Is fragment-based graph a better graph-based molecular representation for drug design? A comparison study of graph-based models
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M. Mou | Ziqi Pan | Baiyu Chen | Yuan Zhou | Wei Fu
[1] Yongchao Luo,et al. A task-specific encoding algorithm for RNAs and RNA-associated interactions based on convolutional autoencoder , 2023, Nucleic acids research.
[2] Fengcheng Li,et al. A Transformer-Based Ensemble Framework for the Prediction of Protein–Protein Interaction Sites , 2023, Research.
[3] C. Deane,et al. Fragment Merging Using a Graph Database Samples Different Catalogue Space than Similarity Search , 2023, J. Chem. Inf. Model..
[4] Xiangxiang Zeng,et al. Pharmacophoric-constrained heterogeneous graph transformer model for molecular property prediction , 2023, Communications Chemistry.
[5] Jing Tang,et al. ANPELA: Significantly Enhanced Quantification Tool for Cytometry‐Based Single‐Cell Proteomics , 2023, Advanced science.
[6] R. Nussinov,et al. Accurate prediction of molecular properties and drug targets using a self-supervised image representation learning framework , 2022, Nature Machine Intelligence.
[7] Yaopeng Li,et al. Directed message passing neural network (D-MPNN) with graph edge attention (GEA) for property prediction of biofuel-relevant species , 2022, Energy and AI.
[8] Fengcheng Li,et al. DRESIS: the first comprehensive landscape of drug resistance information , 2022, Nucleic Acids Res..
[9] Yuzong Chen,et al. DrugMAP: molecular atlas and pharma-information of all drugs , 2022, Nucleic Acids Res..
[10] Lianyi Han,et al. CovInter: interaction data between coronavirus RNAs and host proteins , 2022, Nucleic Acids Res..
[11] Yunxia Wang,et al. ncRNAInter: a novel strategy based on graph neural network to discover interactions between lncRNA and miRNA , 2022, Briefings Bioinform..
[12] Feng Zhu,et al. M6AREG: m6A-centered regulation of disease development and drug response , 2022, Nucleic Acids Res..
[13] Zhuguo Li,et al. Deep learning methods for molecular representation and property prediction. , 2022, Drug discovery today.
[14] R. Liu,et al. Integrating concept of pharmacophore with graph neural networks for chemical property prediction and interpretation , 2022, Journal of Cheminformatics.
[15] Lingxiao Jiang,et al. Proteome-Wide Profiling of the Covalent-Druggable Cysteines with a Structure-Based Deep Graph Learning Network , 2022, Research.
[16] B. Castro-Dominguez,et al. Images of chemical structures as molecular representations for deep learning , 2022, Journal of Materials Research.
[17] A. Tchagang,et al. Multi-Objective Drug Design Based on Graph-Fragment Molecular Representation and Deep Evolutionary Learning , 2022, Frontiers in Pharmacology.
[18] J. Bower,et al. Fragment‐based drug discovery—the importance of high‐quality molecule libraries , 2022, Molecular oncology.
[19] Guido Falk von Rudorff,et al. SELFIES and the future of molecular string representations , 2022, Patterns.
[20] G. C. García,et al. Graph-Based Feature Selection Approach for Molecular Activity Prediction , 2022, J. Chem. Inf. Model..
[21] Weiwei Xue,et al. Molecular Mechanism for the Allosteric Inhibition of the Human Serotonin Transporter by Antidepressant Escitalopram. , 2022, ACS chemical neuroscience.
[22] Aiping Lu,et al. Pushing the Boundaries of Molecular Property Prediction for Drug Discovery with Multitask Learning BERT Enhanced by SMILES Enumeration , 2022, Research.
[23] Jianxin Wang,et al. SYNBIP: synthetic binding proteins for research, diagnosis and therapy , 2021, Nucleic Acids Res..
[24] Suresh Dara,et al. Machine Learning in Drug Discovery: A Review , 2021, Artificial Intelligence Review.
