DIAGNOSTIC ADVANCES IN CARDIAC ARRHYTHMIAS
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Abstract
Cardiac arrhythmias represent a heterogeneous group of rhythm pathologies that range from benign ectopic beats to life-threatening ventricular tachyarrhythmias, contributing substantially to global mor bidity, mortality, and impaired quality of life. Over the past decade, remarkable technological advances have reshaped diagnostic strategies, transcending the limitations of conventional 12-lead electrocardi ography (ECG) and Holter monitoring. High-resolution digital ECG systems, wearable devices, and long-term ambulatory monitoring platforms have enabled continuous and real-time rhythm assess ment, improving detection of asymptomatic and paroxysmal arrhythmias. Implantable loop recorders, remote monitoring, and telemetry further enhance long-term surveillance and clinical decision-mak ing. In parallel, advanced imaging modalities, such as electromechanical wave imaging and electrocar diographic imaging, combined with electroanatomic mapping systems, have refined the localization of arrhythmogenic substrates and optimized ablation outcomes. Genetic testing provides critical insights into inherited arrhythmia syndromes, facilitating personalized therapy and cascade family screening. Furthermore, artificial intelligence and machine learning algorithms—particularly deep learning mod els—have demonstrated high accuracy in automated arrhythmia detection, supporting integration into decision support systems and preventive healthcare strategies. Despite these advances, challenges re main regarding data privacy, algorithmic transparency, access inequities, and medico-legal responsibil ities. Addressing these limitations will be essential to ensure safe, equitable, and cost-effective transla tion into clinical practice. Overall, the digital transformation of arrhythmia diagnostics is expected to establish multidisciplinary, data-driven, and patient-centered paradigms, positioning this field as one of the most dynamic and promising areas in contemporary cardiology.
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Artificial intelligence, Cardiac arrhythmia, Electrocardiography, Genetic testing, Electroanatomic mapping, Machine learning, Wearable electronic devices
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179
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188
