Literature DB >> 33436854

Prediction of pharmacological activities from chemical structures with graph convolutional neural networks.

Miyuki Sakai1,2, Kazuki Nagayasu3, Norihiro Shibui1, Chihiro Andoh1, Kaito Takayama1, Hisashi Shirakawa1, Shuji Kaneko4.   

Abstract

Many therapeutic drugs are compounds that can be represented by simple chemical structures, which contain important determinants of affinity at the site of action. Recently, graph convolutional neural network (GCN) models have exhibited excellent results in classifying the activity of such compounds. For models that make quantitative predictions of activity, more complex information has been utilized, such as the three-dimensional structures of compounds and the amino acid sequences of their respective target proteins. As another approach, we hypothesized that if sufficient experimental data were available and there were enough nodes in hidden layers, a simple compound representation would quantitatively predict activity with satisfactory accuracy. In this study, we report that GCN models constructed solely from the two-dimensional structural information of compounds demonstrated a high degree of activity predictability against 127 diverse targets from the ChEMBL database. Using the information entropy as a metric, we also show that the structural diversity had less effect on the prediction performance. Finally, we report that virtual screening using the constructed model identified a new serotonin transporter inhibitor with activity comparable to that of a marketed drug in vitro and exhibited antidepressant effects in behavioural studies.

Entities:  

Year:  2021        PMID: 33436854      PMCID: PMC7803991          DOI: 10.1038/s41598-020-80113-7

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  41 in total

1.  Pharmacological profile of antidepressants and related compounds at human monoamine transporters.

Authors:  M Tatsumi; K Groshan; R D Blakely; E Richelson
Journal:  Eur J Pharmacol       Date:  1997-12-11       Impact factor: 4.432

2.  Molecule Property Prediction Based on Spatial Graph Embedding.

Authors:  Xiaofeng Wang; Zhen Li; Mingjian Jiang; Shuang Wang; Shugang Zhang; Zhiqiang Wei
Journal:  J Chem Inf Model       Date:  2019-08-30       Impact factor: 4.956

3.  Multi-objective de novo drug design with conditional graph generative model.

Authors:  Yibo Li; Liangren Zhang; Zhenming Liu
Journal:  J Cheminform       Date:  2018-07-24       Impact factor: 5.514

4.  Large-scale comparison of machine learning methods for drug target prediction on ChEMBL.

Authors:  Andreas Mayr; Günter Klambauer; Thomas Unterthiner; Marvin Steijaert; Jörg K Wegner; Hugo Ceulemans; Djork-Arné Clevert; Sepp Hochreiter
Journal:  Chem Sci       Date:  2018-06-06       Impact factor: 9.825

5.  MoleculeNet: a benchmark for molecular machine learning.

Authors:  Zhenqin Wu; Bharath Ramsundar; Evan N Feinberg; Joseph Gomes; Caleb Geniesse; Aneesh S Pappu; Karl Leswing; Vijay Pande
Journal:  Chem Sci       Date:  2017-10-31       Impact factor: 9.825

6.  Prediction of Compound Profiling Matrices Using Machine Learning.

Authors:  Raquel Rodríguez-Pérez; Tomoyuki Miyao; Swarit Jasial; Martin Vogt; Jürgen Bajorath
Journal:  ACS Omega       Date:  2018-04-30

7.  Analyzing Learned Molecular Representations for Property Prediction.

Authors:  Kevin Yang; Kyle Swanson; Wengong Jin; Connor Coley; Philipp Eiden; Hua Gao; Angel Guzman-Perez; Timothy Hopper; Brian Kelley; Miriam Mathea; Andrew Palmer; Volker Settels; Tommi Jaakkola; Klavs Jensen; Regina Barzilay
Journal:  J Chem Inf Model       Date:  2019-08-13       Impact factor: 4.956

8.  Convolutional neural network based on SMILES representation of compounds for detecting chemical motif.

Authors:  Maya Hirohara; Yutaka Saito; Yuki Koda; Kengo Sato; Yasubumi Sakakibara
Journal:  BMC Bioinformatics       Date:  2018-12-31       Impact factor: 3.169

9.  graphDelta: MPNN Scoring Function for the Affinity Prediction of Protein-Ligand Complexes.

Authors:  Dmitry S Karlov; Sergey Sosnin; Maxim V Fedorov; Petr Popov
Journal:  ACS Omega       Date:  2020-03-09

10.  Comprehensive ensemble in QSAR prediction for drug discovery.

Authors:  Sunyoung Kwon; Ho Bae; Jeonghee Jo; Sungroh Yoon
Journal:  BMC Bioinformatics       Date:  2019-10-26       Impact factor: 3.169

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  8 in total

1.  Ligand-based approaches to activity prediction for the early stage of structure-activity-relationship progression.

Authors:  Itsuki Maeda; Akinori Sato; Shunsuke Tamura; Tomoyuki Miyao
Journal:  J Comput Aided Mol Des       Date:  2022-03-29       Impact factor: 3.686

2.  MoCL: Data-driven Molecular Fingerprint via Knowledge-aware Contrastive Learning from Molecular Graph.

Authors:  Mengying Sun; Jing Xing; Huijun Wang; Bin Chen; Jiayu Zhou
Journal:  KDD       Date:  2021-08-14

3.  PlayMolecule Glimpse: Understanding Protein-Ligand Property Predictions with Interpretable Neural Networks.

Authors:  Alejandro Varela-Rial; Iain Maryanow; Maciej Majewski; Stefan Doerr; Nikolai Schapin; José Jiménez-Luna; Gianni De Fabritiis
Journal:  J Chem Inf Model       Date:  2022-01-03       Impact factor: 4.956

4.  De novo Prediction of Cell-Drug Sensitivities Using Deep Learning-based Graph Regularized Matrix Factorization.

Authors:  Shuangxia Ren; Yifeng Tao; Ke Yu; Yifan Xue; Russell Schwartz; Xinghua Lu
Journal:  Pac Symp Biocomput       Date:  2022

5.  pdCSM-GPCR: predicting potent GPCR ligands with graph-based signatures.

Authors:  João Paulo L Velloso; David B Ascher; Douglas E V Pires
Journal:  Bioinform Adv       Date:  2021-11-10

6.  Assisting Multitargeted Ligand Affinity Prediction of Receptor Tyrosine Kinases Associated Nonsmall Cell Lung Cancer Treatment with Multitasking Principal Neighborhood Aggregation.

Authors:  Fahsai Nakarin; Kajjana Boonpalit; Jiramet Kinchagawat; Patcharapol Wachiraphan; Thanyada Rungrotmongkol; Sarana Nutanong
Journal:  Molecules       Date:  2022-02-11       Impact factor: 4.411

Review 7.  Graph Neural Networks as a Potential Tool in Improving Virtual Screening Programs.

Authors:  Luiz Anastacio Alves; Natiele Carla da Silva Ferreira; Victor Maricato; Anael Viana Pinto Alberto; Evellyn Araujo Dias; Nt Jose Aguiar Coelho
Journal:  Front Chem       Date:  2022-01-20       Impact factor: 5.221

8.  Studying and mitigating the effects of data drifts on ML model performance at the example of chemical toxicity data.

Authors:  Andrea Morger; Marina Garcia de Lomana; Ulf Norinder; Fredrik Svensson; Johannes Kirchmair; Miriam Mathea; Andrea Volkamer
Journal:  Sci Rep       Date:  2022-05-04       Impact factor: 4.996

  8 in total

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