ProtMamba: a homology-aware but alignment-free protein state space model.

Damiano Sgarbossa, Cyril Malbranke, Anne-Florence Bitbol
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Abstract

Motivation: Protein language models are enabling advances in elucidating the sequence-to-function mapping, and have important applications in protein design. Models based on multiple sequence alignments efficiently capture the evolutionary information in homologous protein sequences, but multiple sequence alignment construction is imperfect.

Results: We present ProtMamba, a homology-aware but alignment-free protein language model based on the Mamba architecture. In contrast with attention-based models, ProtMamba efficiently handles very long context, comprising hundreds of protein sequences. It is also computationally efficient. We train ProtMamba on a large dataset of concatenated homologous sequences, using two GPUs. We combine autoregressive modeling and masked language modeling through a fill-in-the-middle training objective. This makes the model adapted to various protein design applications. We demonstrate ProtMamba's usefulness for sequence generation, motif inpainting, fitness prediction, and modeling intrinsically disordered regions. For homolog-conditioned sequence generation, ProtMamba outperforms state-of-the-art models. ProtMamba's competitive performance, despite its relatively small size, sheds light on the importance of long-context conditioning.

Availability: A Python implementation of ProtMamba is freely available in our GitHub repository: https://github.com/Bitbol-Lab/ProtMamba-ssm and archived at https://doi.org/10.5281/zenodo.15584634.

Supplementary information: Supplementary data are available at Bioinformatics online.

ProtMamba:一个同源感知但无比对的蛋白质状态空间模型。
动机:蛋白质语言模型在阐明序列到功能映射方面取得了进展,并且在蛋白质设计中具有重要的应用。基于多序列比对的模型能够有效地捕获同源蛋白序列中的进化信息,但多序列比对的构建并不完善。结果:我们提出了ProtMamba,一种基于Mamba结构的同源性感知但无比对的蛋白质语言模型。与基于注意力的模型相比,ProtMamba可以有效地处理包含数百个蛋白质序列的非常长的上下文。它的计算效率也很高。我们使用两个gpu在连接同源序列的大型数据集上训练ProtMamba。我们通过中间填充的训练目标,将自回归建模和掩码语言建模相结合。这使得该模型适用于各种蛋白质设计应用。我们展示了ProtMamba在序列生成、基序绘制、适应度预测和内在无序区域建模方面的有用性。对于同源条件序列生成,ProtMamba优于最先进的模型。ProtMamba的竞争表现,尽管它的体积相对较小,揭示了长环境条件作用的重要性。可用性:ProtMamba的Python实现可以在我们的GitHub存储库中免费获得:https://github.com/Bitbol-Lab/ProtMamba-ssm并存档于https://doi.org/10.5281/zenodo.15584634.Supplementary information:补充数据可在Bioinformatics在线获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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