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Assessing the Impact of Blood Pressure on Cardiac Function Using Interpretable Biomarkers and Variational Autoencoders

机译:使用可解释的生物标志物和变异自动编码器评估血压对心脏功能的影响

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Maintaining good cardiac function for as long as possible is a major concern for healthcare systems worldwide and there is much interest in learning more about the impact of different risk factors on cardiac health. The aim of this study is to analyze the impact of systolic blood pressure (SBP) on cardiac function while preserving the interpretability of the model using known clinical biomarkers in a large cohort of the UK Biobank population. We propose a novel framework that combines deep learning based estimation of interpretable clinical biomarkers from cardiac cine MR data with a variational autoencoder (VAE). The VAE architecture integrates a regression loss in the latent space, which enables the progression of cardiac health with SBP to be learnt. Results on .3,600 subjects from the UK Biobank show that the proposed model allows us to gain important insight into the deterioration of cardiac function with increasing SBP, identify key interpretable factors involved in this process, and lastly exploit the model to understand patterns of positive and adverse adaptation of cardiac function.
机译:尽可能长的时间保持良好的心脏功能是全世界医疗保健系统的主要关注点,并且人们对学习更多有关不同危险因素对心脏健康的影响的兴趣很大。这项研究的目的是分析收缩压(SBP)对心脏功能的影响,同时在英国Biobank大量人群中使用已知的临床生物标记物保留模型的可解释性。我们提出了一种新颖的框架,该框架结合了基于深度学习的心脏MR数据与可解释自动编码器(VAE)的可解释临床生物标志物的估计。 VAE体系结构在潜在空间中集成了回归损失,从而可以了解SBP对心脏健康的影响。来自英国生物库的.3,600名受试者的结果表明,提出的模型使我们能够深入了解随着SBP升高而导致的心脏功能恶化,识别参与此过程的关键可解释因素,最后利用该模型来了解阳性和阴性的模式。心功能不良适应。

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