Chapter 10. Data Analysis for Data Independent Acquisition

Pedro Navarro, Marco Trevisan-Herraz, H. Röst
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Abstract

Mass spectrometry-based proteomics using soft ionization techniques has been used successfully to identify large numbers of proteins from complex biological samples. However, reproducible quantification across a large number of samples is still highly challenging with commonly used “shotgun proteomics” which uses stochastic sampling of the peptide analytes (data dependent acquisition; DDA) to analyze samples. Recently, data independent acquisition (DIA) methods have been investigated for their potential for reproducible protein quantification, since they deterministically sample all peptide analytes in every single run. This increases reproducibility and sensitivity, reduces the number of missing values and removes stochasticity from the acquisition process. However, one of the major challenges for wider adoption of DIA has been data analysis. In this chapter we will introduce the five most well-known of these techniques, as well as their data analysis methods, classified either as targeted or untargeted; then, we will discuss briefly the meaning of the false discovery rate (FDR) in DIA experiments, to finally close the chapter with a review of the current challenges in this subject.
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第十章。数据独立采集的数据分析
基于质谱的蛋白质组学使用软电离技术已经成功地从复杂的生物样品中鉴定了大量的蛋白质。然而,对于常用的“散弹枪蛋白质组学”来说,在大量样本中进行可重复的量化仍然是极具挑战性的,该方法使用肽分析物的随机采样(数据依赖获取;DDA)来分析样品。最近,数据独立采集(DIA)方法被研究用于重复性蛋白质定量的潜力,因为它们在每次运行中都确定地采样所有肽分析物。这增加了再现性和灵敏度,减少了缺失值的数量,并消除了采集过程中的随机性。然而,广泛采用DIA的主要挑战之一是数据分析。在本章中,我们将介绍这些技术中最著名的五种,以及它们的数据分析方法,分为目标和非目标;然后,我们将简要讨论DIA实验中错误发现率(FDR)的含义,最后以回顾该主题当前面临的挑战来结束本章。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Chapter 8. MS2-Based Quantitation Chapter 10. Data Analysis for Data Independent Acquisition Chapter 16. Proteomics Informed by Transcriptomics Chapter 3. Peptide Spectrum Matching via Database Search and Spectral Library Search Chapter 1. Introduction to Proteome Informatics
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