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Tools Drug discovery

Curation of Drug discovery — listings under the GWAS Tools tab.

Summary Table

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NAME Main citation YEAR
DRUG TARGETOR
Gaspar HA et al., Bioinformatics, 2019
2019
GREP
Sakaue S et al., Bioinformatics, 2019
2019
Guideline-Namba
Namba S et al., Cell Genom, 2022
2022
Open Targets Genetics
Mountjoy E et al., Nat Genet, 2021
2021
PES
Reay WR et al., Sci Rep, 2020
2020
PS4DR
Emon MA et al., BMC Bioinformatics, 2020
2020
Priority index
Fang H et al., Nat Genet, 2019
2019
Trans-Phar
Konuma T et al., Hum Mol Genet, 2021
2021

DRUG TARGETOR

Tool
PUBMED_LINK
30517594
DESCRIPTION
This website harnesses results from genome-wide association studies (GWAS), and drug bioactivity data, to prioritize drugs and targets for a given phenotype. Drug Targetor networks are constructed using genetically scored drugs and genes, connected by the type of drug-target or drug-gene interaction
URL
https://drugtargetor.com/index_v1.21.html
TITLE
Drug Targetor: a web interface to investigate the human druggome for over 500 phenotypes.
Main citation
Gaspar HA, Hübel C, Breen G. (2019) Drug Targetor: a web interface to investigate the human druggome for over 500 phenotypes. Bioinformatics, 35 (14) 2515-2517. doi:10.1093/bioinformatics/bty982. PMID 30517594
ABSTRACT
SUMMARY: Results from hundreds of genome-wide association studies (GWAS) are now freely available and offer a catalogue of the association between phenotypes across medicine with variants in the genome. With the aim of using this data to better understand therapeutic mechanisms, we have developed Drug Targetor, a web interface that allows the generation and exploration of drug-target networks of hundreds of phenotypes using GWAS data. Drug Targetor networks consist of drug and target nodes ordered by genetic association and connected by drug-target or drug-gene relationship. We show that Drug Targetor can help prioritize drugs, targets and drug-target interactions for a specific phenotype based on genetic evidence. AVAILABILITY AND IMPLEMENTATION: Drug Targetor v1.21 is a web application freely available online at drugtargetor.com and under MIT licence. The source code can be found at https://github.com/hagax8/drugtargetor. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
DOI
10.1093/bioinformatics/bty982

GREP

Tool
PUBMED_LINK
30859178
FULL NAME
Genome for REPositioning drugs
DESCRIPTION
GREP can quantify an enrichment of the user-defined set of genes in the target of clinical indication categories and capture potentially repositionable drugs targeting the gene set. Both can be run in a few seconds!
URL
https://github.com/saorisakaue/GREP
TITLE
GREP: genome for REPositioning drugs.
Main citation
Sakaue S, Okada Y. (2019) GREP: genome for REPositioning drugs. Bioinformatics, 35 (19) 3821-3823. doi:10.1093/bioinformatics/btz166. PMID 30859178
ABSTRACT
SUMMARY: Making use of accumulated genetic knowledge for clinical practice is our next goal in human genetics. Here we introduce GREP (Genome for REPositioning drugs), a standalone python software to quantify an enrichment of the user-defined set of genes in the target of clinical indication categories and to capture potentially repositionable drugs targeting the gene set. We show that genes identified by the large-scale genome-wide association studies were robustly enriched in the approved drugs to treat the trait of interest. This enrichment analysis was also highly applicable to other sets of biological genes such as those identified by gene expression studies and genes somatically mutated in cancers. This software should accelerate investigators to reposition drugs to other indications with the guidance of known genomics. AVAILABILITY AND IMPLEMENTATION: GREP is available at https://github.com/saorisakaue/GREP as a python source code. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
DOI
10.1093/bioinformatics/btz166

Guideline-Namba

Tool
PUBMED_LINK
36778001
DESCRIPTION
a practical guideline for genomics-driven drug discovery for cross-population meta-analysis, as lessons from the Global Biobank Meta-analysis Initiative (GBMI)
TITLE
A practical guideline of genomics-driven drug discovery in the era of global biobank meta-analysis.
Main citation
Namba S, Konuma T, Wu KH, Zhou W, ...&, Okada Y. (2022) A practical guideline of genomics-driven drug discovery in the era of global biobank meta-analysis. Cell Genom, 2 (10) 100190. doi:10.1016/j.xgen.2022.100190. PMID 36778001
ABSTRACT
Genomics-driven drug discovery is indispensable for accelerating the development of novel therapeutic targets. However, the drug discovery framework based on evidence from genome-wide association studies (GWASs) has not been established, especially for cross-population GWAS meta-analysis. Here, we introduce a practical guideline for genomics-driven drug discovery for cross-population meta-analysis, as lessons from the Global Biobank Meta-analysis Initiative (GBMI). Our drug discovery framework encompassed three methodologies and was applied to the 13 common diseases targeted by GBMI (N mean = 1,329,242). Individual methodologies complementarily prioritized drugs and drug targets, which were systematically validated by referring previously known drug-disease relationships. Integration of the three methodologies provided a comprehensive catalog of candidate drugs for repositioning, nominating promising drug candidates targeting the genes involved in the coagulation process for venous thromboembolism and the interleukin-4 and interleukin-13 signaling pathway for gout. Our study highlighted key factors for successful genomics-driven drug discovery using cross-population meta-analyses.
DOI
10.1016/j.xgen.2022.100190

