基于基因本体的预训练嵌入蛋白功能标注

Thi Thuy Duong Vu, Jaehee Jung
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引用次数: 0

摘要

基因本体(GO)数据库包含大约40,000类按层次关系排列的术语。这些术语主要定义蛋白质的功能,并在生物信息学中使用它们的序列来自动预测蛋白质的功能。最近,人们研究了ProtBert和ProteinBERT等模型,它们通过使用自监督深度方法对核苷酸序列的预训练模型进行微调来预测蛋白质功能。我们提出了两种预测氧化石墨烯的模型,使用ProtBert模型提取的蛋白质特征来用它们的氧化石墨烯术语注释蛋白质。此外,我们定制了ProteinBERT模型,并对其进行了微调,以预测GO术语。实验表明,使用预训练的变压器模型创建的蛋白质嵌入可以用作涉及序列预测的任务的数据来源,重点是蛋白质功能。与其他比较方法相比,建议的模型允许灵活的序列长度,并提供更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gene Ontology based protein functional annotation using pretrained embeddings
The Gene Ontology (GO) database contains approximately 40,000 classes of terms arranged in a hierarchical relationship. These terms mainly define protein functions and are used in bioinformatics to automatically predict protein functions using their sequences. Recently, several models have been studied, such as ProtBert and ProteinBERT, which predict protein functions by fine-tuning a pretrained model of the nucleotide sequence using a self-supervised deep method. We proposed two models to predict GO using protein features extracted by the ProtBert model to annotate proteins with their GO terms. Additionally, we customized the ProteinBERT model and fine-tuned it to predict GO terms. The experiment showed that protein embeddings created using pretrained transformer models can be used as a source of data for tasks involving sequence prediction, with a focus on protein functions. The suggested models allow flexible sequence lengths and provide improved performance compared to other comparison methods.
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