Abstract
ABSTRACTComputational drug repurposing attempts to leverage rapidly accumulating high-throughput data to discover new indications for existing drugs, often by clarifying biological mechanisms with relevant genes. Leveraging the Guilt-by-association (GBA), the principle of “similar genes share similar functions,” we introducedclinicalneighbors of drug and disease entities while learning their mechanisms on thebiologicalnetwork. To overcome the hurdle of connecting drugs and diseases through large and dense gene-gene network and simultaneously realize the concept of “semantic multi-layer GBA”, we present a random walk-based algorithm with a novel clinical-knowledge guided teleport. As a result, drug-disease association prediction accuracy increased up to 8.7% compared to existing state-of-the-art models. In addition, exploration of the generated embedding space displays harmony between biological and clinical contexts. Through repurposing case studies for breast carcinoma and Alzheimer’s disease, we demonstrate the potential power of multi-layer GBA, a novel perspective for predicting clinical-level associations on heterogeneous biomedical networks.
Publisher
Cold Spring Harbor Laboratory