Affiliation:
1. World-Class Research Center «Digital Biodesign and Personalized Healthcare», I.M. Sechenov First Moscow State
Medical University (Sechenov University), 119991 Moscow, Russia
Abstract
Abstract:
Recent endeavors have led to the exploration of Machine Learning (ML) to enhance
the detection and accurate diagnosis of heart pathologies. This is due to the growing need to
improve efficiency in diagnostics and hasten the process of delivering treatment. Several institutions
have actively assessed the possibility of creating algorithms for advancing our understanding
of atrial fibrillation (AF), a common form of sustained arrhythmia. This means that artificial
intelligence is now being used to analyze electrocardiogram (ECG) data. The data is typically
extracted from large patient databases and then subsequently used to train and test the algorithm
with the help of neural networks. Machine learning has been used to effectively detect
atrial fibrillation with more accuracy than clinical experts, and if applied to clinical practice, it
will aid in early diagnosis and management of the condition and thus reduce thromboembolic
complications of the disease. In this text, a review of the application of machine learning in the
analysis and detection of atrial fibrillation, a comparison of the outcomes (sensitivity,
specificity, and accuracy), and the framework and methods of the studies conducted have been
presented.
Publisher
Bentham Science Publishers Ltd.