Cardiac disease discrimination from 3D-convolutional kinematic patterns on cine-MRI sequences.

Alejandra Moreno Tarazona, Lola Xiomara Bautista, Fabio Martínez
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Abstract

Introduction: Cine-MRI (cine-magnetic resonance imaging) sequences are a key diagnostic tool to visualize anatomical information, allowing experts to localize and determine suspicious pathologies. Nonetheless, such analysis remains subjective and prone to diagnosis errors.

Objective: To develop a binary and multi-class classification considering various cardiac conditions using a spatiotemporal model that highlights kinematic movements to characterize each disease.

Materials and methods: This research focuses on a 3D convolutional representation to characterize cardiac kinematic patterns during the cardiac cycle, which may be associated with pathologies. The kinematic maps are obtained from the apparent velocity maps computed from a dense optical flow strategy. Then, a 3D convolutional scheme learns to differentiate pathologies from kinematic maps.

Results: The proposed strategy was validated with respect to the capability to discriminate among myocardial infarction, dilated cardiomyopathy, hypertrophic cardiomyopathy, abnormal right ventricle, and normal cardiac sequences. The proposed method achieves an average accuracy of 78.00% and a F1 score of 75.55%. Likewise, the approach achieved 92.31% accuracy for binary classification between pathologies and control cases.

Conclusion: The proposed method can support the identification of kinematically abnormal patterns associated with a pathological condition. The resultant descriptor, learned from the 3D convolutional net, preserves detailed spatiotemporal correlations and could emerge as possible digital biomarkers of cardiac diseases.

从 cine-MRI 序列上的三维卷积运动模式辨别心脏病。
简介电影磁共振成像(Cine-MRI)序列是将解剖信息可视化的重要诊断工具,专家可借此定位和确定可疑病变。然而,这种分析仍然是主观的,容易出现诊断错误:目的:利用时空模型开发一种二元和多类分类,考虑到各种心脏疾病,突出运动学运动,以描述每种疾病的特征:这项研究的重点是利用三维卷积表示法来描述心动周期中的心脏运动模式,这些运动模式可能与病症有关。运动图是通过密集光流策略计算的视速度图获得的。然后,通过三维卷积方案学习从运动图中区分病变:结果:所提出的策略在区分心肌梗死、扩张型心肌病、肥厚型心肌病、右心室异常和正常心脏序列的能力方面得到了验证。该方法的平均准确率为 78.00%,F1 得分为 75.55%。同样,该方法对病理和对照病例进行二元分类的准确率达到 92.31%:结论:所提出的方法有助于识别与病理状况相关的运动异常模式。从三维卷积网中学习到的描述符保留了详细的时空相关性,可能成为心脏疾病的数字生物标记。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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