Khodami Farnaz, Mahoney Amanda S, Coyle James L, Sejdic Ervin
Department of Electrical and Computer EngineeringFaculty of Applied Science and EngineeringUniversity of Toronto Toronto ON M5S 1A4 Canada.
Department of the Communication Science and DisordersSchool of Health and Rehabilitation SciencesUniversity of Pittsburgh Pittsburgh PA 15213 USA.
IEEE J Transl Eng Health Med. 2024 Nov 13;12:711-720. doi: 10.1109/JTEHM.2024.3497895. eCollection 2024.
Patients with nasogastric (NG) tubes require careful monitoring due to the potential impact of the tube on their ability to swallow safely. This study aimed to investigate the utility of high-resolution cervical auscultation (HRCA) signals in assessing swallowing functionality of patients using feeding tubes. HRCA, capturing swallowing vibratory and acoustic signals, has been explored as a surrogate for videofluoroscopy image analysis in previous research. In this study, we analyzed HRCA signals recorded from patients with NG tubes to identify swallowing kinematic events within this group of subjects. Machine learning architectures from prior research endeavors, originally designed for participants without NG tubes, were fine-tuned to accomplish three tasks in the target population: estimating the duration of upper esophageal sphincter opening, estimating the duration of laryngeal vestibule closure, and tracking the hyoid bone. The convolutional recurrent neural network proposed for the first task predicted the onset of upper esophageal sphincter opening and closure for 67.61% and 82.95% of patients, respectively, with an error margin of fewer than three frames. The hybrid model employed for the second task successfully predicted the onset of laryngeal vestibule closure and reopening for 79.62% and 75.80% of patients, respectively, with the same error margin. The stacked recurrent neural network identified hyoid bone position in test frames, achieving a 41.27% overlap with ground-truth outputs. By applying established algorithms to an unseen population, we demonstrated the utility of HRCA signals for swallowing assessment in individuals with NG tubes and showcased the generalizability of algorithms developed in our previous studies. Clinical impact: This study highlights the promise of HRCA signals for assessing swallowing in patients with NG tubes, potentially improving diagnosis, management, and care integration in both clinical and home healthcare settings.
由于鼻胃管(NG)对患者安全吞咽能力的潜在影响,使用鼻胃管的患者需要密切监测。本研究旨在探讨高分辨率颈部听诊(HRCA)信号在评估使用饲管患者吞咽功能方面的效用。HRCA可捕捉吞咽振动和声学信号,在先前研究中已被探索作为视频荧光透视图像分析的替代方法。在本研究中,我们分析了从使用鼻胃管的患者记录的HRCA信号,以识别该组受试者中的吞咽运动学事件。对先前研究中最初为无鼻胃管参与者设计的机器学习架构进行了微调,以在目标人群中完成三项任务:估计食管上括约肌开放的持续时间、估计喉前庭关闭的持续时间以及追踪舌骨。为第一项任务提出的卷积循环神经网络分别预测了67.61%和82.95%的患者食管上括约肌开放和关闭的起始,误差幅度小于三帧。用于第二项任务的混合模型分别成功预测了79.62%和75.80%的患者喉前庭关闭和重新开放的起始,误差幅度相同。堆叠循环神经网络在测试帧中识别舌骨位置,与真实输出的重叠率达到41.27%。通过将既定算法应用于未见过的人群,我们证明了HRCA信号在评估使用鼻胃管个体吞咽功能方面的效用,并展示了我们先前研究中开发算法的可推广性。临床影响:本研究强调了HRCA信号在评估使用鼻胃管患者吞咽功能方面的前景,可能改善临床和家庭医疗环境中的诊断、管理和护理整合。