DIProT: A deep learning based interactive toolkit for efficient and effective Protein design

IF 4.4 2区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Jieling He , Wenxu Wu , Xiaowo Wang
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引用次数: 0

Abstract

The protein inverse folding problem, designing amino acid sequences that fold into desired protein structures, is a critical challenge in biological sciences. Despite numerous data-driven and knowledge-driven methods, there remains a need for a user-friendly toolkit that effectively integrates these approaches for in-silico protein design. In this paper, we present DIProT, an interactive protein design toolkit. DIProT leverages a non-autoregressive deep generative model to solve the inverse folding problem, combined with a protein structure prediction model. This integration allows users to incorporate prior knowledge into the design process, evaluate designs in silico, and form a virtual design loop with human feedback. Our inverse folding model demonstrates competitive performance in terms of effectiveness and efficiency on TS50 and CATH4.2 datasets, with promising sequence recovery and inference time. Case studies further illustrate how DIProT can facilitate user-guided protein design.

DIProT:基于深度学习的交互式工具包,用于高效和有效的蛋白质设计
蛋白质反向折叠问题,即设计能折叠成所需蛋白质结构的氨基酸序列,是生物科学领域的一项重大挑战。尽管数据驱动和知识驱动的方法层出不穷,但仍然需要一个用户友好的工具包,将这些方法有效地整合在一起,以进行蛋白质设计。本文介绍了交互式蛋白质设计工具包 DIProT。DIProT 利用非自回归深度生成模型来解决反折叠问题,并结合了蛋白质结构预测模型。通过这种整合,用户可以将先验知识纳入设计过程,对设计进行硅学评估,并形成一个有人类反馈的虚拟设计循环。在 TS50 和 CATH4.2 数据集上,我们的反折叠模型在有效性和效率方面都表现出了很强的竞争力,序列恢复和推理时间都很有希望。案例研究进一步说明了 DIProT 如何促进用户指导的蛋白质设计。
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来源期刊
Synthetic and Systems Biotechnology
Synthetic and Systems Biotechnology BIOTECHNOLOGY & APPLIED MICROBIOLOGY-
CiteScore
6.90
自引率
12.50%
发文量
90
审稿时长
67 days
期刊介绍: Synthetic and Systems Biotechnology aims to promote the communication of original research in synthetic and systems biology, with strong emphasis on applications towards biotechnology. This journal is a quarterly peer-reviewed journal led by Editor-in-Chief Lixin Zhang. The journal publishes high-quality research; focusing on integrative approaches to enable the understanding and design of biological systems, and research to develop the application of systems and synthetic biology to natural systems. This journal will publish Articles, Short notes, Methods, Mini Reviews, Commentary and Conference reviews.
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