Network‐based global inference of human disease genes
Tsinghua University · Cold Spring Harbor Laboratory
Abstract
Deciphering the genetic basis of human diseases is an important goal of biomedical research. On the basis of the assumption that phenotypically similar diseases are caused by functionally related genes, we propose a computational framework that integrates human protein-protein interactions, disease phenotype similarities, and known gene-phenotype associations to capture the complex relationships between phenotypes and genotypes. We develop a tool named CIPHER to predict and prioritize disease genes, and we show that the global concordance between the human protein network and the phenotype network reliably predicts disease genes. Our method is applicable to genetically uncharacterized phenotypes, effective in…
Citation impact
- FWCI
- 20.49
- Percentile
- 100%
- References
- 72
Authors
4Topics & keywords
- Biology
- Phenotype
- Gene
- Computational biology
- Genetics
- Human genome
- Polygene
- Human genetics