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2000
Volume 16, Issue 4
  • ISSN: 1570-1786
  • E-ISSN: 1875-6255

Abstract

In this work, support vector regression (SVR), an effective machine learning method, proposed by Vapnik was applied to establish QSAR model for a series of AchEI. Fourteen descriptors were selected for constructing the SVR mode by using mRMR-Forward feature selection method. The parameters (, C) were adjusted by leave-one-out cross validation (LOOCV) method which was used to judge the predictive power of different models. After optimization, one optimal SVR-QSAR model was attained, and the mean relative errors (MRE) of LOOCV by using SVR is 1.72%. As a result, LogP negatively affected the activity, Refractivity and Water Accessible Surface Area positively affected the activity.

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/content/journals/loc/10.2174/1570178615666181008125341
2019-04-01
2025-09-22
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/content/journals/loc/10.2174/1570178615666181008125341
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  • Article Type:
    Research Article
Keyword(s): AChEI; AD; molecule descriptors; mRMR; QSAR; SVM
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