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Development and external validation of a clinical prediction model for functional impairment after intracranial tumor surgery

Authors :
Bawarjan Schatlo
Alexander Fletcher-Sandersjöö
Claudine O. Nogarede
Costanza M Zattra
Kristin Sjåvik
Alexandra Sachkova
Johannes Kerschbaumer
Oliver Bozinov
Martin N. Stienen
Niklaus Krayenbühl
Georg Neuloh
Carlo Serra
Christian F. Freyschlag
Veit Rohde
Mirjam Renovanz
Hans Christoph Bock
Johannes Sarnthein
Paolo Ferroli
Flavio Vasella
Konstantin Brawanski
Luca Regli
Marike L. D. Broekman
Cynthia M. C. Lemmens
Jiri Bartek
Florian Ringel
Victor E. Staartjes
Ole Solheim
Morgan Broggi
Darius Kalasauskas
Julius M Kernbach
Abdelhalim Hussein
Silvia Schiavolin
Febns
Asgeir Store Jakola
Julia Velz
Petter Förander
Source :
Journal of Neurosurgery, Journal of Neurosurgery, 134(6), 1743-1750. AMER ASSOC NEUROLOGICAL SURGEONS
Publication Year :
2021
Publisher :
Journal of Neurosurgery Publishing Group (JNSPG), 2021.

Abstract

OBJECTIVE Decision-making for intracranial tumor surgery requires balancing the oncological benefit against the risk for resection-related impairment. Risk estimates are commonly based on subjective experience and generalized numbers from the literature, but even experienced surgeons overestimate functional outcome after surgery. Today, there is no reliable and objective way to preoperatively predict an individual patient’s risk of experiencing any functional impairment. METHODS The authors developed a prediction model for functional impairment at 3 to 6 months after microsurgical resection, defined as a decrease in Karnofsky Performance Status of ≥ 10 points. Two prospective registries in Switzerland and Italy were used for development. External validation was performed in 7 cohorts from Sweden, Norway, Germany, Austria, and the Netherlands. Age, sex, prior surgery, tumor histology and maximum diameter, expected major brain vessel or cranial nerve manipulation, resection in eloquent areas and the posterior fossa, and surgical approach were recorded. Discrimination and calibration metrics were evaluated. RESULTS In the development (2437 patients, 48.2% male; mean age ± SD: 55 ± 15 years) and external validation (2427 patients, 42.4% male; mean age ± SD: 58 ± 13 years) cohorts, functional impairment rates were 21.5% and 28.5%, respectively. In the development cohort, area under the curve (AUC) values of 0.72 (95% CI 0.69–0.74) were observed. In the pooled external validation cohort, the AUC was 0.72 (95% CI 0.69–0.74), confirming generalizability. Calibration plots indicated fair calibration in both cohorts. The tool has been incorporated into a web-based application available at https://neurosurgery.shinyapps.io/impairment/. CONCLUSIONS Functional impairment after intracranial tumor surgery remains extraordinarily difficult to predict, although machine learning can help quantify risk. This externally validated prediction tool can serve as the basis for case-by-case discussions and risk-to-benefit estimation of surgical treatment in the individual patient.

Details

ISSN :
19330693 and 00223085
Volume :
134
Database :
OpenAIRE
Journal :
Journal of Neurosurgery
Accession number :
edsair.doi.dedup.....3c43ba54ebb504cc619c2c009e8f891a
Full Text :
https://doi.org/10.3171/2020.4.jns20643