Literature DB >> 22582859

Machine learning methods for property prediction in chemoinformatics: Quo Vadis?

Alexandre Varnek1, Igor Baskin.   

Abstract

This paper is focused on modern approaches to machine learning, most of which are as yet used infrequently or not at all in chemoinformatics. Machine learning methods are characterized in terms of the "modes of statistical inference" and "modeling levels" nomenclature and by considering different facets of the modeling with respect to input/ouput matching, data types, models duality, and models inference. Particular attention is paid to new approaches and concepts that may provide efficient solutions of common problems in chemoinformatics: improvement of predictive performance of structure-property (activity) models, generation of structures possessing desirable properties, model applicability domain, modeling of properties with functional endpoints (e.g., phase diagrams and dose-response curves), and accounting for multiple molecular species (e.g., conformers or tautomers).

Year:  2012        PMID: 22582859     DOI: 10.1021/ci200409x

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  57 in total

Review 1.  Big-Data Science in Porous Materials: Materials Genomics and Machine Learning.

Authors:  Kevin Maik Jablonka; Daniele Ongari; Seyed Mohamad Moosavi; Berend Smit
Journal:  Chem Rev       Date:  2020-06-10       Impact factor: 60.622

2.  The continuous molecular fields approach to building 3D-QSAR models.

Authors:  Igor I Baskin; Nelly I Zhokhova
Journal:  J Comput Aided Mol Des       Date:  2013-05-30       Impact factor: 3.686

3.  Predictive cartography of metal binders using generative topographic mapping.

Authors:  Igor I Baskin; Vitaly P Solov'ev; Alexander A Bagatur'yants; Alexandre Varnek
Journal:  J Comput Aided Mol Des       Date:  2017-07-07       Impact factor: 3.686

4.  Interpretation of machine learning models using shapley values: application to compound potency and multi-target activity predictions.

Authors:  Raquel Rodríguez-Pérez; Jürgen Bajorath
Journal:  J Comput Aided Mol Des       Date:  2020-05-02       Impact factor: 3.686

5.  QSAR model based on weighted MCS trees approach for the representation of molecule data sets.

Authors:  Bernardo Palacios-Bejarano; Gonzalo Cerruela García; Irene Luque Ruiz; Miguel Ángel Gómez-Nieto
Journal:  J Comput Aided Mol Des       Date:  2013-02-06       Impact factor: 3.686

6.  ChemStable: a web server for rule-embedded naïve Bayesian learning approach to predict compound stability.

Authors:  Zhihong Liu; Minghao Zheng; Xin Yan; Qiong Gu; Johann Gasteiger; Johan Tijhuis; Peter Maas; Jiabo Li; Jun Xu
Journal:  J Comput Aided Mol Des       Date:  2014-07-17       Impact factor: 3.686

7.  LBVS: an online platform for ligand-based virtual screening using publicly accessible databases.

Authors:  Minghao Zheng; Zhihong Liu; Xin Yan; Qianzhi Ding; Qiong Gu; Jun Xu
Journal:  Mol Divers       Date:  2014-09-03       Impact factor: 2.943

8.  Impact of distance-based metric learning on classification and visualization model performance and structure-activity landscapes.

Authors:  Natalia V Kireeva; Svetlana I Ovchinnikova; Sergey L Kuznetsov; Andrey M Kazennov; Aslan Yu Tsivadze
Journal:  J Comput Aided Mol Des       Date:  2014-02-04       Impact factor: 3.686

9.  Shallow Representation Learning via Kernel PCA Improves QSAR Modelability.

Authors:  Stefano E Rensi; Russ B Altman
Journal:  J Chem Inf Model       Date:  2017-08-07       Impact factor: 4.956

Review 10.  Machine learning in chemoinformatics and drug discovery.

Authors:  Yu-Chen Lo; Stefano E Rensi; Wen Torng; Russ B Altman
Journal:  Drug Discov Today       Date:  2018-05-08       Impact factor: 7.851

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