Facial nerve palsy following parotid gland surgery : A machine learning prediction outcome approach
Chiesa-Estomba, Carlos Miguel 
(Biodonostia Osasun Ikerketako Institutura (País Basc))
González-García, Jose A. (Hospital de Donostia (Sant Sebastià, País Basc))
Larruscain, Ekhiñe (Hospital de Donostia (Sant Sebastià, País Basc))
Sistiaga Suarez, Jon A. (Hospital de Donostia (Sant Sebastià, País Basc))
Quer, Miquel 
(Institut d'Investigació Biomèdica Sant Pau)
León i Vintró, Xavier 
(Institut d'Investigació Biomèdica Sant Pau)
Martínez-Ruiz de Apodaca, Paula (Hospital Universitari Doctor Peset (València))
López-Mollá, Celia (Hospital Universitari Doctor Peset (València))
Mayo-Yanez, Miguel (Universidade de Santiago de Compostela)
Medela, Alfonso (LEGIT Health)
Universitat Autònoma de Barcelona
| Data: |
2023 |
| Resum: |
Machine learning (ML)-based facial nerve injury (FNI) forecasting grounded on multicentric data has not been released up to now. Three distinct ML models, random forest (RF), K-nearest neighbor, and artificial neural network (ANN), for the prediction of FNI were evaluated in this mode. A retrospective, longitudinal, multicentric study was performed, including patients who went through parotid gland surgery for benign tumors at three different university hospitals. Seven hundred and thirty-six patients were included. The most compelling aspects related to risk escalation of FNI were as follows: (1) location, in the mid-portion of the gland, near to or above the main trunk of the facial nerve and at the top part, over the frontal or the orbital branch of the facial nerve; (2) tumor volume in the anteroposterior axis; (3) the necessity to simultaneously dissect more than one level; and (4) the requirement of an extended resection compared to a lesser extended resection. By contrast, in accordance with the ML analysis, the size of the tumor (>3 cm), as well as gender and age did not result in a determining favor in relation to the risk of FNI. The findings of this research conclude that ML models such as RF and ANN may serve evidence-based predictions from multicentric data regarding the risk of FNI. Along with the advent of ML technology, an improvement of the information regarding the potential risks of FNI associated with patients before each procedure may be achieved with the implementation of clinical, radiological, histological, and/or cytological data. |
| Drets: |
Aquest document està subjecte a una llicència d'ús Creative Commons. Es permet la reproducció total o parcial, la distribució, i la comunicació pública de l'obra, sempre que no sigui amb finalitats comercials, i sempre que es reconegui l'autoria de l'obra original. No es permet la creació d'obres derivades.  |
| Llengua: |
Anglès |
| Document: |
Article ; recerca ; Versió publicada |
| Matèria: |
Gland ;
Machine learning ;
Parotid ;
Personalized medicine ;
Surgery |
| Publicat a: |
World Journal of Otorhinolaryngology - Head and Neck Surgery, Vol. 9 Núm. 4 (december 2023) , p. 271-279, ISSN 2589-1081 |
DOI: 10.1002/wjo2.94
PMID: 38059137
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Registre creat el 2024-07-08, darrera modificació el 2025-09-09