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Machine learning models of healthcare expenditures predicting mortality: A cohort study of spousal bereaved Danish individuals

BACKGROUND: The ability to accurately predict survival in older adults is crucial as it guides clinical decision making. The added value of using health care usage for predicting mortality remains unexplored. The aim of this study was to investigate if temporal patterns of healthcare expenditures, c...

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Autores principales: Katsiferis, Alexandros, Bhatt, Samir, Mortensen, Laust Hvas, Mishra, Swapnil, Jensen, Majken Karoline, Westendorp, Rudi G. J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10406307/
https://www.ncbi.nlm.nih.gov/pubmed/37549164
http://dx.doi.org/10.1371/journal.pone.0289632
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author Katsiferis, Alexandros
Bhatt, Samir
Mortensen, Laust Hvas
Mishra, Swapnil
Jensen, Majken Karoline
Westendorp, Rudi G. J.
author_facet Katsiferis, Alexandros
Bhatt, Samir
Mortensen, Laust Hvas
Mishra, Swapnil
Jensen, Majken Karoline
Westendorp, Rudi G. J.
author_sort Katsiferis, Alexandros
collection PubMed
description BACKGROUND: The ability to accurately predict survival in older adults is crucial as it guides clinical decision making. The added value of using health care usage for predicting mortality remains unexplored. The aim of this study was to investigate if temporal patterns of healthcare expenditures, can improve the predictive performance for mortality, in spousal bereaved older adults, next to other widely used sociodemographic variables. METHODS: This is a population-based cohort study of 48,944 Danish citizens 65 years of age and older suffering bereavement within 2013–2016. Individuals were followed from date of spousal loss until death from all causes or 31(st) of December 2016, whichever came first. Healthcare expenditures were available on weekly basis for each person during the follow-up and used as predictors for mortality risk in Extreme Gradient Boosting models. The extent to which medical spending trajectories improved mortality predictions compared to models with sociodemographics, was assessed with respect to discrimination (AUC), overall prediction error (Brier score), calibration, and clinical benefit (decision curve analysis). RESULTS: The AUC of age and sex for mortality the year after spousal loss was 70.8% [95% CI 68.8, 72.8]. The addition of sociodemographic variables led to an increase of AUC ranging from 0.9% to 3.1% but did not significantly reduce the overall prediction error. The AUC of the model combining the variables above plus medical spending usage was 80.8% [79.3, 82.4] also exhibiting smaller Brier score and better calibration. Overall, patterns of healthcare expenditures improved mortality predictions the most, also exhibiting the highest clinical benefit among the rest of the models. CONCLUSION: Temporal patterns of medical spending have the potential to significantly improve our assessment on who is at high risk of dying after suffering spousal loss. The proposed methodology can assist in a more efficient risk profiling and prognosis of bereaved individuals.
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spelling pubmed-104063072023-08-08 Machine learning models of healthcare expenditures predicting mortality: A cohort study of spousal bereaved Danish individuals Katsiferis, Alexandros Bhatt, Samir Mortensen, Laust Hvas Mishra, Swapnil Jensen, Majken Karoline Westendorp, Rudi G. J. PLoS One Research Article BACKGROUND: The ability to accurately predict survival in older adults is crucial as it guides clinical decision making. The added value of using health care usage for predicting mortality remains unexplored. The aim of this study was to investigate if temporal patterns of healthcare expenditures, can improve the predictive performance for mortality, in spousal bereaved older adults, next to other widely used sociodemographic variables. METHODS: This is a population-based cohort study of 48,944 Danish citizens 65 years of age and older suffering bereavement within 2013–2016. Individuals were followed from date of spousal loss until death from all causes or 31(st) of December 2016, whichever came first. Healthcare expenditures were available on weekly basis for each person during the follow-up and used as predictors for mortality risk in Extreme Gradient Boosting models. The extent to which medical spending trajectories improved mortality predictions compared to models with sociodemographics, was assessed with respect to discrimination (AUC), overall prediction error (Brier score), calibration, and clinical benefit (decision curve analysis). RESULTS: The AUC of age and sex for mortality the year after spousal loss was 70.8% [95% CI 68.8, 72.8]. The addition of sociodemographic variables led to an increase of AUC ranging from 0.9% to 3.1% but did not significantly reduce the overall prediction error. The AUC of the model combining the variables above plus medical spending usage was 80.8% [79.3, 82.4] also exhibiting smaller Brier score and better calibration. Overall, patterns of healthcare expenditures improved mortality predictions the most, also exhibiting the highest clinical benefit among the rest of the models. CONCLUSION: Temporal patterns of medical spending have the potential to significantly improve our assessment on who is at high risk of dying after suffering spousal loss. The proposed methodology can assist in a more efficient risk profiling and prognosis of bereaved individuals. Public Library of Science 2023-08-07 /pmc/articles/PMC10406307/ /pubmed/37549164 http://dx.doi.org/10.1371/journal.pone.0289632 Text en © 2023 Katsiferis et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Katsiferis, Alexandros
Bhatt, Samir
Mortensen, Laust Hvas
Mishra, Swapnil
Jensen, Majken Karoline
Westendorp, Rudi G. J.
Machine learning models of healthcare expenditures predicting mortality: A cohort study of spousal bereaved Danish individuals
title Machine learning models of healthcare expenditures predicting mortality: A cohort study of spousal bereaved Danish individuals
title_full Machine learning models of healthcare expenditures predicting mortality: A cohort study of spousal bereaved Danish individuals
title_fullStr Machine learning models of healthcare expenditures predicting mortality: A cohort study of spousal bereaved Danish individuals
title_full_unstemmed Machine learning models of healthcare expenditures predicting mortality: A cohort study of spousal bereaved Danish individuals
title_short Machine learning models of healthcare expenditures predicting mortality: A cohort study of spousal bereaved Danish individuals
title_sort machine learning models of healthcare expenditures predicting mortality: a cohort study of spousal bereaved danish individuals
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10406307/
https://www.ncbi.nlm.nih.gov/pubmed/37549164
http://dx.doi.org/10.1371/journal.pone.0289632
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