分子生物学
IVD分子诊断
细胞培养与分析
蛋白研究
细胞因子
重组蛋白
抗体
高通量测序建库
病原检测UCF系列
生物医药
工具酶
抑制剂激活剂与常用试剂
仪器
耗材

Machine Learning-Guided Engineering of Protein Phase Separation Properties in Immune Regulation

Chenqiu Zhang, Jia Wang, Zhe Wang, Liyan Zhu, Sihui Cai, Luzhi Zhan, Haorui Liang, Yaoxing Wu, Jianqiang Li, Jun Cui

Journal:Advanced Science

IF:14.1

DOI:10.1002/advs.202520890

PMID:41671389

Published:2026-02-11

research field:分子生物学免疫学蛋白质工程细胞生物物理学生物学中的机器学习

Abstract

Phase separation (PS) underpins compartmentalization in living cells, facilitating the formation of membraneless organelles and the regulation of cellular processes. Despite the increasingly pivotal role of engineering protein PS properties in the study and regulation of cellular physiological processes, manipulating PS ability through single amino acid alterations remains a challenge. Here, we develop phase separation scalpel (PScalpel), a machine learning-based tool identifying and recommends protein engineering strategies for directed changes in PS ability. Based on our biological experimental data, we apply transfer learning to achieve the feedback-driven optimization of specific protein prediction accuracy–-markedly enhancing the predictive performance for TDP43, a neurodegenerative disease-associated protein. Furthermore, by engineering the crucial nucleic acid sensor cGAS as a model application, we successfully modulate its PS ability in the anticipated direction by altering a single amino acid, which subsequently optimizes its immune function and impacts the activity of engineered macrophages. Transcriptomic analysis of these cGAS-engineered macrophages further demonstrated that the immune function of macrophages can be altered by the manipulation of cGAS PS ability. In summary, PScalpel is an effective tool for guiding PS ability engineering, enabling targeted molecular and cellular modifications and providing nuanced methods for precise biomolecular engineering in future research.

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