Deep neural network-based clustering of deformation curves reveals novel disease features in PLN pathogenic variant carriers.

IF 1.5 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Karim Taha, Rutger R van de Leur, Melle Vessies, Thomas P Mast, Maarten J Cramer, Nicholas Cauwenberghs, Tom E Verstraelen, Remco de Brouwer, Pieter A Doevendans, Arthur Wilde, Folkert W Asselbergs, Maarten P van den Berg, Jan D'hooge, Tatiana Kuznetsova, Arco J Teske, René van Es
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引用次数: 0

Abstract

Echocardiographic deformation curves provide detailed information on myocardial function. Deep neural networks (DNNs) may enable automated detection of disease features in deformation curves, and improve the clinical assessment of these curves. We aimed to investigate whether an explainable DNN-based pipeline can be used to detect and visualize disease features in echocardiographic deformation curves of phospholamban (PLN) p.Arg14del variant carriers. A DNN was trained to discriminate PLN variant carriers (n = 278) from control subjects (n = 621) using raw deformation curves obtained by 2D-speckle tracking in the longitudinal axis. A visualization technique was used to identify the parts of these curves that were used by the DNN for classification. The PLN variant carriers were clustered according to the output of the visualization technique. The DNN showed excellent discriminatory performance (C-statistic 0.93 [95% CI 0.87-0.97]). We identified four clusters with PLN-associated disease features in the deformation curves. Two clusters showed previously described features: apical post-systolic shortening and reduced systolic strain. The two other clusters revealed novel features, both reflecting delayed relaxation. Additionally, a fifth cluster was identified containing variant carriers without disease features in the deformation curves, who were classified as controls by the DNN. This latter cluster had a very benign disease course regarding development of ventricular arrhythmias. Applying an explainable DNN-based pipeline to myocardial deformation curves enables automated detection and visualization of disease features. In PLN variant carriers, we discovered novel disease features which may improve individual risk stratification. Applying this approach to other diseases will further expand our knowledge on disease-specific deformation patterns. Overview of the deep neural network-based pipeline for feature detection in myocardial deformation curves. Firstly, phospholamban (PLN) p.Arg14del variant carriers and controls were selected and a deep neural network (DNN) was trained to detect the PLN variant carriers. Subsequently, a clustering-based approach was performed on the attention maps of the DNN, which revealed 4 distinct phenotypes of PLN variant carriers with different prognoses. Moreover, a cluster without features and a benign prognosis was detected.

基于深度神经网络的变形曲线聚类揭示了PLN致病变异携带者的新疾病特征。
超声心动图变形曲线提供心肌功能的详细信息。深度神经网络(dnn)可以自动检测变形曲线中的疾病特征,并改善这些曲线的临床评估。我们的目的是研究一种可解释的基于dnn的管道是否可以用于检测和可视化磷蛋白(PLN) p.a g14del变异携带者的超声心动图变形曲线的疾病特征。训练DNN,通过在纵轴上进行2d散斑跟踪获得的原始变形曲线,将PLN变异携带者(n = 278)与对照受试者(n = 621)区分开来。使用可视化技术来识别这些曲线中被DNN用于分类的部分。根据可视化技术的输出结果对PLN变异载体进行聚类。DNN表现出优异的区分性能(c统计量0.93 [95% CI 0.87-0.97])。我们在变形曲线中确定了四组与pln相关的疾病特征。两个集群显示先前描述的特征:收缩后根尖缩短和收缩应变减少。另外两个簇显示出新的特征,都反映了延迟松弛。此外,鉴定出第五组包含变形曲线中没有疾病特征的变异携带者,通过DNN将其分类为对照组。后一组在室性心律失常的发展方面具有非常良性的病程。将可解释的基于dnn的管道应用于心肌变形曲线可以实现疾病特征的自动检测和可视化。在PLN变异携带者中,我们发现了可能改善个体风险分层的新疾病特征。将这种方法应用于其他疾病将进一步扩大我们对疾病特异性变形模式的了解。基于深度神经网络的心肌变形曲线特征检测方法综述。首先,选择磷蛋白(PLN) p.a g14del变异载体和对照,训练深度神经网络(DNN)检测PLN变异载体;随后,对DNN的注意图进行了基于聚类的方法,揭示了具有不同预后的PLN变异携带者的4种不同表型。此外,检测到无特征和预后良好的群集。
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来源期刊
CiteScore
4.00
自引率
9.50%
发文量
77
审稿时长
1 months
期刊介绍: The International Journal of Cardiovascular Imaging publishes technical and clinical communications (original articles, review articles and editorial comments) associated with cardiovascular diseases. The technical communications include the research, development and evaluation of novel imaging methods in the various imaging domains. These domains include magnetic resonance imaging, computed tomography, X-ray imaging, intravascular imaging, and applications in nuclear cardiology and echocardiography, and any combination of these techniques. Of particular interest are topics in medical image processing and image-guided interventions. Clinical applications of such imaging techniques include improved diagnostic approaches, treatment , prognosis and follow-up of cardiovascular patients. Topics include: multi-center or larger individual studies dealing with risk stratification and imaging utilization, applications for better characterization of cardiovascular diseases, and assessment of the efficacy of new drugs and interventional devices.
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