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用于前列腺癌组织病理学图像自动癌症分级的标签分布学习

Label Distribution Learning for Automatic Cancer Grading of Histopathological Images of Prostate Cancer.

作者信息

Nishio Mizuho, Matsuo Hidetoshi, Kurata Yasuhisa, Sugiyama Osamu, Fujimoto Koji

机构信息

Department of Radiology, Kobe University Graduate School of Medicine, 7-5-2 Kusunoki-cho, Chuo-ku, Kobe 650-0017, Japan.

Department of Diagnostic Imaging and Nuclear Medicine, Kyoto University Graduate School of Medicine, 54 Shogoin Kawahara-cho, Sakyo-ku, Kyoto 606-8507, Japan.

出版信息

Cancers (Basel). 2023 Feb 28;15(5):1535. doi: 10.3390/cancers15051535.

Abstract

We aimed to develop and evaluate an automatic prediction system for grading histopathological images of prostate cancer. A total of 10,616 whole slide images (WSIs) of prostate tissue were used in this study. The WSIs from one institution (5160 WSIs) were used as the development set, while those from the other institution (5456 WSIs) were used as the unseen test set. Label distribution learning (LDL) was used to address a difference in label characteristics between the development and test sets. A combination of EfficientNet (a deep learning model) and LDL was utilized to develop an automatic prediction system. Quadratic weighted kappa (QWK) and accuracy in the test set were used as the evaluation metrics. The QWK and accuracy were compared between systems with and without LDL to evaluate the usefulness of LDL in system development. The QWK and accuracy were 0.364 and 0.407 in the systems with LDL and 0.240 and 0.247 in those without LDL, respectively. Thus, LDL improved the diagnostic performance of the automatic prediction system for the grading of histopathological images for cancer. By handling the difference in label characteristics using LDL, the diagnostic performance of the automatic prediction system could be improved for prostate cancer grading.

摘要

我们旨在开发并评估一种用于前列腺癌组织病理学图像分级的自动预测系统。本研究共使用了10616张前列腺组织的全切片图像(WSIs)。来自一个机构的WSIs(5160张)用作开发集,而来自另一个机构的WSIs(5456张)用作未知测试集。标签分布学习(LDL)用于解决开发集和测试集之间标签特征的差异。利用EfficientNet(一种深度学习模型)和LDL的组合来开发自动预测系统。测试集中的二次加权kappa(QWK)和准确率用作评估指标。比较了有LDL和无LDL的系统之间的QWK和准确率,以评估LDL在系统开发中的有用性。有LDL的系统中QWK和准确率分别为0.364和0.407,无LDL的系统中分别为0.240和0.247。因此,LDL提高了用于癌症组织病理学图像分级的自动预测系统的诊断性能。通过使用LDL处理标签特征的差异,可以提高自动预测系统对前列腺癌分级的诊断性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/36db/10000939/1a532efdc83a/cancers-15-01535-g001.jpg

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