George W. Woodruff School of Mechanical Engineering, Georgia Institute of Technology, Atlanta, GA, 30332, USA.
Wearable Intelligent Systems and Healthcare Center (WISH Center), Institute for Matter and Systems, Georgia Institute of Technology, Atlanta, GA, 30332, USA.
Adv Sci (Weinh). 2024 Sep;11(34):e2404211. doi: 10.1002/advs.202404211. Epub 2024 Jul 9.
Dysphagia is more common in conditions such as stroke, Parkinson's disease, and head and neck cancer. This can lead to pneumonia, choking, malnutrition, and dehydration. Currently, the diagnostic gold standard uses radiologic imaging, the videofluoroscopic swallow study (VFSS); however, it is expensive and necessitates specialized facilities and trained personnel. Although several devices attempt to address the limitations, none offer the clinical-grade quality and accuracy of the VFSS. Here, this study reports a wireless multimodal wearable system with machine learning for automatic, accurate clinical assessment of swallowing behavior and diagnosis of silent aspirations from dysphagia patients. The device includes a kirigami-structured electrode that suppresses changes in skin contact impedance caused by movements and a microphone with a gel layer that effectively blocks external noise for measuring high-quality electromyograms and swallowing sounds. The deep learning algorithm offers the classification of swallowing patterns while diagnosing silent aspirations, with an accuracy of 89.47%. The demonstration with post-stroke patients captures the system's significance in measuring multiple physiological signals in real-time for detecting swallowing disorders, validated by comparing them with the VFSS. The multimodal electronics can ensure a promising future for dysphagia healthcare and rehabilitation therapy, providing an accurate, non-invasive alternative for monitoring swallowing and aspiration events.
吞咽困难在中风、帕金森病和头颈部癌症等疾病中更为常见。这可能导致肺炎、窒息、营养不良和脱水。目前,诊断的金标准是使用放射影像学,即荧光透视吞咽研究(VFSS);然而,它昂贵且需要专门的设施和训练有素的人员。尽管有几种设备试图解决这些限制,但没有一种设备能够提供 VFSS 的临床级质量和准确性。在这里,本研究报告了一种具有机器学习功能的无线多模态可穿戴系统,用于自动、准确地评估吞咽行为,并对吞咽困难患者的隐性误吸进行诊断。该设备包括一个折纸结构的电极,可抑制运动引起的皮肤接触阻抗变化,以及带有凝胶层的麦克风,可有效阻挡外部噪声,从而测量高质量的肌电图和吞咽声音。深度学习算法可对吞咽模式进行分类,并诊断隐性误吸,准确率为 89.47%。对中风后患者的演示证明了该系统在实时测量多种生理信号以检测吞咽障碍方面的重要性,并通过与 VFSS 进行比较得到了验证。这种多模态电子设备为吞咽困难的医疗保健和康复治疗提供了有前景的未来,为监测吞咽和误吸事件提供了一种准确、非侵入性的替代方法。