Facial nerve palsy following parotid gland surgery: A machine learning prediction outcome approach

被引:0
作者
Chiesa-Estomba Carlos M. [1 ]
González-García Jose A. [1 ]
Larruscain Ekhi?e [1 ]
Sistiaga Suarez Jon A. [1 ]
Quer Miquel [5 ]
León Xavier [5 ]
de Apodaca Paula Martínez-Ruiz [9 ]
López-Mollá Celia [5 ]
Mayo-Yanez Miguel [9 ]
Medela Alfonso [15 ]
机构
[1] Department of Otorhinolaryngology—Head and Neck Surgery
[2] Donostia University Hospital  3. Donosti‐San Sebastián  4. Spain
[3] Department of Otorhinolaryngology
[4] Hospital Santa Creu I Sant Pau  7. Universitat Autònoma de Barcelona  8. Barcelona  9. H
关键词
gland; machine learning; parotid; personalized medicine; surgery;
D O I
暂无
中图分类号
R782 [口腔颌面部外科学];
学科分类号
100302 ;
摘要
Introduction: 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.Methods: A retrospective, longitudinal, multicentric study was performed, including patients who went through parotid gland surgery for benign tumors at three different university hospitals.Results: 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.Discussion: 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.Conclusion: 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.
引用
收藏
相关论文
共 50 条
  • [21] Facial Nerve Palsy in Parotid Infection- A Benign Deviance from the Malignant Norm
    Pattanshetti, Vishwanath
    Teli, Basavaraj
    Sharma, Prashant
    Gupta, Urbee
    Kolli, Pravallika
    Bhagwan, Adil
    JOURNAL OF THE SCIENTIFIC SOCIETY, 2021, 48 (03) : 206 - 209
  • [22] Machine Learning for Outcome Prediction in First-Line Surgery of Prolactinomas
    Huber, Markus
    Luedi, Markus M.
    Schubert, Gerrit A.
    Musahl, Christian
    Tortora, Angelo
    Frey, Janine
    Beck, Juergen
    Mariani, Luigi
    Christ, Emanuel
    Andereggen, Lukas
    FRONTIERS IN ENDOCRINOLOGY, 2022, 13
  • [23] Machine learning-based clinical outcome prediction in surgery for acromegaly
    Zanier, Olivier
    Zoli, Matteo
    Staartjes, Victor E.
    Guaraldi, Federica
    Asioli, Sofia
    Rustici, Arianna
    Picciola, Valentino Marino
    Pasquini, Ernesto
    Faustini-Fustini, Marco
    Erlic, Zoran
    Regli, Luca
    Mazzatenta, Diego
    Serra, Carlo
    ENDOCRINE, 2022, 75 (02) : 508 - 515
  • [24] Machine learning-based clinical outcome prediction in surgery for acromegaly
    Olivier Zanier
    Matteo Zoli
    Victor E. Staartjes
    Federica Guaraldi
    Sofia Asioli
    Arianna Rustici
    Valentino Marino Picciola
    Ernesto Pasquini
    Marco Faustini-Fustini
    Zoran Erlic
    Luca Regli
    Diego Mazzatenta
    Carlo Serra
    Endocrine, 2022, 75 : 508 - 515
  • [25] Recurrent Pleomorphic Adenoma of the Parotid Gland: Intraoperative Facial Nerve Monitoring during Parotidectomy
    Liu, Huawei
    Wen, Weisheng
    Huang, Haitao
    Liang, Yongqiang
    Tan, Xinying
    Liu, Sanxia
    Liu, Changkui
    Hu, Min
    OTOLARYNGOLOGY-HEAD AND NECK SURGERY, 2014, 151 (01) : 87 - 91
  • [26] Machine learning prediction model for postoperative ileus following colorectal surgery
    Traeger, Luke
    Bedrikovetski, Sergei
    Hanna, Jessica E.
    Moore, James W.
    Sammour, Tarik
    ANZ JOURNAL OF SURGERY, 2024, 94 (7-8) : 1292 - 1298
  • [27] Can machine learning improve mortality prediction following cardiac surgery?
    Benedetto, Umberto
    Sinha, Shubhra
    Lyon, Matt
    Dimagli, Arnaldo
    Gaunt, Tom R.
    Angelini, Gianni
    Sterne, Jonathan
    EUROPEAN JOURNAL OF CARDIO-THORACIC SURGERY, 2020, 58 (06) : 1130 - 1136
  • [28] Landmarks for facial nerve identification in parotid surgery: A clinico-anatomical study
    Kanotra, Sonika
    Malhotra, Abhishek
    Raina, Sunanda
    Kotwal, Sunil
    INDIAN JOURNAL OF OTOLOGY, 2020, 26 (01) : 15 - 19
  • [29] A new landmark for the identification of the facial nerve during parotid surgery: A cadaver study
    Al-Qahtani, Khalid Hussain
    AlQahtani, Fahad Mohammad
    Muqat, Mahmoud Mohammad
    AlQahtani, Mubarak Shaie
    Al-Qannass, Ali M.
    Islam, Tahera
    Alharbi, Jabir
    Sebaih, Haneen
    Alqarni, Mohammad
    Hakami, Hadi
    LARYNGOSCOPE INVESTIGATIVE OTOLARYNGOLOGY, 2020, 5 (04): : 689 - 693
  • [30] Facial Nerve in Parotid Surgery- do Landmarks Differ With Varying Statures?
    Priyam Sharma
    Kuddush Ahmed
    Gautam Khaund
    Vivek Agarwal
    Surajit Barman
    Debika Baruah
    Indian Journal of Otolaryngology and Head & Neck Surgery, 2023, 75 : 3652 - 3656