2019
DOI: 10.35940/ijrte.b1190.0882s819
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A Prediction of Pediatric Cardiomyopathy Disease Associated Genes using Machine Learning Algorithms

Abstract: Pediatric cardiomyopathy is considered as one of the heart diseases, which causes by abnormal disorder of the heart muscle. If pediatric cardiomyopathy remains untreated and unidentified at the early stages, it leads to heart failure. The global number of deaths and disability attributed to cardiomyopathy has steadily increased. Hence, machine learning approaches can solves the problem of identifying the critical problem by determining the pediatric cardiomyopathy disease associated genes from the collection o… Show more

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