Pereira Tânia, Paiva Joana S, Correia Carlos, Cardoso João
Physics Department, Instrumentation Center, University of Coimbra, Rua Larga, 3004-516, Coimbra, Portugal.
Physics Department, University of Coimbra, Coimbra, Portugal.
Med Biol Eng Comput. 2016 Jul;54(7):1049-59. doi: 10.1007/s11517-015-1393-5. Epub 2015 Sep 24.
The measurement and analysis of the arterial pulse waveform (APW) are the means for cardiovascular risk assessment. Optical sensors represent an attractive instrumental solution to APW assessment due to their truly non-contact nature that makes the measurement of the skin surface displacement possible, especially at the carotid artery site. In this work, an automatic method to extract and classify the acquired data of APW signals and noise segments was proposed. Two classifiers were implemented: k-nearest neighbours and support vector machine (SVM), and a comparative study was made, considering widely used performance metrics. This work represents a wide study in feature creation for APW. A pool of 37 features was extracted and split in different subsets: amplitude features, time domain statistics, wavelet features, cross-correlation features and frequency domain statistics. The support vector machine recursive feature elimination was implemented for feature selection in order to identify the most relevant feature. The best result (0.952 accuracy) in discrimination between signals and noise was obtained for the SVM classifier with an optimal feature subset .
动脉脉搏波形(APW)的测量与分析是心血管风险评估的手段。光学传感器因其真正的非接触特性成为APW评估颇具吸引力的仪器解决方案,这种特性使得测量皮肤表面位移成为可能,尤其是在颈动脉部位。在这项工作中,提出了一种自动方法来提取和分类所采集的APW信号数据及噪声段。实现了两种分类器:k近邻分类器和支持向量机(SVM),并考虑广泛使用的性能指标进行了对比研究。这项工作是对APW特征创建的广泛研究。提取了一组37个特征并将其划分为不同子集:幅度特征、时域统计量、小波特征、互相关特征和频域统计量。为了识别最相关的特征,实施了支持向量机递归特征消除以进行特征选择。对于具有最优特征子集的SVM分类器,在信号与噪声判别方面获得了最佳结果(准确率为0.952)。