Integration of the Microbiome, Metabolome and Transcriptomics Data Identified Novel Metabolic Pathway Regulation in Colorectal Cancer.
Vartika BishtKatrina NashYuanwei XuPrasoon AgarwalSofie BoschGeorgios V GkoutosAnimesh AcharjeePublished in: International journal of molecular sciences (2021)
Integrative multiomics data analysis provides a unique opportunity for the mechanistic understanding of colorectal cancer (CRC) in addition to the identification of potential novel therapeutic targets. In this study, we used public omics data sets to investigate potential associations between microbiome, metabolome, bulk transcriptomics and single cell RNA sequencing datasets. We identified multiple potential interactions, for example 5-aminovalerate interacting with Adlercreutzia; cholesteryl ester interacting with bacterial genera Staphylococcus, Blautia and Roseburia. Using public single cell and bulk RNA sequencing, we identified 17 overlapping genes involved in epithelial cell pathways, with particular significance of the oxidative phosphorylation pathway and the ACAT1 gene that indirectly regulates the esterification of cholesterol. These findings demonstrate that the integration of multiomics data sets from diverse populations can help us in untangling the colorectal cancer pathogenesis as well as postulate the disease pathology mechanisms and therapeutic targets.
Keyphrases
- single cell
- rna seq
- data analysis
- high throughput
- electronic health record
- healthcare
- big data
- protein kinase
- mental health
- human health
- emergency department
- biofilm formation
- copy number
- pseudomonas aeruginosa
- risk assessment
- machine learning
- artificial intelligence
- cystic fibrosis
- dna methylation
- escherichia coli
- adverse drug
- deep learning
- transcription factor