Machine learning derivation of four computable 24-h pediatric sepsis phenotypes to facilitate enroll...
Machine learning derivation of four computable 24-h pediatric sepsis phenotypes to facilitate enrollment in early personalized anti-inflammatory clinical trials
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Author / Creator
Qin, Yidi , Kernan, Kate F. , Fan, Zhenjiang , Park, Hyun-Jung , Kim, Soyeon , Canna, Scott W. , Kellum, John A. , Berg, Robert A. , Wessel, David , Pollack, Murray M. , Meert, Kathleen , Hall, Mark , Newth, Christopher , Lin, John C. , Doctor, Allan , Shanley, Tom , Cornell, Tim , Harrison, Rick E. , Zuppa, Athena F. , Banks, Russell , Reeder, Ron W. , Holubkov, Richard , Notterman, Daniel A. , Michael Dean, J. and Carcillo, Joseph A.
Publisher
England: BioMed Central Ltd
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Language
English
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Publisher
England: BioMed Central Ltd
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Contents
Thrombotic microangiopathy-induced thrombocytopenia-associated multiple organ failure and hyperinflammatory macrophage activation syndrome are important causes of late pediatric sepsis mortality that are often missed or have delayed diagnosis. The National Institutes of General Medical Science sepsis research working group recommendations call for application of new research approaches in extant clinical data sets to improve efficiency of early trials of new sepsis therapies. Our objective is to apply machine learning approaches to derive computable 24-h sepsis phenotypes to facilitate personalized enrollment in early anti-inflammatory trials targeting these conditions.
We applied consensus, k-means clustering analysis to our extant PHENOtyping sepsis-induced Multiple organ failure Study (PHENOMS) dataset of 404 children. 24-hour computable phenotypes are derived using 25 available bedside variables including C-reactive protein and ferritin.
Four computable phenotypes (PedSep-A, B, C, and D) are derived. Compared to all other phenotypes, PedSep-A patients (n = 135; 2% mortality) were younger and previously healthy, with the lowest C-reactive protein and ferritin levels, the highest lymphocyte and platelet counts, highest heart rate, and lowest creatinine (p < 0.05); PedSep-B patients (n = 102; 12% mortality) were most likely to be intubated and had the lowest Glasgow Coma Scale Score (p < 0.05); PedSep-C patients (n = 110; mortality 10%) had the highest temperature and Glasgow Coma Scale Score, least pulmonary failure, and lowest lymphocyte counts (p < 0.05); and PedSep-D patients (n = 56, 34% mortality) had the highest creatinine and number of organ failures, including renal, hepatic, and hematologic organ failure, with the lowest platelet counts (p < 0.05). PedSep-D had the highest likelihood of developing thrombocytopenia-associated multiple organ failure (Adj OR 47.51 95% CI [18.83-136.83], p < 0.0001) and macrophage activation syndrome (Adj OR 38.63 95% CI [13.26-137.75], p < 0.0001).
Four computable phenotypes are derived, with PedSep-D being optimal for enrollment in early personalized anti-inflammatory trials targeting thrombocytopenia-associated multiple organ failure and macrophage activation syndrome in pediatric sepsis. A computer tool for identification of individual patient membership ( www.pedsepsis.pitt.edu ) is provided. Reproducibility will be assessed at completion of two ongoing pediatric sepsis studies....
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Full title
Machine learning derivation of four computable 24-h pediatric sepsis phenotypes to facilitate enrollment in early personalized anti-inflammatory clinical trials
Authors, Artists and Contributors
Author / Creator
Kernan, Kate F.
Fan, Zhenjiang
Park, Hyun-Jung
Kim, Soyeon
Canna, Scott W.
Kellum, John A.
Berg, Robert A.
Wessel, David
Pollack, Murray M.
Meert, Kathleen
Hall, Mark
Newth, Christopher
Lin, John C.
Doctor, Allan
Shanley, Tom
Cornell, Tim
Harrison, Rick E.
Zuppa, Athena F.
Banks, Russell
Reeder, Ron W.
Holubkov, Richard
Notterman, Daniel A.
Michael Dean, J.
Carcillo, Joseph A.
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Primary Identifiers
Record Identifier
TN_cdi_doaj_primary_oai_doaj_org_article_97816617627644b9825463ea1be360f3
Permalink
https://devfeature-collection.sl.nsw.gov.au/record/TN_cdi_doaj_primary_oai_doaj_org_article_97816617627644b9825463ea1be360f3
Other Identifiers
ISSN
1364-8535
E-ISSN
1364-8535,1466-609X,1366-609X
DOI
10.1186/s13054-022-03977-3