超声心动图中固有可解释和不确定性感知主动脉狭窄分类的动态原型

H. Vaseli, A. Gu, S. Neda, Ahmadi Amiri, M. Tsang, A. Fung, Nima Kondori, Armin Saadat, P. Abolmaesumi, T. Tsang
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引用次数: 0

摘要

主动脉瓣狭窄(AS)是一种常见的心脏瓣膜疾病,需要准确及时的诊断和适当的治疗。目前大多数AS严重程度自动检测方法依赖于黑盒模型,可信度较低,阻碍了临床应用。为了解决这个问题,我们提出了ProtoASNet,这是一个原型网络,可以直接从b模式超声心动图视频中检测AS,同时根据输入和学习的时空原型之间的相似性做出可解释的预测。这种方法提供了临床相关的支持性证据,因为原型通常突出标记,如钙化和主动脉瓣小叶运动受限。此外,ProtoASNet通过定义一组捕获观察数据中的模糊和信息不足的原型,利用弃权损失来估计任意不确定性。这提供了一个可靠的系统,可以检测和解释何时可能会失败。我们在私有数据集和公开可用的TMED-2数据集上对ProtoASNet进行了评估,其中它的准确率分别为80.0%和79.7%,优于现有的最先进的方法。此外,ProtoASNet为每个预测提供了可解释性和不确定性度量,这可以提高透明度并促进深度网络的交互式使用,以帮助临床决策。我们的源代码可从https://github.com/hooman007/ProtoASNet获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ProtoASNet: Dynamic Prototypes for Inherently Interpretable and Uncertainty-Aware Aortic Stenosis Classification in Echocardiography
Aortic stenosis (AS) is a common heart valve disease that requires accurate and timely diagnosis for appropriate treatment. Most current automatic AS severity detection methods rely on black-box models with a low level of trustworthiness, which hinders clinical adoption. To address this issue, we propose ProtoASNet, a prototypical network that directly detects AS from B-mode echocardiography videos, while making interpretable predictions based on the similarity between the input and learned spatio-temporal prototypes. This approach provides supporting evidence that is clinically relevant, as the prototypes typically highlight markers such as calcification and restricted movement of aortic valve leaflets. Moreover, ProtoASNet utilizes abstention loss to estimate aleatoric uncertainty by defining a set of prototypes that capture ambiguity and insufficient information in the observed data. This provides a reliable system that can detect and explain when it may fail. We evaluate ProtoASNet on a private dataset and the publicly available TMED-2 dataset, where it outperforms existing state-of-the-art methods with an accuracy of 80.0% and 79.7%, respectively. Furthermore, ProtoASNet provides interpretability and an uncertainty measure for each prediction, which can improve transparency and facilitate the interactive usage of deep networks to aid clinical decision-making. Our source code is available at: https://github.com/hooman007/ProtoASNet.
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