计算机辅助设计
计算机科学
管道(软件)
人工智能
层析合成
匹配(统计)
接收机工作特性
过程(计算)
黑匣子
深度学习
机器学习
乳腺摄影术
模式识别(心理学)
乳腺癌
工程制图
癌症
内科学
工程类
操作系统
统计
医学
程序设计语言
数学
作者
Yinhao Ren,Xuan Liu,Jun Ge,Zisheng Liang,Xiaoming Xu,Lars J. Grimm,Jonathan Go,Jeffrey R. Marks,Joseph Y. Lo
标识
DOI:10.1109/tmi.2023.3280135
摘要
Computer-aided detection (CAD) frameworks for breast cancer screening have been researched for several decades. Early adoption of deep-learning models in CAD frameworks has shown greatly improved detection performance compared to traditional CAD on single-view images. Recently, studies have improved performance by merging information from multiple views within each screening exam. Clinically, the integration of lesion correspondence during screening is a complicated decision process that depends on the correct execution of several referencing steps. However, most multi-view CAD frameworks are deep-learning-based black-box techniques. Fully end-to-end designs make it very difficult to analyze model behaviors and fine-tune performance. More importantly, the black-box nature of the techniques discourages clinical adoption due to the lack of explicit reasoning for each multi-view referencing step. Therefore, there is a need for a multi-view detection framework that can not only detect cancers accurately but also provide step-by-step, multi-view reasoning. In this work, we present Ipsilateral-Matching-Refinement Networks (IMR-Net) for digital breast tomosynthesis (DBT) lesion detection across multiple views. Our proposed framework adaptively refines the single-view detection scores based on explicit ipsilateral lesion matching. IMR-Net is built on a robust, single-view detection CAD pipeline with a commercial development DBT dataset of 24675 DBT volumetric views from 8034 exams. Performance is measured using location-based, case-level receiver operating characteristic (ROC) and case-level free-response ROC (FROC) analysis.
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