Lee Qim Y, Chan Gregory S H, Redmond Stephen J, Middleton Paul M, Steel E, Malouf P, Critoph C, Flynn G, O'Lone E, Lovell Nigel H
Biomedical Systems Laboratory, School of Electrical Engineering and Telecommunications, the University of New South Wales, Sydney, 2052, Australia.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:1930-3. doi: 10.1109/IEMBS.2010.5628062.
Low systemic vascular resistance (SVR) can be a useful indicator for early diagnosis of critical pathophysiological conditions such as sepsis, and the ability to identify low SVR from simple and noninvasive physiological signals is of immense clinical value. In this study, an SVR classification system is presented to recognize the occurrence of low SVR, among a heterogenous group of patients (N = 48), based on the use of routine cardiovascular measurements and features extracted from the finger photoplethysmogram (PPG) as inputs to a quadratic discriminant classifier. An exhaustive feature search was performed to identify a near optimum feature subset. Cohen's kappa coefficient (κ) was used as a performance measure to compare candidate feature sets. The classifier using the following combination of features performed best (κ = 0.56, sensitivity = 96.30%, positive predictivity = 92.31%): normalized low-frequency power (LFNU) derived from PPG, ratio of low-frequency power to high-frequency power (LF/HF) of the PPG variability signal, and the ratio of mean arterial pressure to heart rate (MAP/HR). Classifiers that used either LF(NU) (κ = 0.43), LF/HF (κ = 0.37) or MAP/HR (κ = 0.43) alone showed inferior performance. Discrimination of patients with and without low SVR can be achieved with reasonable accuracy using multiple features derived from the PPG combined with routine cardiovascular measurements.
低体循环血管阻力(SVR)可作为脓毒症等严重病理生理状况早期诊断的有用指标,从简单且无创的生理信号中识别低SVR的能力具有巨大的临床价值。在本研究中,提出了一种SVR分类系统,用于在一组异质性患者(N = 48)中识别低SVR的发生情况,该系统基于常规心血管测量以及从手指光电容积脉搏波描记图(PPG)提取的特征作为二次判别分类器的输入。进行了详尽的特征搜索以识别接近最优的特征子集。使用科恩kappa系数(κ)作为性能指标来比较候选特征集。使用以下特征组合的分类器表现最佳(κ = 0.56,敏感性 = 96.30%,阳性预测值 = 92.31%):从PPG得出的归一化低频功率(LFNU)、PPG变异性信号的低频功率与高频功率之比(LF/HF)以及平均动脉压与心率之比(MAP/HR)。单独使用LF(NU)(κ = 0.43)、LF/HF(κ = 0.37)或MAP/HR(κ = 0.43)的分类器表现较差。使用从PPG得出的多个特征结合常规心血管测量,可以以合理的准确度区分有和没有低SVR的患者。