4.7 Article

deepGraphh: AI-driven web service for graph-based quantitative structure-activity relationship analysis

期刊

BRIEFINGS IN BIOINFORMATICS
卷 23, 期 5, 页码 -

出版社

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbac288

关键词

GNN; DAG; deep learning; chemoinformatics; classification; QSAR; BBB prediction

资金

  1. Department of Biotechnology (DBT), Ministry of Science & Technology, Govt. of India [BT/HRD/35/02/2006]
  2. Science, and Engineering Research Board (SERB) [SRG/2020/000232]
  3. Indraprastha Institute of Information Technology Delhi (IIIT-Delhi)
  4. IHUB Anubhuti [23]
  5. INSPIRE faculty grant from the Department of Science & Technology (DST), India

向作者/读者索取更多资源

deepGraphh is a one-stop web service that offers a variety of graph-based methods for model generation and prediction in chemoinformatics.
Artificial intelligence (AI)-based computational techniques allow rapid exploration of the chemical space. However, representation of the compounds into computational-compatible and detailed features is one of the crucial steps for quantitative structure-activity relationship (QSAR) analysis. Recently, graph-based methods are emerging as a powerful alternative to chemistry-restricted fingerprints or descriptors for modeling. Although graph-based modeling offers multiple advantages, its implementation demands in-depth domain knowledge and programming skills. Here we introduce deepGraphh, an end-to-end web service featuring a conglomerate of established graph-based methods for model generation for classification or regression tasks. The graphical user interface of deepGraphh supports highly configurable parameter support for model parameter tuning, model generation, cross-validation and testing of the user-supplied query molecules. deepGraphh supports four widely adopted methods for QSAR analysis, namely, graph convolution network, graph attention network, directed acyclic graph and Attentive FP. Comparative analysis revealed that deepGraphh supported methods are comparable to the descriptors-based machine learning techniques. Finally, we used deepGraphh models to predict the blood-brain barrier permeability of human and microbiome-generated metabolites. In summary, deepGraphh offers a one-stop web service for graph-based methods for chemoinformatics.

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