Machine learning in predicting severe acute respiratory infection outbreaks

被引:0
|
作者
da Silva, Amauri Duarte [1 ,4 ]
Gomes, Marcelo Ferreira da Costa [2 ]
Gregianini, Tatiana Schaffer [3 ]
Martins, Leticia Garay
da Veiga, Ana Beatriz Gorini [1 ]
机构
[1] Univ Fed Ciencias Sande Porto Alegre, Porto Alegre, Brazil
[2] Fundacao Oswaldo Cruz, Programa Computacao Cient, Rio De Janeiro, Brazil
[3] Ctr Estadual Vigilancia Sande, Secretaria Sande Estado Rio Grande Sul, Porto Alegre, Brazil
[4] Univ Fed Ciencias Sande Porto Alegre, Programa Posgrad Tecnol Informacao & Gestao Sande, Rua Sarmento Leite 245, BR-90050170 Porto Alegre, RS, Brazil
来源
CADERNOS DE SAUDE PUBLICA | 2024年 / 40卷 / 01期
关键词
Severe Acute Respiratory Infection; Machine Learning; Computer Models; Epidemiologic Surveillance; Neural Networks (Computer); INFLUENZA; BRAZIL;
D O I
10.1590/0102-311XEN122823
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Severe acute respiratory infection (SARI) outbreaks occur annually, with seasonal peaks varying among geographic regions. Case notification is important to prepare healthcare networks for patient attendance and hospitalization. Thus, health managers need adequate resource planning tools for SARI seasons. This study aims to predict SARI outbreaks based on models generated with machine learning using SARI hospitalization notification data. In this study, data from the reporting of SARI hospitalization cases in Brazil from 2013 to 2020 were used, excluding SARI cases caused by COVID-19. These data were prepared to feed a neural network configured to generate predictive models for time series. The neural network was implemented with a pipeline tool. Models were generated for the five Brazilian regions and validated for different years of SARI outbreaks. By using neural networks, it was possible to generate predictive models for SARI peaks, volume of cases per season, and for the beginning of the pre-epidemic period, with good weekly incidence correlation (R2 = 0.97; 95%CI: 0.95-0.98, for the 2019 season in the Southeastern Brazil). The predictive models achieved a good prediction of the volume of reported cases of SARI; accordingly, 9,936 cases were observed in 2019 in Southern Brazil, and the prediction made by the models showed a median of 9,405 (95%CI: 9,105-9,738). The identification of the period of occurrence of a SARI outbreak is possible using predictive models generated with neural networks and algorithms that employ time series.
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页数:14
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