Protein is linked to almost every life process. Therefore, analyzing the biological structure and property of protein sequences is critical to the exploration of life, as well as disease detection and drug discovery. Traditional protein analysis methods tend to be labor-intensive and time-consuming. The emergence of deep learning models makes modeling data patterns in large quantities of data possible. Interdisciplinary researchers have begun to leverage deep learning methods to model large biological datasets, e.g. using long short-term memory and convolutional neural network for protein sequence classification. After millions of years of evolution, evolutionary information is encoded in protein sequences. Inspired by the similarity between natural language and protein sequences, we use large-scale language models to model evolutionary-scale protein sequences, encoding protein biology information in representation. Significant improvements are observed in both token-level and sequence-level tasks, demonstrating that our large-scale model can accurately capture evolution information from pretraining on evolutionary-scale individual sequences. Our code and model are available at https://github.com/THUDM/ProteinLM.
翻译:因此,分析蛋白质序列的生物结构和特性对于生命的探索以及疾病检测和药物发现至关重要。传统的蛋白质分析方法往往耗费大量精力和时间。深层次的学习模型的出现使得大量数据都有可能建模数据模式。跨学科研究人员已开始利用深层次的学习方法来模拟大型生物数据集,例如利用长期短期记忆和进化神经网络来进行蛋白质序列分类。经过数百万年的演进后,进化信息在蛋白序列中被编码。受自然语言和蛋白序列相似性的影响,我们使用大规模语言模型来模拟进化型蛋白序列,并使用编码蛋白生物学信息作为代表。在象征性和序列层面都观察到了重大改进,表明我们的大型模型能够准确地捕捉进化个体序列预培训的进化信息。我们的代码和模型可以在 https://github.com/HUDM/ProteinLM。