A machine learning model for early and accurate prediction of overt disseminated intravascular coagulation before its progression to an overt stage.
biomarkers
diagnosis
disseminated intravascular coagulation
machine learning
sepsis
Journal
Research and practice in thrombosis and haemostasis
ISSN: 2475-0379
Titre abrégé: Res Pract Thromb Haemost
Pays: United States
ID NLM: 101703775
Informations de publication
Date de publication:
Jul 2024
Jul 2024
Historique:
received:
26
04
2024
revised:
10
06
2024
accepted:
09
07
2024
medline:
2
9
2024
pubmed:
2
9
2024
entrez:
2
9
2024
Statut:
epublish
Résumé
Recent studies suggested an expected survival benefit associated with anticoagulant therapies for sepsis in patients with disseminated intravascular coagulation (DIC). However, anticoagulant therapies for overt DIC are no longer assumed to regulate pathologic progression as overt DIC is a late-phase coagulation disorder. Therefore, methods for early prediction of sepsis-induced DIC before its progression to an overt stage are strongly required. We aimed to develop a prediction model for overt DIC using machine learning. This retrospective, observational study included adult septic patients without overt DIC. The objective variable was binary classification of whether patients developed overt DIC based on International Society on Thrombosis and Haemostasis (ISTH) overt DIC criteria. Explanatory variables were the baseline and time series data within 7 days from sepsis diagnosis. Light Gradient Boosted Machine method was used to construct the prediction model. For controls, we assessed sensitivity and specificity of Japanese Association for Acute Medicine DIC criteria and ISTH sepsis-induced coagulopathy criteria for subsequent onset of overt DIC. Among 912 patients with sepsis, 139 patients developed overt DIC within 7 days from diagnosis of sepsis. Sensitivity, specificity, and area under the receiver operating characteristic curve for predicting onset of overt DIC within 7 days were 84.4%, 87.5%, and 0.867 in the test cohort and 95.0%, 75.9%, and 0.851 in the validation cohort, respectively. Sensitivity and specificity by the diagnostic thresholds were 54.7% and 74.9% for Japanese Association for Acute Medicine DIC criteria and 63.3% and 71.9% for ISTH sepsis-induced coagulopathy criteria, respectively. Compared with conventional DIC scoring systems, a machine learning model might exhibit higher prediction accuracy.
Sections du résumé
Background
UNASSIGNED
Recent studies suggested an expected survival benefit associated with anticoagulant therapies for sepsis in patients with disseminated intravascular coagulation (DIC). However, anticoagulant therapies for overt DIC are no longer assumed to regulate pathologic progression as overt DIC is a late-phase coagulation disorder. Therefore, methods for early prediction of sepsis-induced DIC before its progression to an overt stage are strongly required.
Objectives
UNASSIGNED
We aimed to develop a prediction model for overt DIC using machine learning.
Methods
UNASSIGNED
This retrospective, observational study included adult septic patients without overt DIC. The objective variable was binary classification of whether patients developed overt DIC based on International Society on Thrombosis and Haemostasis (ISTH) overt DIC criteria. Explanatory variables were the baseline and time series data within 7 days from sepsis diagnosis. Light Gradient Boosted Machine method was used to construct the prediction model. For controls, we assessed sensitivity and specificity of Japanese Association for Acute Medicine DIC criteria and ISTH sepsis-induced coagulopathy criteria for subsequent onset of overt DIC.
Results
UNASSIGNED
Among 912 patients with sepsis, 139 patients developed overt DIC within 7 days from diagnosis of sepsis. Sensitivity, specificity, and area under the receiver operating characteristic curve for predicting onset of overt DIC within 7 days were 84.4%, 87.5%, and 0.867 in the test cohort and 95.0%, 75.9%, and 0.851 in the validation cohort, respectively. Sensitivity and specificity by the diagnostic thresholds were 54.7% and 74.9% for Japanese Association for Acute Medicine DIC criteria and 63.3% and 71.9% for ISTH sepsis-induced coagulopathy criteria, respectively.
Conclusion
UNASSIGNED
Compared with conventional DIC scoring systems, a machine learning model might exhibit higher prediction accuracy.
Identifiants
pubmed: 39221450
doi: 10.1016/j.rpth.2024.102519
pii: S2475-0379(24)00214-0
pmc: PMC11363840
doi:
Types de publication
Journal Article
Langues
eng
Pagination
102519Informations de copyright
© 2024 The Authors.