计算机辅助异常检测胸片在临床设置通过域适应

A. Dubey, M. T. Young, Christopher Stanley, D. Lunga, Jacob D. Hinkle
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引用次数: 3

摘要

医学中心正在部署深度学习(DL)模型,以帮助放射科医生从胸部x光片中诊断肺部疾病。这些模型通常是在大量公开可用的标记x光片上进行训练的。这些预先训练好的深度学习模型在临床环境中的泛化能力很差,因为公共和私人持有的x光片之间的数据分布发生了变化。在胸片中,分布的不均匀性源于x射线设备的不同条件及其用于生成图像的配置。在机器学习社区中,数据生成源的异构性带来的挑战被称为域转移,这是生成模型中的一种模式转移。在这项工作中,我们引入了一种域漂移检测和去除方法来克服这个问题。我们的实验结果表明,所提出的方法在部署预训练的DL模型用于临床环境中的胸片异常检测方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer-aided abnormality detection in chest radiographs in a clinical setting via domain-adaptation
Deep learning (DL) models are being deployed at medical centers to aid radiologists for diagnosis of lung conditions from chest radiographs. Such models are often trained on a large volume of publicly available labeled radiographs. These pre-trained DL models' ability to generalize in clinical settings is poor because of the changes in data distributions between publicly available and privately held radiographs. In chest radiographs, the heterogeneity in distributions arises from the diverse conditions in X-ray equipment and their configurations used for generating the images. In the machine learning community, the challenges posed by the heterogeneity in the data generation source is known as domain shift, which is a mode shift in the generative model. In this work, we introduce a domain-shift detection and removal method to overcome this problem. Our experimental results show the proposed method's effectiveness in deploying a pre-trained DL model for abnormality detection in chest radiographs in a clinical setting.
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