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Papers/Bidirectional Generation of Structure and Properties Throu...

Bidirectional Generation of Structure and Properties Through a Single Molecular Foundation Model

Jinho Chang, Jong Chul Ye

2022-11-19Molecular Property Prediction
PaperPDFCode(official)

Abstract

The recent success of large foundation models in artificial intelligence has prompted the emergence of chemical pre-trained models. Despite the growing interest in large molecular pre-trained models that provide informative representations for downstream tasks, attempts for multimodal pre-training approaches on the molecule domain were limited. To address this, we present a novel multimodal molecular pre-trained model that incorporates the modalities of structure and biochemical properties, drawing inspiration from recent advances in multimodal learning techniques. Our proposed model pipeline of data handling and training objectives aligns the structure/property features in a common embedding space, which enables the model to regard bidirectional information between the molecules' structure and properties. These contributions emerge synergistic knowledge, allowing us to tackle both multimodal and unimodal downstream tasks through a single model. Through extensive experiments, we demonstrate that our model shows remarkable capabilities in solving various meaningful chemical challenges, including conditional molecule generation, property prediction, molecule classification, and reaction prediction.

Results

TaskDatasetMetricValueModel
Molecular Property PredictionFreeSolvRMSE1.859SPMM
Molecular Property PredictionclintoxROC-AUC91SPMM
Molecular Property PredictionClearanceRMSE44.752SPMM
Molecular Property PredictionLipophilicityRMSE0.706SPMM
Molecular Property PredictionBBBPROC-AUC73.3SPMM
Molecular Property PredictionSIDERROC-AUC64.7SPMM
Molecular Property PredictionBACERMSE1.108SPMM
Molecular Property PredictionBACEROC-AUC83SPMM
Molecular Property PredictionESOLRMSE0.81SPMM
Atomistic DescriptionFreeSolvRMSE1.859SPMM
Atomistic DescriptionclintoxROC-AUC91SPMM
Atomistic DescriptionClearanceRMSE44.752SPMM
Atomistic DescriptionLipophilicityRMSE0.706SPMM
Atomistic DescriptionBBBPROC-AUC73.3SPMM
Atomistic DescriptionSIDERROC-AUC64.7SPMM
Atomistic DescriptionBACERMSE1.108SPMM
Atomistic DescriptionBACEROC-AUC83SPMM
Atomistic DescriptionESOLRMSE0.81SPMM

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