Malaria Detection using Deep Learning

Gautham Shekar, S. Revathy, Ediga Karthick Goud
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引用次数: 25

Abstract

Malaria is the deadliest disease in the earth and big hectic work for the health department. The traditional way of diagnosing malaria is by schematic examining blood smears of human beings for parasite-infected red blood cells under the microscope by lab or qualified technicians. This process is inefficient and the diagnosis depends on the experience and well knowledgeable person needed for the examination. Deep Learning algorithms have been applied to malaria blood smears for diagnosis before. However, practical performance has not been sufficient so far. This paper proposes a new and highly robust machine learning model based on a convolutional neural network (CNN) which automatically classifies and predicts infected cells in thin blood smears on standard microscope slides. A ten-fold cross-validation layer of the convolutional neural network on 27,558 single-cell images is used to understand the parameter of the cell. Three types of CNN models are compared based on their accuracy and select the precise accurate - Basic CNN, VGG-19 Frozen CNN, and VGG-19 Fine Tuned CNN. Then by comparing the accuracy of the three models, the model with a higher rate of accuracy is acquired.
利用深度学习进行疟疾检测
疟疾是地球上最致命的疾病,也是卫生部门的一项繁重工作。诊断疟疾的传统方法是由实验室或合格的技术人员在显微镜下对人类的血液涂片进行示意图检查,以寻找被寄生虫感染的红细胞。这个过程是低效的,诊断依赖于检查所需的经验和知识渊博的人。深度学习算法之前已经应用于疟疾血液涂片诊断。然而,到目前为止,实际性能还不够。本文提出了一种基于卷积神经网络(CNN)的新的高度鲁棒的机器学习模型,该模型可以自动分类和预测标准显微镜载玻片上薄血涂片中的感染细胞。在27,558张单细胞图像上使用卷积神经网络的十倍交叉验证层来理解细胞的参数。对比三种CNN模型的精度,选择精度较高的Basic CNN、VGG-19 Frozen CNN和VGG-19 Fine Tuned CNN。然后通过比较三种模型的准确率,得到准确率较高的模型。
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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