Unsupervised Learning Applied to the Stratification of Preterm Birth Risk in Brazil with Socioeconomic Data

Preterm birth (PTB) is a phenomenon that brings risks and challenges for the survival of the newborn child. Despite many advances in research, not all the causes of PTB are already clear. It is understood that PTB risk is multi-factorial and can also be associated with socioeconomic factors. Thereby...

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Veröffentlicht in:International journal of environmental research and public health 2022-05, Vol.19 (9), p.5596
Hauptverfasser: Lopes, Jr, Márcio L B, Barbosa, Raquel de M, Fernandes, Marcelo A C
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Barbosa, Raquel de M
Fernandes, Marcelo A C
description Preterm birth (PTB) is a phenomenon that brings risks and challenges for the survival of the newborn child. Despite many advances in research, not all the causes of PTB are already clear. It is understood that PTB risk is multi-factorial and can also be associated with socioeconomic factors. Thereby, this article seeks to use unsupervised learning techniques to stratify PTB risk in Brazil using only socioeconomic data. Through the use of datasets made publicly available by the Federal Government of Brazil, a new dataset was generated with municipality-level socioeconomic data and a PTB occurrence rate. This dataset was processed using various unsupervised learning techniques, such as -means, principal component analysis (PCA), and density-based spatial clustering of applications with noise (DBSCAN). After validation, four clusters with high levels of PTB occurrence were discovered, as well as three with low levels. The clusters with high PTB were comprised mostly of municipalities with lower levels of education, worse quality of public services-such as basic sanitation and garbage collection-and a less white population. The regional distribution of the clusters was also observed, with clusters of high PTB located mostly in the North and Northeast regions of Brazil. The results indicate a positive influence of the quality of life and the offer of public services on the reduction in PTB risk.
doi_str_mv 10.3390/ijerph19095596
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subjects Birth
Brazil - epidemiology
Clustering
Datasets
Education
Federal government
Female
Health risks
Humans
Infant, Newborn
Learning
Machine learning
Mothers
Municipalities
Neighborhoods
Pregnancy
Premature birth
Premature Birth - epidemiology
Premature Birth - etiology
Principal components analysis
Quality of Life
Risk
Risk Factors
Sanitation
Social factors
Socioeconomic data
Socioeconomic Factors
Socioeconomics
Statistical methods
Unsupervised learning
Unsupervised Machine Learning
Working conditions
title Unsupervised Learning Applied to the Stratification of Preterm Birth Risk in Brazil with Socioeconomic Data
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