从数据独立获取质谱(DIA-MS)发现临床级生物标记候选物的蛋白质组学管道

IF 16.1 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Qin Fu, Manasa Vegesna, Niveda Sundararaman, Eugen Damoc, Tabiwang N Arrey, Anna Pashkova, Emebet Mengesha, Philip Debbas, Sandy Joung, Dalin Li, Susan Cheng, Jonathan Braun, Dermot Govern, Christopher Murray, Yue Xuan, Jennifer E Van Eyk
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引用次数: 0

摘要

临床生物标记物的开发一直受到质谱(MS)发现数据蛋白质定量不准确和验证过程漫长的阻碍。为了缓解这些问题,我们创建了靶向提取定量评估(TEAQ)软件包,该软件包使用与数据无关的发现队列采集分析来选择符合既定靶向测定所需分析标准的前体、肽和蛋白质。TEAQ 被应用于在新型高分辨精确质量(HRAM)质谱平台上采集的血浆样本的 DIA-MS 数据,根据 8 点或 11 点加载曲线在三种通量下对前体的线性度、特异性、可重复性、再现性和蛋白质内相关性进行了评估。这些数据可作为开发其他靶向测定的通用资源。对炎症性肠病病例和对照队列(n=492)的数据进行 TEAQ 分析,从 1179 个已鉴定蛋白质中为 326 个可量化蛋白质鉴定出 1110 个特征肽。将 TEAQ 分析应用于发现数据将简化靶向化验的开发以及向验证和临床研究的过渡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Proteomics Pipeline for Generating Clinical Grade Biomarker Candidates from Data-Independent Acquisition Mass Spectrometry (DIA-MS) Discovery
Clinical biomarker development has been stymied by inaccurate protein quantification from mass spectrometry (MS) discovery data and a prolonged validation process. To mitigate these issues, we created the Targeted Extraction Assessment of Quantification (TEAQ) software package that uses data-independent acquisition analysis from a discovery cohort to select precursors, peptides, and proteins that adhere to analytical criteria required for established targeted assays. TEAQ was applied to DIA-MS data from plasma samples acquired on a new high resolution accurate mass (HRAM) mass spectrometry platform where precursors were evaluated for linearity, specificity, repeatability, reproducibility, and intra-protein correlation based on 8- or 11-point loading curves at three throughputs. This data can be used as a general resource for developing other targeted assays. TEAQ analysis of data from a case and control cohort for inflammatory bowel disease (n=492) identified 1110 signature peptides for 326 quantifiable proteins from the 1179 identified proteins. Applying TEAQ analysis to discovery data will streamline targeted assay development and the transition to validation and clinical studies.
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来源期刊
CiteScore
26.60
自引率
6.60%
发文量
3549
审稿时长
1.5 months
期刊介绍: Angewandte Chemie, a journal of the German Chemical Society (GDCh), maintains a leading position among scholarly journals in general chemistry with an impressive Impact Factor of 16.6 (2022 Journal Citation Reports, Clarivate, 2023). Published weekly in a reader-friendly format, it features new articles almost every day. Established in 1887, Angewandte Chemie is a prominent chemistry journal, offering a dynamic blend of Review-type articles, Highlights, Communications, and Research Articles on a weekly basis, making it unique in the field.
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