Open Targets Genetics

Tool
PUBMED_LINK
34711957
DESCRIPTION
Open Targets Genetics is a comprehensive tool highlighting variant-centric statistical evidence to allow both prioritisation of candidate causal variants at trait-associated loci and identification of potential drug targets.
URL
https://genetics.opentargets.org/
TITLE
An open approach to systematically prioritize causal variants and genes at all published human GWAS trait-associated loci.
Main citation
Mountjoy E, Schmidt EM, Carmona M, Schwartzentruber J, ...&, Ghoussaini M. (2021) An open approach to systematically prioritize causal variants and genes at all published human GWAS trait-associated loci. Nat Genet, 53 (11) 1527-1533. doi:10.1038/s41588-021-00945-5. PMID 34711957
ABSTRACT
Genome-wide association studies (GWASs) have identified many variants associated with complex traits, but identifying the causal gene(s) is a major challenge. In the present study, we present an open resource that provides systematic fine mapping and gene prioritization across 133,441 published human GWAS loci. We integrate genetics (GWAS Catalog and UK Biobank) with transcriptomic, proteomic and epigenomic data, including systematic disease-disease and disease-molecular trait colocalization results across 92 cell types and tissues. We identify 729 loci fine mapped to a single-coding causal variant and colocalized with a single gene. We trained a machine-learning model using the fine-mapped genetics and functional genomics data and 445 gold-standard curated GWAS loci to distinguish causal genes from neighboring genes, outperforming a naive distance-based model. Our prioritized genes were enriched for known approved drug targets (odds ratio = 8.1, 95% confidence interval = 5.7, 11.5). These results are publicly available through a web portal ( http://genetics.opentargets.org ), enabling users to easily prioritize genes at disease-associated loci and assess their potential as drug targets.
DOI
10.1038/s41588-021-00945-5

PES

Tool
PUBMED_LINK
31964963
FULL NAME
Pharmagenic_enrichment_score
DESCRIPTION
a framework to quantify an individual’s common variant enrichment in clinically actionable systems responsive to existing drugs.
TITLE
Pharmacological enrichment of polygenic risk for precision medicine in complex disorders.
Main citation
Reay WR, Atkins JR, Carr VJ, Green MJ, ...&, Cairns MJ. (2020) Pharmacological enrichment of polygenic risk for precision medicine in complex disorders. Sci Rep, 10 (1) 879. doi:10.1038/s41598-020-57795-0. PMID 31964963
ABSTRACT
Individuals with complex disorders typically have a heritable burden of common variation that can be expressed as a polygenic risk score (PRS). While PRS has some predictive utility, it lacks the molecular specificity to be directly informative for clinical interventions. We therefore sought to develop a framework to quantify an individual's common variant enrichment in clinically actionable systems responsive to existing drugs. This was achieved with a metric designated the pharmagenic enrichment score (PES), which we demonstrate for individual SNP profiles in a cohort of cases with schizophrenia. A large proportion of these had elevated PES in one or more of eight clinically actionable gene-sets enriched with schizophrenia associated common variation. Notable candidates targeting these pathways included vitamins, antioxidants, insulin modulating agents, and cholinergic drugs. Interestingly, elevated PES was also observed in individuals with otherwise low common variant burden. The biological saliency of PES profiles were observed directly through their impact on gene expression in a subset of the cohort with matched transcriptomic data, supporting our assertion that this gene-set orientated approach could integrate an individual's common variant risk to inform personalised interventions, including drug repositioning, for complex disorders such as schizophrenia.
DOI
10.1038/s41598-020-57795-0

