Author:
Fernandes Johnathan,Chudgar Sarthak,Dharap Harshal,Poduval Aneesh
Abstract
Abstract
Heart arrhythmia, or irregular heart rhythm, is an extremely common heart affliction experienced by a large percent of the world’s population every day, mostly going unnoticed. However, if left unchecked for an extended period of time, it poses an inherent risk to human life. Advancements in technology have enabled us to leverage the awesome computational power of graphics processing units in parallel in order to derive solutions to real life medical issues, by analyzing tremendous amounts of data in a relatively short amount of time. Owing to their ability to parse huge amounts of data and quickly perform multiple complex computations in parallel, machine learning algorithms have repeatedly and consistently outperformed humans in tasks such as pattern recognition and data analysis. Through this research project, we seek to contribute to the medical field by implementing deep learning technology along with machine learning algorithms into a system which can detect heart arrhythmias from electrocardiogram (ECG) reports quickly and effectively.
Subject
General Physics and Astronomy
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