregivers' supply analysis to provide valuable insights into caregiver resource management.
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publishDate 2023
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spellingShingle Decision Support Framework for Home Health Caregiver Allocation Using Optimally Tuned Spectral Clustering and Genetic Algorithm
Sharifnia, Seyed Mohammad Ebrahim
Bagheri, Faezeh
Sawhney, Rupy
Kobza, John E.
De Anda, Enrique Macias
Hajiaghaei-Keshteli, Mostafa
Mirrielees, Michael
Machine Learning
Population aging is a global challenge, leading to increased demand for health care and social services for the elderly. Home Health Care (HHC) is a vital solution to serve this segment of the population. Given the increasing demand for HHC, it is essential to coordinate and regulate caregiver allocation efficiently. This is crucial for both budget-optimized planning and ensuring the delivery of high-quality care. This research addresses a fundamental question in home health agencies (HHAs): "How can caregiver allocation be optimized, especially when caregivers prefer flexibility in their visit sequences?". While earlier studies proposed rigid visiting sequences, our study introduces a decision support framework that allocates caregivers through a hybrid method that considers the flexibility in visiting sequences and aims to reduce travel mileage, increase the number of visits per planning period, and maintain the continuity of care; a critical metric for patient satisfaction. Utilizing data from an HHA in Tennessee, United States, our approach led to an impressive reduction in average travel mileage (up to 42%, depending on discipline) without imposing restrictions on caregivers. Furthermore, the proposed framework is used for caregivers' supply analysis to provide valuable insights into caregiver resource management.
title Decision Support Framework for Home Health Caregiver Allocation Using Optimally Tuned Spectral Clustering and Genetic Algorithm
topic Machine Learning
url https://arxiv.org/abs/2311.00696