Author:
Wu Kejia,Jiang Hanlun,Hicks Derrick R.,Liu Caixuan,Muratspahić Edin,Ramelot Theresa A.,Liu Yuexuan,McNally Kerrie,Gaur Amit,Coventry Brian,Chen Wei,Bera Asim K.,Kang Alex,Gerben Stacey,Lamb Mila Ya-Lan,Murray Analisa,Li Xinting,Kennedy Madison A.,Yang Wei,Schober Gudrun,Brierley Stuart M.,Gelb Michael H.,Montelione Gaetano T.,Derivery Emmanuel,Baker David
Abstract
AbstractA general approach to design proteins that bind tightly and specifically to intrinsically disordered regions (IDRs) of proteins and flexible peptides would have wide application in biological research, therapeutics, and diagnosis. However, the lack of defined structures and the high variability in sequence and conformational preferences has complicated such efforts. We sought to develop a method combining biophysical principles with deep learning to readily generate binders for any disordered sequence. Instead of assuming a fixed regular structure for the target, general recognition is achieved by threading the query sequence through diverse extended binding modes in hundreds of templates with varying pocket depths and spacings, followed by RFdiffusion refinement to optimize the binder-target fit. We tested the method by designing binders to 39 highly diverse unstructured targets, including polar targets. Experimental testing of ∼36 designs per target yielded binders with affinities better than 100 nM in 34 cases, and in the pM range in four cases. The co-crystal structure of a designed binder in complex with dynorphin A is closely consistent with the design model. All by all binding experiments for 20 designs binding diverse targets show they are highly specific for the intended targets, with no crosstalk even for the closely related dynorphin A and dynorphin B. Our approach thus could provide a general solution to the intrinsically disordered protein and peptide recognition problem.
Publisher
Cold Spring Harbor Laboratory
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献