PS4DR

Tool
PUBMED_LINK
32503412
FULL NAME
Pathway Signatures for Drug Repositioning
DESCRIPTION
This package comprises a modular workflow designed to identify drug repositioning candidates using multi-omics data sets. A schematic figure of the workflow is presented below. The R scripts necessary to run the MSDRP pipeline are located in the R directory.
URL
https://github.com/ps4dr/ps4dr
TITLE
PS4DR: a multimodal workflow for identification and prioritization of drugs based on pathway signatures.
Main citation
Emon MA, Domingo-Fernández D, Hoyt CT, Hofmann-Apitius M. (2020) PS4DR: a multimodal workflow for identification and prioritization of drugs based on pathway signatures. BMC Bioinformatics, 21 (1) 231. doi:10.1186/s12859-020-03568-5. PMID 32503412
ABSTRACT
BACKGROUND: During the last decade, there has been a surge towards computational drug repositioning owing to constantly increasing -omics data in the biomedical research field. While numerous existing methods focus on the integration of heterogeneous data to propose candidate drugs, it is still challenging to substantiate their results with mechanistic insights of these candidate drugs. Therefore, there is a need for more innovative and efficient methods which can enable better integration of data and knowledge for drug repositioning. RESULTS: Here, we present a customizable workflow (PS4DR) which not only integrates high-throughput data such as genome-wide association study (GWAS) data and gene expression signatures from disease and drug perturbations but also takes pathway knowledge into consideration to predict drug candidates for repositioning. We have collected and integrated publicly available GWAS data and gene expression signatures for several diseases and hundreds of FDA-approved drugs or those under clinical trial in this study. Additionally, different pathway databases were used for mechanistic knowledge integration in the workflow. Using this systematic consolidation of data and knowledge, the workflow computes pathway signatures that assist in the prediction of new indications for approved and investigational drugs. CONCLUSION: We showcase PS4DR with applications demonstrating how this tool can be used for repositioning and identifying new drugs as well as proposing drugs that can simulate disease dysregulations. We were able to validate our workflow by demonstrating its capability to predict FDA-approved drugs for their known indications for several diseases. Further, PS4DR returned many potential drug candidates for repositioning that were backed up by epidemiological evidence extracted from scientific literature. Source code is freely available at https://github.com/ps4dr/ps4dr.
DOI
10.1186/s12859-020-03568-5

Priority index

Tool
PUBMED_LINK
31253980
DESCRIPTION
A Comprehensive Resource for Genetic Targets in Immune-Mediated Disease
URL
http://pi.well.ox.ac.uk:3010/
TITLE
A genetics-led approach defines the drug target landscape of 30 immune-related traits.
Main citation
Fang H, ULTRA-DD Consortium, De Wolf H, Knezevic B, ...&, Knight JC. (2019) A genetics-led approach defines the drug target landscape of 30 immune-related traits. Nat Genet, 51 (7) 1082-1091. doi:10.1038/s41588-019-0456-1. PMID 31253980
ABSTRACT
Most candidate drugs currently fail later-stage clinical trials, largely due to poor prediction of efficacy on early target selection1. Drug targets with genetic support are more likely to be therapeutically valid2,3, but the translational use of genome-scale data such as from genome-wide association studies for drug target discovery in complex diseases remains challenging4-6. Here, we show that integration of functional genomic and immune-related annotations, together with knowledge of network connectivity, maximizes the informativeness of genetics for target validation, defining the target prioritization landscape for 30 immune traits at the gene and pathway level. We demonstrate how our genetics-led drug target prioritization approach (the priority index) successfully identifies current therapeutics, predicts activity in high-throughput cellular screens (including L1000, CRISPR, mutagenesis and patient-derived cell assays), enables prioritization of under-explored targets and allows for determination of target-level trait relationships. The priority index is an open-access, scalable system accelerating early-stage drug target selection for immune-mediated disease.
DOI
10.1038/s41588-019-0456-1

Trans-Phar

Tool
PUBMED_LINK
33577681
FULL NAME
integration of Transcriptome-wide association study and Pharmacological database
DESCRIPTION
This software achieves in silico screening of chemical compounds, which have inverse effects in expression profiles compared with genetically regulated gene expression of common diseases, from large-scale pharmacological database (Connectivity Map [CMap] L1000 library).
URL
https://github.com/konumat/Trans-Phar
TITLE
Integration of genetically regulated gene expression and pharmacological library provides therapeutic drug candidates.
Main citation
Konuma T, Ogawa K, Okada Y. (2021) Integration of genetically regulated gene expression and pharmacological library provides therapeutic drug candidates. Hum Mol Genet, 30 (3-4) 294-304. doi:10.1093/hmg/ddab049. PMID 33577681
ABSTRACT
Approaches toward new therapeutics using disease genomics, such as genome-wide association study (GWAS), are anticipated. Here, we developed Trans-Phar [integration of transcriptome-wide association study (TWAS) and pharmacological database], achieving in silico screening of compounds from a large-scale pharmacological database (L1000 Connectivity Map), which have inverse expression profiles compared with tissue-specific genetically regulated gene expression. Firstly we confirmed the statistical robustness by the application of the null GWAS data and enrichment in the true-positive drug-disease relationships by the application of UK-Biobank GWAS summary statistics in broad disease categories, then we applied the GWAS summary statistics of large-scale European meta-analysis (17 traits; naverage = 201 849) and the hospitalized COVID-19 (n = 900 687), which has urgent need for drug development. We detected potential therapeutic compounds as well as anisomycin in schizophrenia (false discovery rate (FDR)-q = 0.056) and verapamil in hospitalized COVID-19 (FDR-q = 0.068) as top-associated compounds. This approach could be effective in disease genomics-driven drug development.
DOI
10.1093/hmg/ddab049