2023
DOI: 10.1021/acs.jcim.2c01538
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General Graph Neural Network-Based Model To Accurately Predict Cocrystal Density and Insight from Data Quality and Feature Representation

Abstract: Cocrystal engineering as an effective way to modify solid-state properties has inspired great interest from diverse material fields while cocrystal density is an important property closely correlated with the material function. In order to accurately predict the cocrystal density, we develop a graph neural network (GNN)-based deep learning framework by considering three key factors of machine learning (data quality, feature presentation, and model architecture). The result shows that different stoichiometric r… Show more

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Cited by 4 publications
(5 citation statements)
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“…Message-passing neural networks (MPNNs), as a variant of GNNs, are capable of taking both nodes and edges features as inputs. By incorporating edges features into the model, it is possible to enhance the understanding and representation of molecular graphs, resulting in significantly improved accuracy in predicting molecular chemical properties. Several MPNN-based network architectures have been proposed for predicting other compound attributes, such as cocrystal density, infrared spectra, bond order, and bond energy …”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Message-passing neural networks (MPNNs), as a variant of GNNs, are capable of taking both nodes and edges features as inputs. By incorporating edges features into the model, it is possible to enhance the understanding and representation of molecular graphs, resulting in significantly improved accuracy in predicting molecular chemical properties. Several MPNN-based network architectures have been proposed for predicting other compound attributes, such as cocrystal density, infrared spectra, bond order, and bond energy …”
Section: Introductionmentioning
confidence: 99%
“…By incorporating edges features into the model, it is possible to enhance the understanding and representation of molecular graphs, resulting in significantly improved accuracy in predicting molecular chemical properties. 32−35 Several MPNN-based network architectures have been proposed for predicting other compound attributes, such as cocrystal density, 36 infrared spectra, 37 bond order, and bond energy. 38 In this work, a model for predicting the pK a values of C−H acid based on the MPNN framework was constructed.…”
Section: ■ Introductionmentioning
confidence: 99%
“…28 Guo et al developed a general MPNNbased framework coupling with global attention to predict cocrystal density and further identified significant atoms to realize the interpretability of the model. 29 To accelerate the drug repurposing and discovery research, Wang et al presented a deep fusion anatomical therapeutic chemical (ATC) prediction model DeepATC, where GCN was used to extract drug topological information. 30 Pham et al developed a mechanism-driven neural network-based architecture DeepCE by incorporating GNN and multihead attention mechanism to support virtual screening of phenotype compounds.…”
Section: Introductionmentioning
confidence: 99%
“…Ryu et al employed GAT to accurately predict molecular polarity, solubility, energy, and additionally detected essential features directly relating to target properties . Guo et al developed a general MPNN-based framework coupling with global attention to predict cocrystal density and further identified significant atoms to realize the interpretability of the model . To accelerate the drug repurposing and discovery research, Wang et al presented a deep fusion anatomical therapeutic chemical (ATC) prediction model DeepATC, where GCN was used to extract drug topological information .…”
Section: Introductionmentioning
confidence: 99%
“…For these methods, it was estimated a variable accuracy in the range of 30–80% depending on the API . To overcome the poor accuracy of the property-based methods, a combination of different tools was also proposed, showing an improvement in the coformer selection of specific systems. , Recently, data-driven ML approaches have become increasingly popular due to the rapidity of calculation and promising predictive accuracy. Several algorithms were evaluated, such as support vector machine (SVM), random forest (RF), neural networks (NN), and partial least squares-discriminant analysis (PLS-DA), and also, a wide variety of molecular representations were considered, including molecular descriptors, fingerprint vectors, and molecular graphs . To mention a few studies, Fornari et al proposed using QSAR descriptors and the PLS-DA model to discriminate between the formation of cocrystals and physical mixtures .…”
Section: Introductionmentioning
confidence: 99%