Trading-Off Machine Learning Algorithms towards Data-Driven Administrative-Socio-Economic Population Health Management
Together with population ageing, the number of people suffering from multimorbidity is increasing, up to more than half of the population by 2035. This part of the population is composed by the highest-risk patients, who are, at the same time, the major users of the healthcare systems. The early ide...
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doaj-c1f50d0cef7a491b8a9d897cfe8d63a32020-12-26T00:02:34ZengMDPI AGComputers2073-431X2021-12-01104410.3390/computers10010004Trading-Off Machine Learning Algorithms towards Data-Driven Administrative-Socio-Economic Population Health ManagementSilvia Panicacci0Massimiliano Donati1Francesco Profili2Paolo Francesconi3Luca Fanucci4Department of Information Engineering, University of Pisa, Via G. Caruso 16, 56122 Pisa, ItalyDepartment of Information Engineering, University of Pisa, Via G. Caruso 16, 56122 Pisa, ItalyTuscan Agenzia Regionale Sanità, 50141 Florence, ItalyTuscan Agenzia Regionale Sanità, 50141 Florence, ItalyDepartment of Information Engineering, University of Pisa, Via G. Caruso 16, 56122 Pisa, ItalyTogether with population ageing, the number of people suffering from multimorbidity is increasing, up to more than half of the population by 2035. This part of the population is composed by the highest-risk patients, who are, at the same time, the major users of the healthcare systems. The early identification of this sub-population can really help to improve people’s quality of life and reduce healthcare costs. In this paper, we describe a population health management tool based on state-of-the-art intelligent algorithms, starting from administrative and socio-economic data, for the early identification of high-risk patients. The study refers to the population of the Local Health Unit of Central Tuscany in 2015, which amounts to 1,670,129 residents. After a trade-off on machine learning models and on input data, Random Forest applied to 1-year of historical data achieves the best results, outperforming state-of-the-art models. The most important variables for this model, in terms of mean minimal depth, accuracy decrease and Gini decrease, result to be age and some group of drugs, such as high-ceiling diuretics. Thanks to the low inference time and reduced memory usage, the resulting model allows for real-time risk prediction updates whenever new data become available, giving General Practitioners the possibility to early adopt personalised medicine.https://www.mdpi.com/2073-431X/10/1/4decision support systempopulation health managementexplainable artificial intelligencemachine learningbig data |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Silvia Panicacci Massimiliano Donati Francesco Profili Paolo Francesconi Luca Fanucci |
spellingShingle |
Silvia Panicacci Massimiliano Donati Francesco Profili Paolo Francesconi Luca Fanucci Trading-Off Machine Learning Algorithms towards Data-Driven Administrative-Socio-Economic Population Health Management Computers decision support system population health management explainable artificial intelligence machine learning big data |
author_facet |
Silvia Panicacci Massimiliano Donati Francesco Profili Paolo Francesconi Luca Fanucci |
author_sort |
Silvia Panicacci |
title |
Trading-Off Machine Learning Algorithms towards Data-Driven Administrative-Socio-Economic Population Health Management |
title_short |
Trading-Off Machine Learning Algorithms towards Data-Driven Administrative-Socio-Economic Population Health Management |
title_full |
Trading-Off Machine Learning Algorithms towards Data-Driven Administrative-Socio-Economic Population Health Management |
title_fullStr |
Trading-Off Machine Learning Algorithms towards Data-Driven Administrative-Socio-Economic Population Health Management |
title_full_unstemmed |
Trading-Off Machine Learning Algorithms towards Data-Driven Administrative-Socio-Economic Population Health Management |
title_sort |
trading-off machine learning algorithms towards data-driven administrative-socio-economic population health management |
publisher |
MDPI AG |
series |
Computers |
issn |
2073-431X |
publishDate |
2021-12-01 |
description |
Together with population ageing, the number of people suffering from multimorbidity is increasing, up to more than half of the population by 2035. This part of the population is composed by the highest-risk patients, who are, at the same time, the major users of the healthcare systems. The early identification of this sub-population can really help to improve people’s quality of life and reduce healthcare costs. In this paper, we describe a population health management tool based on state-of-the-art intelligent algorithms, starting from administrative and socio-economic data, for the early identification of high-risk patients. The study refers to the population of the Local Health Unit of Central Tuscany in 2015, which amounts to 1,670,129 residents. After a trade-off on machine learning models and on input data, Random Forest applied to 1-year of historical data achieves the best results, outperforming state-of-the-art models. The most important variables for this model, in terms of mean minimal depth, accuracy decrease and Gini decrease, result to be age and some group of drugs, such as high-ceiling diuretics. Thanks to the low inference time and reduced memory usage, the resulting model allows for real-time risk prediction updates whenever new data become available, giving General Practitioners the possibility to early adopt personalised medicine. |
topic |
decision support system population health management explainable artificial intelligence machine learning big data |
url |
https://www.mdpi.com/2073-431X/10/1/4 |
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