Abstract
Cardiovascular morbidity and mortality occur with an extraordinarily high incidence in the hemodialysis-dependent end-stage kidney disease population. There is a clear need to improve identification of those individuals at the highest risk of cardiovascular complications in order to better target them for preventative therapies. Twelve-lead electrocardiograms are ubiquitous and use inexpensive technology that can be administered with minimal inconvenience to patients and at a minimal burden to care providers. The embedded waveforms encode significant information on the cardiovascular structure and function that might be unlocked and used to identify at-risk individuals with the use of artificial intelligence techniques like deep learning. In this review, we discuss the experience with deep learning–based analysis of electrocardiograms to identify cardiovascular abnormalities or risk and the potential to extend this to the setting of dialysis-dependent end-stage kidney disease.
Author supplied keywords
Cite
CITATION STYLE
Zheng, Z., Soomro, Q. H., & Charytan, D. M. (2023, January 1). Deep Learning Using Electrocardiograms in Patients on Maintenance Dialysis. Advances in Kidney Disease and Health . W.B. Saunders. https://doi.org/10.1053/j.akdh.2022.11.009
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.