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基于心率变异性的充血性心力衰竭识别的双谱分析和遗传算法。

Bispectral analysis and genetic algorithm for congestive heart failure recognition based on heart rate variability.

机构信息

Department of Electrical Engineering, National Chung Cheng University, Ming-Hsiung Township, Chia-Yi County, Taiwan.

出版信息

Comput Biol Med. 2012 Aug;42(8):816-25. doi: 10.1016/j.compbiomed.2012.06.005. Epub 2012 Jul 17.

Abstract

This paper proposes a congestive heart failure (CHF) recognition method that includes features calculated from the bispectrum of heart rate variability (HRV) diagrams and a genetic algorithm (GA) for feature selection. The roles of the bispectrum-related features and the GA feature selector are investigated. Features calculated from the subband regions of the HRV bispectrum are added into a feature set containing only regular time-domain and frequency-domain features. A support vector machine (SVM) is employed as the classifier. A feature selector based on genetic algorithm proceeds to select the most effective features for the classifier. The results confirm the effectiveness of including bispectrum-related features for promoting the discrimination power of the classifier. When compared with the other two methods in the literature, the proposed method (without GA) outperforms both of them with a high accuracy of 96.38%. More than 3.14% surpluses in accuracies are observed. The application of GA as a feature selector further elevates the recognition accuracy from 96.38% to 98.79%. When compared to the Isler and Kuntalp's impressive results recently published in the literature that also uses GA for feature selection, the proposed method (with GA) outperforms them with more than 2.4% surpass in the recognition accuracy. These results confirm the significance of recruiting bispectrum-related features in a CHF classification system. Moreover, the application of GA as feature selector can further improve the performance of the classifier.

摘要

本文提出了一种基于心率变异性(HRV)双谱特征和遗传算法(GA)特征选择的充血性心力衰竭(CHF)识别方法。研究了双谱相关特征和 GA 特征选择器的作用。将从 HRV 双谱子带区域计算得到的特征添加到仅包含常规时域和频域特征的特征集中。支持向量机(SVM)被用作分类器。基于遗传算法的特征选择器用于选择对分类器最有效的特征。结果证实了包含双谱相关特征对于提高分类器的判别能力的有效性。与文献中的另外两种方法相比,本文提出的方法(无 GA)的准确率为 96.38%,优于另外两种方法。准确率提高了 3.14%以上。应用 GA 作为特征选择器可进一步将识别准确率从 96.38%提高到 98.79%。与最近文献中 Isler 和 Kuntalp 使用 GA 进行特征选择的令人印象深刻的结果相比,本文提出的方法(带 GA)的识别准确率提高了 2.4%以上。这些结果证实了在 CHF 分类系统中招募双谱相关特征的重要性。此外,应用 GA 作为特征选择器可以进一步提高分类器的性能。

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