Validation of a murine proteome-wide phage display library for identification of autoantibody specificities

验证小鼠蛋白质组范围的噬菌体展示文库以识别自身抗体特异性

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作者:Elze Rackaityte, Irina Proekt, Haleigh S Miller, Akshaya Ramesh, Jeremy F Brooks, Andrew F Kung, Caleigh Mandel-Brehm, David Yu, Colin R Zamecnik, Rebecca Bair, Sara E Vazquez, Sara Sunshine, Clare L Abram, Clifford A Lowell, Gabrielle Rizzuto, Michael R Wilson, Julie Zikherman, Mark S Anderson, Jos

Abstract

Autoimmunity is characterized by loss of tolerance to tissue-specific as well as systemic antigens, resulting in complex autoantibody landscapes. Here, we introduce and extensively validate the performance characteristics of a murine proteome-wide library for phage display immunoprecipitation and sequencing (PhIP-seq) in profiling mouse autoantibodies. This library was validated using 7 genetically distinct mouse lines across a spectrum of autoreactivity. Mice deficient in antibody production (Rag2-/- and μMT) were used to model nonspecific peptide enrichments, while cross-reactivity was evaluated using anti-ovalbumin B cell receptor-restricted OB1 mice as a proof of principle. The PhIP-seq approach was then utilized to interrogate 3 distinct autoimmune disease models. First, serum from Lyn-/- IgD+/- mice with lupus-like disease was used to identify nuclear and apoptotic bleb reactivities. Second, serum from nonobese diabetic (NOD) mice, a polygenic model of pancreas-specific autoimmunity, was enriched in peptides derived from both insulin and predicted pancreatic proteins. Lastly, Aire-/- mouse sera were used to identify numerous autoantigens, many of which were also observed in previous studies of humans with autoimmune polyendocrinopathy syndrome type 1 carrying recessive mutations in AIRE. These experiments support the use of murine proteome-wide PhIP-seq for antigenic profiling and autoantibody discovery, which may be employed to study a range of immune perturbations in mouse models of autoimmunity profiling.

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