IDIA: An Integrative Signal Extractor for Data-Independent Acquisition Proteomics.

Jiancheng Li, Chongle Pan, Xuan Guo
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Abstract

In proteomics, data-independent acquisition (DIA) has been shown to provide less biased and more reproducible results than data-dependent acquisition. Recently, many researchers have developed a series of methods to identify peptides and proteins by using spectrum libraries for DIA data. However, spectrum libraries are not always available for novel organisms or microbial communities. To detect peptides and proteins without a spectrum library, we developed IDIA, a library-free method using DIA data to generate pseudo-spectra that can be searched using conventional sequence database searching software. IDIA integrates two isotopic trace detection strategies and employs B-spline and Gaussian filters to help extract high-quality pseudo-spectra from the complex DIA data. The experimental results on human and yeast data demonstrated that our approach remarkably produced more peptide and protein identifications than the two state-of-the-art library-free methods, i.e., DIA-Umpire and Group-DIA. IDIA is freely available under the GNU GPL license at https://github.com/Biocomputing-Research-Group/IDIA.

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IDIA:一种数据独立采集蛋白质组学的集成信号提取器。
在蛋白质组学中,数据独立获取(DIA)已被证明比数据依赖获取提供更少的偏差和更可重复的结果。近年来,许多研究人员开发了一系列利用DIA数据的谱库来鉴定肽和蛋白质的方法。然而,谱库并不总是适用于新的生物或微生物群落。为了检测没有谱库的肽和蛋白质,我们开发了IDIA方法,这是一种利用DIA数据生成伪谱的方法,可以使用传统的序列数据库搜索软件进行搜索。IDIA集成了两种同位素痕量检测策略,并采用b样条和高斯滤波器从复杂的DIA数据中提取高质量的伪光谱。人类和酵母数据的实验结果表明,我们的方法比两种最先进的无文库方法(即DIA-Umpire和Group-DIA)显著地产生了更多的肽和蛋白质鉴定。IDIA在GNU GPL许可下可在https://github.com/Biocomputing-Research-Group/IDIA免费获得。
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