sift-dbt:不平衡数字乳腺断层合成图像分类的自监督初始化和微调。

Yuexi Du, Regina J Hooley, John Lewin, Nicha C Dvornek
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引用次数: 0

摘要

数字乳腺断层综合成像(DBT)是一种广泛应用于乳腺癌筛查和诊断的医学成像模式,通过其类似三维的乳腺容积成像功能,可提供更高的空间分辨率和更多细节。然而,数据量的增加也带来了明显的数据不平衡挑战,即只有一小部分体积包含可疑组织。这进一步加剧了真实世界数据中病例级分布导致的数据不平衡,并导致学习到的琐碎分类模型只能预测大多数类别。为此,我们提出了一种使用视图级对比自监督初始化和微调来识别异常 DBT 图像的新方法,即 SIFT-DBT。我们进一步引入了一种补丁级多实例学习方法,以保持空间分辨率。在对 970 项独特研究的评估中,所提出的方法达到了 92.69% 的体积 AUC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SIFT-DBT: SELF-SUPERVISED INITIALIZATION AND FINE-TUNING FOR IMBALANCED DIGITAL BREAST TOMOSYNTHESIS IMAGE CLASSIFICATION.

Digital Breast Tomosynthesis (DBT) is a widely used medical imaging modality for breast cancer screening and diagnosis, offering higher spatial resolution and greater detail through its 3D-like breast volume imaging capability. However, the increased data volume also introduces pronounced data imbalance challenges, where only a small fraction of the volume contains suspicious tissue. This further exacerbates the data imbalance due to the case-level distribution in real-world data and leads to learning a trivial classification model that only predicts the majority class. To address this, we propose a novel method using view-level contrastive Self-supervised Initialization and Fine-Tuning for identifying abnormal DBT images, namely SIFT-DBT. We further introduce a patch-level multi-instance learning method to preserve spatial resolution. The proposed method achieves 92.69% volume-wise AUC on an evaluation of 970 unique studies.

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