Affiliation:
1. Oregon Health & Science University Portland Oregon
2. NYU Langone Health New York New York
3. Ontario Institute for Cancer Research Toronto Canada
4. European Molecular Biology Laboratory European Bioinformatics Institute (EMBL‐EBI) Hinxton United Kingdom
5. Department of Molecular Genetics University of Toronto Toronto Canada
Abstract
AbstractUnderstudied or dark proteins have the potential to shed light on as‐yet undiscovered molecular mechanisms that underlie phenotypes and suggest innovative therapeutic approaches for many diseases. The Reactome‐IDG (Illuminating the Druggable Genome) project aims to place dark proteins in the context of manually curated, highly reliable pathways in Reactome, the most comprehensive, open‐source biological pathway knowledgebase, facilitating the understanding functions and predicting therapeutic potentials of dark proteins. The Reactome‐IDG web portal, deployed at https://idg.reactome.org, provides a simple, interactive web page for users to search pathways that may functionally interact with dark proteins, enabling the prediction of functions of dark proteins in the context of Reactome pathways. Enhanced visualization features implemented at the portal allow users to investigate the functional contexts for dark proteins based on tissue‐specific gene or protein expression, drug‐target interactions, or protein or gene pairwise relationships in the original Reactome's systems biology graph notation (SBGN) diagrams or the new simplified functional interaction (FI) network view of pathways. The protocols in this chapter describe step‐by‐step procedures to use the web portal to learn biological functions of dark proteins in the context of Reactome pathways. © 2023 Wiley Periodicals LLC.Basic Protocol 1: Search for interacting pathways of a proteinSupport Protocol: Interacting pathway results for an annotated proteinAlternate Protocol: Use individual pairwise relationships to predict interacting pathways of a proteinBasic Protocol 2: Using the IDG pathway browser to study interacting pathwaysBasic Protocol 3: Overlaying tissue‐specific expression dataBasic Protocol 4: Overlaying protein/gene pairwise relationships in the pathway contextBasic Protocol 5: Visualizing drug/target interactions
Subject
Medical Laboratory Technology,Health Informatics,General Pharmacology, Toxicology and Pharmaceutics,General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Neuroscience
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