通过以数据为中心的深度学习在双视角超声波成像上检测乳腺癌

IF 2.7 Q3 ENGINEERING, BIOMEDICAL
Ting-Ruen Wei;Michele Hell;Aren Vierra;Ran Pang;Young Kang;Mahesh Patel;Yuling Yan
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引用次数: 0

摘要

目标:本研究旨在采用以数据为中心的方法,通过双视角超声波成像增强人工智能辅助乳腺癌诊断。方法我们在独家双视角乳腺超声数据集上定制了基于 DenseNet 的模型,以增强模型区分恶性和良性肿块的能力。我们设计了各种组装策略,将双视图整合到模型输入中,与单独使用单视图形成对比,目的是最大限度地提高性能。随后,我们将模型与放射科医生进行了比较,并量化了关键性能指标的改进情况。我们进一步评估了放射科医生如何在模型的帮助下提高诊断准确性。结果:我们的实验一致发现,使用通道式堆叠方法可获得最佳结果,该方法包含两个视图,其中一个视图作为第三通道重复显示。这种配置使模型表现出色,接收者操作特征曲线下面积(AUC)为 0.9754,特异性为 0.96,灵敏度为 0.9263,在特异性方面比放射科医生高出 50%。在该模型的指导下,放射科医生在各项关键指标上的表现都有所改善:准确性提高了 17%,精确性提高了 26%,特异性提高了 29%。结论:我们的定制模型采用了双视角图像输入的最佳配置,超越了放射科医生和现有文献中的模型结果。将该模型整合为独立工具或放射科医生的辅助工具,可以大大提高特异性,减少假阳性,从而最大限度地减少不必要的活检,减轻放射科医生的工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Breast Cancer Detection on Dual-View Sonography via Data-Centric Deep Learning
Goal: This study aims to enhance AI-assisted breast cancer diagnosis through dual-view sonography using a data-centric approach. Methods: We customize a DenseNet-based model on our exclusive dual-view breast ultrasound dataset to enhance the model's ability to differentiate between malignant and benign masses. Various assembly strategies are designed to integrate the dual views into the model input, contrasting with the use of single views alone, with a goal to maximize performance. Subsequently, we compare the model against the radiologist and quantify the improvement in key performance metrics. We further assess how the radiologist's diagnostic accuracy is enhanced with the assistance of the model. Results: Our experiments consistently found that optimal outcomes were achieved by using a channel-wise stacking approach incorporating both views, with one duplicated as the third channel. This configuration resulted in remarkable model performance with an area underthe receiver operating characteristic curve (AUC) of 0.9754, specificity of 0.96, and sensitivity of 0.9263, outperforming the radiologist by 50% in specificity. With the model's guidance, the radiologist's performance improved across key metrics: accuracy by 17%, precision by 26%, and specificity by 29%. Conclusions: Our customized model, withan optimal configuration for dual-view image input, surpassed both radiologists and existing model results in the literature. Integrating the model as a standalone tool or assistive aid for radiologists can greatly enhance specificity, reduce false positives, thereby minimizing unnecessary biopsies and alleviating radiologists' workload.
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来源期刊
CiteScore
9.50
自引率
3.40%
发文量
20
审稿时长
10 weeks
期刊介绍: The IEEE Open Journal of Engineering in Medicine and Biology (IEEE OJEMB) is dedicated to serving the community of innovators in medicine, technology, and the sciences, with the core goal of advancing the highest-quality interdisciplinary research between these disciplines. The journal firmly believes that the future of medicine depends on close collaboration between biology and technology, and that fostering interaction between these fields is an important way to advance key discoveries that can improve clinical care.IEEE OJEMB is a gold open access journal in which the authors retain the copyright to their papers and readers have free access to the full text and PDFs on the IEEE Xplore® Digital Library. However, authors are required to pay an article processing fee at the time their paper is accepted for publication, using to cover the cost of publication.
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