masterThesis
Stratification of preterm birth risk in Brazil through unsupervised learning methods and socioeconomic data
Fecha
2022-04-29Registro en:
LOPES JÚNIOR, Márcio Luiz Bezerra. Stratification of preterm birth risk in Brazil through unsupervised learning methods and socioeconomic data. 2022. 83f. Dissertação (Mestrado em Engenharia Elétrica e de Computação) - Centro de Tecnologia, Universidade Federal do Rio Grande do Norte, Natal, 2022.
Autor
Lopes Júnior, Márcio Luiz Bezerra
Resumen
Preterm birth (PTB) is a phenomenon that brings risks and challenges to the survival
of the newborn child. Despite many advances in research, not all the causes of PTB are
yet clear. It is currently understood that PTB risk is multi-factorial and may also be associated with socioeconomic factors. In order to analyse this possible relationship, this
work seeks to stratify PTB risk in Brazil using only socioeconomic data, extracting and
analysing those clusters that present relevant PTB divergence, all of which will be found
by automatic clustering processes using a series of unsupervised machine learning methods. 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 two separate clustering methods,
both built by assembling unsupervised learning techniques, such as k-means, principal
component analysis (PCA), density-based spatial clustering of applications with noise
(DBSCAN), self-organising maps (SOM) and hierarchical clustering. The methods discovered clusters of municipalities with both high levels and low levels of PTB occurrence.
The clusters with high PTB were comprised predominantly 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 primarily 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 of PTB risk.