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Main Authors: Sun, Bozhi, Tierney, Seda, Feinstein, Jeffrey A., Damen, Frederick, Marsden, Alison L., Schiavazzi, Daniele E.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.06297
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author Sun, Bozhi
Tierney, Seda
Feinstein, Jeffrey A.
Damen, Frederick
Marsden, Alison L.
Schiavazzi, Daniele E.
author_facet Sun, Bozhi
Tierney, Seda
Feinstein, Jeffrey A.
Damen, Frederick
Marsden, Alison L.
Schiavazzi, Daniele E.
contents Scheduling echocardiographic exams in a hospital presents significant challenges due to non-deterministic factors (e.g., patient no-shows, patient arrival times, diverse exam durations, etc.) and asymmetric resource constraints between fetal and non-fetal patient streams. To address these challenges, we first conducted extensive pre-processing on one week of operational data from the Echo Laboratory at Stanford University's Lucile Packard Children's Hospital, to estimate patient no-show probabilities and derive empirical distributions of arrival times and exam durations. Based on these inputs, we developed a discrete-event stochastic simulation model using SimPy, and integrate it with the open source Gymnasium Python library. As a baseline for policy optimization, we developed a comparative framework to evaluate on-the-fly versus reservation-based allocation strategies, in which different proportions of resources are reserved in advance. Considering a hospital configuration with a 1:6 ratio of fetal to non-fetal rooms and a 4:2 ratio of fetal to non-fetal sonographers, we show that on-the-fly allocation generally yields better performance, more effectively adapting to patient variability and resource constraints. Building on this foundation, we apply reinforcement learning (RL) to derive an approximated optimal dynamic allocation policy. This RL-based policy is benchmarked against the best-performing rule-based strategies, allowing us to quantify their differences and provide actionable insights for improving echo lab efficiency through intelligent, data-driven resource management.
format Preprint
id arxiv_https___arxiv_org_abs_2506_06297
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Optimal patient allocation for echocardiographic assessments
Sun, Bozhi
Tierney, Seda
Feinstein, Jeffrey A.
Damen, Frederick
Marsden, Alison L.
Schiavazzi, Daniele E.
Machine Learning
Artificial Intelligence
Scheduling echocardiographic exams in a hospital presents significant challenges due to non-deterministic factors (e.g., patient no-shows, patient arrival times, diverse exam durations, etc.) and asymmetric resource constraints between fetal and non-fetal patient streams. To address these challenges, we first conducted extensive pre-processing on one week of operational data from the Echo Laboratory at Stanford University's Lucile Packard Children's Hospital, to estimate patient no-show probabilities and derive empirical distributions of arrival times and exam durations. Based on these inputs, we developed a discrete-event stochastic simulation model using SimPy, and integrate it with the open source Gymnasium Python library. As a baseline for policy optimization, we developed a comparative framework to evaluate on-the-fly versus reservation-based allocation strategies, in which different proportions of resources are reserved in advance. Considering a hospital configuration with a 1:6 ratio of fetal to non-fetal rooms and a 4:2 ratio of fetal to non-fetal sonographers, we show that on-the-fly allocation generally yields better performance, more effectively adapting to patient variability and resource constraints. Building on this foundation, we apply reinforcement learning (RL) to derive an approximated optimal dynamic allocation policy. This RL-based policy is benchmarked against the best-performing rule-based strategies, allowing us to quantify their differences and provide actionable insights for improving echo lab efficiency through intelligent, data-driven resource management.
title Optimal patient allocation for echocardiographic assessments
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2506.06297