Journal article
Correction to “Integrative Modeling of Quantitative Plasma Lipoprotein, Metabolic, and Amino Acid Data Reveals a Multiorgan Pathological Signature of SARS-CoV-2 Infection”
Journal of Proteome Research, Vol.20(6), pp.3400-3400
2021
PMID: 33949867
Abstract
It has recently come to our attention that our JPR-published manuscript that is part of the “Proteomics in Pandemic Disease” special issue contains a transcription error. Specifically, the mass spectrometry-derived indices of Table 1 are column-swapped, indicating inverse group associations that are conflicting with the descriptions provided in the results and discussion section of the manuscript. The corrected table is below. The table revision has no impact on the biological interpretation of the data.
Accordingly, in the following sentence in the Abstract, the word “elevated” has been corrected to “reduced”:
“There was also an abnormal lipoprotein, glucose, and amino acid signature consistent with diabetes and coronary artery disease (low total and HDL Apolipoprotein A1, low HDL triglycerides, high LDL and VLDL triglycerides), plus multiple highly significant amino acid markers of liver dysfunction (including the reduced glutamine/glutamate and Fischer’s ratios) that present themselves as part of a distinct SARS-CoV-2 infection pattern.”
Details
- Title
- Correction to “Integrative Modeling of Quantitative Plasma Lipoprotein, Metabolic, and Amino Acid Data Reveals a Multiorgan Pathological Signature of SARS-CoV-2 Infection”
- Authors/Creators
- Torben KimhoferSamantha LodgeLuke WhileyNicola GrayRuey Leng LooNathan G. LawlerPhilipp NitschkeSze-How BongDavid L. MorrisonSofina BegumToby RichardsBu B. YeapChris SmithKenneth G. C. SmithElaine HolmesJeremy K. Nicholson
- Publication Details
- Journal of Proteome Research, Vol.20(6), pp.3400-3400
- Publisher
- American Chemical Society
- Number of pages
- 1
- Identifiers
- 991005598620707891
- Copyright
- © 2021 American Chemical Society
- Murdoch Affiliation
- Australian National Phenome Centre; Health Futures Institute; Centre for Computational and Systems Medicine
- Language
- English
- Resource Type
- Journal article
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- Citation topics
- 2 Chemistry
- 2.211 Mass Spectrometry
- 2.211.990 Metabolomics
- Web Of Science research areas
- Biochemical Research Methods
- ESI research areas
- Biology & Biochemistry