Affiliation:
1. Military University Hospital Prague
2. Czech Technical University in Prague
3. Charles University
4. University Hospital Ostrava
Abstract
Abstract
This study aims to develop a fully automated imaging protocol independent system for pituitary adenoma segmentation from magnetic resonance imaging (MRI) scans that can work without user interaction and evaluate its accuracy and utility for clinical applications. We trained two independent artificial neural networks on MRI scans of 394 patients. The scans were acquired according to various imaging protocols over the course of 11 years on 1.5T and 3T MRI systems. The segmentation model assigned a class label to each input pixel (pituitary adenoma, internal carotid artery, normal pituitary gland, background). The slice segmentation model classified slices as clinically relevant (structures of interest in slice) or irrelevant (anterior or posterior to sella turcica). We used MRI data of another 99 patients to evaluate the performance of the model during training. We validated the model on a prospective cohort of 14 patients, Dice coefficients of 0.934, 0.705 and 0.219 for tumor, ICA and normal gland labels, respectively, were achieved. The slice selection model achieved 90.2% accuracy, 84.8% sensitivity, 95.7% specificity and an AUC of 0.965. A human expert rated 71.4% of the segmentation results as accurate, 28.6% as slightly inaccurate and 0% as coarsely inaccurate. Our model achieved good results comparable with recent works of other authors on the largest dataset to date and generalized well for various imaging protocols. We discussed future clinical applications, and their considerations. Models and frameworks for clinical use have yet to be developed and evaluated.
Publisher
Research Square Platform LLC