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Machine Learning for Quality Assurance of Myocardial Strain Curves

机译:机器学习确保心肌应变曲线的质量

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Speckle tracking echocardiography (STE) is a well-established technique to quantify regional myocardial function. Reliability of STE-derived strain curves, however, depends strongly on the quality of the acquired B-mode images and can significantly be influenced by image artifacts. Artifactual images could lead to tracking errors and as a result, the measured deformation patterns might be similar to those obtained in pathology. It would thus be clinically very relevant to get feedback on the reliability (i.e. quality) of the extracted strain curves. As such, the aim of this study was to examine the utility of machine learning in the identification of artifactual strain curves. Our proposed learning framework was built upon a data imputation algorithm in order to facilitate the task of classifying (non-)artifactual curves. The obtained results confirmed the feasibility of automatic quality assurance of the STE-derived strain curves via machine learning.
机译:斑点跟踪超声心动图(STE)是一种量化区域心肌功能的成熟技术。但是,STE衍生的应变曲线的可靠性在很大程度上取决于所获取的B模式图像的质量,并且可能会受到图像伪影的显着影响。伪影可能会导致跟踪误差,因此,测得的变形模式可能与在病理学中获得的变形模式相似。因此,在临床上非常重要的是要获得有关提取的应变曲线的可靠性(即质量)的反馈。因此,本研究的目的是检验机器学习在识别人为应变曲线中的效用。我们提出的学习框架是建立在数据插补算法的基础上的,以便于对(非)人工曲线进行分类。获得的结果证实了通过机器学习对STE应变曲线进行自动质量保证的可行性。

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