FineFDR: Fine-grained Taxonomy-specific False Discovery Rates Control in Metaproteomics.

Shengze Wang, Shichao Feng, Chongle Pan, Xuan Guo
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Abstract

Microbial community proteomics, also termed metaproteomics, investigates all proteins expressed by a microbiota. Tandem mass spectrometry (MS/MS) is the typical method for identifying proteins in metaproteomics, which involves searching the mass spectra against a protein sequence database. A major post-analysis step is controlling the false discovery rate (FDR), i.e., the ratio of false positives to the total number of annotations. The current popular target-decoy FDR estimation method treats all the peptides and proteins equally and overlooks that they could have varied probabilities of being identified. In this study, we report FineFDR, a framework for FDR assessment at fine-grained levels with taxonomy information considered. FineFDR groups the identified peptide-spectrum matches, peptides, and proteins from different taxonomic units and estimates the FDR in each group separately. Empirical experiments on the simulated and real-world data sets demonstrate that our FineFDR achieved higher precision and more peptide and protein identifications when compared to the state-of-the-art methods, such as Comet, Percolator, TIDD, and Tailor. FineFDR is freely available under the GNU GPL license at https://github.com/Biocomputing-Research-Group/FDR.

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细粒度分类特异性错误发现率控制在元蛋白质组学。
微生物群落蛋白质组学,也称为元蛋白质组学,研究微生物群表达的所有蛋白质。串联质谱法(MS/MS)是元蛋白质组学中鉴定蛋白质的典型方法,它涉及到根据蛋白质序列数据库搜索质谱。分析后的一个主要步骤是控制错误发现率(FDR),即误报率与注释总数的比率。目前流行的目标-诱饵FDR估计方法对所有肽和蛋白质都一视同仁,忽略了它们可能具有不同的被识别概率。在这项研究中,我们报告了FineFDR,一个细粒度级别的FDR评估框架,考虑了分类信息。FineFDR将鉴定出的肽谱匹配、多肽和来自不同分类单位的蛋白质进行分组,并分别估计每组的FDR。在模拟和真实数据集上的经验实验表明,与Comet、Percolator、TIDD和Tailor等最先进的方法相比,我们的FineFDR实现了更高的精度和更多的肽和蛋白质鉴定。FineFDR在GNU GPL许可下可在https://github.com/Biocomputing-Research-Group/FDR免费获得。
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