利用深度学习自动分析结直肠癌组织学图像,提高诊断精准度

Shah Muhammad Imtiyaj Uddin, Md Ariful Isalm Mojumder, Rashedul Islam Sumon, Joo Mon–il, Hee-Cheol Kim
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引用次数: 0

摘要

组织病理学在结直肠癌组织的显微镜检查中起着至关重要的作用,其历史重点是利用纹理分析来确定肿瘤与基质的比例。然而,由于这种方法耗时耗力,因此需要创新的解决方案。本研究通过采用深度迁移学习来自动进行结直肠癌组织学样本中的组织分类,带来了突破性的转变。通过对各种预训练模型(包括 ResNet50V2、VGG19、Xception、InceptionV3 和 MobileNet)进行综合评估,我们取得了显著的成果。值得注意的是,ResNet50V2 模型的准确率高达 95%,令人印象深刻。除了能显著提高业务响应能力外,这项研究还强调了迁移学习作为结直肠癌检测和分类的快速高效工具的有效性和一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Deep Learning for Automated Analysis of Colorectal Cancer Histology Images to Elevate Diagnosis Precision
Histopathology plays a vital role in the microscopic examination of colorectal cancer tissues, with a historical focus on the tumor-stroma ratio using texture analysis. However, due to the time-consuming and labor-intensive nature of this approach, there's a need for innovative solutions. This study introduces a groundbreaking shift by employing deep transfer learning to automate tissue classification within colorectal cancer histology samples. Through a comprehensive evaluation of various pre-trained models, including ResNet50V2, VGG19, Xception, InceptionV3, and MobileNet, we have achieved remarkable results. Notably, the ResNet50V2 model stands out with an impressive accuracy of 95%. Beyond its potential to significantly enhance operational responses, this research underscores the effectiveness and consistency of transfer learning as a rapid and efficient tool for colorectal cancer detection and classification.
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