An Improved Transfer Learning-Based Model for Malaria Detection using Blood Smear of Microscopic Cell Images

Muhammad Bilyaminu, A. Varol
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Abstract

Because of insufficient medical specialists in some parts of the African and Asian continents, malaria patients' mortality rates have increased over the years. Since the people of regions generally suffer from malaria diseases, computer-aided detection (CAD) technology is required to decrease the number of casualties and reduce the waiting time for consulting by a Malaria specialist. This study shows the potential of transfer learning, a method of Deep Learning (DL) to classify the smeared blood of microscopic malaria cell images to determine whether it is parasitized or uninfected. This classification of malaria cell images will enhance the workflow of health practitioners at the frontline, especially microscopists, and provides them with a valuable alternative for malaria detection based on microscopic cell images. Although many technological advancements and evaluation techniques for identifying the infection exist, a microscopist at regions with limited resources faces challenges in improving diagnostic accuracy. We compared and evaluated a type of pre-trained CNN models, such as ResNet-50 and our appended Resnet-50+KNN. The experiment shows that our new model has the excellent capability and can perform better on malarial microscopic cell image classification with a higher accuracy rate of 98%.
一种基于迁移学习的基于血液涂片显微细胞图像的疟疾检测改进模型
由于非洲和亚洲大陆某些地区缺乏医疗专家,疟疾患者的死亡率多年来有所上升。由于各地区人民普遍患有疟疾疾病,因此需要计算机辅助检测技术来减少伤亡人数并缩短等待疟疾专家咨询的时间。这项研究显示了迁移学习的潜力,这是一种深度学习(DL)方法,可以对显微镜下疟疾细胞图像的涂布血液进行分类,以确定它是被寄生的还是未被感染的。疟疾细胞图像的这种分类将加强一线卫生从业人员,特别是显微镜专家的工作流程,并为他们提供基于显微镜细胞图像检测疟疾的宝贵替代方法。尽管存在许多识别感染的技术进步和评估技术,但在资源有限的地区,显微镜学家在提高诊断准确性方面面临挑战。我们比较和评估了一种预训练的CNN模型,如ResNet-50和我们附加的ResNet-50 +KNN。实验表明,我们的新模型具有优异的性能,可以在疟疾显微细胞图像分类上有较好的表现,准确率高达98%。
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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