Open Access
Inductive transfer learning for molecular activity prediction: Next-Gen QSAR Models with MolPMoFiT
Тип публикации: Journal Article
Дата публикации: 2020-04-22
scimago Q1
wos Q1
БС1
SJR: 1.57
CiteScore: 11.3
Impact factor: 5.7
ISSN: 17582946
PubMed ID:
33430978
Physical and Theoretical Chemistry
Computer Science Applications
Library and Information Sciences
Computer Graphics and Computer-Aided Design
Краткое описание
Deep neural networks can directly learn from chemical structures without extensive, user-driven selection of descriptors in order to predict molecular properties/activities with high reliability. But these approaches typically require large training sets to learn the endpoint-specific structural features and ensure reasonable prediction accuracy. Even though large datasets are becoming the new normal in drug discovery, especially when it comes to high-throughput screening or metabolomics datasets, one should also consider smaller datasets with challenging endpoints to model and forecast. Thus, it would be highly relevant to better utilize the tremendous compendium of unlabeled compounds from publicly-available datasets for improving the model performances for the user’s particular series of compounds. In this study, we propose the Molecular Prediction Model Fine-Tuning (MolPMoFiT) approach, an effective transfer learning method based on self-supervised pre-training + task-specific fine-tuning for QSPR/QSAR modeling. A large-scale molecular structure prediction model is pre-trained using one million unlabeled molecules from ChEMBL in a self-supervised learning manner, and can then be fine-tuned on various QSPR/QSAR tasks for smaller chemical datasets with specific endpoints. Herein, the method is evaluated on four benchmark datasets (lipophilicity, FreeSolv, HIV, and blood–brain barrier penetration). The results showed the method can achieve strong performances for all four datasets compared to other state-of-the-art machine learning modeling techniques reported in the literature so far.
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ГОСТ
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Li X., Fourches D. Inductive transfer learning for molecular activity prediction: Next-Gen QSAR Models with MolPMoFiT // Journal of Cheminformatics. 2020. Vol. 12. No. 1. 27
ГОСТ со всеми авторами (до 50)
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Li X., Fourches D. Inductive transfer learning for molecular activity prediction: Next-Gen QSAR Models with MolPMoFiT // Journal of Cheminformatics. 2020. Vol. 12. No. 1. 27
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TY - JOUR
DO - 10.1186/s13321-020-00430-x
UR - https://doi.org/10.1186/s13321-020-00430-x
TI - Inductive transfer learning for molecular activity prediction: Next-Gen QSAR Models with MolPMoFiT
T2 - Journal of Cheminformatics
AU - Li, Xinhao
AU - Fourches, Denis
PY - 2020
DA - 2020/04/22
PB - Springer Nature
IS - 1
VL - 12
PMID - 33430978
SN - 1758-2946
ER -
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BibTex (до 50 авторов)
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@article{2020_Li,
author = {Xinhao Li and Denis Fourches},
title = {Inductive transfer learning for molecular activity prediction: Next-Gen QSAR Models with MolPMoFiT},
journal = {Journal of Cheminformatics},
year = {2020},
volume = {12},
publisher = {Springer Nature},
month = {apr},
url = {https://doi.org/10.1186/s13321-020-00430-x},
number = {1},
pages = {27},
doi = {10.1186/s13321-020-00430-x}
}