Author:
Ariji Yoshiko,Gotoh Masakazu,Fukuda Motoki,Watanabe Satoshi,Nagao Toru,Katsumata Akitoshi,Ariji Eiichiro
Abstract
AbstractAlthough videofluorography (VFG) is an effective tool for evaluating swallowing functions, its accurate evaluation requires considerable time and effort. This study aimed to create a deep learning model for automated bolus segmentation on VFG images of patients with healthy swallowing and dysphagia using the artificial intelligence deep learning segmentation method, and to assess the performance of the method. VFG images of 72 swallowing of 12 patients were continuously converted into 15 static images per second. In total, 3910 images were arbitrarily assigned to the training, validation, test 1, and test 2 datasets. In the training and validation datasets, images of colored bolus areas were prepared, along with original images. Using a U-Net neural network, a trained model was created after 500 epochs of training. The test datasets were applied to the trained model, and the performances of automatic segmentation (Jaccard index, Sørensen–Dice coefficient, and sensitivity) were calculated. All performance values for the segmentation of the test 1 and 2 datasets were high, exceeding 0.9. Using an artificial intelligence deep learning segmentation method, we automatically segmented the bolus areas on VFG images; our method exhibited high performance. This model also allowed assessment of aspiration and laryngeal invasion.
Publisher
Springer Science and Business Media LLC
Reference12 articles.
1. Zhang, Z., Coyle, J. L. & Sejdić, E. Automatic hyoid bone detection in fluoroscopic images using deep learning. Sci. Rep. 8, 12310 (2018).
2. Caliskan, H., Mahoney, A. S., Coyle, J. L. & Sejdic, E. Automated bolus detection in videofluoroscopic images of swallowing using mask-RCNN. Annu. Int. Conf. IEEE Eng. Med. Biol. Soc. 2020, 2173–2177 (2020).
3. Dharmarathna, I., Miles, A. & Allen, J. Twenty years of quantitative instrumental measures of swallowing in children: A systematic review. Eur. J. Pediatr. 179, 203–223 (2020).
4. Gotoh, M. et al. Computer-based videofluorographic analysis of posterior pharyngeal wall movement during swallowing in patients with head-and-neck cancer. Oral. Radiol. 25, 123–128 (2009).
5. Lee, J. T., Park, E., Hwang, J. M., Jung, T. D. & Park, D. Machine learning analysis to automatically measure response time of pharyngeal swallowing reflex in videofluoroscopic swallowing study. Sci. Rep. 10, 14735 (2020).
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