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Machine learning models in predicting health care costs in patients with a recent acute coronary syndrome: A prospective pilot study

BACKGROUND: Health care budgets are limited, requiring the optimal use of resources. Machine learning (ML) methods may have an enormous potential for effective use of health care resources. OBJECTIVE: We assessed the applicability of selected ML tools to evaluate the contribution of known risk marke...

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Autores principales: Hautala, Arto J., Shavazipour, Babooshka, Afsar, Bekir, Tulppo, Mikko P., Miettinen, Kaisa
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10435951/
https://www.ncbi.nlm.nih.gov/pubmed/37600445
http://dx.doi.org/10.1016/j.cvdhj.2023.05.001
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author Hautala, Arto J.
Shavazipour, Babooshka
Afsar, Bekir
Tulppo, Mikko P.
Miettinen, Kaisa
author_facet Hautala, Arto J.
Shavazipour, Babooshka
Afsar, Bekir
Tulppo, Mikko P.
Miettinen, Kaisa
author_sort Hautala, Arto J.
collection PubMed
description BACKGROUND: Health care budgets are limited, requiring the optimal use of resources. Machine learning (ML) methods may have an enormous potential for effective use of health care resources. OBJECTIVE: We assessed the applicability of selected ML tools to evaluate the contribution of known risk markers for prognosis of coronary artery disease to predict health care costs for all reasons in patients with a recent acute coronary syndrome (n = 65, aged 65 ± 9 years) for 1-year follow-up. METHODS: Risk markers were assessed at baseline, and health care costs were collected from electronic health registries. The Cross-decomposition algorithms were used to rank the considered risk markers based on their impacts on variances. Then regression analysis was performed to predict costs by entering the first top-ranking risk marker and adding the next-best markers, one by one, to build up altogether 13 predictive models. RESULTS: The average annual health care costs were €2601 ± €5378 per patient. The Depression Scale showed the highest predictive value (r = 0.395), accounting for 16% of the costs (P = .001). When the next 2 ranked markers (LDL cholesterol, r = 0.230; and left ventricular ejection fraction, r = -0.227, respectively) were added to the model, the predictive value was 24% for the costs (P = .001). CONCLUSION: Higher depression score is the primary variable forecasting health care costs in 1-year follow-up among acute coronary syndrome patients. The ML tools may help decision-making when planning optimal utilization of treatment strategies.
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spelling pubmed-104359512023-08-19 Machine learning models in predicting health care costs in patients with a recent acute coronary syndrome: A prospective pilot study Hautala, Arto J. Shavazipour, Babooshka Afsar, Bekir Tulppo, Mikko P. Miettinen, Kaisa Cardiovasc Digit Health J Original Article BACKGROUND: Health care budgets are limited, requiring the optimal use of resources. Machine learning (ML) methods may have an enormous potential for effective use of health care resources. OBJECTIVE: We assessed the applicability of selected ML tools to evaluate the contribution of known risk markers for prognosis of coronary artery disease to predict health care costs for all reasons in patients with a recent acute coronary syndrome (n = 65, aged 65 ± 9 years) for 1-year follow-up. METHODS: Risk markers were assessed at baseline, and health care costs were collected from electronic health registries. The Cross-decomposition algorithms were used to rank the considered risk markers based on their impacts on variances. Then regression analysis was performed to predict costs by entering the first top-ranking risk marker and adding the next-best markers, one by one, to build up altogether 13 predictive models. RESULTS: The average annual health care costs were €2601 ± €5378 per patient. The Depression Scale showed the highest predictive value (r = 0.395), accounting for 16% of the costs (P = .001). When the next 2 ranked markers (LDL cholesterol, r = 0.230; and left ventricular ejection fraction, r = -0.227, respectively) were added to the model, the predictive value was 24% for the costs (P = .001). CONCLUSION: Higher depression score is the primary variable forecasting health care costs in 1-year follow-up among acute coronary syndrome patients. The ML tools may help decision-making when planning optimal utilization of treatment strategies. Elsevier 2023-05-13 /pmc/articles/PMC10435951/ /pubmed/37600445 http://dx.doi.org/10.1016/j.cvdhj.2023.05.001 Text en © 2023 Heart Rhythm Society. https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Original Article
Hautala, Arto J.
Shavazipour, Babooshka
Afsar, Bekir
Tulppo, Mikko P.
Miettinen, Kaisa
Machine learning models in predicting health care costs in patients with a recent acute coronary syndrome: A prospective pilot study
title Machine learning models in predicting health care costs in patients with a recent acute coronary syndrome: A prospective pilot study
title_full Machine learning models in predicting health care costs in patients with a recent acute coronary syndrome: A prospective pilot study
title_fullStr Machine learning models in predicting health care costs in patients with a recent acute coronary syndrome: A prospective pilot study
title_full_unstemmed Machine learning models in predicting health care costs in patients with a recent acute coronary syndrome: A prospective pilot study
title_short Machine learning models in predicting health care costs in patients with a recent acute coronary syndrome: A prospective pilot study
title_sort machine learning models in predicting health care costs in patients with a recent acute coronary syndrome: a prospective pilot study
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10435951/
https://www.ncbi.nlm.nih.gov/pubmed/37600445
http://dx.doi.org/10.1016/j.cvdhj.2023.05.001
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