Alcaraz Raúl, Rieta José Joaquín
Innovation in Bioengineering Research Group, University of Castilla-La Mancha, Campus Universitario, 16071 Cuenca, Spain.
Physiol Meas. 2008 Jan;29(1):65-80. doi: 10.1088/0967-3334/29/1/005. Epub 2008 Jan 3.
The ability to predict if an atrial fibrillation (AF) episode terminates spontaneously or not through non-invasive techniques is a challenging problem of great clinical interest. This fact could avoid useless therapeutic interventions and minimize the risks for the patient. The present work introduces a robust AF prediction methodology carried out by estimating, through sample entropy (SampEn), the atrial activity (AA) organization increase prior to AF termination from the surface electrocardiogram (ECG). This regularity variation appears as a consequence of the decrease in the number of reentries wandering throughout the atrial tissue. AA was obtained from surface ECG recordings by applying a QRST cancellation technique. Next, a robust and reliable classification process for terminating and non-terminating AF episodes was developed, making use of two different wavelet decomposition strategies. Finally, the AA organization both in time and wavelet domains (bidomain) was estimated via SampEn. The methodology was validated using a training set consisting of 20 AF recordings with known termination properties and a test set of 30 recordings. All the training signals and 93.33% of the test set were correctly classified into terminating and sustained AF, obtaining 93.75% sensitivity and 92.86% specificity. It can be concluded that spontaneous AF termination can be reliably and noninvasively predicted by applying wavelet bidomain sample entropy.
通过非侵入性技术预测房颤(AF)发作是否会自发终止是一个极具临床意义的挑战性问题。这一事实可以避免无用的治疗干预,并将患者风险降至最低。目前的工作引入了一种强大的房颤预测方法,该方法通过样本熵(SampEn)从表面心电图(ECG)估计房颤终止前心房活动(AA)组织的增加。这种规律性变化是由于在整个心房组织中折返数量减少所致。通过应用QRST消除技术从表面心电图记录中获取AA。接下来,利用两种不同的小波分解策略,开发了一种用于区分终止和非终止房颤发作的强大且可靠的分类过程。最后,通过SampEn估计AA在时域和小波域(双域)的组织情况。该方法使用由20个具有已知终止特性的房颤记录组成的训练集和30个记录的测试集进行了验证。所有训练信号和93.33%的测试集被正确分类为终止和持续性房颤,灵敏度为93.75%,特异性为92.86%。可以得出结论,应用小波双域样本熵可以可靠且无创地预测房颤的自发终止。