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Result: Regression modeling with convolutional neural network for predicting extent of resection from preoperative MRI in giant pituitary adenomas: a pilot study.

Title:
Regression modeling with convolutional neural network for predicting extent of resection from preoperative MRI in giant pituitary adenomas: a pilot study.
Authors:
Patel BK; Departments of1Neurosurgery and., Tariciotti L; Departments of1Neurosurgery and.; 2Department of Hematology and Oncology, University of Milan, Italy; and., DiRocco L; 3Department of Statistical Sciences, Università di Roma 'La Sapienza,' Rome, Italy., Mandile A; 3Department of Statistical Sciences, Università di Roma 'La Sapienza,' Rome, Italy., Lohana S; Departments of1Neurosurgery and., Rodas A; 4Otolaryngology, Emory University, Atlanta, Georgia., Zohdy YM; Departments of1Neurosurgery and., Maldonado J; Departments of1Neurosurgery and., Vergara SM; Departments of1Neurosurgery and., De Andrade EJ; Departments of1Neurosurgery and., Revuelta Barbero JM; Departments of1Neurosurgery and., Reyes C; 4Otolaryngology, Emory University, Atlanta, Georgia., Solares CA; 4Otolaryngology, Emory University, Atlanta, Georgia., Garzon-Muvdi T; Departments of1Neurosurgery and., Pradilla G; Departments of1Neurosurgery and.; 4Otolaryngology, Emory University, Atlanta, Georgia.
Source:
Journal of neurosurgery [J Neurosurg] 2025 Feb 21; Vol. 143 (1), pp. 174-183. Date of Electronic Publication: 2025 Feb 21 (Print Publication: 2025).
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: American Association of Neurological Surgeons Country of Publication: United States NLM ID: 0253357 Publication Model: Electronic-Print Cited Medium: Internet ISSN: 1933-0693 (Electronic) Linking ISSN: 00223085 NLM ISO Abbreviation: J Neurosurg Subsets: MEDLINE
Imprint Name(s):
Publication: Charlottesville, VA : American Association of Neurological Surgeons
Original Publication: Chicago [etc.]
Contributed Indexing:
Keywords: MRI; convolutional neural networks; extent of resection; giant pituitary adenomas; pituitary surgery; surgical planning
Entry Date(s):
Date Created: 20250221 Date Completed: 20250701 Latest Revision: 20250702
Update Code:
20250702
DOI:
10.3171/2024.10.JNS241527
PMID:
39983104
Database:
MEDLINE

Further information

Objective: Giant pituitary adenomas (GPAs) are challenging skull base tumors due to their size and proximity to critical neurovascular structures. Achieving gross-total resection (GTR) can be difficult, and residual tumor burden is commonly reported. This study evaluated the ability of convolutional neural networks (CNNs) to predict the extent of resection (EOR) from preoperative MRI with the goals of enhancing surgical planning, improving preoperative patient counseling, and enhancing multidisciplinary postoperative coordination of care.
Methods: A retrospective study of 100 consecutive patients with GPAs was conducted. Patients underwent surgery via the endoscopic endonasal transsphenoidal approach. CNN models were trained on DICOM images from preoperative MR images to predict EOR, using a split of 80 patients for training and 20 for validation. The models included different architectural modules to refine image selection and predict EOR based on tumor-contained images in various anatomical planes. The model design, training, and validation were conducted in a local environment in Python using the TensorFlow machine learning system.
Results: The median preoperative tumor volume was 19.4 cm3. The median EOR was 94.5%, with GTR achieved in 49% of cases. The CNN model showed high predictive accuracy, especially when analyzing images from the coronal plane, with a root mean square error of 2.9916 and a mean absolute error of 2.6225. The coefficient of determination (R2) was 0.9823, indicating excellent model performance.
Conclusions: CNN-based models may effectively predict the EOR for GPAs from preoperative MRI scans, offering a promising tool for presurgical assessment and patient counseling. Confirmatory studies with large patient samples are needed to definitively validate these findings.