Nollo Giandomenico, Marconcini Mattia, Faes Luca, Bovolo Francesca, Ravelli Flavia, Bruzzone Lorenzo
Biophysics and Biosignals Laboratory, Department of Physics, University of Trento, 38050 Trento, Italy.
IEEE Trans Biomed Eng. 2008 Sep;55(9):2275-85. doi: 10.1109/TBME.2008.923155.
This paper presents an automatic system for the analysis and classification of atrial fibrillation (AF) patterns from bipolar intracardiac signals. The system is made up of: 1) a feature-extraction module that defines and extracts a set of measures potentially useful for characterizing AF types on the basis of their degree of organization; 2) a feature-selection module (based on the Jeffries-Matusita distance and a branch and bound search algorithm) identifying the best subset of features for discriminating different AF types; and 3) a support vector machine technique-based classification module that automatically discriminates the AF types according to the Wells' criteria. The automatic system was applied on 100 intracardiac AF signal strips and on a selection of 11 representative features, demonstrating: a) the possibility to properly identify the most significant features for the discrimination of AF types; b) higher accuracy (97.7% using the seven most informative features) than the traditional maximum likelihood classifier; and c) effectiveness in AF classification also with few training samples (accuracy = 88.3% with only five training signals). Finally, the system identifies a combination of indices characterizing changes of morphology of atrial activation waves and perturbation of the isoelectric line as the most effective in separating the AF types.
本文介绍了一种用于分析和分类来自双极心内信号的心房颤动(AF)模式的自动系统。该系统由以下部分组成:1)一个特征提取模块,该模块基于房颤类型的组织程度定义并提取一组可能有助于表征房颤类型的测量值;2)一个特征选择模块(基于杰弗里斯-马图西塔距离和分支定界搜索算法),用于识别区分不同房颤类型的最佳特征子集;3)一个基于支持向量机技术的分类模块,该模块根据韦尔斯标准自动区分房颤类型。该自动系统应用于100条心内房颤信号条带和11个代表性特征的选择,证明了:a)有可能正确识别区分房颤类型的最重要特征;b)比传统的最大似然分类器具有更高的准确率(使用七个信息量最大的特征时为97.7%);c)即使训练样本很少(仅五个训练信号时准确率为88.3%),在房颤分类中也有效。最后,该系统确定了一组表征心房激活波形态变化和等电位线扰动的指标组合,作为区分房颤类型最有效的指标。