Deep learning from latent spatiotemporal information of the heart: Identifying advanced bioimaging markers from echocardiograms

Author:

Chang Amanda1ORCID,Wu Xiaodong2ORCID,Liu Kan3ORCID

Affiliation:

1. Division of Cardiovascular Medicine, Department of Internal Medicine, University of Iowa 1 , Iowa City, Iowa 52242, USA

2. Department of Electrical and Computer Engineering, College of Engineering, University of Iowa 2 , Iowa City, Iowa 52242, USA

3. Division of Cardiology, Department of Internal Medicine, Washington University in St. Louis 3 , St. Louis, Missouri 63110, USA

Abstract

A key strength of echocardiography lies in its integration of comprehensive spatiotemporal cardiac imaging data in real-time, to aid frontline or bedside patient risk stratification and management. Nonetheless, its acquisition, processing, and interpretation are known to all be subject to heterogeneity from its reliance on manual and subjective human tracings, which challenges workflow and protocol standardization and final interpretation accuracy. In the era of advanced computational power, utilization of machine learning algorithms for big data analytics in echocardiography promises reduction in cost, cognitive errors, and intra- and inter-observer variability. Novel spatiotemporal deep learning (DL) models allow the integration of temporal arm information based on unlabeled pixel echocardiographic data for convolution of an adaptive semantic spatiotemporal calibration to construct personalized 4D heart meshes, assess global and regional cardiac function, detect early valve pathology, and differentiate uncommon cardiovascular disorders. Meanwhile, data visualization on spatiotemporal DL prediction models helps extract latent temporal imaging features to develop advanced imaging biomarkers in early disease stages and advance our understanding of pathophysiology to support the development of personalized prevention or treatment strategies. Since portable echocardiograms have been increasingly used as point-of-care imaging tools to aid rural care delivery, the application of these new spatiotemporal DL techniques show the potentials in streamlining echocardiographic acquisition, processing, and data analysis to improve workflow standardization and efficiencies, and provide risk stratification and decision supporting tools in real-time, to prompt the building of new imaging diagnostic networks to enhance rural healthcare engagement.

Funder

NIH under the NHLBI

Publisher

AIP Publishing

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