Treffer: GuiltyTargets: Prioritization of Novel Therapeutic Targets With Network Representation Learning.

Title:
GuiltyTargets: Prioritization of Novel Therapeutic Targets With Network Representation Learning.
Source:
IEEE/ACM transactions on computational biology and bioinformatics [IEEE/ACM Trans Comput Biol Bioinform] 2022 Jan-Feb; Vol. 19 (1), pp. 491-500. Date of Electronic Publication: 2022 Feb 03.
Publication Type:
Journal Article; Research Support, N.I.H., Extramural; Research Support, Non-U.S. Gov't
Language:
English
Journal Info:
Publisher: IEEE Computer Society Country of Publication: United States NLM ID: 101196755 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 1557-9964 (Electronic) Linking ISSN: 15455963 NLM ISO Abbreviation: IEEE/ACM Trans Comput Biol Bioinform Subsets: MEDLINE
Imprint Name(s):
Original Publication: New York, NY : IEEE Computer Society, 2004-2024.
Grant Information:
P30 AG010161 United States AG NIA NIH HHS; R01 AG015819 United States AG NIA NIH HHS; R01 AG017917 United States AG NIA NIH HHS; R01 AG030146 United States AG NIA NIH HHS; R01 AG036836 United States AG NIA NIH HHS; U01 AG032984 United States AG NIA NIH HHS; U01 AG046152 United States AG NIA NIH HHS; P50 AG016574 United States AG NIA NIH HHS; R01 AG032990 United States AG NIA NIH HHS; U01 AG046139 United States AG NIA NIH HHS; R01 AG018023 United States AG NIA NIH HHS; U01 AG006786 United States AG NIA NIH HHS
Substance Nomenclature:
0 (Proteins)
Entry Date(s):
Date Created: 20200806 Date Completed: 20220217 Latest Revision: 20220217
Update Code:
20250114
DOI:
10.1109/TCBB.2020.3003830
PMID:
32750869
Database:
MEDLINE

Weitere Informationen

The majority of clinical trials fail due to low efficacy of investigated drugs, often resulting from a poor choice of target protein. Existing computational approaches aim to support target selection either via genetic evidence or by putting potential targets into the context of a disease specific network reconstruction. The purpose of this work was to investigate whether network representation learning techniques could be used to allow for a machine learning based prioritization of putative targets. We propose a novel target prioritization approach, GuiltyTargets, which relies on attributed network representation learning of a genome-wide protein-protein interaction network annotated with disease-specific differential gene expression and uses positive-unlabeled (PU) machine learning for candidate ranking. We evaluated our approach on 12 datasets from six diseases of different type (cancer, metabolic, neurodegenerative) within a 10 times repeated 5-fold stratified cross-validation and achieved AUROC values between 0.92 - 0.97, significantly outperforming previous approaches that relied on manually engineered topological features. Moreover, we showed that GuiltyTargets allows for target repositioning across related disease areas. An application of GuiltyTargets to Alzheimer's disease resulted in a number of highly ranked candidates that are currently discussed as targets in the literature. Interestingly, one (COMT) is also the target of an approved drug (Tolcapone) for Parkinson's disease, highlighting the potential for target repositioning with our method. The GuiltyTargets Python package is available on PyPI and all code used for analysis can be found under the MIT License at https://github.com/GuiltyTargets. Attributed network representation learning techniques provide an interesting approach to effectively leverage the existing knowledge about the molecular mechanisms in different diseases. In this work, the combination with positive-unlabeled learning for target prioritization demonstrated a clear superiority compared to classical feature engineering approaches. Our work highlights the potential of attributed network representation learning for target prioritization. Given the overarching relevance of networks in computational biology we believe that attributed network representation learning techniques could have a broader impact in the future.