Lazareck Lisa J, Moussavi Zahra M K
Department of Electrical and Computer Engineering, University of Manitoba, Winnipeg, MB R3T 5V6 Canada.
IEEE Trans Biomed Eng. 2004 Dec;51(12):2103-12. doi: 10.1109/TBME.2004.836504.
This paper proposes a noninvasive, acoustic-based method to differentiate between individuals with and without dysphagia or swallowing dysfunction. Swallowing sound signals, both normal and abnormal (i.e., at risk of some degree of dysphagia) were recorded with accelerometers over the trachea. Segmentation based on waveform dimension trajectory (a distance-based technique) was developed to segment the nonstationary swallowing sound signals. Two characteristic sections emerged, Opening and Transmission, and 24 characteristic features were extracted and subsequently reduced via discriminant analysis. A discriminant algorithm was also employed for classification, with the system trained and tested using the leave-one-out approach. Overall, 350 signals were used from three bolus consistencies (semisolid, thick and thin liquids). A final screening algorithm correctly classified 13 of 15 control subjects and 11 of 11 subjects with some degree of dysphagia and/or neurological impairments. The proposed method has great potential to reduce the need for videofluoroscopic swallowing studies (the current gold standard method for swallowing assessment, which is invasive and nonportable) and to assist in the overall clinical assessment of swallowing sound signals.
本文提出了一种基于声学的非侵入性方法,用于区分有吞咽困难或吞咽功能障碍的个体与无此问题的个体。使用加速度计在气管上方记录正常和异常(即有一定程度吞咽困难风险)的吞咽声音信号。基于波形维度轨迹(一种基于距离的技术)开发了分割方法,用于分割非平稳的吞咽声音信号。出现了两个特征部分,即开口期和传输期,并提取了24个特征,随后通过判别分析进行降维。还采用判别算法进行分类,该系统采用留一法进行训练和测试。总体而言,使用了来自三种食团黏稠度(半固体、浓稠和稀薄液体)的350个信号。最终的筛选算法正确地将15名对照受试者中的13名以及11名有一定程度吞咽困难和/或神经损伤的受试者中的11名进行了分类。所提出的方法有很大潜力减少对视频荧光吞咽造影研究(目前吞咽评估的金标准方法,具有侵入性且不可携带)的需求,并有助于对吞咽声音信号进行全面的临床评估。