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Computational counterselection identifies nonspecific therapeutic biologic candidates

Sachit D. Saksena, Ge Liu, Christine Banholzer, Geraldine Horny, Stefan Ewert, David K. Gifford

2022Cell Reports Methods20 citationsDOIOpen Access PDF

Abstract

Effective biologics require high specificity and limited off-target binding, but these properties are not guaranteed by current affinity-selection-based discovery methods. Molecular counterselection against off targets is a technique for identifying nonspecific sequences but is experimentally costly and can fail to eliminate a large fraction of nonspecific sequences. Here, we introduce computational counterselection, a framework for removing nonspecific sequences from pools of candidate biologics using machine learning models. We demonstrate the method using sequencing data from single-target affinity selection of antibodies, bypassing combinatorial experiments. We show that computational counterselection outperforms molecular counterselection by performing cross-target selection and individual binding assays to determine the performance of each method at retaining on-target, specific antibodies and identifying and eliminating off-target, nonspecific antibodies. Further, we show that one can identify generally polyspecific antibody sequences using a general model trained on affinity data from unrelated targets with potential affinity for a broad range of sequences.

Topics & Concepts

Computational biologySelection (genetic algorithm)Computer scienceBiologyMachine learningMonoclonal and Polyclonal Antibodies Researchvaccines and immunoinformatics approachesGlycosylation and Glycoproteins Research
Computational counterselection identifies nonspecific therapeutic biologic candidates | Litcius