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Does Last Year’s Cost Predict the Present Cost? An Application of Machine Leaning for the Japanese Area-Basis Public Health Insurance Database

The increasing healthcare cost imposes a large economic burden for the Japanese government. Predicting the healthcare cost may be a useful tool for policy making. A database of the area-basis public health insurance of one city was analyzed to predict the medical healthcare cost by the dental health...

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Detalles Bibliográficos
Autores principales: Nomura, Yoshiaki, Ishii, Yoshimasa, Chiba, Yota, Suzuki, Shunsuke, Suzuki, Akira, Suzuki, Senichi, Morita, Kenji, Tanabe, Joji, Yamakawa, Koji, Ishiwata, Yasuo, Ishikawa, Meu, Sogabe, Kaoru, Kakuta, Erika, Okada, Ayako, Otsuka, Ryoko, Hanada, Nobuhiro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7827468/
https://www.ncbi.nlm.nih.gov/pubmed/33445431
http://dx.doi.org/10.3390/ijerph18020565
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author Nomura, Yoshiaki
Ishii, Yoshimasa
Chiba, Yota
Suzuki, Shunsuke
Suzuki, Akira
Suzuki, Senichi
Morita, Kenji
Tanabe, Joji
Yamakawa, Koji
Ishiwata, Yasuo
Ishikawa, Meu
Sogabe, Kaoru
Kakuta, Erika
Okada, Ayako
Otsuka, Ryoko
Hanada, Nobuhiro
author_facet Nomura, Yoshiaki
Ishii, Yoshimasa
Chiba, Yota
Suzuki, Shunsuke
Suzuki, Akira
Suzuki, Senichi
Morita, Kenji
Tanabe, Joji
Yamakawa, Koji
Ishiwata, Yasuo
Ishikawa, Meu
Sogabe, Kaoru
Kakuta, Erika
Okada, Ayako
Otsuka, Ryoko
Hanada, Nobuhiro
author_sort Nomura, Yoshiaki
collection PubMed
description The increasing healthcare cost imposes a large economic burden for the Japanese government. Predicting the healthcare cost may be a useful tool for policy making. A database of the area-basis public health insurance of one city was analyzed to predict the medical healthcare cost by the dental healthcare cost with a machine learning strategy. The 30,340 subjects who had continued registration of the area-basis public health insurance of Ebina city during April 2017 to September 2018 were analyzed. The sum of the healthcare cost was JPY 13,548,831,930. The per capita healthcare cost was JPY 446,567. The proportion of medical healthcare cost, medication cost, and dental healthcare cost was 78%, 15%, and 7%, respectively. By the results of the neural network model, the medical healthcare cost proportionally depended on the medical healthcare cost of the previous year. The dental healthcare cost of the previous year had a reducing effect on the medical healthcare cost. However, the effect was very small. Oral health may be a risk for chronic diseases. However, when evaluated by the healthcare cost, its effect was very small during the observation period.
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spelling pubmed-78274682021-01-25 Does Last Year’s Cost Predict the Present Cost? An Application of Machine Leaning for the Japanese Area-Basis Public Health Insurance Database Nomura, Yoshiaki Ishii, Yoshimasa Chiba, Yota Suzuki, Shunsuke Suzuki, Akira Suzuki, Senichi Morita, Kenji Tanabe, Joji Yamakawa, Koji Ishiwata, Yasuo Ishikawa, Meu Sogabe, Kaoru Kakuta, Erika Okada, Ayako Otsuka, Ryoko Hanada, Nobuhiro Int J Environ Res Public Health Article The increasing healthcare cost imposes a large economic burden for the Japanese government. Predicting the healthcare cost may be a useful tool for policy making. A database of the area-basis public health insurance of one city was analyzed to predict the medical healthcare cost by the dental healthcare cost with a machine learning strategy. The 30,340 subjects who had continued registration of the area-basis public health insurance of Ebina city during April 2017 to September 2018 were analyzed. The sum of the healthcare cost was JPY 13,548,831,930. The per capita healthcare cost was JPY 446,567. The proportion of medical healthcare cost, medication cost, and dental healthcare cost was 78%, 15%, and 7%, respectively. By the results of the neural network model, the medical healthcare cost proportionally depended on the medical healthcare cost of the previous year. The dental healthcare cost of the previous year had a reducing effect on the medical healthcare cost. However, the effect was very small. Oral health may be a risk for chronic diseases. However, when evaluated by the healthcare cost, its effect was very small during the observation period. MDPI 2021-01-12 2021-01 /pmc/articles/PMC7827468/ /pubmed/33445431 http://dx.doi.org/10.3390/ijerph18020565 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Nomura, Yoshiaki
Ishii, Yoshimasa
Chiba, Yota
Suzuki, Shunsuke
Suzuki, Akira
Suzuki, Senichi
Morita, Kenji
Tanabe, Joji
Yamakawa, Koji
Ishiwata, Yasuo
Ishikawa, Meu
Sogabe, Kaoru
Kakuta, Erika
Okada, Ayako
Otsuka, Ryoko
Hanada, Nobuhiro
Does Last Year’s Cost Predict the Present Cost? An Application of Machine Leaning for the Japanese Area-Basis Public Health Insurance Database
title Does Last Year’s Cost Predict the Present Cost? An Application of Machine Leaning for the Japanese Area-Basis Public Health Insurance Database
title_full Does Last Year’s Cost Predict the Present Cost? An Application of Machine Leaning for the Japanese Area-Basis Public Health Insurance Database
title_fullStr Does Last Year’s Cost Predict the Present Cost? An Application of Machine Leaning for the Japanese Area-Basis Public Health Insurance Database
title_full_unstemmed Does Last Year’s Cost Predict the Present Cost? An Application of Machine Leaning for the Japanese Area-Basis Public Health Insurance Database
title_short Does Last Year’s Cost Predict the Present Cost? An Application of Machine Leaning for the Japanese Area-Basis Public Health Insurance Database
title_sort does last year’s cost predict the present cost? an application of machine leaning for the japanese area-basis public health insurance database
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7827468/
https://www.ncbi.nlm.nih.gov/pubmed/33445431
http://dx.doi.org/10.3390/ijerph18020565
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