计算生物学
抗体
抗体库
噬菌体展示
选择(遗传算法)
编码
肽库
DNA测序
序列(生物学)
生物
抗原
计算机科学
遗传学
DNA
肽序列
基因
人工智能
作者
Jenny Mattsson,Anne Ljungars,Anders Carlsson,Carolin Svensson,Björn Nilsson,Mats Ohlin,Björn Frendéus
标识
DOI:10.1016/j.crmeth.2023.100475
摘要
Phenotypic drug discovery (PDD) enables the target-agnostic generation of therapeutic drugs with novel mechanisms of action. However, realizing its full potential for biologics discovery requires new technologies to produce antibodies to all, a priori unknown, disease-associated biomolecules. We present a methodology that helps achieve this by integrating computational modeling, differential antibody display selection, and massive parallel sequencing. The method uses the law of mass action-based computational modeling to optimize antibody display selection and, by matching computationally modeled and experimentally selected sequence enrichment profiles, predict which antibody sequences encode specificity for disease-associated biomolecules. Applied to a phage display antibody library and cell-based antibody selection, ∼105 antibody sequences encoding specificity for tumor cell surface receptors expressed at 103–106 receptors/cell were discovered. We anticipate that this approach will be broadly applicable to molecular libraries coupling genotype to phenotype and to the screening of complex antigen populations for identification of antibodies to unknown disease-associated targets.
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