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.
Original language | English (US) |
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Article number | 100254 |
Journal | Cell Reports Methods |
Volume | 2 |
Issue number | 7 |
DOIs | |
State | Published - Jul 18 2022 |
Externally published | Yes |
Keywords
- affinity selection
- antibody discovery
- biologics
- counterselection
- developability
- machine learning
- nonspecificity
- polyspecificity
- screening
ASJC Scopus subject areas
- Biotechnology
- Biochemistry
- Biochemistry, Genetics and Molecular Biology (miscellaneous)
- Genetics
- Radiology Nuclear Medicine and imaging
- Computer Science Applications