том 23 издание 9 страницы 1211-1220

Health service planning to assess the expected impact of centralising specialist cancer services on travel times, equity, and outcomes: a national population-based modelling study

Ajay Aggarwal 1, 2
Lu Han 1
Stephanie Van Der Geest 3
Daniel J. Lewis 4
Yolande Lievens 5
Josep Borras 6
D.G. Jayne 7
Richard F. Sullivan 8
Marco Varkevisser 3
Jan van der Meulen 1
Тип публикацииJournal Article
Дата публикации2022-09-01
scimago Q1
wos Q1
БС1
SJR11.319
CiteScore50.8
Impact factor35.9
ISSN14702045, 14745488
Oncology
Краткое описание

Summary

Background

Centralisation of specialist cancer services is occurring in many countries, often without evaluating the potential impact before implementation. We developed a health service planning model that can estimate the expected impacts of different centralisation scenarios on travel time, equity in access to services, patient outcomes, and hospital workload, using rectal cancer surgery as an example.

Methods

For this population-based modelling study, we used routinely collected individual patient-level data from the National Cancer Registration and Analysis Service (NCRAS) and linked to the NHS Hospital Episode Statistics (HES) database for 11 888 patients who had been diagnosed with rectal cancer between April 1, 2016, and Dec 31, 2018, and who subsequently underwent a major rectal cancer resection in 163 National Health Service (NHS) hospitals providing rectal cancer surgery in England. Five centralisation scenarios were considered: closure of lower-volume centres (scenario A); closure of non-comprehensive cancer centres (scenario B); closure of centres with a net loss of patients to other centres (scenario C); closure of centres meeting all three criteria in scenarios A, B, and C (scenario D); and closure of centres with high readmission rates (scenario E). We used conditional logistic regression to predict probabilities of affected patients moving to each of the remaining centres and the expected changes in travel time, multilevel logistic regression to predict 30-day emergency readmission rates, and linear regression to analyse associations between the expected extra travel time for patients whose centre is closed and five patient characteristics, including age, sex, socioeconomic deprivation, comorbidity, and rurality of the patients' residential areas (rural, urban [non-London], or London). We also quantified additional workload, defined as the number of extra patients reallocated to remaining centres.

Findings

Of the 11 888 patients, 4130 (34·7%) were women, 5249 (44·2%) were aged 70 years and older, and 5005 (42·1%) had at least one comorbidity. Scenario A resulted in closures of 43 (26%) of the 163 rectal cancer surgery centres, affecting 1599 (13·5%) patients; scenario B resulted in closures of 112 (69%) centres, affecting 7029 (59·1%) patients; scenario C resulted in closures of 56 (34%) centres, affecting 3142 (26·4%) patients; scenario D resulted in closures of 24 (15%) centres, affecting 874 (7·4%) patients; and scenario E resulted in closures of 16 (10%) centres, affecting 1000 (8·4%) patients. For each scenario, there was at least a two-times increase in predicted travel time for re-allocated patients with a mean increase in travel time of 23 min; however, the extra travel time did not disproportionately affect vulnerable patient groups. All scenarios resulted in significant reductions in 30-day readmission rates (range 4–48%). Three hospitals in scenario A, 41 hospitals in in scenario B, 13 hospitals in scenario C, no hospitals in scenario D, and two hospitals in scenario E had to manage at least 20 extra patients annually.

Interpretation

This health service planning model can be used to to guide complex decisions about the closure of centres and inform mitigation strategies. The approach could be applied across different country or regional health-care systems for patients with cancer and other complex health conditons.

Funding

National Institute for Health Research.
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Топ-30

Журналы

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Springer Nature
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Aggarwal A. et al. Health service planning to assess the expected impact of centralising specialist cancer services on travel times, equity, and outcomes: a national population-based modelling study // The Lancet Oncology. 2022. Vol. 23. No. 9. pp. 1211-1220.
ГОСТ со всеми авторами (до 50) Скопировать
Aggarwal A., Han L., Van Der Geest S., Lewis D. J., Lievens Y., Borras J., Jayne D., Sullivan R. F., Varkevisser M., Meulen J. V. D. Health service planning to assess the expected impact of centralising specialist cancer services on travel times, equity, and outcomes: a national population-based modelling study // The Lancet Oncology. 2022. Vol. 23. No. 9. pp. 1211-1220.
RIS |
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TY - JOUR
DO - 10.1016/S1470-2045(22)00398-9
UR - https://doi.org/10.1016/S1470-2045(22)00398-9
TI - Health service planning to assess the expected impact of centralising specialist cancer services on travel times, equity, and outcomes: a national population-based modelling study
T2 - The Lancet Oncology
AU - Aggarwal, Ajay
AU - Han, Lu
AU - Van Der Geest, Stephanie
AU - Lewis, Daniel J.
AU - Lievens, Yolande
AU - Borras, Josep
AU - Jayne, D.G.
AU - Sullivan, Richard F.
AU - Varkevisser, Marco
AU - Meulen, Jan van der
PY - 2022
DA - 2022/09/01
PB - Elsevier
SP - 1211-1220
IS - 9
VL - 23
PMID - 35931090
SN - 1470-2045
SN - 1474-5488
ER -
BibTex |
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@article{2022_Aggarwal,
author = {Ajay Aggarwal and Lu Han and Stephanie Van Der Geest and Daniel J. Lewis and Yolande Lievens and Josep Borras and D.G. Jayne and Richard F. Sullivan and Marco Varkevisser and Jan van der Meulen},
title = {Health service planning to assess the expected impact of centralising specialist cancer services on travel times, equity, and outcomes: a national population-based modelling study},
journal = {The Lancet Oncology},
year = {2022},
volume = {23},
publisher = {Elsevier},
month = {sep},
url = {https://doi.org/10.1016/S1470-2045(22)00398-9},
number = {9},
pages = {1211--1220},
doi = {10.1016/S1470-2045(22)00398-9}
}
MLA
Цитировать
Aggarwal, Ajay, et al. “Health service planning to assess the expected impact of centralising specialist cancer services on travel times, equity, and outcomes: a national population-based modelling study.” The Lancet Oncology, vol. 23, no. 9, Sep. 2022, pp. 1211-1220. https://doi.org/10.1016/S1470-2045(22)00398-9.