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一种用于血脑屏障渗透性预测的融合分子表示深度学习方法。

A merged molecular representation deep learning method for blood-brain barrier permeability prediction.

机构信息

State Key Laboratory of Southwestern Chinese Medicine Resources, School of Basic Medical Science, Chengdu University of Traditional Chinese Medicine, Chengdu 611137, China.

School of Public Health, North China University of Science and Technology, Tangshan 063210, China.

出版信息

Brief Bioinform. 2022 Sep 20;23(5). doi: 10.1093/bib/bbac357.

Abstract

The ability of a compound to permeate across the blood-brain barrier (BBB) is a significant factor for central nervous system drug development. Thus, for speeding up the drug discovery process, it is crucial to perform high-throughput screenings to predict the BBB permeability of the candidate compounds. Although experimental methods are capable of determining BBB permeability, they are still cost-ineffective and time-consuming. To complement the shortcomings of existing methods, we present a deep learning-based multi-model framework model, called Deep-B3, to predict the BBB permeability of candidate compounds. In Deep-B3, the samples are encoded in three kinds of features, namely molecular descriptors and fingerprints, molecular graph and simplified molecular input line entry system (SMILES) text notation. The pre-trained models were built to extract latent features from the molecular graph and SMILES. These features depicted the compounds in terms of tabular data, image and text, respectively. The validation results yielded from the independent dataset demonstrated that the performance of Deep-B3 is superior to that of the state-of-the-art models. Hence, Deep-B3 holds the potential to become a useful tool for drug development. A freely available online web-server for Deep-B3 was established at http://cbcb.cdutcm.edu.cn/deepb3/, and the source code and dataset of Deep-B3 are available at https://github.com/GreatChenLab/Deep-B3.

摘要

化合物穿透血脑屏障(BBB)的能力是开发中枢神经系统药物的一个重要因素。因此,为了加快药物发现过程,进行高通量筛选以预测候选化合物的 BBB 渗透性是至关重要的。虽然实验方法能够确定 BBB 的渗透性,但它们仍然成本效益低且耗时。为了弥补现有方法的不足,我们提出了一种基于深度学习的多模型框架模型,称为 Deep-B3,用于预测候选化合物的 BBB 渗透性。在 Deep-B3 中,样本以三种特征进行编码,即分子描述符和指纹、分子图和简化分子输入行进入系统(SMILES)文本符号。预训练模型用于从分子图和 SMILES 中提取潜在特征。这些特征分别以表格数据、图像和文本的形式描述化合物。来自独立数据集的验证结果表明,Deep-B3 的性能优于最先进的模型。因此,Deep-B3 有可能成为药物开发的有用工具。我们在 http://cbcb.cdutcm.edu.cn/deepb3/ 上建立了一个用于 Deep-B3 的免费在线网络服务器,Deep-B3 的源代码和数据集可在 https://github.com/GreatChenLab/Deep-B3 上获得。

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