MPAC: a computational framework for inferring cancer pathway activities from multi-omic data.
Peng LiuDavid PagePaul G AhlquistIrene M OngAnthony GitterPublished in: bioRxiv : the preprint server for biology (2024)
Fully capturing cellular state requires examining genomic, epigenomic, transcriptomic, proteomic, and other assays for a biological sample and comprehensive computational modeling to reason with the complex and sometimes conflicting measurements. Modeling these so-called multi-omic data is especially beneficial in disease analysis, where observations across omic data types may reveal unexpected patient groupings and inform clinical outcomes and treatments. We present Multi-omic Pathway Analysis of Cancer (MPAC), a computational framework that interprets multi-omic data through prior knowledge from biological pathways. MPAC uses network relationships encoded in pathways using a factor graph to infer consensus activity levels for proteins and associated pathway entities from multi-omic data, runs permutation testing to eliminate spurious activity predictions, and groups biological samples by pathway activities to prioritize proteins with potential clinical relevance. Using DNA copy number alteration and RNA-seq data from head and neck squamous cell carcinoma patients from The Cancer Genome Atlas as an example, we demonstrate that MPAC predicts a patient subgroup related to immune responses not identified by analysis with either input omic data type alone. Key proteins identified via this subgroup have pathway activities related to clinical outcome as well as immune cell compositions. Our MPAC R package, available at https://bioconductor.org/packages/MPAC , enables similar multi-omic analyses on new datasets.
Keyphrases
- electronic health record
- rna seq
- copy number
- big data
- single cell
- papillary thyroid
- mitochondrial dna
- data analysis
- genome wide
- machine learning
- clinical trial
- squamous cell
- case report
- chronic kidney disease
- dendritic cells
- risk assessment
- newly diagnosed
- young adults
- human health
- circulating tumor
- open label
- deep learning
- patient reported
- convolutional neural network