Phenotype Prediction from Metagenomic Data Using Clustering and Assembly with Multiple Instance Learning (CAMIL).

IEEE/ACM Transactions on Computational Biology and Bioinformatics(2020)

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摘要
The recent advent of Metagenome Wide Association Studies (MGWAS) provides insight into the role of microbes on human health and disease. However, the studies present several computational challenges. In this paper, we demonstrate a novel, efficient, and effective Multiple Instance Learning (MIL) based computational pipeline to predict patient phenotype from metagenomic data. MIL methods have the a...
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关键词
Diseases,Genomics,Support vector machines,Pipelines,Feature extraction,Standards,Sequential analysis
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