2020
DOI: 10.1101/2020.01.31.929232
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Identifying Longevity Associated Genes by Integrating Gene Expression and Curated Annotations

Abstract: Aging is a complex process with poorly understood genetic mechanisms. Recent studies have sought to classify genes as pro-longevity or anti-longevity using a variety of machine learning algorithms. However, it is not clear which types of features are best for optimizing classification performance and which algorithms are best suited to this task. Further, performance assessments based on held-out test data are lacking. We systematically compare five popular classification algorithms using gene ontology and gen… Show more

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References 51 publications
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