Farooq Muhammad, Fontana Juan M, Sazonov Edward
Department of Electrical and Computer Engineering, University of Alabama, Tuscaloosa, AL 35487, USA.
Physiol Meas. 2014 May;35(5):739-51. doi: 10.1088/0967-3334/35/5/739. Epub 2014 Mar 26.
Many methods for monitoring diet and food intake rely on subjects self-reporting their daily intake. These methods are subjective, potentially inaccurate and need to be replaced by more accurate and objective methods. This paper presents a novel approach that uses an electroglottograph (EGG) device for an objective and automatic detection of food intake. Thirty subjects participated in a four-visit experiment involving the consumption of meals with self-selected content. Variations in the electrical impedance across the larynx caused by the passage of food during swallowing were captured by the EGG device. To compare performance of the proposed method with a well-established acoustical method, a throat microphone was used for monitoring swallowing sounds. Both signals were segmented into non-overlapping epochs of 30 s and processed to extract wavelet features. Subject-independent classifiers were trained, using artificial neural networks, to identify periods of food intake from the wavelet features. Results from leave-one-out cross validation showed an average per-epoch classification accuracy of 90.1% for the EGG-based method and 83.1% for the acoustic-based method, demonstrating the feasibility of using an EGG for food intake detection.
许多监测饮食和食物摄入量的方法都依赖于受试者自行报告他们的每日摄入量。这些方法主观、可能不准确,需要被更准确、客观的方法所取代。本文提出了一种新颖的方法,该方法使用电子声门图(EGG)设备来客观、自动地检测食物摄入量。30名受试者参与了一项为期四次的实验,实验内容包括食用自行选择食物的餐食。EGG设备捕捉了吞咽过程中食物通过时喉部电阻抗的变化。为了将所提出方法的性能与一种成熟的声学方法进行比较,使用了喉部麦克风来监测吞咽声音。两种信号都被分割成30秒不重叠的时间段,并进行处理以提取小波特征。使用人工神经网络训练了独立于受试者的分类器,以便从小波特征中识别食物摄入时间段。留一法交叉验证的结果表明,基于EGG的方法每个时间段的平均分类准确率为90.1%,基于声学的方法为83.1%,这证明了使用EGG进行食物摄入检测的可行性。