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Autori principali: van der Vlugt, Y. M., van Essen, J. T., Vromans, R. F. M., Carlier, M.
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2410.10221
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author van der Vlugt, Y. M.
van Essen, J. T.
Vromans, R. F. M.
Carlier, M.
author_facet van der Vlugt, Y. M.
van Essen, J. T.
Vromans, R. F. M.
Carlier, M.
contents As pressure on the healthcare system increases, patients that require elective surgery experience longer access times to pre- and post-operative appointments and surgery. Hospitals can control their waiting lists by allocating timeslots to different types of appointments. To allow appointments to be planned timely, this allocation is decided several weeks in advance. However, the consequences of the timeslot allocation are uncertain, as not all patients follow the same treatment pathway. Furthermore, as these planning decisions are made in advance, they are based on an uncertain prediction of future waiting lists. We aim to develop methods that support hospitals in timeslot allocation to reduce access times for patients and ensure that all available capacity is used. The problem is modelled as a Markov decision process (MDP). As the state space is very large, we use least-squares policy iteration to find an approximate solution, formulate an (integer) linear program to solve a deterministic variant of the MDP, and investigate several decision rules. The solution methods are tested on a case study at the Sint Maartenskliniek, a hospital in the Netherlands. Based on a simulation study, we find that all methods improve on the currently used static allocation method, with the (integer) linear program leading to the best results. However, the performance deteriorates with the number of weeks the hospital plans ahead. To counter this, we propose a method in which a percentage of timeslots is statically allocated far in advance, and the remaining timeslots are allocated when enough information is available to effectively deal with variability. For the case study, we find that statically allocating 60% of the timeslots and dynamically allocating the remainder 6 weeks in advance provides the best results in terms of meeting access time targets and efficient resource utilization.
format Preprint
id arxiv_https___arxiv_org_abs_2410_10221
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Timeslot allocation for waiting list control
van der Vlugt, Y. M.
van Essen, J. T.
Vromans, R. F. M.
Carlier, M.
Optimization and Control
As pressure on the healthcare system increases, patients that require elective surgery experience longer access times to pre- and post-operative appointments and surgery. Hospitals can control their waiting lists by allocating timeslots to different types of appointments. To allow appointments to be planned timely, this allocation is decided several weeks in advance. However, the consequences of the timeslot allocation are uncertain, as not all patients follow the same treatment pathway. Furthermore, as these planning decisions are made in advance, they are based on an uncertain prediction of future waiting lists. We aim to develop methods that support hospitals in timeslot allocation to reduce access times for patients and ensure that all available capacity is used. The problem is modelled as a Markov decision process (MDP). As the state space is very large, we use least-squares policy iteration to find an approximate solution, formulate an (integer) linear program to solve a deterministic variant of the MDP, and investigate several decision rules. The solution methods are tested on a case study at the Sint Maartenskliniek, a hospital in the Netherlands. Based on a simulation study, we find that all methods improve on the currently used static allocation method, with the (integer) linear program leading to the best results. However, the performance deteriorates with the number of weeks the hospital plans ahead. To counter this, we propose a method in which a percentage of timeslots is statically allocated far in advance, and the remaining timeslots are allocated when enough information is available to effectively deal with variability. For the case study, we find that statically allocating 60% of the timeslots and dynamically allocating the remainder 6 weeks in advance provides the best results in terms of meeting access time targets and efficient resource utilization.
title Timeslot allocation for waiting list control
topic Optimization and Control
url https://arxiv.org/abs/2410.10221