Pathway-based personalized analysis of cancer

Y Drier, M Sheffer, E Domany - Proceedings of the National …, 2013 - National Acad Sciences
Proceedings of the National Academy of Sciences, 2013National Acad Sciences
We introduce Pathifier, an algorithm that infers pathway deregulation scores for each tumor
sample on the basis of expression data. This score is determined, in a context-specific
manner, for every particular dataset and type of cancer that is being investigated. The
algorithm transforms gene-level information into pathway-level information, generating a
compact and biologically relevant representation of each sample. We demonstrate the
algorithm's performance on three colorectal cancer datasets and two glioblastoma …
We introduce Pathifier, an algorithm that infers pathway deregulation scores for each tumor sample on the basis of expression data. This score is determined, in a context-specific manner, for every particular dataset and type of cancer that is being investigated. The algorithm transforms gene-level information into pathway-level information, generating a compact and biologically relevant representation of each sample. We demonstrate the algorithm’s performance on three colorectal cancer datasets and two glioblastoma multiforme datasets and show that our multipathway-based representation is reproducible, preserves much of the original information, and allows inference of complex biologically significant information. We discovered several pathways that were significantly associated with survival of glioblastoma patients and two whose scores are predictive of survival in colorectal cancer: CXCR3-mediated signaling and oxidative phosphorylation. We also identified a subclass of proneural and neural glioblastoma with significantly better survival, and an EGF receptor-deregulated subclass of colon cancers.
National Acad Sciences