Cargando…
438. Phenotypic Differences Between Distinct Immune Biomarker Clusters During the ‘Hyperinflammatory’ Middle-Phase of COVID-19
BACKGROUND: Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infections peak during an inflammatory ‘middle’ phase and lead to severe illness predominately among those with certain comorbid noncommunicable diseases (NCDs). We used network machine learning to identify inflammation biomark...
Autores principales: | , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Oxford University Press
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8644901/ http://dx.doi.org/10.1093/ofid/ofab466.637 |
_version_ | 1784610193267490816 |
---|---|
author | Blair, Paul W Brandsma, Joost Epsi, Nusrat J Richard, Stephanie A Striegel, Deborah Chenoweth, Josh Mehta, Rittal Clemens, Emily Malloy, Allison Lanteri, Charlotte Dumler, J Stephen Tribble, David Burgess, Timothy Pollett, Simon Agan, Brian Clark, Danielle |
author_facet | Blair, Paul W Brandsma, Joost Epsi, Nusrat J Richard, Stephanie A Striegel, Deborah Chenoweth, Josh Mehta, Rittal Clemens, Emily Malloy, Allison Lanteri, Charlotte Dumler, J Stephen Tribble, David Burgess, Timothy Pollett, Simon Agan, Brian Clark, Danielle |
author_sort | Blair, Paul W |
collection | PubMed |
description | BACKGROUND: Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infections peak during an inflammatory ‘middle’ phase and lead to severe illness predominately among those with certain comorbid noncommunicable diseases (NCDs). We used network machine learning to identify inflammation biomarker patterns associated with COVID-19 among those with NCDs. METHODS: SARS-CoV-2 RT-PCR positive subjects who had specimens available within 15-28 days post-symptom onset were selected from the DoD/USU EPICC COVID-19 cohort study. Plasma levels of 15 inflammation protein biomarkers were measured using a broad dynamic range immunoassay on samples collected from individuals with COVID-19 at 8 military hospitals across the United States. A network machine learning algorithm, topological data analysis (TDA), was performed using results from the ‘hyperinflammatory’ middle phase. Backward selection stepwise logistic regression was used to identify analytes associated with each cluster. NCDs with a significant association (0.05 significance level) across clusters using Fisher’s exact test were further evaluated comparing the NCD frequency in each cluster against all other clusters using a Kruskal-Wallis test. A sensitivity analysis excluding mild disease was also performed. RESULTS: The analysis population (n=129, 33.3% female, median 41.3 years of age) included 77 ambulatory, 31 inpatient, 16 ICU-level, and 5 fatal cases. TDA identified 5 unique clusters (Figure 1). Stepwise regression with a Bonferroni-corrected cutoff adjusted for severity identified representative analytes for each cluster (Table 1). The frequency of diabetes (p=0.01), obesity (p< 0.001), and chronic pulmonary disease (p< 0.001) differed among clusters. When restricting to hospitalized patients, obesity (8 of 11), chronic pulmonary disease (6 of 11), and diabetes (6 of 11) were more prevalent in cluster C than all other clusters. [Image: see text] Cluster differences in comorbid diseases and severity by cluster. 1A: bar plot of diabetes prevalence; 1B: bar plot of chronic lung disease ; 1C: bar plot of obesity prevalence; 1D: prevalence of steroid treatment ; 1E: Topologic data analysis network with clusters labeled; 1F: Bar plot of ordinal levels of severity. [Image: see text] CONCLUSION: Machine learning clustering methods are promising analytical tools for identifying inflammation marker patterns associated with baseline risk factors and severe illness due to COVID-19. These approaches may offer new insights for COVID19 prognosis, therapy, and prevention. DISCLOSURES: Simon Pollett, MBBS, Astra Zeneca (Other Financial or Material Support, HJF, in support of USU IDCRP, funded under a CRADA to augment the conduct of an unrelated Phase III COVID-19 vaccine trial sponsored by AstraZeneca as part of USG response (unrelated work)) |
format | Online Article Text |
id | pubmed-8644901 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Oxford University Press |
record_format | MEDLINE/PubMed |
spelling | pubmed-86449012021-12-06 438. Phenotypic Differences Between Distinct Immune Biomarker Clusters During the ‘Hyperinflammatory’ Middle-Phase of COVID-19 Blair, Paul W Brandsma, Joost Epsi, Nusrat J Richard, Stephanie A Striegel, Deborah Chenoweth, Josh Mehta, Rittal Clemens, Emily Malloy, Allison Lanteri, Charlotte Dumler, J Stephen Tribble, David Burgess, Timothy Pollett, Simon Agan, Brian Clark, Danielle Open Forum Infect Dis Poster Abstracts BACKGROUND: Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infections peak during an inflammatory ‘middle’ phase and lead to severe illness predominately among those with certain comorbid noncommunicable diseases (NCDs). We used network machine learning to identify inflammation biomarker patterns associated with COVID-19 among those with NCDs. METHODS: SARS-CoV-2 RT-PCR positive subjects who had specimens available within 15-28 days post-symptom onset were selected from