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  3. Development of a Complication- and Treatment-Aware Prediction Model for Favorable Functional Outcome in Aneurysmal Subarachnoid Hemorrhage Based on Machine Learning.
 

Development of a Complication- and Treatment-Aware Prediction Model for Favorable Functional Outcome in Aneurysmal Subarachnoid Hemorrhage Based on Machine Learning.

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BORIS DOI
10.7892/boris.146936
Publisher DOI
10.1093/neuros/nyaa401
PubMed ID
33017031
Description
BACKGROUND

Current prognostic tools in aneurysmal subarachnoid hemorrhage (aSAH) are constrained by being primarily based on patient and disease characteristics on admission.

OBJECTIVE

To develop and validate a complication- and treatment-aware outcome prediction tool in aSAH.

METHODS

This cohort study included data from an ongoing prospective nationwide multicenter registry on all aSAH patients in Switzerland (Swiss SOS [Swiss Study on aSAH]; 2009-2015). We trained supervised machine learning algorithms to predict a binary outcome at discharge (modified Rankin scale [mRS] ≤ 3: favorable; mRS 4-6: unfavorable). Clinical and radiological variables on admission ("Early" Model) as well as additional variables regarding secondary complications and disease management ("Late" Model) were used. Performance of both models was assessed by classification performance metrics on an out-of-sample test dataset.

RESULTS

Favorable functional outcome at discharge was observed in 1156 (62.0%) of 1866 patients. Both models scored a high accuracy of 75% to 76% on the test set. The "Late" outcome model outperformed the "Early" model with an area under the receiver operator characteristics curve (AUC) of 0.85 vs 0.79, corresponding to a specificity of 0.81 vs 0.70 and a sensitivity of 0.71 vs 0.79, respectively.

CONCLUSION

Both machine learning models show good discrimination and calibration confirmed on application to an internal test dataset of patients with a wide range of disease severity treated in different institutions within a nationwide registry. Our study indicates that the inclusion of variables reflecting the clinical course of the patient may lead to outcome predictions with superior predictive power compared to a model based on admission data only.
Date of Publication
2021-01-13
Publication Type
Article
Subject(s)
600 Technology > 610 Medicine & health
Keyword(s)
Aneurysmal subarachnoid hemorrhage Complication- and treatment-aware Machine learning Outcome prediction
Language(s)
en
Contributor(s)
Maldaner, Nicolai
Zeitlberger, Anna M
Sosnova, Marketa
Goldberg, Johannes
Universitätsklinik für Neurochirurgie
Fung, Christian
Universitätsklinik für Neurochirurgie
Bervini, David
Universitätsklinik für Neurochirurgie
May, Adrien
Bijlenga, Philippe
Schaller, Karl
Roethlisberger, Michel
Rychen, Jonathan
Zumofen, Daniel W
D'Alonzo, Donato
Marbacher, Serge
Fandino, Javier
Daniel, Roy Thomas
Burkhardt, Jan-Karl
Chiappini, Alessio
Robert, Thomas
Schatlo, Bawarjan
Schmid, Josef
Maduri, Rodolfo
Staartjes, Victor E
Seule, Martin A
Weyerbrock, Astrid
Serra, Carlo
Stienen, Martin Nikolaus
Bozinov, Oliver
Regli, Luca
Additional Credits
Universitätsklinik für Neurochirurgie
Series
Neurosurgery
Publisher
Oxford University Press
ISSN
0148-396X
Access(Rights)
restricted
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