carnelian uncovers hidden functional patterns across diverse study populations from whole metagenome sequencing reads

carnelian uncovers hidden functional patterns across diverse study populations from whole metagenome sequencing reads

;Sumaiya Nazeen;Yun William Yu;Bonnie Berger
3rd international symposium on autonomous systems, isas 2019 2020 Vol. 21 pp. 1-18
221
nazeen2020genomecarnelian

Abstract

Abstract Microbial populations exhibit functional changes in response to different ambient environments. Although whole metagenome sequencing promises enough raw data to study those changes, existing tools are limited in their ability to directly compare microbial metabolic function across samples and studies. We introduce Carnelian, an end-to-end pipeline for metabolic functional profiling uniquely suited to finding functional trends across diverse datasets. Carnelian is able to find shared metabolic pathways, concordant functional dysbioses, and distinguish Enzyme Commission (EC) terms missed by existing methodologies. We demonstrate Carnelian’s effectiveness on type 2 diabetes, Crohn’s disease, Parkinson’s disease, and industrialized and non-industrialized gut microbiome cohorts.

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10.1186/s13059-020-1933-7
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