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Deep mutational scanning of an antibody against epidermal growth factor receptor using mammalian cell display and massively parallel pyrosequencing

机译:使用哺乳动物细胞展示和大规模平行焦磷酸测序对表皮生长因子受体抗体进行深层突变扫描

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摘要

We developed a method for deep mutational scanning of antibody complementarity-determining regions (CDRs) that can determine in parallel the effect of every possible single amino acid CDR substitution on antigen binding. The method uses libraries of full length IgGs containing more than 1000 CDR point mutations displayed on mammalian cells, sorted by flow cytometry into subpopulations based on antigen affinity and analyzed by massively parallel pyrosequencing. Higher, lower and neutral affinity mutations are identified by their enrichment or depletion in the FACS subpopulations. We applied this method to a humanized version of the anti-epidermal growth factor receptor antibody cetuximab, generated a near comprehensive data set for 1060 point mutations that recapitulates previously determined structural and mutational data for these CDRs and identified 67 point mutations that increase affinity. The large-scale, comprehensive sequence-function data sets generated by this method should have broad utility for engineering properties such as antibody affinity and specificity and may advance theoretical understanding of antibody-antigen recognition.
机译:我们开发了一种用于抗体互补决定区(CDR)的深度突变扫描的方法,该方法可以并行确定每种可能的单个氨基酸CDR取代对抗原结合的影响。该方法使用了包含在哺乳动物细胞上展示的1000多个CDR点突变的全长IgG文库,并根据抗原亲和力通过流式细胞仪将其分为亚群,并通过大规模平行焦磷酸测序进行了分析。较高,较低和中性的亲和力突变通过其在FACS亚群中的富集或枯竭来鉴定。我们将此方法应用于抗表皮生长因子受体抗体西妥昔单抗的人源化版本,生成了1060个点突变的近乎全面的数据集,该数据集概括了这些CDR先前确定的结构和突变数据,并确定了增加亲和力的67个点突变。通过这种方法生成的大规模,全面的序列功能数据集应具有广泛的工程实用性,例如抗体亲和力和特异性,并且可以提高对抗体-抗原识别的理论理解。

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