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Fine-Scale Spatial Prediction on the Risk of Plasmodium vivax Infection in the Republic of Korea.
Min, Kyung-Duk; Baek, Yae Jee; Hwang, Kyungwon; Shin, Na-Ri; Lee, So-Dam; Kan, Hyesu; Yeom, Joon-Sup.
Afiliação
  • Min KD; College of Veterinary Medicine, Chungbuk National University, Cheongju, Korea.
  • Baek YJ; Division of Infectious Diseases, Department of Internal Medicine, College of Medicine, Soonchunhyang University, Asan, Korea.
  • Hwang K; Division of Control for Zoonotic and Vector Borne Disease, Korea Disease Control and Prevention Agency, Cheongju, Korea.
  • Shin NR; Division of Control for Zoonotic and Vector Borne Disease, Korea Disease Control and Prevention Agency, Cheongju, Korea.
  • Lee SD; Division of Control for Zoonotic and Vector Borne Disease, Korea Disease Control and Prevention Agency, Cheongju, Korea.
  • Kan H; Division of Control for Zoonotic and Vector Borne Disease, Korea Disease Control and Prevention Agency, Cheongju, Korea.
  • Yeom JS; Division of Infectious Disease, Department of Internal Medicine, Yonsei University College of Medicine, Seoul, Korea. joonsup.yeom@yuhs.ac.
J Korean Med Sci ; 39(22): e176, 2024 Jun 10.
Article em En | MEDLINE | ID: mdl-38859739
ABSTRACT

BACKGROUND:

Malaria elimination strategies in the Republic of Korea (ROK) have decreased malaria incidence but face challenges due to delayed case detection and response. To improve this, machine learning models for predicting malaria, focusing on high-risk areas, have been developed.

METHODS:

The study targeted the northern region of ROK, near the demilitarized zone, using a 1-km grid to identify areas for prediction. Grid cells without residential buildings were excluded, leaving 8,425 cells. The prediction was based on whether at least one malaria case was reported in each grid cell per month, using spatial data of patient locations. Four algorithms were used gradient boosted (GBM), generalized linear (GLM), extreme gradient boosted (XGB), and ensemble models, incorporating environmental, sociodemographic, and meteorological data as predictors. The models were trained with data from May to October (2019-2021) and tested with data from May to October 2022. Model performance was evaluated using the area under the receiver operating characteristic curve (AUROC).

RESULTS:

The AUROC of the prediction models performed excellently (GBM = 0.9243, GLM = 0.9060, XGB = 0.9180, and ensemble model = 0.9301). Previous malaria risk, population size, and meteorological factors influenced the model most in GBM and XGB.

CONCLUSION:

Machine-learning models with properly preprocessed malaria case data can provide reliable predictions. Additional predictors, such as mosquito density, should be included in future studies to improve the performance of models.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Plasmodium vivax / Curva ROC / Malária Vivax / Aprendizado de Máquina Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Plasmodium vivax / Curva ROC / Malária Vivax / Aprendizado de Máquina Idioma: En Ano de publicação: 2024 Tipo de documento: Article