Abstract

BackgroundDue to advances in next generation sequencing technologies and corresponding reductions in cost, it is now attainable to investigate genome-wide gene expression and variants at a patient-level, so as to better understand and anticipate heterogeneous responses to therapy. Consequently, it is feasible to inform personalized drug treatment decisions using personal genomics data. However, these efforts are limited due to a lack of reliable computational approaches for predicting effective drugs for individual patients. The reverse gene set enrichment analysis (i.e., connectivity mapping) approach and its variants have been widely and successfully used for drug prediction. However, the performance of these methods is limited by undefined mechanism of action (MoA) of drugs and reliance on cohorts of patients rather than personalized predictions for individual patients.ResultsIn this study, we have developed and evaluated a computational approach, known as Mechanism and Drug Miner (MD-Miner), using a network-based computational approach to predict effective drugs and reveal potential drug mechanisms of action at the level of signaling pathways. Specifically, the patient-specific signaling network is constructed by integrating known disease associated genes with patient-derived gene expression profiles. In parallel, a drug mechanism of action network is constructed by integrating drug targets and z-score profiles of drug-induced gene expression (pre vs. post-drug treatment). Potentially effective candidate drugs are prioritized according to the number of common genes between the patient-specific dysfunctional signaling network and drug MoA network. We evaluated the MD-Miner method on the PC-3 prostate cancer cell line, and showed that it significantly improved the success rate of discovering effective drugs compared with the random selection, and could provide insight into potential mechanisms of action.ConclusionsThis work provides a signaling network-based drug repositioning approach. Compared with the reverse gene signature based drug repositioning approaches, the proposed method can provide clues of mechanism of action in terms of signaling transduction networks.

Highlights

  • Due to advances in generation sequencing technologies and corresponding reductions in cost, it is attainable to investigate genome-wide gene expression and variants at a patient-level, so as to better understand and anticipate heterogeneous responses to therapy

  • The mechanism of action signaling network of drugs and disease signaling network of individual patients are constructed via said methodology by integrating protein-protein interactome data with gene expression data of individual patients and drugs, and predicting effective drugs for individual patients based on the constructed signaling networks

  • Module 1): Construction of mechanism of action (MoA) signaling network (MoAnet) of drug instances, comprised of 1.3 million drug and genetic perturbation instances derived from different cell lines, drug doses and data collection times, as found in CMap/Library of integrated network-based cellular signatures (LINCS) [12]

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Summary

Results

Activated transcription factors (TFs) are identified based on up-regulation of TF target genes integrating TF-target interactome data [26], and the z-score profiles of drug instances generated by Connectivity Map [12] (available via LincsCloud [27]). The same method used in MoAnet construction is employed to link disease associated genes (knowledge) obtained from DisGeNET [30, 31], activated TFs and up-regulated target genes based on personal genomics data of individual patients (patient-specific). The MoA signaling network of 36,107 (including 32,053 FDA approved drug instances) were calculated using the same method of Pnet construction using drug target information and z-score profiles of drug instances. In addition to the well-known anti-cancer drugs, e.g., Docetaxel and Paclitaxel, the Auranofin (for inflammatory arthritis treatment) and Digoxin (for heart disease treatment) can inhibit tumor growth significantly

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