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在自监督学习中,基于乳腺组织结构利用拼图任务进行乳腺癌分类。

Breast cancer classification based on breast tissue structures using the Jigsaw puzzle task in self-supervised learning.

作者信息

Sugawara Keisuke, Takaya Eichi, Inamori Ryusei, Konaka Yuma, Sato Jumpei, Shiratori Yuta, Hario Fumihito, Kobayashi Tomoya, Ueda Takuya, Okamoto Yoshikazu

机构信息

Department of Diagnostic Radiology, Tohoku University Graduate School of Medicine, 2-1 Seiryo-machi, Aoba-ku, Sendai, Miyagi, 980-8575, Japan.

Department of Diagnostic Imaging, Tohoku University Graduate School of Medicine, 2-1 Seiryo-machi, Aoba-ku, Sendai, Miyagi, 980-8575, Japan.

出版信息

Radiol Phys Technol. 2025 Mar;18(1):209-218. doi: 10.1007/s12194-024-00874-y. Epub 2025 Jan 6.

DOI:10.1007/s12194-024-00874-y
PMID:39760975
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11876229/
Abstract

Self-supervised learning (SSL) has gained attention in the medical field as a deep learning approach utilizing unlabeled data. The Jigsaw puzzle task in SSL enables models to learn both features of images and the positional relationships within images. In breast cancer diagnosis, radiologists evaluate not only lesion-specific features but also the surrounding breast structures. However, deep learning models that adopt a diagnostic approach similar to human radiologists are still limited. This study aims to evaluate the effectiveness of the Jigsaw puzzle task in characterizing breast tissue structures for breast cancer classification on mammographic images. Using the Chinese Mammography Database (CMMD), we compared four pre-training pipelines: (1) IN-Jig, pre-trained with both the ImageNet classification task and the Jigsaw puzzle task, (2) Scratch-Jig, pre-trained only with the Jigsaw puzzle task, (3) IN, pre-trained only with the ImageNet classification task, and (4) Scratch, that is trained from random initialization without any pre-training tasks. All pipelines were fine-tuned using binary classification to distinguish between the presence or absence of breast cancer. Performance was evaluated based on the area under the receiver operating characteristic curve (AUC), sensitivity, and specificity. Additionally, detailed analysis was conducted for performance across different radiological findings, breast density, and regions of interest were visualized using gradient-weighted class activation mapping (Grad-CAM). The AUC for the four models were 0.925, 0.921, 0.918, 0.909, respectively. Our results suggest the Jigsaw puzzle task is an effective pre-training method for breast cancer classification, with the potential to enhance diagnostic accuracy with limited data.

摘要

自监督学习(SSL)作为一种利用未标记数据的深度学习方法,在医学领域受到了关注。SSL中的拼图任务使模型能够学习图像的特征以及图像内的位置关系。在乳腺癌诊断中,放射科医生不仅评估病变特异性特征,还评估周围的乳腺结构。然而,采用与人类放射科医生相似诊断方法的深度学习模型仍然有限。本研究旨在评估拼图任务在表征乳腺组织结构以用于乳腺钼靶图像乳腺癌分类方面的有效性。使用中国乳腺钼靶数据库(CMMD),我们比较了四种预训练管道:(1)IN-Jig,同时使用ImageNet分类任务和拼图任务进行预训练;(2)Scratch-Jig,仅使用拼图任务进行预训练;(3)IN,仅使用ImageNet分类任务进行预训练;(4)Scratch,从随机初始化开始训练,无任何预训练任务。所有管道都使用二元分类进行微调,以区分乳腺癌的有无。基于受试者工作特征曲线下面积(AUC)、敏感性和特异性评估性能。此外,对不同放射学表现的性能进行了详细分析,使用梯度加权类激活映射(Grad-CAM)对感兴趣区域进行了可视化。四个模型的AUC分别为0.925、0.921、0.918、0.909。我们的结果表明,拼图任务是一种有效的乳腺癌分类预训练方法,有可能在有限的数据下提高诊断准确性。

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本文引用的文献

1
Fine-Grained Self-Supervised Learning with Jigsaw puzzles for medical image classification.基于拼图的细粒度自监督学习在医学图像分类中的应用。
Comput Biol Med. 2024 May;174:108460. doi: 10.1016/j.compbiomed.2024.108460. Epub 2024 Apr 8.
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Self-supervised learning for medical image classification: a systematic review and implementation guidelines.用于医学图像分类的自监督学习:系统综述与实施指南
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医学影像分析中的自监督学习方法与应用:一项综述。
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