Correlation Engine 2.0
Clear Search sequence regions


  • gaba- receptor (2)
  • GABAA (4)
  • receptor (5)
  • skeleton (1)
  • Sizes of these terms reflect their relevance to your search.

    Over the past few decades, agonists binding to the benzodiazepine site of the GABAA receptor have been successfully developed as clinical drugs. Different modulators (agonist, antagonist, and reverse agonist) bound to benzodiazepine sites exhibit different or even opposite pharmacological effects, however, their structures are so similar that it is difficult to distinguish them based solely on molecular skeleton. This study aims to develop classification models for predicting the agonists. 306 agonists or non-agonists were collected from literature. Six machine learning algorithms including RF, XGBoost, AdaBoost, GBoost, SVM, and ANN algorithms were employed for model development. Using six descriptors including 1D/2D Descriptors, ECFP4, 2D-Pharmacophore, MACCS, PubChem, and Estate fingerprint to characterize chemical structures. The model interpretability was explored by SHAP method. The best model demonstrated an AUC value of 0.905 and an MCC value of 0.808 for the test set. The PubMac-based model (PubMac-GB) achieved best AUC values of 0.935 for test set. The SHAP analysis results emphasized that MaccsFP62, ECFP_624, ECFP_724, and PubchemFP213 were the crucial molecular features. Applicability domain analysis was also performed to determine reliable prediction boundaries for the model. The PubMac-GB model was applied to virtual screening for potential GABAA agonists and the top 100 compounds were given. Overall, our ensemble learning-based model (PubMac-GB) achieved comparable performance and would be helpful in effectively identifying agonists of GABAA receptors. Copyright © 2024 Elsevier Ltd. All rights reserved.

    Citation

    Fu Xiao, Xiaoyu Ding, Yan Shi, Dingyan Wang, Yitian Wang, Chen Cui, Tingfei Zhu, Kaixian Chen, Ping Xiang, Xiaomin Luo. Application of ensemble learning for predicting GABAA receptor agonists. Computers in biology and medicine. 2024 Feb;169:107958

    Expand section icon Mesh Tags

    Expand section icon Substances


    PMID: 38194778

    View Full Text