Deep Learning in Echocardiography for Enhanced Detection of Left Ventricular Function and Wall Motion Abnormalities.

Journal: Ultrasound in medicine & biology
Published Date:

Abstract

Cardiovascular diseases (CVDs) remain a leading cause of mortality worldwide, underscoring the need for advancements in diagnostic methodologies to improve early detection and treatment outcomes. This systematic review examines the integration of advanced deep learning (DL) techniques in echocardiography for detecting cardiovascular abnormalities, adhering to PRISMA 2020 guidelines. Through a comprehensive search across databases like IEEE Xplore, PubMed, and Web of Science, 29 studies were identified and analyzed, focusing on deep convolutional neural networks (DCNNs) and their role in enhancing the diagnostic precision of echocardiographic assessments. The findings highlight DL's capability to improve the accuracy and reproducibility of detecting and classifying echocardiographic data, particularly in measuring left ventricular function and identifying wall motion abnormalities. Despite these advancements, challenges such as data diversity, image quality, and the computational demands of DL models hinder their broader clinical adoption. In conclusion, DL offers significant potential to enhance the diagnostic capabilities of echocardiography. However, successful clinical implementation requires addressing issues related to data quality, computational demands, and system integration.

Authors

  • Manal Alhussein
    Department of Health Administration and Policy, Health Services Research / Discovery, Knowledge, and Health Informatics, College of Public Health, George Mason University, Fairfax, Virginia, United States. Electronic address: malhuss@gmu.edu.
  • Michelle Xiang Liu
    Information Technology and Cybersecurity, School of Technology and Innovation, College of Business, Innovation, Leadership, and Technology (BILT), Marymount University, Arlington, Virginia, United States.