LGCVSPSep 18, 2021

Atrial Fibrillation: A Medical and Technological Review

arXiv:2109.08974v1
Originality Synthesis-oriented
AI Analysis

It addresses the problem of early AF detection for patients and healthcare systems, but is incremental as it provides an overview rather than new research.

This paper reviews atrial fibrillation (AF), highlighting its prevalence, health risks, and high healthcare costs, and discusses the limitations of current detection methods and the potential of machine learning for improving AF identification.

Atrial Fibrillation (AF) is the most common type of arrhythmia (Greek a-, loss + rhythmos, rhythm = loss of rhythm) leading to hospitalization in the United States. Though sometimes AF is asymptomatic, it increases the risk of stroke and heart failure in patients, in addition to lowering the health-related quality of life (HRQOL). AF-related care costs the healthcare system between $6.0 to $26 billion each year. Early detection of AF and clinical attention can help improve symptoms and HRQOL of the patient, as well as bring down the cost of care. However, the prevalent paradigm of AF detection depends on electrocardiogram (ECG) recorded at a single point in time and does not shed light on the relation of the symptoms with heart rhythm or AF. In the recent decade, due to the democratization of health monitors and the advent of high-performing computers, Machine Learning algorithms have been proven effective in identifying AF, from the ECG of patients. This paper provides an overview of the symptoms of AF, its diagnosis, and future prospects for research in the field.

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