Machine Learning Classifiers for Symptom-Based Malaria Prediction

Yulianti Paula Bria, C. Yeh, S. Bedingfield
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Abstract

A patient's previous history of malaria plays an important role in malaria prediction based on symptoms. Malaria patients who have previously suffered from malaria are highly likely to develop different symptoms from those without a previous history of malaria. To predict the malaria presence for both patients with and without a previous history of malaria, we build two separate malaria classifiers based on two different sets of symptoms using four machine learning techniques including neural networks (NNs), logistic regression (LR), support vector machines (SVMs) and k-nearest neighbors. These malaria classifiers are built using medical records collected from patients suffering from malaria and other febrile diseases. Extensive experiments conducted show that the two NN classifiers slightly outperform the other classifiers. The NN classifier for patients with a previous history of malaria achieves excellent performance for accuracy, recall and F1-score with 95.76%, 95.41% and 95.76% respectively. The LR classifier outperforms the other three classifiers for precision with 97.14%. The NN classifier for patients without a previous history of malaria also achieves superior performance in accuracy and precision with 88.48% and 87.34% respectively. The SVM classifier outperforms other classifiers in terms of recall and F1-score with 94.62% and 88.04% respectively. With high recall rates, the four classifiers are suitable for symptom-based malaria prediction. These results justify the development of two separate malaria classifiers and provide valuable insights into building symptom-based malaria classifiers based on patients' previous history of malaria.
基于症状的疟疾预测机器学习分类器
患者以前的疟疾病史在基于症状的疟疾预测中起着重要作用。曾经患过疟疾的疟疾患者极有可能出现与没有疟疾病史的患者不同的症状。为了预测有和没有疟疾病史的患者是否存在疟疾,我们使用四种机器学习技术,包括神经网络(nn)、逻辑回归(LR)、支持向量机(svm)和k近邻,基于两组不同的症状建立了两个单独的疟疾分类器。这些疟疾分类器是根据从患有疟疾和其他发热性疾病的患者那里收集的医疗记录建立的。大量的实验表明,这两个NN分类器的性能略优于其他分类器。对于有疟疾病史的患者,神经网络分类器在准确率、查全率和f1评分上分别达到95.76%、95.41%和95.76%,表现优异。LR分类器以97.14%的准确率优于其他三种分类器。对于没有疟疾病史的患者,NN分类器在准确率和精密度上也取得了较好的表现,分别为88.48%和87.34%。SVM分类器的召回率为94.62%,F1-score为88.04%,优于其他分类器。这四种分类器具有较高的召回率,适用于基于症状的疟疾预测。这些结果证明开发两种独立的疟疾分类器是合理的,并为基于患者既往疟疾病史建立基于症状的疟疾分类器提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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