| Literature DB >> 28552011 |
A Grant Schissler1,2,3,4, Walter W Piegorsch1,2,3,5, Yves A Lussier1,2,3,4.
Abstract
Modern precision medicine increasingly relies on molecular data analytics, wherein development of interpretable single-subject ("N-of-1") signals is a challenging goal. A previously developed global framework, N-of-1- pathways, employs single-subject gene expression data to identify differentially expressed gene set pathways in an individual patient. Unfortunately, the limited amount of data within the single-subject, N-of-1 setting makes construction of suitable statistical inferences for identifying differentially expressed gene set pathways difficult, especially when non-trivial inter-gene correlation is present. We propose a method that exploits external information on gene expression correlations to cluster positively co-expressed genes within pathways, then assesses differential expression across the clusters within a pathway. A simulation study illustrates that the cluster-based approach exhibits satisfactory false-positive error control and reasonable power to detect differentially expressed gene set pathways. An example with a single N-of-1 patient's triple negative breast cancer data illustrates use of the methodology.Entities:
Keywords: Gene expression data; N-of-1; RNA-seq; affinity propagation clustering; exemplar learning; gene set; inter-gene correlation; precision medicine; single-subject inference; triple negative breast cancer
Mesh:
Year: 2017 PMID: 28552011 PMCID: PMC5554097 DOI: 10.1177/0962280217712271
Source DB: PubMed Journal: Stat Methods Med Res ISSN: 0962-2802 Impact factor: 3.021