Departamento de Ingeniería Eléctrica, Electrónica y Computación, Universidad Nacional de Colombia, Km. 9, Vía al Aeropuerto, Campus la Nubia, Caldas, Manizales, Colombia.
Ann Biomed Eng. 2010 Aug;38(8):2716-32. doi: 10.1007/s10439-010-0077-4. Epub 2010 Jun 2.
The detection of murmurs from phonocardiographic recordings is an interesting problem that has been addressed before using a wide variety of techniques. In this context, this article explores the capabilities of an enhanced time-frequency representation (TFR) based on a time-varying autoregressive model. The parametric technique is used to compute the TFR of the signal, which serves as a complete characterization of the process. Parametric TFRs contain a large quantity of data, including redundant and irrelevant information. In order to extract the most relevant features from TFRs, two specific approaches for dimensionality reduction are presented: feature extraction by linear decomposition, and tiling partition of the t-f plane. In the first approach, the feature extraction was carried out by means of eigenplane-based PCA and PLS techniques. Likewise, a regular partition and a refined Quadtree partition of the t-f plane were tested for the tiled-TFR approach. As a result, the feature extraction methodology presented, which searches for the most relevant information immersed on the TFR, has demonstrated to be very effective. The features extracted were used to feed a simple k-nn classifier. The experiments were carried out using 45 phonocardiographic recordings (26 normal and 19 records with murmurs), segmented to extract 548 representative individual beats. The results using these methods point out that better accuracy and flexibility can be accomplished to represent non-stationary PCG signals, showing evidences of improvement with respect to other approaches found in the literature. The best accuracy obtained was 99.06 +/- 0.06%, evidencing high performance and stability. Because of its effectiveness and simplicity of implementation, the proposed methodology can be used as a simple diagnostic tool for primary health-care purposes.
心音记录的杂音检测是一个有趣的问题,以前已经使用了多种技术来解决。在这种情况下,本文探讨了基于时变自回归模型的增强时频表示(TFR)的能力。参数技术用于计算信号的 TFR,它作为过程的完整特征化。参数 TFR 包含大量数据,包括冗余和不相关的信息。为了从 TFR 中提取最相关的特征,提出了两种特定的降维方法:基于线性分解的特征提取和 t-f 平面的平铺分区。在第一种方法中,通过基于特征平面的 PCA 和 PLS 技术进行特征提取。同样,为了平铺-TFR 方法,测试了 t-f 平面的规则分区和细化四叉树分区。结果表明,所提出的特征提取方法搜索 TFR 中最相关的信息,非常有效。提取的特征用于馈送简单的 k-nn 分类器。使用 45 个心音记录(26 个正常和 19 个有杂音的记录)进行实验,分段提取 548 个代表性的个体节拍。使用这些方法的结果表明,能够更好地表示非平稳 PCG 信号,与文献中发现的其他方法相比,表现出改进的证据。获得的最佳准确性为 99.06 +/- 0.06%,表明性能和稳定性高。由于其有效性和实现的简单性,所提出的方法可以用作初级保健目的的简单诊断工具。