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通过心率复杂性分析识别患有心脏自主神经病变的糖尿病患者。

Identifying diabetic patients with cardiac autonomic neuropathy by heart rate complexity analysis.

作者信息

Khandoker Ahsan H, Jelinek Herbert F, Palaniswami Marimuthu

机构信息

Dept, of Electrical & Electronic Engineering, The University of Melbourne, Parkville, Victoria, Australia.

出版信息

Biomed Eng Online. 2009 Jan 29;8:3. doi: 10.1186/1475-925X-8-3.

Abstract

BACKGROUND

Cardiac autonomic neuropathy (CAN) in diabetes has been called a "silent killer", because so few patients realize that they suffer from it, and yet its effect can be lethal. Early sub clinical detection of CAN and intervention are of prime importance for risk stratification in preventing sudden death due to silent myocardial infarction. This study presents the usefulness of heart rate variability (HRV) and complexity analyses from short term ECG recordings as a screening tool for CAN.

METHODS

A total of 17 sets of ECG recordings during supine rest were acquired from diabetic subjects with CAN (CAN+) and without CAN (CAN-) and analyzed. Poincaré plot indexes as well as traditional time and frequency, and the sample entropy (SampEn) measure were used for analyzing variability (short and long term) and complexity of HRV respectively.

RESULTS

Reduced (p > 0.05)_Poincaré plot patterns and lower (p < 0.05) SampEn values were found in CAN+ group, which could be a practical diagnostic and prognostic marker. Classification Trees methodology generated a simple decision tree for CAN+ prediction including SampEn and Poincaré plot indexes with a sensitivity reaching 100% and a specificity of 75% (percentage of agreement 88.24%).

CONCLUSION

Our results demonstrate the potential utility of SampEn (a complexity based estimator) of HRV in identifying asymptomatic CAN.

摘要

背景

糖尿病性心脏自主神经病变(CAN)被称为“沉默的杀手”,因为很少有患者意识到自己患有此病,但其影响可能是致命的。对CAN进行早期亚临床检测和干预对于预防因无症状心肌梗死导致的猝死进行风险分层至关重要。本研究展示了基于短期心电图记录的心率变异性(HRV)和复杂性分析作为CAN筛查工具的实用性。

方法

从患有CAN(CAN+)和未患有CAN(CAN-)的糖尿病患者中获取了总共17组仰卧休息时的心电图记录并进行分析。分别使用庞加莱图指标以及传统的时间和频率指标,以及样本熵(SampEn)测量来分析HRV的变异性(短期和长期)和复杂性。

结果

在CAN+组中发现庞加莱图模式减少(p>0.05)且SampEn值较低(p<0.05),这可能是一种实用的诊断和预后标志物。分类树方法生成了一个用于预测CAN+的简单决策树,包括SampEn和庞加莱图指标,灵敏度达到100%,特异性为75%(一致性百分比为88.24%)。

结论

我们的结果证明了HRV的SampEn(一种基于复杂性的估计器)在识别无症状CAN方面的潜在效用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3526/2645418/810975d6db86/1475-925X-8-3-1.jpg

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