[25] Xiangxiang Zeng,et al. 3DMol-Net: Learn 3D Molecular Representation Using Adaptive Graph Convolutional Network Based on Rotation Invariance , 2021, IEEE Journal of Biomedical and Health Informatics.
[26] Hua Wu,et al. Geometry-enhanced molecular representation learning for property prediction , 2021, Nature Machine Intelligence.
[27] Jihong Guan,et al. FraGAT: a fragment-oriented multi-scale graph attention model for molecular property prediction , 2021, Bioinform..
[28] Dragi Kocev,et al. A comprehensive comparison of molecular feature representations for use in predictive modeling , 2021, Comput. Biol. Medicine.
[29] Anne E Carpenter,et al. Image-based profiling for drug discovery: due for a machine-learning upgrade? , 2020, Nature Reviews Drug Discovery.
[30] Feng Zhu,et al. INTEDE: interactome of drug-metabolizing enzymes , 2020, Nucleic Acids Res..
[31] Chang-Yu Hsieh,et al. Could graph neural networks learn better molecular representation for drug discovery? A comparison study of descriptor-based and graph-based models , 2020, Journal of Cheminformatics.
[32] Ola Engkvist,et al. Molecular representations in AI-driven drug discovery: a review and practical guide , 2020, Journal of Cheminformatics.
[33] Xiaomin Luo,et al. Pushing the boundaries of molecular representation for drug discovery with graph attention mechanism. , 2020, Journal of medicinal chemistry.
[34] G. Klambauer,et al. Graph networks for molecular design , 2020, Mach. Learn. Sci. Technol..
[35] Connor W. Coley,et al. Molecular Representation: Going Long on Fingerprints , 2020, Chem.
[36] ShanShan Hu,et al. A Deep Learning-Based Chemical System for QSAR Prediction , 2020, IEEE Journal of Biomedical and Health Informatics.
[37] Zhen Wu,et al. A self-attention based message passing neural network for predicting molecular lipophilicity and aqueous solubility , 2020, Journal of Cheminformatics.
[38] M. Withnall,et al. Building attention and edge message passing neural networks for bioactivity and physical–chemical property prediction , 2020, Journal of Cheminformatics.
[39] Xiaolin Xia,et al. Graph-based generative models for de Novo drug design. , 2019, Drug discovery today. Technologies.
[40] Feng Zhu,et al. VARIDT 1.0: variability of drug transporter database , 2019, Nucleic Acids Res..
[41] Nitesh V. Chawla,et al. Heterogeneous Graph Neural Network , 2019, KDD.
[42] Jie Tang,et al. Representation Learning for Attributed Multiplex Heterogeneous Network , 2019, KDD.
[43] Connor W. Coley,et al. Analyzing Learned Molecular Representations for Property Prediction , 2019, J. Chem. Inf. Model..
[44] Stephen D Pickett,et al. De Novo Molecule Design by Translating from Reduced Graphs to SMILES , 2018, J. Chem. Inf. Model..
[45] Yutaka Saito,et al. Convolutional neural network based on SMILES representation of compounds for detecting chemical motif , 2018, BMC Bioinformatics.
[46] Andrew R. Leach,et al. ChEMBL: towards direct deposition of bioassay data , 2018, Nucleic Acids Res..
[47] Huiyong Sun,et al. The impact of interior dielectric constant and entropic change on HIV-1 complex binding free energy prediction , 2018, Structural dynamics.
[48] Rim Shayakhmetov,et al. 3D Molecular Representations Based on the Wave Transform for Convolutional Neural Networks. , 2018, Molecular pharmaceutics.
[49] A. Swami,et al. metapath2vec: Scalable Representation Learning for Heterogeneous Networks , 2017, KDD.
[50] Christopher W Murray,et al. The Fragment Network: A Chemistry Recommendation Engine Built Using a Graph Database. , 2017, Journal of medicinal chemistry.
[51] Bo Li,et al. NOREVA: normalization and evaluation of MS-based metabolomics data , 2017, Nucleic Acids Res..
[52] Samuel S. Schoenholz,et al. Neural Message Passing for Quantum Chemistry , 2017, ICML.