Kalidas V, Tamil L S
Quality of Life Technology (QoLT) Lab, Department of Electrical Engineering, The University of Texas at Dallas, 800 W Campbell Road, Richardson, TX, USA.
Physiol Meas. 2016 Aug;37(8):1253-72. doi: 10.1088/0967-3334/37/8/1253. Epub 2016 Jul 25.
In this paper, as a contribution to the Physionet/Computing in Cardiology 2015 Challenge, we present individual algorithms to accurately classify five different life threatening arrhythmias with the goal of suppressing false alarm generation in intensive care units. Information obtained by analysing electrocardiogram, photoplethysmogram and arterial blood pressure signals was utilized to develop the classification models. Prior to classification, the signals were subject to a signal pre-processing stage for quality analysis. Classification was performed using a combination of support vector machine based machine learning approach and logical analysis techniques. The predicted result for a certain arrhythmia classification model was verified by logical analysis to aid in reduction of false alarms. Separate feature vectors were formed for predicting the presence or absence of each arrhythmia, using both spectral and time-domain information. The training and test data were obtained from the Physionet/CinC Challenge 2015 database. Classification algorithms were written for two different categories of data, namely real-time and retrospective, whose data lengths were 10 s and an additional 30 s, respectively. For the real-time test dataset, sensitivity of 94% and specificity of 82% were obtained. Similarly, for the retrospective test dataset, sensitivity of 94% and specificity of 86% were obtained.
在本文中,作为对2015年生理网/心脏病学计算挑战赛的一项贡献,我们提出了用于准确分类五种不同危及生命的心律失常的个体算法,目标是抑制重症监护病房中的误报生成。通过分析心电图、光电容积脉搏波图和动脉血压信号获得的信息被用于开发分类模型。在分类之前,对信号进行质量分析的信号预处理阶段。使用基于支持向量机的机器学习方法和逻辑分析技术的组合进行分类。通过逻辑分析验证特定心律失常分类模型的预测结果,以帮助减少误报。利用频谱和时域信息形成单独的特征向量,用于预测每种心律失常的存在或不存在。训练和测试数据来自2015年生理网/CinC挑战赛数据库。针对两种不同类别的数据编写了分类算法,即实时数据和回顾性数据,其数据长度分别为10秒和另外30秒。对于实时测试数据集,获得了94%的灵敏度和82%的特异性。同样,对于回顾性测试数据集,获得了94%的灵敏度和86%的特异性。