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A Common-Ground Review of the Potential for Machine Learning Approaches in Electrocardiographic Imaging Based on Probabilistic Graphical Models

机译:基于概率图形模型的心电图机器学习方法潜力的通用综述

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摘要

Machine learning (ML) methods have seen an explosion in their development and application. They are increasingly being used in many different fields with considerable success. However, although the interest is growing, their impact in the field of electrocardiographic imaging (ECGI) remains limited. One of the main reasons that ML has yet to become more prevalent in ECGI is that the published literature is scattered and there is no common ground description and comparison of these methods in an ML framework.Here we address this limitation with a review of ECGI methods from the perspective of ML. We will use probabilistic modeling to provide a common ground framework to compare different methods and well known approaches. Finally, we will discuss which approaches have been used to do inference on these models and which alternatives could be utilized as the methods in ML become more mature.
机译:机器学习(ML)方法在其开发和应用中已见爆炸式增长。它们越来越多地用于许多不同领域,并取得了相当大的成功。然而,尽管人们的兴趣在增长,但它们在心电图成像(ECGI)领域的影响仍然有限。机器学习尚未在ECGI中普及的主要原因之一是出版的文献散乱,并且在ML框架中没有这些方法的共同基础描述和比较。这里我们通过回顾ECGI方法来解决这一局限性从机器学习的角度来看。我们将使用概率建模来提供一个通用的基础框架,以比较不同的方法和众所周知的方法。最后,我们将讨论使用哪些方法对这些模型进行推断,以及随着ML中的方法变得越来越成熟,可以使用哪些替代方法。

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