Predicting congenital syphilis cases: A performance evaluation of different machine learning models

Author:

Teixeira Igor Vitor,da Silva Leite Morgana Thalita,de Morais Melo Flávio Leandro,da Silva Rocha Élisson,Sadok Sara,Pessoa da Costa Carrarine Ana Sofia,Santana Marília,Pinheiro Rodrigues Cristina,de Lima Oliveira Ana Maria,Vieira Gadelha Keduly,de Morais Cleber Matos,Kelner Judith,Endo Patricia TakakoORCID

Abstract

Background Communicable diseases represent a huge economic burden for healthcare systems and for society. Sexually transmitted infections (STIs) are a concerning issue, especially in developing and underdeveloped countries, in which environmental factors and other determinants of health play a role in contributing to its fast spread. In light of this situation, machine learning techniques have been explored to assess the incidence of syphilis and contribute to the epidemiological surveillance in this scenario. Objective The main goal of this work is to evaluate the performance of different machine learning models on predicting undesirable outcomes of congenital syphilis in order to assist resources allocation and optimize the healthcare actions, especially in a constrained health environment. Method We use clinical and sociodemographic data from pregnant women that were assisted by a social program in Pernambuco, Brazil, named Mãe Coruja Pernambucana Program (PMCP). Based on a rigorous methodology, we propose six experiments using three feature selection techniques to select the most relevant attributes, pre-process and clean the data, apply hyperparameter optimization to tune the machine learning models, and train and test models to have a fair evaluation and discussion. Results The AdaBoost-BODS-Expert model, an Adaptive Boosting (AdaBoost) model that used attributes selected by health experts, presented the best results in terms of evaluation metrics and acceptance by health experts from PMCP. By using this model, the results are more reliable and allows adoption on a daily usage to classify possible outcomes of congenital syphilis using clinical and sociodemographic data.

Funder

Bill and Melinda Gates Foundation

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference44 articles.

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5. Organization WH. Data on syphilis; 2020. Available from: https://www.who.int/data/gho/data/themes/topics/topic-details/GHO/data-on-syphilis.

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