使用 BERT 预测蛋白质序列和药物化合物的药物-靶点相互作用

Essmily Simon, Sanjay S Bankapur
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引用次数: 0

摘要

目前的药物开发主要依赖于识别药物与靶点之间的潜在关系。然而,由于目前计算技术的局限性,很难预测这种关系。因此,深度学习的使用对于识别潜在的治疗药物化合物以及在整个药物开发过程中提供支持至关重要。本研究讨论了使用变压器(BERT)模型双向编码器表征的深度学习技术,该技术有助于使用蛋白质和药物 SMILES(简化分子输入行输入系统)数据集建立表征,以增强 DTI 预测。我们使用预训练的蛋白质 BERT 模型和 ChemBERT 分别对蛋白质序列和药物 SMILES 数据进行特征提取,并将提取的特征串联起来,输入随机森林(RF)进行分类。BERT 模型有助于使用蛋白质和药物数据集进行特征提取,而无需使用描述符数据集来发现药物和蛋白质之间的相互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Drug-Target Interactions Using BERT for Protein Sequences and Drug Compound
The current drug development crucially depends on identifying potential relationships between medicines and targets. However, anticipating such relationships is difficult due to the limits of current computational techniques. Hence, the use of deep learning is essential for identifying potential therapeutic drug compounds and providing support throughout the entire drug development process. This study discusses the deep learning technique of using bidirectional encoder representations from the Transformers (BERT) model which helped to build representations using protein and drug SMILES (Simplified Molecular Input Line Entry System) dataset to enhance DTI prediction. We used the pretrained Protein BERT model and ChemBERT for protein sequences and drug SMILES data respectively for feature extraction and resulting features are concatenated together and fed into a random forest (RF) for classification. BERT model helps to use protein and drug datasets for feature extraction without using the descriptor dataset for finding the interaction between drugs and proteins. .
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