Do we need different machine learning algorithms for QSAR modeling? A comprehensive assessment of 16 machine learning algorithms on 14 QSAR data sets

Author:

Wu Zhenxing1,Zhu Minfeng2,Kang Yu1,Leung Elaine Lai-Han3,Lei Tailong1ORCID,Shen Chao1,Jiang Dejun1,Wang Zhe1,Cao Dongsheng4,Hou Tingjun5

Affiliation:

1. College of Pharmaceutical Sciences, Hangzhou Institute of Innovative Medicine, Zhejiang University, P. R. China

2. Xiangya School of Pharmaceutical Sciences, Central South University, P. R. China

3. State Key Laboratory of Quality Research in Chinese Medicine, Macau Institute for Applied Research in Medicine and Health, Macau University of Science and Technology, P. R. China

4. Central South University, China

5. Peking University, China. He is currently a professor in the College of Pharmaceutical Sciences, Zhejiang University, China

Abstract

Abstract Although a wide variety of machine learning (ML) algorithms have been utilized to learn quantitative structure–activity relationships (QSARs), there is no agreed single best algorithm for QSAR learning. Therefore, a comprehensive understanding of the performance characteristics of popular ML algorithms used in QSAR learning is highly desirable. In this study, five linear algorithms [linear function Gaussian process regression (linear-GPR), linear function support vector machine (linear-SVM), partial least squares regression (PLSR), multiple linear regression (MLR) and principal component regression (PCR)], three analogizers [radial basis function support vector machine (rbf-SVM), K-nearest neighbor (KNN) and radial basis function Gaussian process regression (rbf-GPR)], six symbolists [extreme gradient boosting (XGBoost), Cubist, random forest (RF), multiple adaptive regression splines (MARS), gradient boosting machine (GBM), and classification and regression tree (CART)] and two connectionists [principal component analysis artificial neural network (pca-ANN) and deep neural network (DNN)] were employed to learn the regression-based QSAR models for 14 public data sets comprising nine physicochemical properties and five toxicity endpoints. The results show that rbf-SVM, rbf-GPR, XGBoost and DNN generally illustrate better performances than the other algorithms. The overall performances of different algorithms can be ranked from the best to the worst as follows: rbf-SVM > XGBoost > rbf-GPR > Cubist > GBM > DNN > RF > pca-ANN > MARS > linear-GPR ≈ KNN > linear-SVM ≈ PLSR > CART ≈ PCR ≈ MLR. In terms of prediction accuracy and computational efficiency, SVM and XGBoost are recommended to the regression learning for small data sets, and XGBoost is an excellent choice for large data sets. We then investigated the performances of the ensemble models by integrating the predictions of multiple ML algorithms. The results illustrate that the ensembles of two or three algorithms in different categories can indeed improve the predictions of the best individual ML algorithms.

Funder

Zhejiang Provincial Natural Science Foundation

Leading Talent of ‘Ten Thousand Plan’–National High-Level Talents Special Support Plan

National Natural Science Foundation of China

Key R&D Program of Zhejiang Province

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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