Precise prediction of phase-separation key residues by machine learning

Jun Sun(Sun Yat-sen University), Jiale Qu(Sun Yat-sen University), Cai Zhao(Sun Yat-sen University), Xinyao Zhang(Sun Yat-sen University), Xinyu Liu(Sun Yat-sen University), Jia Wang(Sun Yat-sen University), Chao Wei(Sun Yat-sen University), Xinyi Liu(Sun Yat-sen University), Mulan Wang(Sun Yat-sen University), Pengguihang Zeng(Sun Yat-sen University), Xiuxiao Tang(Sun Yat-sen University), Xiaoru Ling(Sun Yat-sen University), Qing Li(Sun Yat-sen University), Shaoshuai Jiang(Sun Yat-sen University), Jiahao Chen(Sun Yat-sen University), Tara S. R. Chen(Sun Yat-sen University), Yalan Kuang(Sichuan University), Jinhang Gao(Sichuan University), Xiaoxi Zeng(Sichuan University), Dong Feng Huang(Sun Yat-sen University), Yong Yuan(Sichuan University), Lili Fan(Guangzhou University of Chinese Medicine), Haopeng Yu(Sichuan University), Junjun Ding(Sun Yat-sen University)
Nature Communications
March 26, 2024
Cited by 78Open Access
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Abstract

Understanding intracellular phase separation is crucial for deciphering transcriptional control, cell fate transitions, and disease mechanisms. However, the key residues, which impact phase separation the most for protein phase separation function have remained elusive. We develop PSPHunter, which can precisely predict these key residues based on machine learning scheme. In vivo and in vitro validations demonstrate that truncating just 6 key residues in GATA3 disrupts phase separation, enhancing tumor cell migration and inhibiting growth. Glycine and its motifs are enriched in spacer and key residues, as revealed by our comprehensive analysis. PSPHunter identifies nearly 80% of disease-associated phase-separating proteins, with frequent mutated pathological residues like glycine and proline often residing in these key residues. PSPHunter thus emerges as a crucial tool to uncover key residues, facilitating insights into phase separation mechanisms governing transcriptional control, cell fate transitions, and disease development.


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