Huang Sheng-Cheng, Jan Hao-Yu, Fu Tieh-Cheng, Lin Wen-Chen, Lin Geng-Hong, Lin Wen-Chi, Tsai Cheng-Lun, Lin Kang-Ping
Department of Electrical Engineering, Chung Yuan Christian University, Taoyuan, Taiwan.
Department of Physical Medicine and Rehabilitation, Chang Gung Memorial Hospital, Keelung, Taiwan.
Comput Math Methods Med. 2017;2017:2750701. doi: 10.1155/2017/2750701. Epub 2017 May 28.
Inspiratory flow limitation (IFL) is a critical symptom of sleep breathing disorders. A characteristic flattened flow-time curve indicates the presence of highest resistance flow limitation. This study involved investigating a real-time algorithm for detecting IFL during sleep. Three categories of inspiratory flow shape were collected from previous studies for use as a development set. Of these, 16 cases were labeled as non-IFL and 78 as IFL which were further categorized into minor level (20 cases) and severe level (58 cases) of obstruction. In this study, algorithms using polynomial functions were proposed for extracting the features of IFL. Methods using first- to third-order polynomial approximations were applied to calculate the fitting curve to obtain the mean absolute error. The proposed algorithm is described by the weighted third-order (w.3rd-order) polynomial function. For validation, a total of 1,093 inspiratory breaths were acquired as a test set. The accuracy levels of the classifications produced by the presented feature detection methods were analyzed, and the performance levels were compared using a misclassification cobweb. According to the results, the algorithm using the w.3rd-order polynomial approximation achieved an accuracy of 94.14% for IFL classification. We concluded that this algorithm achieved effective automatic IFL detection during sleep.
吸气流量受限(IFL)是睡眠呼吸障碍的一个关键症状。特征性的扁平流量-时间曲线表明存在最高阻力的流量受限。本研究涉及调查一种用于在睡眠期间检测IFL的实时算法。从先前的研究中收集了三类吸气流量形状用作开发集。其中,16例被标记为非IFL,78例被标记为IFL,后者进一步分为轻度阻塞(20例)和重度阻塞(58例)。在本研究中,提出了使用多项式函数的算法来提取IFL的特征。应用一阶到三阶多项式近似的方法来计算拟合曲线以获得平均绝对误差。所提出的算法由加权三阶(w.3rd-order)多项式函数描述。为了进行验证,总共获取了1093次吸气作为测试集。分析了所提出的特征检测方法产生的分类的准确率水平,并使用误分类蜘蛛网比较了性能水平。根据结果,使用w.3rd-order多项式近似的算法在IFL分类中达到了94.14%的准确率。我们得出结论,该算法在睡眠期间实现了有效的自动IFL检测。