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Learning Interpretable Anatomical Features Through Deep Generative Models: Application to Cardiac Remodeling

机译:通过深度生成模型学习可解释的解剖特征:在心脏重塑中的应用

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Alterations in the geometry and function of the heart define well-established causes of cardiovascular disease. However, current approaches to the diagnosis of cardiovascular diseases often rely on subjective human assessment as well as manual analysis of medical images. Both factors limit the sensitivity in quantifying complex structural and functional phenotypes. Deep learning approaches have recently achieved success for tasks such as classification or segmentation of medical images, but lack interpretability in the feature extraction and decision processes, limiting their value in clinical diagnosis. In this work, we propose a 3D convolutional generative model for automatic classification of images from patients with cardiac diseases associated with structural remodeling. The model leverages interpretable task-specific anatomic patterns learned from 3D segmentations. It further allows to visualise and quantify the learned pathology-specific remodeling patterns in the original input space of the images. This approach yields high accuracy in the categorization of healthy and hypertrophic cardiomyopathy subjects when tested on unseen MR images from our own multi-centre dataset (100%) as well on the ACDC MICCAI 2017 dataset (90%). We believe that the proposed deep learning approach is a promising step towards the development of interpretable classifiers for the medical imaging domain, which may help clinicians to improve diagnostic accuracy and enhance patient risk-stratification.
机译:心脏的几何形状和功能的改变定义了心血管疾病的公认原因。但是,目前诊断心血管疾病的方法通常依赖于主观的人体评估以及医学图像的手动分析。这两个因素都限制了量化复杂结构和功能表型的敏感性。深度学习方法最近已成功完成了医学图像的分类或分割等任务,但在特征提取和决策过程中缺乏可解释性,从而限制了它们在临床诊断中的价值。在这项工作中,我们提出了一种3D卷积生成模型,用于对来自与结构重构相关的心脏病患者的图像进行自动分类。该模型利用了从3D分割中学到的可解释的,特定于任务的解剖学模式。它还允许在图像的原始输入空间中可视化和量化学习到的特定于病理的重塑模式。在来自我们自己的多中心数据集(100%)和ACDC MICCAI 2017数据集(90%)的看不见的MR图像上进行测试时,此方法在健康和肥厚型心肌病受试者的分类中具有很高的准确性。我们认为,提出的深度学习方法是朝着医学成像领域发展可解释分类器的有希望的一步,这可能有助于临床医生提高诊断准确性并增强患者风险分层。

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