基于迁移学习的恶性疟原虫寄生血涂片图像分类

Sai Dheeraj Gummadi, Anirban Ghosh, Yeswanth Vootla
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引用次数: 1

摘要

本研究采用基于迁移学习的卷积神经网络(CNN)架构来区分寄生虫疟疾细胞图像和健康疟疾细胞图像,并利用全球平均池(GAP)和热图对感染图像中的寄生虫进行定位。疟疾是一种严重的疾病,如果没有及时诊断,甚至可能导致死亡。通过使用计算机化疟疾诊断,建议的解决办法解决了及时发现的问题,减轻了保健方面的压力。研究并比较了三种基于迁移学习的神经网络结构的准确性、精密度、灵敏度和特异性。然后将假阴性数较少的最优模型与新开发的web服务相连接,该服务可以方便地为普通人访问和使用。该模型对27558张单细胞图像进行了训练和评估,最高准确率为96.88%,灵敏度为97.35%,特异性为96.41%,F1-Score为96.89%,精度为96.44%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer Learning based Classification of Plasmodium Falciparum Parasitic Blood Smear Images
A transfer learning-based convolutional neural network (CNN) architecture is used in the current study to differentiate parasitic malaria cell images from the healthy ones and localize the parasites in infected images using global average pooling(GAP) and heat map. Malaria is a serious malady that can even lead to death in the absence of timely diagnosis. With the use of computerized malaria diagnosis, the suggested solution tackles the problem of timely detection and eases the strain on health care. Three transfer learning-based neural network architectures are studied and compared in terms of their accuracy, precision, sensitivity and specificity. The optimal model with less number of false negatives was then interfaced with a newly developed web service which can be easily accessed and used by common people. The studied models were trained and evaluated on 27,558 single cell images, yielding a maximum accuracy of 96.88%, with 97.35% sensitivity, 96.41% specificity, 96.89% F1-Score, and 96.44% precision.
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