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Risk assessment of imported malaria in China: a machine learning perspective. | LitMetric

AI Article Synopsis

  • China's designation as malaria-free has led to increased concern about imported malaria cases affecting reestablishment; this study explores machine learning’s role in assessing these risks.
  • Data on imported malaria cases from 2011 to 2019 was analyzed, using R for data processing and ArcGIS for visualization, resulting in a clean dataset of 765 entries from 85 countries.
  • The Random Forest machine learning model outperformed others, with a 95.3% accuracy in predicting risks for 2019, highlighting its potential for effective risk assessment and control strategies for imported malaria in China.

Article Abstract

Background: Following China's official designation as malaria-free country by WHO, the imported malaria has emerged as a significant determinant impacting the malaria reestablishment within China. The objective of this study is to explore the application prospects of machine learning algorithms in imported malaria risk assessment of China.

Methods: The data of imported malaria cases in China from 2011 to 2019 was provided by China CDC; historical epidemic data of malaria endemic country was obtained from World Malaria Report, and the other data used in this study are open access data. All the data processing and model construction based on R, and map visualization used ArcGIS software.

Results: A total of 27,088 malaria cases imported into China from 85 countries between 2011 and 2019. After data preprocessing and classification, clean dataset has 765 rows (85 * 9) and 11 cols. Six machine learning models was constructed based on the training set, and Random Forest model demonstrated the best performance in model evaluation. According to RF, the highest feature importance were the number of malaria deaths and Indigenous malaria cases. The RF model demonstrated high accuracy in forecasting risk for the year 2019, achieving commendable accuracy rate of 95.3%. This result aligns well with the observed outcomes, indicating the model's reliability in predicting risk levels.

Conclusions: Machine learning algorithms have reliable application prospects in risk assessment of imported malaria in China. This study provides a new methodological reference for the risk assessment and control strategies adjusting of imported malaria in China.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10956205PMC
http://dx.doi.org/10.1186/s12889-024-17929-9DOI Listing

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