基于深度卷积神经网络的疟疾感染细胞自动识别

Bahauddin Taha, Fahmida Rahman Liza
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引用次数: 1

摘要

疟疾是一种由疟原虫传播的严重疾病,疟原虫是由受感染的按蚊叮咬传播的。诊断疟疾的传统方法是由训练有素的人员在显微镜下在人体血液涂片中寻找被寄生虫感染的红细胞。这种方法的结果取决于执行测试的人员的专业知识,有时他们不能保持最佳的熟练程度。作为一种临床诊断手段,深度学习是一种非常有利的选择。本文提出了两种独特的基于卷积神经网络的深度学习模型,用于从血细胞图像中识别疟疾。采用正确率、查全率和马修斯相关系数对模型进行评价。该方法比耗时的传统疟疾检测方法更有效,将帮助医生更快、更轻松地检测疾病。
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Automatic identification of malaria-infected cells using deep convolutional neural network
Malaria has been a severe ailment spread by the plasmodium parasite, which is conveyed by the bite of an infected Anopheles mosquito. The conventional method of diagnosing malaria is to look for parasite-infected erythrocytes in human blood smears under a microscope by trained personnel. The outcome of this approach depends on the expertise of the persons performing the tests and sometimes they cannot maintain optimal proficiency. Deep learning can be a highly advantageous option as a means of clinical diagnostics. This paper presents two unique deep learning models for identifying malaria from blood cell images based on convolutional neural networks. Accuracy, recall and Matthews correlation coefficient were used to evaluate these models. Proposed method is more effective than the conventional approach of malaria detection which is time-consuming and will help physicians detect the disease more quickly and effortlessly.
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