In silico evolution of autoinhibitory domains for a PD-L1 antagonist using deep learning models

Author:

Goudy Odessa J.1ORCID,Nallathambi Amrita1ORCID,Kinjo Tomoaki1ORCID,Randolph Nicholas Z.12ORCID,Kuhlman Brian123ORCID

Affiliation:

1. Department of Biochemistry and Biophysics, University of North Carolina School of Medicine, Chapel Hill, NC 27599

2. Department of Bioinformatics and Computational Biology, University of North Carolina School of Medicine, Chapel Hill, NC 27599

3. Lineberger Comprehensive Cancer Center, University of North Carolina School of Medicine, Chapel Hill, NC 27599

Abstract

There has been considerable progress in the development of computational methods for designing protein–protein interactions, but engineering high-affinity binders without extensive screening and maturation remains challenging. Here, we test a protein design pipeline that uses iterative rounds of deep learning (DL)-based structure prediction (AlphaFold2) and sequence optimization (ProteinMPNN) to design autoinhibitory domains (AiDs) for a PD-L1 antagonist. With the goal of creating an anticancer agent that is inactive until reaching the tumor environment, we sought to create autoinhibited (or masked) forms of the PD-L1 antagonist that can be unmasked by tumor-enriched proteases. Twenty-three de novo designed AiDs, varying in length and topology, were fused to the antagonist with a protease-sensitive linker, and binding to PD-L1 was measured with and without protease treatment. Nine of the fusion proteins demonstrated conditional binding to PD-L1, and the top-performing AiDs were selected for further characterization as single-domain proteins. Without any experimental affinity maturation, four of the AiDs bind to the PD-L1 antagonist with equilibrium dissociation constants (K D s) below 150 nM, with the lowest K D equal to 0.9 nM. Our study demonstrates that DL-based protein modeling can be used to rapidly generate high-affinity protein binders.

Funder

HHS | NIH | National Institute of General Medical Sciences

National Science Foundation

Publisher

Proceedings of the National Academy of Sciences

Subject

Multidisciplinary

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