According to the World Malaria Report of 2022, 247 million cases of malaria and 619,000 related deaths were reported in 2021. This highlights the predominance of the disease, especially in the tropical and sub-tropical regions of Africa, parts of South-east Asia, Central and Southern America. Malaria is caused due to the Plasmodium parasite which is circulated through the bites of the female Anopheles mosquito. Hence, the detection of the parasite in human blood smears could confirm malarial infestation. Since the manual identification of Plasmodium is a lengthy and time-consuming task subject to variability in accuracy, we propose an automated, computer-aided diagnostic method to classify malarial thin smear blood cell images as parasitized and uninfected by using the ResNet50 Deep Neural Network. In this paper, we have used the pre-trained ResNet50 model on the open-access database provided by the National Library of Medicine's Lister Hill National Center for Biomedical Communication for 150 epochs. The results obtained showed accuracy, precision, and recall values of 98.75%, 99.3% and 99.5% on the ResNet50(proposed) model. We have compared these metrics with similar models such as VGG16, Watershed Segmentation and Random Forest, which showed better performance than traditional techniques as well.
翻译:根据2022年的世界疟疾报告,2021年共报告了2.47亿例疟疾和61.9万例相关死亡病例。这突显了该疾病的流行,特别是在非洲、东南亚的某些地区,中美洲和南美洲。疟疾是由疟原虫引起的,这种病原体通过女性按蚊叮咬传播。因此,在人体血液涂片中检测到寄生虫可以确认患有疟疾。由于手动鉴定寄生虫是一个耗时且耗费精力的任务,而且存在精度变异,因此,我们提出了一种基于ResNet50深度神经网络的自动化计算机辅助诊断方法,用于将疟疾薄涂片血细胞图像分类为寄生和未感染。在本文中,我们使用了由美国国家医学图书馆的Lister Hill National Center for Biomedical Communication提供的开放访问数据库上的经过预训练的ResNet50模型进行了150次迭代。所得结果显示,提出的ResNet50模型的准确率、精度和召回率值分别为98.75%、99.3%和99.5%。我们已将这些指标与类似的模型,如VGG16、Watershed分割和随机森林进行了比较,结果表明基于深度学习的方法比传统技术表现更好。