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Development and external validation of clinical prediction models for pituitary surgery

Authors :
Olivier Zanier
Matteo Zoli
Victor E. Staartjes
Mohammed O. Alalfi
Federica Guaraldi
Sofia Asioli
Arianna Rustici
Ernesto Pasquini
Marco Faustini-Fustini
Zoran Erlic
Michael Hugelshofer
Stefanos Voglis
Luca Regli
Diego Mazzatenta
Carlo Serra
Source :
Brain and Spine, Vol 3, Iss , Pp 102668- (2023)
Publication Year :
2023
Publisher :
Elsevier, 2023.

Abstract

Introduction: Gross total resection (GTR), Biochemical Remission (BR) and restitution of a priorly disrupted hypothalamus pituitary axis (new improvement, IMP) are important factors in pituitary adenoma (PA) resection surgery. Prediction of these metrics using simple and preoperatively available data might help improve patient care and contribute to a more personalized medicine. Research question: This study aims to develop machine learning models predicting GTR, BR, and IMP in PA resection surgery, using preoperatively available data. Material and methods: With data from patients undergoing endoscopic transsphenoidal surgery for PAs machine learning models for prediction of GTR, BR and IMP were developed and externally validated. Development was carried out on a registry from Bologna, Italy while external validation was conducted using patient data from Zurich, Switzerland. Results: The model development cohort consisted of 1203 patients. GTR was achieved in 207 (17.2%, 945 (78.6%) missing), BR in 173 (14.4%, 992 (82.5%) missing) and IMP in 208 (17.3%, 167 (13.9%) missing) cases. In the external validation cohort 206 patients were included and GTR was achieved in 121 (58.7%, 32 (15.5%) missing), BR in 46 (22.3%, 145 (70.4%) missing) and IMP in 42 (20.4%, 7 (3.4%) missing) cases. The AUC at external validation amounted to 0.72 (95% CI: 0.63–0.80) for GTR, 0.69 (0.52–0.83) for BR, as well as 0.82 (0.76–0.89) for IMP. Discussion and conclusion: All models showed adequate generalizability, performing similarly in training and external validation, confirming the possible potentials of machine learning in helping to adapt surgical therapy to the individual patient.

Details

Language :
English
ISSN :
27725294
Volume :
3
Issue :
102668-
Database :
Directory of Open Access Journals
Journal :
Brain and Spine
Publication Type :
Academic Journal
Accession number :
edsdoj.9c13151fe387446eb684e603cff3a0f7
Document Type :
article
Full Text :
https://doi.org/10.1016/j.bas.2023.102668