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1.
J Proteome Res ; 19(11): 4553-4566, 2020 11 06.
Article in English | MEDLINE | ID: mdl-33103435

ABSTRACT

While the COVID-19 pandemic is causing important loss of life, knowledge of the effects of the causative SARS-CoV-2 virus on human cells is currently limited. Investigating protein-protein interactions (PPIs) between viral and host proteins can provide a better understanding of the mechanisms exploited by the virus and enable the identification of potential drug targets. We therefore performed an in-depth computational analysis of the interactome of SARS-CoV-2 and human proteins in infected HEK 293 cells published by Gordon et al. (Nature2020, 583, 459-468) to reveal processes that are potentially affected by the virus and putative protein binding sites. Specifically, we performed a set of network-based functional and sequence motif enrichment analyses on SARS-CoV-2-interacting human proteins and on PPI networks generated by supplementing viral-host PPIs with known interactions. Using a novel implementation of our GoNet algorithm, we identified 329 Gene Ontology terms for which the SARS-CoV-2-interacting human proteins are significantly clustered in PPI networks. Furthermore, we present a novel protein sequence motif discovery approach, LESMoN-Pro, that identified 9 amino acid motifs for which the associated proteins are clustered in PPI networks. Together, these results provide insights into the processes and sequence motifs that are putatively implicated in SARS-CoV-2 infection and could lead to potential therapeutic targets.


Subject(s)
Betacoronavirus , Coronavirus Infections , Host-Pathogen Interactions/genetics , Pandemics , Pneumonia, Viral , Protein Interaction Maps , Algorithms , Amino Acid Motifs , Betacoronavirus/chemistry , Betacoronavirus/metabolism , Betacoronavirus/pathogenicity , COVID-19 , Cluster Analysis , Coronavirus Infections/metabolism , Coronavirus Infections/virology , Gene Ontology , HEK293 Cells , Humans , Molecular Sequence Annotation , Pneumonia, Viral/metabolism , Pneumonia, Viral/virology , Protein Binding , Protein Interaction Maps/genetics , Protein Interaction Maps/physiology , Proteins/chemistry , Proteins/classification , Proteins/genetics , Proteins/metabolism , SARS-CoV-2 , Viral Proteins/chemistry , Viral Proteins/genetics , Viral Proteins/metabolism
2.
J Am Soc Mass Spectrom ; 31(7): 1459-1472, 2020 Jul 01.
Article in English | MEDLINE | ID: mdl-32510216

ABSTRACT

Mass spectrometry-based proteomics technologies are prime methods for the high-throughput identification of proteins in complex biological samples. Nevertheless, there are still technical limitations that hinder the ability of mass spectrometry to identify low abundance proteins in complex samples. Characterizing such proteins is essential to provide a comprehensive understanding of the biological processes taking place in cells and tissues. Still today, most mass spectrometry-based proteomics approaches use a data-dependent acquisition strategy, which favors the collection of mass spectra from proteins of higher abundance. Since the computational identification of proteins from proteomics data is typically performed after mass spectrometry analysis, large numbers of mass spectra are typically redundantly acquired from the same abundant proteins, and little to no mass spectra are acquired for proteins of lower abundance. We therefore propose a novel supervised learning algorithm, MealTime-MS, that identifies proteins in real-time as mass spectrometry data are acquired and prevents further data collection from confidently identified proteins to ultimately free mass spectrometry resources to improve the identification sensitivity of low abundance proteins. We use real-time simulations of a previously performed mass spectrometry analysis of a HEK293 cell lysate to show that our approach can identify 92.1% of the proteins detected in the experiment using 66.2% of the MS2 spectra. We also demonstrate that our approach outperforms a previously proposed method, is sufficiently fast for real-time mass spectrometry analysis, and is flexible. Finally, MealTime-MS' efficient usage of mass spectrometry resources will provide a more comprehensive characterization of proteomes in complex samples.


Subject(s)
Proteins , Proteomics/methods , Supervised Machine Learning , Tandem Mass Spectrometry/methods , Algorithms , HEK293 Cells , Humans , Proteins/analysis , Proteins/chemistry
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