Probing impact of molecular structure on mechanical property and sensitivity of energetic materials by machine learning methods

Author(s):  
Qianqian Deng ◽  
Jing Hu ◽  
Liying Wang ◽  
Yijing Liu ◽  
Yanzhi Guo ◽  
...  
2021 ◽  
Author(s):  
Narumi Watanabe ◽  
Yuuto Ohnuki ◽  
Yasubumi Sakakibara

AbstractMotivationVirtual screening, which can computationally predict the presence or absence of protein-compound interactions, has attracted attention as a large-scale, low-cost, and short-term search method for seed compounds. Existing machine learning methods for predicting protein-compound interactions are largely divided into those based on molecular structure data and those based on network data. The former utilize information on proteins and compounds, such as amino acid sequences and chemical structures, while the latter utilize interaction network data, such as data on protein-protein interactions and compound-compound interactions. However, few attempts have been made to combine both types of data in molecular information and interaction networks.ResultsWe developed a deep learning-based method that integrates protein features, compound features, and multiple types of interactome data to predict protein-compound interactions. We designed three benchmark datasets with different difficulties and evaluated the performance on them. The performance evaluations show that our deep learning framework for integrating molecular structure data and interactome data outperforms state-of-the-art machine learning methods for protein-compound interaction prediction tasks. The performance improvement is proven to be statistically significant by the Wilcoxon signed-rank test. This reveals that the multi-interactome captures different perspectives than amino acid sequence homology and chemical structure similarity, and both type of data have a synergistic effect in improving prediction accuracy. Furthermore, experiments on three benchmark datasets show that our method is more robust than existing methods in accurately predicting interactions between proteins and compounds that are unseen in the training samples.


2021 ◽  
Vol 13 (1) ◽  
Author(s):  
Narumi Watanabe ◽  
Yuuto Ohnuki ◽  
Yasubumi Sakakibara

Abstract Motivation Virtual screening, which can computationally predict the presence or absence of protein–compound interactions, has attracted attention as a large-scale, low-cost, and short-term search method for seed compounds. Existing machine learning methods for predicting protein–compound interactions are largely divided into those based on molecular structure data and those based on network data. The former utilize information on proteins and compounds, such as amino acid sequences and chemical structures; the latter rely on interaction network data, such as protein–protein interactions and compound–compound interactions. However, there have been few attempts to combine both types of data in molecular information and interaction networks. Results We developed a deep learning-based method that integrates protein features, compound features, and multiple types of interactome data to predict protein–compound interactions. We designed three benchmark datasets with different difficulties and applied them to evaluate the prediction method. The performance evaluations show that our deep learning framework for integrating molecular structure data and interactome data outperforms state-of-the-art machine learning methods for protein–compound interaction prediction tasks. The performance improvement is statistically significant according to the Wilcoxon signed-rank test. This finding reveals that the multi-interactome data captures perspectives other than amino acid sequence homology and chemical structure similarity and that both types of data synergistically improve the prediction accuracy. Furthermore, experiments on the three benchmark datasets show that our method is more robust than existing methods in accurately predicting interactions between proteins and compounds that are unseen in training samples.


Sign in / Sign up

Export Citation Format

Share Document