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滞后分段庞加莱图分析在扩张型心肌病患者危险分层中的应用。

Lagged segmented Poincaré plot analysis for risk stratification in patients with dilated cardiomyopathy.

机构信息

Department of Medical Engineering and Biotechnology, University of Applied Sciences Jena, Jena, Germany.

出版信息

Med Biol Eng Comput. 2012 Jul;50(7):727-36. doi: 10.1007/s11517-012-0925-5. Epub 2012 Jun 12.

Abstract

The objectives of this study were to introduce a new type of heart-rate variability analysis improving risk stratification in patients with idiopathic dilated cardiomyopathy (DCM) and to provide additional information about impaired heart beat generation in these patients. Beat-to-beat intervals (BBI) of 30-min ECGs recorded from 91 DCM patients and 21 healthy subjects were analyzed applying the lagged segmented Poincaré plot analysis (LSPPA) method. LSPPA includes the Poincaré plot reconstruction with lags of 1-100, rotating the cloud of points, its normalized segmentation adapted to their standard deviations, and finally, a frequency-dependent clustering. The lags were combined into eight different clusters representing specific frequency bands within 0.012-1.153 Hz. Statistical differences between low- and high-risk DCM could be found within the clusters II-VIII (e.g., cluster IV: 0.033-0.038 Hz; p = 0.0002; sensitivity = 85.7 %; specificity = 71.4 %). The multivariate statistics led to a sensitivity of 92.9 %, specificity of 85.7 % and an area under the curve of 92.1 % discriminating these patient groups. We introduced the LSPPA method to investigate time correlations in BBI time series. We found that LSPPA contributes considerably to risk stratification in DCM and yields the highest discriminant power in the low and very low-frequency bands.

摘要

本研究旨在介绍一种新的心搏变异率分析方法,以改善特发性扩张型心肌病(DCM)患者的危险分层,并为这些患者的心跳生成受损提供更多信息。从 91 例 DCM 患者和 21 例健康受试者的 30 分钟 ECG 中分析了逐搏间期(BBI),应用滞后分段 Poincaré 图分析(LSPPA)方法。LSPPA 包括滞后 1-100 的 Poincaré 图重建,旋转点云,其标准化分段适应其标准差,最后进行频率相关聚类。滞后被组合成八个不同的簇,代表 0.012-1.153 Hz 内的特定频带。在低危和高危 DCM 之间可以在簇 II-VIII 中找到统计学差异(例如,簇 IV:0.033-0.038 Hz;p=0.0002;sensitivity=85.7%;specificity=71.4%)。多变量统计导致这些患者组的敏感性为 92.9%,特异性为 85.7%,曲线下面积为 92.1%。我们引入了 LSPPA 方法来研究 BBI 时间序列中的时间相关性。我们发现 LSPPA 对 DCM 的危险分层有很大贡献,并在低和极低频率带中产生最高的判别能力。

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