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Deep representation features from DreamDIAXMBD improve the analysis of data-independent acquisition proteomics.


ABSTRACT: We developed DreamDIAXMBD (denoted as DreamDIA), a software suite based on a deep representation model for data-independent acquisition (DIA) data analysis. DreamDIA adopts a data-driven strategy to capture comprehensive information from elution patterns of peptides in DIA data and achieves considerable improvements on both identification and quantification performance compared with other state-of-the-art methods such as OpenSWATH, Skyline and DIA-NN. Specifically, in contrast to existing methods which use only 6 to 10 selected fragment ions from spectral libraries, DreamDIA extracts additional features from hundreds of theoretical elution profiles originated from different ions of each precursor using a deep representation network. To achieve higher coverage of target peptides without sacrificing specificity, the extracted features are further processed by nonlinear discriminative models under the framework of positive-unlabeled learning with decoy peptides as affirmative negative controls. DreamDIA is publicly available at https://github.com/xmuyulab/DreamDIA-XMBD for high coverage and accuracy DIA data analysis.

SUBMITTER: Gao M 

PROVIDER: S-EPMC8517002 | biostudies-literature | 2021 Oct

REPOSITORIES: biostudies-literature

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Deep representation features from DreamDIA<sup>XMBD</sup> improve the analysis of data-independent acquisition proteomics.

Gao Mingxuan M   Yang Wenxian W   Li Chenxin C   Chang Yuqing Y   Liu Yachen Y   He Qingzu Q   Zhong Chuan-Qi CQ   Shuai Jianwei J   Yu Rongshan R   Han Jiahuai J  

Communications biology 20211014 1


We developed DreamDIA<sup>XMBD</sup> (denoted as DreamDIA), a software suite based on a deep representation model for data-independent acquisition (DIA) data analysis. DreamDIA adopts a data-driven strategy to capture comprehensive information from elution patterns of peptides in DIA data and achieves considerable improvements on both identification and quantification performance compared with other state-of-the-art methods such as OpenSWATH, Skyline and DIA-NN. Specifically, in contrast to exis  ...[more]

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