Constantinescu Gabriela, Kuffel Kristina, Aalto Daniel, Hodgetts William, Rieger Jana
Department of Communication Sciences and Disorders, Faculty of Rehabilitation Medicine, University of Alberta, 8205 114St 2-70 Corbett Hall, Edmonton, AB, T6R 3T5, Canada.
Institute for Reconstructive Sciences in Medicine (iRSM), Misericordia Community Hospital, 1W-02, 16940-87 Avenue, Edmonton, AB, Canada.
Dysphagia. 2018 Jun;33(3):345-357. doi: 10.1007/s00455-017-9859-2. Epub 2017 Nov 2.
Mobile health (mHealth) technologies may offer an opportunity to address longstanding clinical challenges, such as access and adherence to swallowing therapy. Mobili-T is an mHealth device that uses surface electromyography (sEMG) to provide biofeedback on submental muscles activity during exercise. An automated swallow-detection algorithm was developed for Mobili-T. This study evaluated the performance of the swallow-detection algorithm. Ten healthy participants and 10 head and neck cancer (HNC) patients were fitted with the device. Signal was acquired during regular, effortful, and Mendelsohn maneuver saliva swallows, as well as lip presses, tongue, and head movements. Signals of interest were tagged during data acquisition and used to evaluate algorithm performance. Sensitivity and positive predictive values (PPV) were calculated for each participant. Saliva swallows were compared between HNC and controls in the four sEMG-based parameters used in the algorithm: duration, peak amplitude ratio, median frequency, and 15th percentile of the power spectrum density. In healthy participants, sensitivity and PPV were 92.3 and 83.9%, respectively. In HNC patients, sensitivity was 92.7% and PPV was 72.2%. In saliva swallows, HNC patients had longer event durations (U = 1925.5, p < 0.001), lower median frequency (U = 2674.0, p < 0.001), and lower 15th percentile of the power spectrum density [t(176.9) = 2.07, p < 0.001] than healthy participants. The automated swallow-detection algorithm performed well with healthy participants and retained a high sensitivity, but had lowered PPV with HNC patients. With respect to Mobili-T, the algorithm will next be evaluated using the mHealth system.
移动健康(mHealth)技术可能为解决长期存在的临床挑战提供契机,比如吞咽治疗的可及性和依从性。Mobili-T是一种移动健康设备,它利用表面肌电图(sEMG)在运动过程中提供颏下肌肉活动的生物反馈。为Mobili-T开发了一种自动吞咽检测算法。本研究评估了该吞咽检测算法的性能。10名健康参与者和10名头颈部癌症(HNC)患者佩戴了该设备。在常规、用力和门德尔松手法唾液吞咽以及唇部按压、舌头和头部运动过程中采集信号。在数据采集过程中标记感兴趣的信号,并用于评估算法性能。计算了每位参与者的灵敏度和阳性预测值(PPV)。比较了HNC患者和对照组在算法中使用的基于sEMG的四个参数下的唾液吞咽情况:持续时间、峰值幅度比、中位数频率和功率谱密度的第15百分位数。在健康参与者中,灵敏度和PPV分别为92.3%和83.9%。在HNC患者中,灵敏度为92.7%,PPV为72.2%。在唾液吞咽方面,HNC患者的事件持续时间更长(U = 1925.5,p < 0.001),中位数频率更低(U = 2674.0,p < 0.001),功率谱密度的第15百分位数也更低[t(176.9) = 2.07,p < 0.001],与健康参与者相比。自动吞咽检测算法在健康参与者中表现良好,灵敏度较高,但在HNC患者中PPV有所降低。对于Mobili-T,接下来将使用移动健康系统对该算法进行评估。