the DoD/USU EPICC COVID-19 cohort study. Plasma levels of 15 inflammation protein biomarkers were measured using a broad dynamic range immunoassay on samples collected from individuals with COVID-19 at 8 military hospitals across the United States. A network machine learning algorithm, topological data analysis (TDA), was performed using results from the ‘hyperinflammatory’ middle phase. Backward selection stepwise logistic regression was used to identify analytes associated with each cluster. NCDs with a significant association (0.05 significance level) across clusters using Fisher’s exact test were further evaluated comparing the NCD frequency in each cluster against all other clusters using a Kruskal-Wallis test. A sensitivity analysis excluding mild disease was also performed. RESULTS: The analysis population (n=129, 33.3% female, median 41.3 years of age) included 77 ambulatory, 31 inpatient, 16 ICU-level, and 5 fatal cases. TDA identified 5 unique clusters (Figure 1). Stepwise regression with a Bonferroni-corrected cutoff adjusted for severity identified representative analytes for each cluster (Table 1). The frequency of diabetes (p=0.01), obesity (p< 0.001), and chronic pulmonary disease (p< 0.001) differed among clusters. When restricting to hospitalized patients, obesity (8 of 11), chronic pulmonary disease (6 of 11), and diabetes (6 of 11) were more prevalent in cluster C than all other clusters. [Image: see text] Cluster differences in comorbid diseases and severity by cluster. 1A: bar plot of diabetes prevalence; 1B: bar plot of chronic lung disease ; 1C: bar plot of obesity prevalence; 1D: prevalence of steroid treatment ; 1E: Topologic data analysis network with clusters labeled; 1F: Bar plot of ordinal levels of severity. [Image: see text] CONCLUSION: Machine learning clustering methods are promising analytical tools for identifying inflammation marker patterns associated with baseline risk factors and severe illness due to COVID-19. These approaches may offer new insights for COVID19 prognosis, therapy, and prevention. DISCLOSURES: Simon Pollett, MBBS, Astra Zeneca (Other Financial or Material Support, HJF, in support of USU IDCRP, funded under a CRADA to augment the conduct of an unrelated Phase III COVID-19 vaccine trial sponsored by AstraZeneca as part of USG response (unrelated work)) Oxford University Press 2021-12-04 /pmc/articles/PMC8644901/ http://dx.doi.org/10.1093/ofid/ofab466.637 Text en © The Author(s) 2021. Published by Oxford University Press on behalf of Infectious Diseases Society of America. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited. |
spellingShingle | Poster Abstracts Blair, Paul W Brandsma, Joost Epsi, Nusrat J Richard, Stephanie A Striegel, Deborah Chenoweth, Josh Mehta, Rittal Clemens, Emily Malloy, Allison Lanteri, Charlotte Dumler, J Stephen Tribble, David Burgess, Timothy Pollett, Simon Agan, Brian Clark, Danielle 438. Phenotypic Differences Between Distinct Immune Biomarker Clusters During the ‘Hyperinflammatory’ Middle-Phase of COVID-19 |
title | 438. Phenotypic Differences Between Distinct Immune Biomarker Clusters During the ‘Hyperinflammatory’ Middle-Phase of COVID-19 |
title_full | 438. Phenotypic Differences Between Distinct Immune Biomarker Clusters During the ‘Hyperinflammatory’ Middle-Phase of COVID-19 |
title_fullStr | 438. Phenotypic Differences Between Distinct Immune Biomarker Clusters During the ‘Hyperinflammatory’ Middle-Phase of COVID-19 |
title_full_unstemmed | 438. Phenotypic Differences Between Distinct Immune Biomarker Clusters During the ‘Hyperinflammatory’ Middle-Phase of COVID-19 |
title_short | 438. Phenotypic Differences Between Distinct Immune Biomarker Clusters During the ‘Hyperinflammatory’ Middle-Phase of COVID-19 |
title_sort | 438. phenotypic differences between distinct immune biomarker clusters during the ‘hyperinflammatory’ middle-phase of covid-19 |
topic | Poster Abstracts |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8644901/ http://dx.doi.org/10.1093/ofid/ofab466.637 |
work_keys_str_mv | AT blairpaulw 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT brandsmajoost 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT epsinusratj 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT richardstephaniea 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT striegeldeborah 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT chenowethjosh 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT mehtarittal 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT clemensemily 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT malloyallison 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT lantericharlotte 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT dumlerjstephen 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT tribbledavid 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT burgesstimothy 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT pollettsimon 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT aganbrian 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 AT clarkdanielle 438phenotypicdifferencesbetweendistinctimmunebiomarkerclustersduringthehyperinflammatorymiddlephaseofcovid19 |