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基于全国数据集的弱监督模型在腹水细胞学中检测卵巢癌

Ovarian Cancer Detection in Ascites Cytology with Weakly Supervised Model on Nationwide Data Set.

作者信息

Lee Jiwon, Choi Seonggyeong, Shin Seoyeon, Alam Mohammad Rizwan, Abdul-Ghafar Jamshid, Seo Kyung Jin, Hwang Gisu, Jeong Daeky, Gong Gyungyub, Cho Nam Hoon, Yoo Chong Woo, Kim Hyung Kyung, Chong Yosep, Yim Kwangil

机构信息

College of Medicine, The Catholic University of Korea, Seoul, Republic of Korea.

Department of Hospital Pathology, College of Medicine, The Catholic University of Korea, Seoul, Republic of Korea.

出版信息

Am J Pathol. 2025 Jul;195(7):1254-1263. doi: 10.1016/j.ajpath.2025.04.004. Epub 2025 Apr 30.

Abstract

Conventional ascitic fluid cytology for detecting ovarian cancer is limited by its low sensitivity. To address this issue, this multicenter study developed patch image (PI)-based fully supervised convolutional neural network (CNN) models and clustering-constrained attention multiple-instance learning (CLAM) algorithms for detecting ovarian cancer using ascitic fluid cytology. Whole-slide images (WSIs), 356 benign and 147 cancer, were collected, from which 14,699 benign and 8025 cancer PIs were extracted. Additionally, 131 WSIs (44 benign and 87 cancer) were used for external validation. Six CNN algorithms were developed for cancer detection using PIs. Subsequently, two CLAM algorithms, single branch (CLAM-SB) and multiple branch (CLAM-MB), were developed. ResNet50 demonstrated the best performance, achieving an accuracy of 0.973. The performance when interpreting internal WSIs was an area under the curve (AUC) of 0.982. CLAM-SB outperformed CLAM-MB with an AUC of 0.944 for internal WSIs. Notably, in the external test, CLAM-SB exhibited superior performance with an AUC of 0.866 compared with ResNet50's AUC of 0.804. Analysis of the heatmap revealed that cases frequently misinterpreted by AI were easily interpreted by humans, and vice versa. Because AI and humans were found to function complementarily, implementing computer-aided diagnosis is expected to significantly enhance diagnostic accuracy and reproducibility. Furthermore, the WSI-based learning in CLAM, eliminating the need for patch-by-patch annotation, offers an advantage over the CNN model.

摘要

用于检测卵巢癌的传统腹水细胞学检查受其低灵敏度的限制。为了解决这个问题,这项多中心研究开发了基于贴片图像(PI)的全监督卷积神经网络(CNN)模型和聚类约束注意力多实例学习(CLAM)算法,用于利用腹水细胞学检查检测卵巢癌。收集了356例良性和147例癌症的全切片图像(WSI),从中提取了14,699个良性和8025个癌症PI。此外,131张WSI(44例良性和87例癌症)用于外部验证。开发了六种使用PI进行癌症检测的CNN算法。随后,开发了两种CLAM算法,单分支(CLAM-SB)和多分支(CLAM-MB)。ResNet50表现出最佳性能,准确率达到0.973。解释内部WSI时的性能是曲线下面积(AUC)为0.982。对于内部WSI,CLAM-SB的表现优于CLAM-MB,AUC为0.944。值得注意的是,在外部测试中,CLAM-SB表现出卓越的性能,AUC为0.866,而ResNet50的AUC为0.804。热图分析表明,人工智能经常误判的病例人类很容易判断,反之亦然。由于发现人工智能和人类具有互补作用,实施计算机辅助诊断有望显著提高诊断准确性和可重复性。此外,CLAM中基于WSI的学习无需逐片注释,比CNN模型具有优势。

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