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Detection of Congestive Heart Failure using Renyi entropy

机译:利用仁谊熵检测充血性心力衰竭

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Congestive Heart Failure (CHF) is a disease caused by the inability of the heart to supply the needs of the body in terms of oxygen and perfusion. Detection and diagnosis of CHF is difficult and requires a battery of tests, which include the electrocardiogram (ECG). Automated processing of the ECG signal and in particular heart rate variability (HRV) analysis holds great promise for diagnosis of CHF and more generally in assessing cardiac health, especially for personalized mobile health. However, recording the full 12-lead ECG is a relatively invasive procedure and for that reason it is of interest to determine what can be deduced from the much less intensive measurement of heart rate (RR interval) alone. In addition to calculating SDNN and, RMSSD, which when combined gave an accuracy of 78.8% with the Nearest Neighbour classifier. The best Renyi entropy result was an accuracy of 66.7% using Nearest Neighbour. Combining the best Renyi entropy results with SDNN and RMSSD led to an overall accuracy of 87.9% with sensitivity of 80% and specificity of 94.4%. In this work we have shown that applying Renyi entropy in addition to standard time domain measures identified CHF with higher accuracy than using time domain measures only. In addition, Renyi entropy exponents provide further information about the time signal characteristics that may be important in clinical decision making.
机译:充血性心力衰竭(CHF)是由心脏无法满足人体对氧气和灌注的需求所引起的疾病。 CHF的检测和诊断非常困难,需要一系列测试,包括心电图(ECG)。 ECG信号的自动处理,尤其是心率变异性(HRV)分析,对于CHF的诊断,尤其是在评估心脏健康,尤其是个性化移动健康方面,具有广阔的前景。但是,记录完整的12导联心电图是一个相对侵入性的过程,因此,确定可以从强度较低的单独心率(RR间隔)测量中得出的结论是很有意义的。除了计算SDNN和RMSSD以外,使用最近邻分类器结合使用时的准确度为78.8%。使用最近邻居,最佳的仁义熵结果是66.7%的准确度。将最佳的Renyi熵结果与SDNN和RMSSD相结合,可以使总体准确度达到87.9%,灵敏度为80%,特异性为94.4%。在这项工作中,我们表明,除标准时域测度外,还应用Renyi熵可以比仅使用时域测度更准确地确定CHF。此外,仁义熵指数还提供了有关时间信号特征的更多信息,这些信息可能在临床决策中很重要。

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