Sorin CRM SAS, Clamart, France.
IEEE Trans Biomed Eng. 2012 Nov;59(11):3009-15. doi: 10.1109/TBME.2012.2212019. Epub 2012 Aug 7.
Previous studies have shown that cardiac microacceleration signals, recorded either cutaneously, or embedded into the tip of an endocardial pacing lead, provide meaningful information to characterize the cardiac mechanical function. This information may be useful to personalize and optimize the cardiac resynchronization therapy, delivered by a biventricular pacemaker, for patients suffering from chronic heart failure (HF). This paper focuses on the improvement of a previously proposed method for the estimation of the systole period from a signal acquired with a cardiac microaccelerometer (SonR sensor, Sorin CRM SAS, France). We propose an optimal algorithm switching approach, to dynamically select the best configuration of the estimation method, as a function of different control variables, such as the signal-to-noise ratio or heart rate. This method was evaluated on a database containing recordings from 31 patients suffering from chronic HF and implanted with a biventricular pacemaker, for which various cardiac pacing configurations were tested. Ultrasound measurements of the systole period were used as a reference and the improved method was compared with the original estimator. A reduction of 11% on the absolute estimation error was obtained for the systole period with the proposed algorithm switching approach.
先前的研究表明,通过记录心外膜加速度信号或内芯起搏导线尖端的加速度信号,可以提供有意义的信息来描述心脏的机械功能。这些信息可能有助于为患有慢性心力衰竭 (HF) 的患者个性化和优化心脏再同步治疗,通过双心室起搏器进行。本文重点介绍了一种从心脏微加速度计(Sorin CRM SAS 的 SonR 传感器)获取的信号中估计收缩期的方法的改进。我们提出了一种最优算法切换方法,可根据不同的控制变量(如信噪比或心率)动态选择估计方法的最佳配置。该方法在包含 31 名患有慢性 HF 并植入双心室起搏器的患者记录的数据库上进行了评估,对各种心脏起搏配置进行了测试。收缩期的超声测量被用作参考,并将改进的方法与原始估计器进行了比较。使用所提出的算法切换方法,收缩期的绝对估计误差减少了 11%。