Literature DB >> 17418603

Prediction of factor Xa inhibitors by machine learning methods.

H H Lin1, L Y Han, C W Yap, Y Xue, X H Liu, F Zhu, Y Z Chen.   

Abstract

Factor Xa (FXa) inhibitors have been explored as anticoagulants for treatment and prevention of thrombotic diseases. Molecular docking, pharmacophore, quantitative structure-activity relationships, and support vector machines (SVM) have been used for computer prediction of FXa inhibitors. These methods achieve promising prediction accuracies of 69-80% for FXa inhibitors and 85-99% for non-inhibitors. Prediction performance, particularly for inhibitors, may be further improved by exploring methods applicable to more diverse range of compounds and by using more appropriate set of molecular descriptors. We tested the capability of several machine learning methods (C4.5 decision tree, k-nearest neighbor, probabilistic neural network, and support vector machine) by using a much more diverse set of 1098 compounds (360 inhibitors and 738 non-inhibitors) than those in other studies. A feature selection method was used for selecting molecular descriptors appropriate for distinguishing FXa inhibitors and non-inhibitors. The prediction accuracies of these methods are 89.1-97.5% for FXa inhibitors and 92.3-98.1% for non-inhibitors. In particular, compared to other studies, support vector machine gives a substantially improved accuracy of 94.6% for FXa non-inhibitors and maintains a comparable accuracy of 98.1% for inhibitors, based-on a more rigorous test with more diverse range of compounds. Our study suggests that machine learning methods such as SVM are useful for facilitating the prediction of FXa inhibitors.

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Year:  2007        PMID: 17418603     DOI: 10.1016/j.jmgm.2007.03.003

Source DB:  PubMed          Journal:  J Mol Graph Model        ISSN: 1093-3263            Impact factor:   2.518


  3 in total

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Authors:  Rakesh K Goyal; G Singh; A K Madan
Journal:  Naturwissenschaften       Date:  2011-09-04

2.  Machine Learning Enabled Structure-Based Drug Repurposing Approach to Identify Potential CYP1B1 Inhibitors.

Authors:  Baddipadige Raju; Gera Narendra; Himanshu Verma; Manoj Kumar; Bharti Sapra; Gurleen Kaur; Subheet Kumar Jain; Om Silakari
Journal:  ACS Omega       Date:  2022-08-31

3.  Identification of kinase inhibitors that rule out the CYP27B1-mediated activation of vitamin D: an integrated machine learning and structure-based drug designing approach.

Authors:  Kanupriya Mahajan; Himanshu Verma; Shalki Choudhary; Baddipadige Raju; Om Silakari
Journal:  Mol Divers       Date:  2021-07-16       Impact factor: 2.943

  3 in total

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