JOURNAL CLUB: Use of Gradient Boosting Machine Learning to Predict Patient Outcome in Acute Ischemic Stroke on the Basis of Imaging, Demographic, and Clinical Information.

Details

Serval ID
serval:BIB_B430AE82359F
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
JOURNAL CLUB: Use of Gradient Boosting Machine Learning to Predict Patient Outcome in Acute Ischemic Stroke on the Basis of Imaging, Demographic, and Clinical Information.
Journal
AJR. American journal of roentgenology
Author(s)
Xie Y., Jiang B., Gong E., Li Y., Zhu G., Michel P., Wintermark M., Zaharchuk G.
ISSN
1546-3141 (Electronic)
ISSN-L
0361-803X
Publication state
Published
Issued date
01/2019
Peer-reviewed
Oui
Volume
212
Number
1
Pages
44-51
Language
english
Notes
Publication types: Journal Article ; Multicenter Study
Publication Status: ppublish
Abstract
When treatment decisions are being made for patients with acute ischemic stroke, timely and accurate outcome prediction plays an important role. The optimal rehabilitation strategy also relies on long-term outcome predictions. The decision-making process involves numerous biomarkers including imaging features and demographic information. The objective of this study was to integrate common stroke biomarkers using machine learning methods and predict patient recovery outcome at 90 days.
A total of 512 patients were enrolled in this retrospective study. Extreme gradient boosting (XGB) and gradient boosting machine (GBM) models were used to predict modified Rankin scale (mRS) scores at 90 days using biomarkers available at admission and 24 hours. Feature selections were performed using a greedy algorithm. Fivefold cross validation was applied to estimate model performance.
For binary prediction of an mRS score of greater than 2 using biomarkers available at admission, XGB and GBM had an AUC of 0.746 and 0.748, respectively. Adding the National Institutes of Health Stroke Score at 24 hours and performing feature selection improved the AUC of XGB to 0.884 and the AUC of GBM to 0.877. With the addition of the recanalization outcome, XGB's AUC improved to 0.807 for nonrecanalized patients and dropped to 0.670 for recanalized patients. GBM's AUC improved to 0.781 for nonrecanalized patients and dropped to 0.655 for recanalized patients.
Decision tree-based GBMs can predict the recovery outcome of stroke patients at admission with a high AUC. Breaking down the patient groups on the basis of recanalization and nonrecanalization can potentially help with the treatment decision process.
Keywords
Algorithms, Biomarkers/analysis, Brain Ischemia/diagnostic imaging, Brain Ischemia/therapy, Computed Tomography Angiography, Decision Trees, Demography, Female, Humans, Machine Learning, Male, Middle Aged, Predictive Value of Tests, Prognosis, Retrospective Studies, Stroke/diagnostic imaging, Stroke/therapy, Tomography, X-Ray Computed, CT, machine learning, modified Rankin scale, prediction, stroke
Pubmed
Web of science
Create date
05/11/2018 9:54
Last modification date
22/10/2019 6:11
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