Kaimakamis Evangelos, Bratsas Charalambos, Sichletidis Lazaros, Karvounis Charalambos, Maglaveras Nikolaos
Lab of Medical Informatics, Medical School, Aristotle University of Thessaloniki, Greece.
Annu Int Conf IEEE Eng Med Biol Soc. 2009;2009:3465-9. doi: 10.1109/IEMBS.2009.5334605.
To classify patients with possible diagnosis of Obstructive Sleep Apnea Syndrome (OSAS) into groups according to the severity of the disease using a decision tree producing algorithm based on nonlinear analysis of 3 respiratory signals instead of the use of full polysomnography.
PATIENTS-METHODS: Eighty-six consecutive patients referred to the Sleep Unit of a Pulmonology Department underwent full polysomnography and their tests were manually scored. Three nonlinear indices (Largest Lyapunov Exponent-LLE, Detrended Fluctuation Analysis-DFA and Approximate Entropy-APEN) were extracted from two respiratory signals (nasal cannula flow-F and thoracic belt-T). The oxygen saturation signal (SpO(2)) was also selected. The above measurements provided data to the C4.5 algorithm using a data mining application.
Two decision trees were produced using linear and nonlinear data from 3 respiratory signals. The discrimination between normal subjects and sufferers from OSAS presented an accuracy of 84.9% and a recall of 90.3% using the variables age, sex, DFA from F and Time with SpO(2)<90% (T90). The classification of patients into severity groups had an accuracy of 74.2% and a recall of 81.1% using the variables APEN from F, DFA from F and T90.
It is possible to have reliable predictions of the severity of OSAS using linear and nonlinear indices from only two respiratory signals during sleep instead of performing full polysomnography. The proposed algorithm could be used for screening patients suspected to suffer from OSAS.
使用基于对3种呼吸信号进行非线性分析的决策树生成算法,而非采用全夜多导睡眠图,根据疾病严重程度对可能诊断为阻塞性睡眠呼吸暂停低通气综合征(OSAS)的患者进行分组。
86例连续转诊至某呼吸内科睡眠单元的患者接受了全夜多导睡眠图检查,并对其检查结果进行人工评分。从两种呼吸信号(鼻导管气流-F和胸带-T)中提取了三个非线性指标(最大Lyapunov指数-LLE、去趋势波动分析-DFA和近似熵-APEN)。还选取了血氧饱和度信号(SpO₂)。上述测量结果通过数据挖掘应用程序为C4.5算法提供数据。
使用来自3种呼吸信号的线性和非线性数据生成了两棵决策树。使用年龄、性别、F信号的DFA以及SpO₂<90%的时间(T90)等变量,正常受试者与OSAS患者之间的鉴别准确率为84.9%,召回率为90.3%。使用F信号的APEN、F信号的DFA和T90等变量将患者分为严重程度组,准确率为74.2%,召回率为81.1%。
仅通过睡眠期间两种呼吸信号的线性和非线性指标,而非进行全夜多导睡眠图检查,就有可能对OSAS的严重程度做出可靠预测。所提出的算法可用于筛查疑似患有OSAS的患者。