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Computational Methods and Algorithms for Mass-Spectrometry Based Differential Proteomics

机译:基于质谱的微分蛋白质组学的计算方法和算法

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摘要

As most high-throughput data, mass spec proteomics data are complex, noisy and incomplete. Additionally, in settings addressing questions about differential expression of proteins the data are usually represented by relatively few samples and a very large number of predictor variables, i.e., m/z peaks. These characteristics pose a significant challenge for most analysis methods. In addition, the preprocessing of the data remains an active research area having a great impact on the subsequent analysis steps.nnA wide range of algorithms have been proposed for both the pre-processing and the higher leve l analysis of proteomics data. They range from classical approaches to second generation algorithms, which aim at tackling some of the limitations of earlier methods. Many of the proposed algorithms have been reported to produce encouraging results. However, no single algorithm has emerged as a method of choice.nnThis work provides a critical review of the recent approaches for pre-processing and higher level analysis of proteomics data. Also their strengths and limitations are evaluated. Emphasis is given on describing the most common and serious mistakes recorded in published differential proteomics studies. Moreover, the review provides guidance for choosing and correctly applying the appropriate algorithms according to our experience. Also hints for the design of novel algorithms, which will more effectively handle the specific characteristics and constrains of differential proteomics data are discussed.
机译:作为大多数高通量数据,质谱蛋白质组学数据非常复杂,嘈杂且不完整。另外,在解决有关蛋白质差异表达的问题的设置中,数据通常由相对较少的样品和大量的预测变量(即,m / z峰)表示。这些特性对大多数分析方法构成了重大挑战。另外,数据的预处理仍然是一个活跃的研究领域,对后续的分析步骤有很大的影响。nn对于蛋白质组学数据的预处理和更高级别的分析,提出了各种各样的算法。它们的范围从经典方法到第二代算法,旨在解决早期方法的一些局限性。据报道,许多提议的算法产生了令人鼓舞的结果。然而,没有一种算法可以作为一种选择方法。nn这项工作对蛋白质组学数据的预处理和高级分析的最新方法进行了严格的回顾。还评估了它们的优势和局限性。重点描述已发表的差异蛋白质组学研究中记录的最常见和最严重的错误。此外,该评论为根据我们的经验选择和正确应用适当的算法提供了指导。还提示了设计新算法的提示,该算法将更有效地处理差异蛋白质组学数据的特定特征和约束。

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