4.6 Article

Artificial Intelligence for Automatic Measurement of Left Ventricular Strain in Echocardiography

Journal

JACC-CARDIOVASCULAR IMAGING
Volume 14, Issue 10, Pages 1918-1928

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.jcmg.2021.04.018

Keywords

artificial intelligence; artificial neural networks; deep learning; echocardiography; global longitudinal strain; machine learning

Funding

  1. Research Council of Norway [237887]
  2. Norwegian Health Association
  3. South-Eastern Nor-way regional health authority, national program for clinical therapy research [2017207]
  4. Centre for Innovative Ultra-sound Solutions
  5. Norwegian Research Council center for research-based innovation

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This study demonstrated the feasibility and comparability of fully automated measurements of global longitudinal strain using a novel motion estimation technology based on deep learning and artificial intelligence. The AI method successfully identified standard apical views, timed cardiac events, traced the myocardium, estimated motion, and measured GLS across different cardiac pathologies and LV function levels. Automated measurements based on AI could streamline the evaluation of left ventricular function and improve clinical diagnostic efficiency.
OBJECTIVES This study sought to examine if fully automated measurements of global longitudinal strain (GLS) using a novel motion estimation technology based on deep learning and artificial intelligence (AI) are feasible and comparable with a conventional speckle-tracking application. BACKGROUND GLS is an important parameter when evaluating left ventricular function. However, analyses of GLS are time consuming and demand expertise, and thus are underused in clinical practice. METHODS In this study, 200 patients with a wide range of left ventricle (LV) function were included. Three standard apical cine-loops were analyzed using the AI pipeline. The AI method measured GLS and was compared with a commercially available semiautomatic speckle-tracking software (EchoPAC v202, GE Healthcare. RESULTS The AI method succeeded to both correctly classify all 3 standard apical views and perform timing of cardiac events in 89% of patients. Furthermore, the method successfully performed automatic segmentation, motion estimates, and measurements of GLS in all examinations, across different cardiac pathologies and throughout the spectrum of LV function. GLS was-12.0 +/- 4.1% for the AI method and-13.5 +/- 5.3% for the reference method. Bias was-1.4 +/- 0.3% (95% limits of agreement: 2.3 to-5.1), which is comparable with intervendor studies. The AI method eliminated measurement variability and a complete GLS analysis was processed within 15 s. CONCLUSIONS Through the range of LV function this novel AI method succeeds, without any operator input, to automatically identify the 3 standard apical views, perform timing of cardiac events, trace the myocardium, perform motion estimation, and measure GLS. Fully automated measurements based on AI could facilitate the clinical implementation of GLS. (J Am Coll Cardiol Img 2021;14:1918-1928) (c) 2021 The Authors. Published by Elsevier on behalf of the American College of Cardiology Foundation. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

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