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Machine Learning for Cardiac Ultrasound Time Series Data

机译:心脏超声时间序列数据的机器学习

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摘要

We consider the problem of identifying frames in a cardiac ultrasound video associated with left ventricular chamber end-systolic (ES, contraction) and end-diastolic (ED, expansion) phases of the cardiac cycle. Our procedure involves a simple application of non-negative matrix factorization (NMF) to a series of frames of a video from a single patient. Rank-2 NMF is performed to compute two end-members. The end members are shown to be close representations of the actual heart morphology at the end of each phase of the heart function. Moreover, the entire time series can be represented as a linear combination of these two end-member states thus providing a very low dimensional representation of the time dynamics of the heart. Unlike previous work, our methods do not require any electrocardiogram (ECG) information in order to select the end-diastolic frame. Results are presented for a data set of 99 patients including both healthy and diseased examples.
机译:我们考虑心脏循环末端收缩(ES,收缩)和心脏循环结束舒张(ED,膨胀)阶段相关的心脏超声视频中识别心脏超声视频中的帧的问题。我们的程序涉及简单地将非负矩阵分解(NMF)应用于来自单个患者的视频的一系列帧。执行Rank-2 NMF以计算两个最终成员。端部构件被示出为心脏功能的每个阶段结束时的实际心态的近似表示。此外,整个时间序列可以表示为这两个端构件状态的线性组合,从而提供了心脏的时间动态的非常低的尺寸表示。与以前的工作不同,我们的方法不需要任何心电图(ECG)信息以选择末端舒张框架。提出了99名患者的数据集,包括健康和患病的例子。

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