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Path to precision: prevention of post-operative atrial fibrillation

Rinku Skaria, Saman Parvaneh, Sophia Zhou, James Y. Kim, Santana Wanjiru, Genoveffa I. Devers, John P. Konhilas, Zain Khalpey

2020Journal of Thoracic Disease17 citationsDOIOpen Access PDF

Abstract

Development of post-operative atrial fibrillation (POAF) following open-heart surgery is a significant clinical and economic burden. Despite advancements in medical therapies, the incidence of POAF remains elevated at 25-40%. Early work focused on detecting arrhythmias from electrocardiograms as well as identifying pre-operative risk factors from medical records. However, further progress has been stagnant, and a deeper understanding of pathogenesis and significant influences is warranted. With the advent of more complex machine learning (ML) algorithms and high-throughput sequencing, we have an unprecedented ability to capture and predict POAF in real-time. Integration of multimodal heterogeneous data and application of ML can generate a paradigm shift for diagnosis and treatment. This will require a concerted effort to consolidate and streamline real-time data. Herein, we will review the current literature and emerging opportunities aimed at predictive targets and new insights into the mechanisms underlying long-term sequelae of POAF.

Topics & Concepts

MedicineAtrial fibrillationIncidence (geometry)Intensive care medicineMechanism (biology)Path (computing)Term (time)CardiologyComputer scienceQuantum mechanicsEpistemologyProgramming languagePhilosophyOpticsPhysicsAtrial Fibrillation Management and OutcomesAntiplatelet Therapy and Cardiovascular DiseasesCardiac, Anesthesia and Surgical Outcomes
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