ABSTRACT
Motivation: Although genome-wide association studies (GWAS) have found many common genetic variants associated with human diseases, it remains a challenge to elucidate the functional links between associated variants and complex traits.
Results: We developed a package called eResponseNet by implementing and extending the existing ResponseNet algorithm for prioritizing candidate disease genes through cellular pathways. Using type II diabetes (T2D) as a study case, we demonstrate that eResponseNet outperforms currently available approaches in prioritizing candidate disease genes. More importantly, the package is instrumental in revealing cellular pathways underlying disease-associated genetic variations.
Download: The eResponseNet package is freely downloadable from here 'eResponseNet.rar'.
Details please refer to Jialiang Huang et. al. eResponseNet: a package prioritizing candidate disease genes through cellular pathways