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Series GSE157103 Query DataSets for GSE157103
Status Public on Aug 29, 2020
Title Large-scale Multi-omic Analysis of COVID-19 Severity
Organism Homo sapiens
Experiment type Expression profiling by high throughput sequencing
Summary Using RNA-seq and high-resolution mass spectrometry we performed a comprehensive systems analysis on 128 plasma and leukocyte samples from hospitalized patients with or without COVID-19 (n=102 and 26 respectively) and with differing degrees of disease severity. We generated abundance measurements for over 17,000 transcripts, proteins, metabolites, and lipids and compiled them with clinical data into a curated relational database. This resource offers the unique opportunity to perform systems analysis and cross-ome correlations to both molecules and patient outcomes. In total 219 molecular features were mapped with high significance to COVID-19 status and severity, including those involved in processes such as complement system activation, dysregulated lipid transport, and B cell activation. In one example, we detected a trio of covarying molecules – citrate, plasmenyl-phosphatidylcholines, and gelsolin (GSN) – that offer both pathophysiological insight and potential novel therapeutic targets. Further, our data revealed in some cases, and supported in others, that several biological processes were dysregulated in COVID-19 patients including vessel damage, platelet activation and degranulation, blood coagulation, and acute phase response. For example, we observed that the coagulation-related protein, cellular fibronectin (cFN), was highly increased within COVID-19 patients and provide new evidence that the upregulated proteoform stems from endothelial cells, consistent with endothelial injury as a major activator of the coagulation cascade. The abundance of prothrombin, which is cleaved to form thrombin during clotting, was significantly reduced and correlated with severity and might help to explain the hyper coagulative environment of SARS-CoV-2 infection. From transcriptomic analysis of leukocytes, we concluded that COVID-19 patients with acute respiratory distress syndrome (ARDS) demonstrated a phenotype that overlapped with, but was distinct from, that found in patients with non-COVID-19-ARDS. To aid in the global efforts toward elucidation of disease pathophysiology and therapeutic development, we created a web-based tool with interactive visualizations allowing for easy navigation of this systems-level compendium of biomolecule abundance in relation to COVID-19 status and severity. Finally, we leveraged these multi-omic data to predict COVID-19 patient outcomes with machine learning, which highlighted the predictive power of these expansive molecular measurements beyond the standardized clinical estimate of 10-year survival Charlson score.
 
Overall design 126 samples were analyzed in total with 100 COVID-19 patients and 26 non-COVID-19
 
Contributor(s) Jaitovitch A, Balnis J, Swanson SA
Citation(s) 33096026
Submission date Aug 28, 2020
Last update date Nov 30, 2020
Contact name Adolfo Ariel Jaitovich
E-mail(s) jaitova@amc.edu
Organization name Albany Medical Center
Department Molecular and Cellular Physiology
Street address 47 New Scotland Av
City Albany
State/province NY
ZIP/Postal code 12208
Country USA
 
Platforms (1)
GPL24676 Illumina NovaSeq 6000 (Homo sapiens)
Samples (126)
GSM4753021 COVID_01_39y_male_NonICU
GSM4753022 COVID_02_63y_male_NonICU
GSM4753023 COVID_03_33y_male_NonICU
Relations
BioProject PRJNA660067
SRA SRP279280

Download family Format
SOFT formatted family file(s) SOFTHelp
MINiML formatted family file(s) MINiMLHelp
Series Matrix File(s) TXTHelp

Supplementary file Size Download File type/resource
GSE157103_genes.ec.tsv.gz 4.6 Mb (ftp)(http) TSV
GSE157103_genes.tpm.tsv.gz 3.8 Mb (ftp)(http) TSV
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Raw data are available in SRA
Processed data are available on Series record

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