数字化乳腺断层合成中的病变检测:参与DBTex挑战的方法、经验和结果

R. Martí, Pablo G. del Campo, Joel Vidal, X. Cufí, J. Martí, M. Chevalier, J. Freixenet
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引用次数: 0

摘要

本文提出了一种在三维数字乳腺断层合成中检测肿块样病变的框架。它由几个步骤组成,包括预处理和后处理,以及一个基于Faster RCNN深度学习网络的主检测块。除了框架之外,本文还描述了实现更好性能的不同训练步骤,包括使用乳房x线摄影和DBT数据的迁移学习。该方法在最近的DBT病变检测挑战赛(DBTex)中获得第三名,成为不使用基于集成的方法的最佳方法。
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Lesion detection in digital breast tomosynthesis: method, experiences and results of participating to the DBTex challenge
The paper presents a framework for the detection of mass-like lesions in 3D digital breast tomosynthesis. It consists of several steps, including pre and post-processing, and a main detection block based on a Faster RCNN deep learning network. In addition to the framework, the paper describes different training steps to achieve better performance, including transfer learning using both mammographic and DBT data. The presented approach obtained third place in the recent DBT Lesion detection Challenge, DBTex, being the top approach without using an ensemble based method.
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