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Rescue therapy for vasospasm following aneurysmal subarachnoid hemorrhage: a propensity score-matched analysis with machine learning.

Authors :
Martini ML
Neifert SN
Shuman WH
Chapman EK
Schüpper AJ
Oermann EK
Mocco J
Todd M
Torner JC
Molyneux A
Mayer S
Roux PL
Vergouwen MDI
Rinkel GJE
Wong GKC
Kirkpatrick P
Quinn A
Hänggi D
Etminan N
van den Bergh WM
Jaja BNR
Cusimano M
Schweizer TA
Suarez JI
Fukuda H
Yamagata S
Lo B
Leonardo de Oliveira Manoel A
Boogaarts HD
Macdonald RL
Source :
Journal of neurosurgery [J Neurosurg] 2021 Jul 02; Vol. 136 (1), pp. 134-147. Date of Electronic Publication: 2021 Jul 02 (Print Publication: 2022).
Publication Year :
2021

Abstract

Objective: Rescue therapies have been recommended for patients with angiographic vasospasm (aVSP) and delayed cerebral ischemia (DCI) following subarachnoid hemorrhage (SAH). However, there is little evidence from randomized clinical trials that these therapies are safe and effective. The primary aim of this study was to apply game theory-based methods in explainable machine learning (ML) and propensity score matching to determine if rescue therapy was associated with better 3-month outcomes following post-SAH aVSP and DCI. The authors also sought to use these explainable ML methods to identify patient populations that were more likely to receive rescue therapy and factors associated with better outcomes after rescue therapy.<br />Methods: Data for patients with aVSP or DCI after SAH were obtained from 8 clinical trials and 1 observational study in the Subarachnoid Hemorrhage International Trialists repository. Gradient boosting ML models were constructed for each patient to predict the probability of receiving rescue therapy and the 3-month Glasgow Outcome Scale (GOS) score. Favorable outcome was defined as a 3-month GOS score of 4 or 5. Shapley Additive Explanation (SHAP) values were calculated for each patient-derived model to quantify feature importance and interaction effects. Variables with high SHAP importance in predicting rescue therapy administration were used in a propensity score-matched analysis of rescue therapy and 3-month GOS scores.<br />Results: The authors identified 1532 patients with aVSP or DCI. Predictive, explainable ML models revealed that aneurysm characteristics and neurological complications, but not admission neurological scores, carried the highest relative importance rankings in predicting whether rescue therapy was administered. Younger age and absence of cerebral ischemia/infarction were invariably linked to better rescue outcomes, whereas the other important predictors of outcome varied by rescue type (interventional or noninterventional). In a propensity score-matched analysis guided by SHAP-based variable selection, rescue therapy was associated with higher odds of 3-month GOS scores of 4-5 (OR 1.63, 95% CI 1.22-2.17).<br />Conclusions: Rescue therapy may increase the odds of good outcome in patients with aVSP or DCI after SAH. Given the strong association between cerebral ischemia/infarction and poor outcome, trials focusing on preventative or therapeutic interventions in these patients may be most able to demonstrate improvements in clinical outcomes. Insights developed from these models may be helpful for improving patient selection and trial design.

Details

Language :
English
ISSN :
1933-0693
Volume :
136
Issue :
1
Database :
MEDLINE
Journal :
Journal of neurosurgery
Publication Type :
Academic Journal
Accession number :
34214980
Full Text :
https://doi.org/10.3171/2020.12.JNS203778