利用数据增强技术对结肠癌组织病理图像进行分类

Anurodh Kumar, Amit Vishwakarma, V. Bajaj, Avinash Sharma, Chirag Thakur
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引用次数: 5

摘要

结肠癌的分型在医学诊断中具有重要意义。准确、实时的调查为医学专家及时回顾典型治疗提供了依据。组织病理学检查是诊断结肠癌的常用方法。目前的诊断方法依赖于自定义特征,检测周期长,需要专业的医学人员。本文提出了四种卷积神经网络(CNN),分别是基线CNN、二块CNN、三块CNN和数据增强的三块CNN,用于对结肠组织病理图像进行分类。数据增强的目的是检验所提出的网络与其他现有方法的有效性。将组织病理图像作为输入输入到四个CNN。经过数据增强的三块CNN准确率达到99.40%,表明本文方法优于其他现有方法。该网络的性能为精确的癌症诊断提供了一种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Colon Cancer Classification of Histopathological Images Using Data Augmentation
Classification of colon cancer has great importance in medical diagnosis. An accurate and real-time investigation provides medical experts to review typical treatment timely. Histopathological inspection is a commonly used method to diagnose colon cancer. Presently, diagnosis methods depend on self-made features which take a long inspection period and require an expert medical professional. This paper proposes four convolutional neural network (CNN), namely, baseline CNN, two-block CNN, three-block CNN, and three-block CNN with data augmentation respectively, to classify colon tissue histopatho-logical images. The purpose of data augmentation is to check the efficacy of the proposed network compared to other existing methods. The histopathological images are given as input to four CNN. Three-block CNN with data augmentation achieved an accuracy of 99.40% shows that the proposed approach outper-forms other existing methods. The performance of the proposed network leads to an approach for precise cancer diagnosis.
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