4.6 Review

Machine Learning Augmented Echocardiography for Diastolic Function Assessment

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FRONTIERS MEDIA SA
DOI: 10.3389/fcvm.2021.711611

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artificial inteligence; echocardiogaphy; diastolic dysfunction; machine learning; heart failure preserved ejection fraction

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Current clinical guidelines recommend using echocardiography measures to assess cardiac diastolic function, but this method has limitations including suboptimal accuracy, indeterminate classifications, and susceptibility to confounding from comorbidities. Recent advances in artificial intelligence offer revolutionary ways to accurately evaluate cardiac function using large quantities of data, particularly in the imaging sub-field of machine-learning.
Cardiac diastolic dysfunction is prevalent and is a diagnostic criterion for heart failure with preserved ejection fraction-a burgeoning global health issue. As gold-standard invasive haemodynamic assessment of diastolic function is not routinely performed, clinical guidelines advise using echocardiography measures to determine the grade of diastolic function. However, the current process has suboptimal accuracy, regular indeterminate classifications and is susceptible to confounding from comorbidities. Advances in artificial intelligence in recent years have created revolutionary ways to evaluate and integrate large quantities of cardiology data. Imaging is an area of particular strength for the sub-field of machine-learning, with evidence that trained algorithms can accurately discern cardiac structures, reliably estimate chamber volumes, and output systolic function metrics from echocardiographic images. In this review, we present the emerging field of machine-learning based echocardiographic diastolic function assessment. We summarise how machine-learning has made use of diastolic parameters to accurately differentiate pathology, to identify novel phenotypes within diastolic disease, and to grade diastolic function. Perspectives are given about how these innovations could be used to augment clinical practice, whilst areas for future investigation are identified.

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