Quantification of blood and CSF volume to predict outcome after aneurysmal subarachnoid hemorrhage
Quantification of blood and CSF volume to predict outcome after aneurysmal subarachnoid hemorrhage
This study aimed to describe the relationship between blood and CSF volumes in different compartments on baseline CT after aSAH, assess if they independently predict long-term outcome, and explore their interaction with age. CT scans from patients participating in a prospective multicenter randomized controlled trial of patients with aSAH were segmented for blood and CSF volumes. The primary outcomes were the mRS, and the Subarachnoid Hemorrhage Outcome Tool (SAHOT) at day 28 and 180. Univariate regressions were conducted to identify significant predictors of poor outcomes, followed by principal component analysis to explore correlations between imaging variables and WFNS. A multivariate predictive model was then developed and optimized using stepwise regression. CT scans from 97 patients with a median delay from symptom onset of 271 min (131–547) were analyzed. Univariate analysis showed only WFNS, and total blood volume (TBV) were significant predictors of both short and long-term outcome with WFNS more predictive of mRS and TBV more predictive of SAHOT. Principal component analysis showed strong dependencies between the imaging predictors. Multivariate ordinal regression showed models with WFNS alone were most predictive of day 180 mRS and models with TBV alone were most predictive of SAHOT. TBV was the most significant measured imaging predictor of poor long-term outcome after aSAH. All these imaging predictors are correlated, however, and may have multiple complex interactions necessitating larger datasets to detect if they provide any additional predictive value for long-term outcome.
Booker, James
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Zolnourian, Ardalan
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Street, James
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Arora, Mukul
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Pandit, Anand S.
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Toma, Ahmed
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Wu, Chieh-Hsi
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Galea, Ian
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Bulters, Diederik
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8 October 2024
Booker, James
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Zolnourian, Ardalan
5e8d4881-cdfd-4cb1-8eae-b98b13104648
Street, James
456e2d2b-5e8b-4c95-badd-e7848f715f12
Arora, Mukul
8e1cde82-0bcf-49e6-b4bd-23d551a58ef4
Pandit, Anand S.
3cc156a0-0056-4679-85be-98881b7c3085
Toma, Ahmed
2201f8e1-15f1-45f4-b31e-e5fc986adf94
Wu, Chieh-Hsi
ace630c6-2095-4ade-b657-241692f6b4d3
Galea, Ian
66209a2f-f7e6-4d63-afe4-e9299f156f0b
Bulters, Diederik
12e3bdfb-52e9-4154-9d41-925839afff8d
Booker, James, Zolnourian, Ardalan, Street, James, Arora, Mukul, Pandit, Anand S., Toma, Ahmed, Wu, Chieh-Hsi, Galea, Ian and Bulters, Diederik
(2024)
Quantification of blood and CSF volume to predict outcome after aneurysmal subarachnoid hemorrhage.
Neurosurgical Review, 47, [752].
(doi:10.1007/s10143-024-03001-y).
Abstract
This study aimed to describe the relationship between blood and CSF volumes in different compartments on baseline CT after aSAH, assess if they independently predict long-term outcome, and explore their interaction with age. CT scans from patients participating in a prospective multicenter randomized controlled trial of patients with aSAH were segmented for blood and CSF volumes. The primary outcomes were the mRS, and the Subarachnoid Hemorrhage Outcome Tool (SAHOT) at day 28 and 180. Univariate regressions were conducted to identify significant predictors of poor outcomes, followed by principal component analysis to explore correlations between imaging variables and WFNS. A multivariate predictive model was then developed and optimized using stepwise regression. CT scans from 97 patients with a median delay from symptom onset of 271 min (131–547) were analyzed. Univariate analysis showed only WFNS, and total blood volume (TBV) were significant predictors of both short and long-term outcome with WFNS more predictive of mRS and TBV more predictive of SAHOT. Principal component analysis showed strong dependencies between the imaging predictors. Multivariate ordinal regression showed models with WFNS alone were most predictive of day 180 mRS and models with TBV alone were most predictive of SAHOT. TBV was the most significant measured imaging predictor of poor long-term outcome after aSAH. All these imaging predictors are correlated, however, and may have multiple complex interactions necessitating larger datasets to detect if they provide any additional predictive value for long-term outcome.
Text
s10143-024-03001-y
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Accepted/In Press date: 2 October 2024
Published date: 8 October 2024
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Local EPrints ID: 495664
URI: http://eprints.soton.ac.uk/id/eprint/495664
PURE UUID: 2012e2b5-9f15-4afd-8ade-59dc13983583
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Date deposited: 20 Nov 2024 17:42
Last modified: 21 Nov 2024 02:58
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Contributors
Author:
James Booker
Author:
Ardalan Zolnourian
Author:
James Street
Author:
Mukul Arora
Author:
Anand S. Pandit
Author:
Ahmed Toma
Author:
Diederik Bulters
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