Graduate Institute and Department of Microbiology, College of Medicine, National Taiwan University, No.1 Jen Ai road section 1 Taipei 100 Taiwan.
Genome and Systems Biology Degree Program, College of Life Science, National Taiwan University, Taipei, Taiwan.
Brief Bioinform. 2022 May 13;23(3). doi: 10.1093/bib/bbac138.
Data analysis is a critical part of quantitative proteomics studies in interpreting biological questions. Numerous computational tools for protein quantification, imputation and differential expression (DE) analysis were generated in the past decade and the search for optimal tools is still going on. Moreover, due to the rapid development of RNA sequencing (RNA-seq) technology, a vast number of DE analysis methods were created for that purpose. The applicability of these newly developed RNA-seq-oriented tools to proteomics data remains in doubt. In order to benchmark these analysis methods, a proteomics dataset consisting of proteins derived from humans, yeast and drosophila, in defined ratios, was generated in this study. Based on this dataset, DE analysis tools, including microarray- and RNA-seq-based ones, imputation algorithms and protein quantification methods were compared and benchmarked. Furthermore, applying these approaches to two public datasets showed that RNA-seq-based DE tools achieved higher accuracy (ACC) in identifying DEPs. This study provides useful guidelines for analyzing quantitative proteomics datasets. All the methods used in this study were integrated into the Perseus software, version 2.0.3.0, which is available at https://www.maxquant.org/perseus.
数据分析是定量蛋白质组学研究中解释生物学问题的关键部分。在过去的十年中,已经生成了许多用于蛋白质定量、插补和差异表达 (DE) 分析的计算工具,并且仍在寻找最佳工具。此外,由于 RNA 测序 (RNA-seq) 技术的快速发展,为此目的创建了大量的 DE 分析方法。这些新开发的针对 RNA-seq 的工具在蛋白质组学数据中的适用性仍存在疑问。为了对这些分析方法进行基准测试,本研究生成了一个由人类、酵母和果蝇来源的蛋白质以明确定义的比例组成的蛋白质组学数据集。基于该数据集,比较和基准测试了包括基于微阵列和 RNA-seq 的 DE 分析工具、插补算法和蛋白质定量方法。此外,将这些方法应用于两个公共数据集表明,基于 RNA-seq 的 DE 工具在识别 DEPs 方面具有更高的准确性 (ACC)。本研究为分析定量蛋白质组学数据集提供了有用的指导。本研究中使用的所有方法都已集成到 Perseus 软件中,版本 2.0.3.0,可在 https://www.maxquant.org/perseus 获得。