UQ Centre for Clinical Research, The University of Queensland, Herston, QLD, Australia,
Med Biol Eng Comput. 2014 Feb;52(2):183-91. doi: 10.1007/s11517-013-1129-3. Epub 2013 Nov 24.
Perinatal hypoxia is a cause of cerebral injury in foetuses and neonates. Detection of foetal hypoxia during labour based on the pattern recognition of heart rate signals suffers from high observer variability and low specificity. We describe a new automated hypoxia detection method using time-frequency analysis of heart rate variability (HRV) signals. This approach uses features extracted from the instantaneous frequency and instantaneous amplitude of HRV signal components as well as features based on matrix decomposition of the signals' time-frequency distributions using singular value decomposition and non-negative matrix factorization. The classification between hypoxia and non-hypoxia data is performed using a support vector machine classifier. The proposed method is tested on a dataset obtained from a newborn piglet model with a controlled hypoxic insult. The chosen HRV features show strong performance compared to conventional spectral features and other existing methods of hypoxia detection with a sensitivity 93.3 %, specificity 98.3 % and accuracy 95.8 %. The high predictive value of this approach to detecting hypoxia is a substantial step towards developing a more accurate and reliable hypoxia detection method for use in human foetal monitoring.
围产期缺氧是胎儿和新生儿脑损伤的一个原因。基于心率信号的模式识别来检测分娩过程中的胎儿缺氧,存在观察者变异性高和特异性低的问题。我们描述了一种新的基于心率变异性(HRV)信号时频分析的自动缺氧检测方法。该方法使用从 HRV 信号分量的瞬时频率和瞬时幅度提取的特征,以及使用奇异值分解和非负矩阵分解对信号时频分布进行矩阵分解得到的特征。使用支持向量机分类器对缺氧和非缺氧数据进行分类。所提出的方法在具有受控缺氧损伤的新生仔猪模型获得的数据集上进行了测试。所选的 HRV 特征与传统的频谱特征以及其他现有的缺氧检测方法相比,具有较高的性能,其灵敏度为 93.3%,特异性为 98.3%,准确性为 95.8%。这种方法对检测缺氧具有很高的预测价值,是朝着开发更准确、更可靠的人类胎儿监测用缺氧检测方法迈出的重要一步。