Detection of Sickle Cell, Megaloblastic Anemia, Thalassemia and Malaria through Convolutional Neural Network

E. Abdulhay, Ahmad Ghaith Allow, Mohammad Eyad Al-Jalouly
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引用次数: 1

Abstract

This paper presents an alternative method to diagnose Malaria and Anemia (Sickle Cell Anemia, Megaloblastic Anemia and Thalassemia) as well as to differentiate between them. First, different related high resolution images of blood samples are taken from multiple datasets. Second, Convolutional Neural Networks (CNN) technique is implemented and applied in order to process the images without the need of the standard protocol of Complete Blood Count (CBC) test. The implemented convolutional Neural Network has been designed using Python to train on a number of microscopic images. After completing the training phase, the built model has been tested on other images to classify them into normal blood cells, Malaria, Sickle cell anemia, Megaloblastic anemia or Thalassemia. Third, the diagnosis is made based on the outcomes. Finally, the accuracy of results is assessed. The total accuracy of the test is 93.4%. The suggested approach yields promising outcomes that help diagnose blood samples faster, with low cost as well as without the need of an analysis laboratory.
基于卷积神经网络的镰状细胞、巨幼细胞性贫血、地中海贫血和疟疾检测
本文提出了一种诊断疟疾和贫血(镰状细胞性贫血、巨幼细胞性贫血和地中海贫血)以及区分它们的替代方法。首先,从多个数据集获取不同相关的高分辨率血液样本图像。其次,实现并应用卷积神经网络(Convolutional Neural Networks, CNN)技术,在不需要全血细胞计数(Complete Blood Count, CBC)检测标准协议的情况下对图像进行处理。实现的卷积神经网络是使用Python设计的,用于在许多微观图像上进行训练。在完成训练阶段后,建立的模型在其他图像上进行测试,将其分类为正常血细胞、疟疾、镰状细胞性贫血、巨幼细胞性贫血或地中海贫血。第三,根据结果进行诊断。最后,对结果的准确性进行了评价。测试的总准确率为93.4%。建议的方法产生了有希望的结果,有助于更快地诊断血液样本,成本低,而且不需要分析实验室。
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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