基于深度学习的术中多尺度冰冻病理图像良恶性甲状腺滤泡肿瘤鉴别:一项多中心诊断研究。

IF 7 2区 医学 Q1 ONCOLOGY
Jiahui Liu, Chuanguang Xiao, Haicheng Zhang, Pengyi Yu, Qi Wang, Ziru Peng, Guohua Yu, Ping Yang, Yakui Mou, Chuanliang Jia, Hongxia Cheng, Ning Mao, Xicheng Song
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引用次数: 0

摘要

目的:本研究旨在开发一种深度多尺度图像学习系统(DMILS),在术中冷冻病理图像的多尺度全片图像(WSIs)上鉴别甲状腺滤泡性肿瘤的良恶性。方法:将1213例患者分为三个中心的训练和验证集、内部测试集、合并外部测试集和合并前瞻性测试集。DMILS使用基于深度学习的弱监督方法构建,该方法基于放大倍数为10倍、20倍和40倍的多尺度wsi。将DMILS的性能与单个放大倍率进行比较,并在两个病理学家未确定的子集中进行验证。结果:DMILS在训练集和验证集、内部测试集、合并外部测试集和合并前瞻性测试集的受试者工作特征曲线下面积(auc)分别为0.848、0.857、0.810和0.787,具有较好的效果。DMILS的AUC高于单一倍率下的AUC,在内部测试集中分别为0.788(10倍)、0.824(20倍)和0.775(40倍)。此外,DMILS在两个病理未知的子集上产生了令人满意的表现。此外,DMILS预测的最具指示性的区域是滤泡上皮。结论:DMILS对术中冷冻病理图像的多尺度WSIs鉴别甲状腺滤泡性肿瘤有较好的效果。
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 differentiation of benign and malignant thyroid follicular neoplasms on multiscale intraoperative frozen pathological images: A multicenter diagnostic study.

Objective: This study aims to develop a deep multiscale image learning system (DMILS) to differentiate malignant from benign thyroid follicular neoplasms on multiscale whole-slide images (WSIs) of intraoperative frozen pathological images.

Methods: A total of 1,213 patients were divided into training and validation sets, an internal test set, a pooled external test set, and a pooled prospective test set at three centers. DMILS was constructed using a deep learning-based weakly supervised method based on multiscale WSIs at 10×, 20×, and 40× magnifications. The performance of the DMILS was compared with that of a single magnification and validated in two pathologist-unidentified subsets.

Results: The DMILS yielded good performance, with areas under the receiver operating characteristic curves (AUCs) of 0.848, 0.857, 0.810, and 0.787 in the training and validation sets, internal test set, pooled external test set, and pooled prospective test set, respectively. The AUC of the DMILS was higher than that of a single magnification, with 0.788 of 10×, 0.824 of 20×, and 0.775 of 40× in the internal test set. Moreover, DMILS yielded satisfactory performance on the two pathologist-unidentified subsets. Furthermore, the most indicative region predicted by DMILS is the follicular epithelium.

Conclusions: DMILS has good performance in differentiating thyroid follicular neoplasms on multiscale WSIs of intraoperative frozen pathological images.

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来源期刊
自引率
9.80%
发文量
1726
审稿时长
4.5 months
期刊介绍: Chinese Journal of Cancer Research (CJCR; Print ISSN: 1000-9604; Online ISSN:1993-0631) is published by AME Publishing Company in association with Chinese Anti-Cancer Association.It was launched in March 1995 as a quarterly publication and is now published bi-monthly since February 2013. CJCR is published bi-monthly in English, and is an international journal devoted to the life sciences and medical sciences. It publishes peer-reviewed original articles of basic investigations and clinical observations, reviews and brief communications providing a forum for the recent experimental and clinical advances in cancer research. This journal is indexed in Science Citation Index Expanded (SCIE), PubMed/PubMed Central (PMC), Scopus, SciSearch, Chemistry Abstracts (CA), the Excerpta Medica/EMBASE, Chinainfo, CNKI, CSCI, etc.
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