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DeepPhospho: Accelerate DIA phosphoproteome profiling by Deep Learning

Authors :
Ronghui Lou
Xuming He
Rongjie Li
Weizhen Liu
Shanshan Li
Wenqing Shui
Publication Year :
2021
Publisher :
Research Square Platform LLC, 2021.

Abstract

Phosphoproteomics integrating data-independent acquisition (DIA) has enabled deep phosphoproteome profiling with improved quantification reproducibility and accuracy compared to data-dependent acquisition (DDA)-based phosphoproteomics. DIA data mining heavily relies on a spectral library that in most cases is built on DDA analysis of the same sample. Construction of this project-specific DDA library impairs the analytical throughput, limits the proteome coverage, and increases the sample size for DIA phosphoproteomics. Herein we introduce a novel deep neural network, DeepPhospho, which conceptually differs from previous deep learning models to achieve accurate predictions of LC-MS/MS data for phosphopeptides. By leveraging in silico libraries generated by DeepPhospho, we established a new DIA workflow for phosphoproteome profiling which involves DIA data acquisition and data mining with DeepPhospho predicted libraries, thus circumventing the need of DDA library construction. Our DeepPhospho-empowered workflow substantially expanded the phosphoproteome coverage while maintaining high quantification performance, which led to the discovery of more signaling pathways and regulated kinases in an EGF signaling study than the DDA library-based approach. DeepPhospho is provided as a web server to facilitate user access to predictions and library generation.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........a05bf5ede9c3418e52881dd286be0bc2
Full Text :
https://doi.org/10.21203/rs.3.rs-393214/v1