基于深度学习的全切片组织病理图像子宫癌和子宫内膜癌亚型分类。

IF 3.3
JaeYen Song, Soyoung Im, Sung Hak Lee, Hyun-Jong Jang
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引用次数: 4

摘要

子宫癌和子宫内膜癌有不同的亚型和不同的临床结局。因此,癌症亚型对正确的治疗决策至关重要。此外,腺癌的子宫内膜和宫颈内膜起源也应加以区分。尽管各种免疫组织化学标记可以帮助区分,但没有明确的标记。因此,我们测试了基于深度学习(DL)的宫颈癌和子宫内膜癌亚型分类的可行性,以及从组织切片的整张图像(WSIs)中确定腺癌的起源位置。将wsi在20倍放大率下分割成360 × 360像素的图像块进行分类。然后将patch分类结果的平均值作为最终的分类。宫颈癌和子宫内膜癌分类的受试者工作特征曲线下面积(auroc)分别为0.977和0.944。分类器对腺癌起源的AUROC为0.939。这些结果清楚地证明了基于dl的分类器用于宫颈癌和子宫癌鉴别的可行性。我们期望随着WSI数据的积累,分类器的性能会得到很大的提高。然后,来自分类器的信息可以与其他数据相结合,以更精确地区分宫颈癌和子宫内膜癌。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep Learning-Based Classification of Uterine Cervical and Endometrial Cancer Subtypes from Whole-Slide Histopathology Images.

Deep Learning-Based Classification of Uterine Cervical and Endometrial Cancer Subtypes from Whole-Slide Histopathology Images.

Deep Learning-Based Classification of Uterine Cervical and Endometrial Cancer Subtypes from Whole-Slide Histopathology Images.

Deep Learning-Based Classification of Uterine Cervical and Endometrial Cancer Subtypes from Whole-Slide Histopathology Images.

Uterine cervical and endometrial cancers have different subtypes with different clinical outcomes. Therefore, cancer subtyping is essential for proper treatment decisions. Furthermore, an endometrial and endocervical origin for an adenocarcinoma should also be distinguished. Although the discrimination can be helped with various immunohistochemical markers, there is no definitive marker. Therefore, we tested the feasibility of deep learning (DL)-based classification for the subtypes of cervical and endometrial cancers and the site of origin of adenocarcinomas from whole slide images (WSIs) of tissue slides. WSIs were split into 360 × 360-pixel image patches at 20× magnification for classification. Then, the average of patch classification results was used for the final classification. The area under the receiver operating characteristic curves (AUROCs) for the cervical and endometrial cancer classifiers were 0.977 and 0.944, respectively. The classifier for the origin of an adenocarcinoma yielded an AUROC of 0.939. These results clearly demonstrated the feasibility of DL-based classifiers for the discrimination of cancers from the cervix and uterus. We expect that the performance of the classifiers will be much enhanced with an accumulation of WSI data. Then, the information from the classifiers can be integrated with other data for more precise discrimination of cervical and endometrial cancers.

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