Literature DB >> 31097671

Simultaneous Improvement in the Precision, Accuracy, and Robustness of Label-free Proteome Quantification by Optimizing Data Manipulation Chains.

Jing Tang1, Jianbo Fu2, Yunxia Wang2, Yongchao Luo2, Qingxia Yang3, Bo Li4, Gao Tu3, Jiajun Hong2, Xuejiao Cui4, Yuzong Chen5, Lixia Yao6, Weiwei Xue4, Feng Zhu7.   

Abstract

The label-free proteome quantification (LFQ) is multistep workflow collectively defined by quantification tools and subsequent data manipulation methods that has been extensively applied in current biomedical, agricultural, and environmental studies. Despite recent advances, in-depth and high-quality quantification remains extremely challenging and requires the optimization of LFQs by comparatively evaluating their performance. However, the evaluation results using different criteria (precision, accuracy, and robustness) vary greatly, and the huge number of potential LFQs becomes one of the bottlenecks in comprehensively optimizing proteome quantification. In this study, a novel strategy, enabling the discovery of the LFQs of simultaneously enhanced performance from thousands of workflows (integrating 18 quantification tools with 3,128 manipulation chains), was therefore proposed. First, the feasibility of achieving simultaneous improvement in the precision, accuracy, and robustness of LFQ was systematically assessed by collectively optimizing its multistep manipulation chains. Second, based on a variety of benchmark datasets acquired by various quantification measurements of different modes of acquisition, this novel strategy successfully identified a number of manipulation chains that simultaneously improved the performance across multiple criteria. Finally, to further enhance proteome quantification and discover the LFQs of optimal performance, an online tool (https://idrblab.org/anpela/) enabling collective performance assessment (from multiple perspectives) of the entire LFQ workflow was developed. This study confirmed the feasibility of achieving simultaneous improvement in precision, accuracy, and robustness. The novel strategy proposed and validated in this study together with the online tool might provide useful guidance for the research field requiring the mass-spectrometry-based LFQ technique.
© 2019 Tang et al.

Entities:  

Keywords:  Bioinformatics; Bioinformatics software; Clinical proteomics; LFQ workflow; Label-free proteome quantification; Label-free quantification; Omics; Online tool; Processing chain; Quantification tool; SWATH-MS

Mesh:

Substances:

Year:  2019        PMID: 31097671      PMCID: PMC6682996          DOI: 10.1074/mcp.RA118.001169

Source DB:  PubMed          Journal:  Mol Cell Proteomics        ISSN: 1535-9476            Impact factor:   5.911


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