Ryu Yeong Hwan, Kim Ji Hyun, Kim Dohhyung, Kim Seo Young, Lee Seong Jae
Department of Rehabilitation Medicine, College of Medicine, Dankook University, Cheonan, Republic of Korea.
Department of Internal Medicine, College of Medicine, Dankook University, Cheonan, Republic of Korea.
Digit Health. 2024 Aug 8;10:20552076241271778. doi: 10.1177/20552076241271778. eCollection 2024 Jan-Dec.
Hyoid bone movement is potentially related to aspiration risk in post-stroke dysphagia (PSD) patients but is difficult to assess quantitatively. This study aimed to measure the distance of hyoid bone movement more efficiently and accurately using a deep learning model and determine the clinical usefulness of the model in PSD patients.
This study included 85 patients with PSD within 6 months from onset. Patients were grouped into an aspiration group ( = 35) and a non-aspiration group ( = 50) according to the results of a videofluoroscopic swallowing study. Hyoid bone movement was tracked using a deep learning model constructed with the BiFPN-U-Net(T) architecture. The maximum distance of hyoid bone movement was measured horizontally ( ), vertically ( ), and diagonally ( ).
Compared with the non-aspiration group, the aspiration group showed significant decreases in hyoid bone movement in all directions. The area under the curve of was highest at 0.715 with a sensitivity of 0.680 and specificity of 0.743. The cutoff value for predicting aspiration risk was 1.61 cm. The success of oral feeding at the time of discharge was significantly more frequent when hyoid movement was equal to or larger than the cutoff value although no significant relationship was found between hyoid movement and other clinical characteristics.
Hyoid bone movement of PSD patients can be measured quantitatively and efficiently using a deep learning model. Deep learning model-based analysis of hyoid bone movement seems to be useful for predicting aspiration risk and the possibility of resuming oral feeding.
舌骨运动可能与中风后吞咽困难(PSD)患者的误吸风险相关,但难以进行定量评估。本研究旨在使用深度学习模型更高效、准确地测量舌骨运动距离,并确定该模型在PSD患者中的临床实用性。
本研究纳入了85例发病6个月内的PSD患者。根据视频荧光吞咽造影检查结果,将患者分为误吸组(n = 35)和无误吸组(n = 50)。使用基于BiFPN-U-Net(T)架构构建的深度学习模型跟踪舌骨运动。测量舌骨运动的最大水平距离( )、垂直距离( )和对角距离( )。
与无误吸组相比,误吸组在各个方向上的舌骨运动均显著减少。 的曲线下面积最高,为0.715,灵敏度为0.680,特异度为0.743。预测误吸风险的 截断值为1.61 cm。当舌骨运动等于或大于截断值时,出院时经口进食成功的频率显著更高,尽管舌骨运动与其他临床特征之间未发现显著关系。
使用深度学习模型可以对PSD患者的舌骨运动进行定量和高效测量。基于深度学习模型的舌骨运动分析似乎有助于预测误吸风险和恢复经口进食的可能性。