Literature DB >> 28993202

Temporal expression profiling of plasma proteins reveals oxidative stress in early stages of Type 1 Diabetes progression.

Chih-Wei Liu1, Lisa Bramer2, Bobbie-Jo Webb-Robertson2, Kathleen Waugh3, Marian J Rewers3, Qibin Zhang4.   

Abstract

Blood markers other than islet autoantibodies are greatly needed to indicate the pancreatic beta cell destruction process as early as possible, and more accurately reflect the progression of Type 1 Diabetes Mellitus (T1D). To this end, a longitudinal proteomic profiling of human plasma using TMT-10plex-based LC-MS/MS analysis was performed to track temporal proteomic changes of T1D patients (n=11) across 9 serial time points, spanning the period of T1D natural progression, in comparison with those of the matching healthy controls (n=10). To our knowledge, the current study represents the largest (>2000 proteins measured) longitudinal expression profiles of human plasma proteome in T1D research. By applying statistical trend analysis on the temporal expression patterns between T1D and controls, and Benjamini-Hochberg procedure for multiple-testing correction, 13 protein groups were regarded as having statistically significant differences during the entire follow-up period. Moreover, 16 protein groups, which play pivotal roles in response to oxidative stress, have consistently abnormal expression trend before seroconversion to islet autoimmunity. Importantly, the expression trends of two key reactive oxygen species-decomposing enzymes, Catalase and Superoxide dismutase were verified independently by ELISA. BIOLOGICAL SIGNIFICANCE: The temporal changes of >2000 plasma proteins (at least quantified in two subjects), spanning the entire period of T1D natural progression were provided to the research community. Oxidative stress related proteins have consistently different dysregulated patterns in T1D group than in age-sex matched healthy controls, even prior to appearance of islet autoantibodies - the earliest sign of islet autoimmunity and pancreatic beta cell stress.
Copyright © 2017 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Longitudinal profiling; Oxidative stress; Pediatric plasma proteome; TMT10; Temporal proteome change; Type 1 Diabetes

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Year:  2017        PMID: 28993202      PMCID: PMC5726913          DOI: 10.1016/j.jprot.2017.10.004

Source DB:  PubMed          Journal:  J Proteomics        ISSN: 1874-3919            Impact factor:   4.044


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