IEEE Trans Biomed Eng. 2019 Jan;66(1):246-256. doi: 10.1109/TBME.2018.2836187. Epub 2018 May 18.
Heart rate is an important physiological parameter to assess the cardiac condition of an individual and is traditionally determined by attaching multiple electrodes on the chest of a subject to record the electrical activity of the heart. The installation and handling complexities of such systems does not prove feasible for a user to undergo a long-term monitoring in the home settings. A small-sized, battery-operated wearable monitoring device is placed on the suprasternal notch at neck to record acoustic signals containing information about breathing and cardiac sounds. The heart sounds obtained are heavily corrupted by the respiratory cycles and other external artifacts. This paper presents a novel algorithm for reliably extracting the heart rate from such acoustic recordings, keeping in mind the constraints posed by the wearable technology. The methodology constructs the Hilbert energy envelope of the signal by calculating its instantaneous characteristics to segment and classify a cardiac cycle into S1 and S2 sounds using their timing characteristics. The algorithm is tested on a dataset consisting of 13 subjects with an approximate data length of 75 h and achieves an accuracy of 94.34%, an RMS error of 3.96 bpm and a correlation coefficient of 0.93 with reference to a commercial device in use.
心率是评估个体心脏状况的一个重要生理参数,传统上通过在受试者胸部粘贴多个电极来记录心脏的电活动来确定心率。这种系统的安装和操作复杂性对于用户来说,在家庭环境中进行长期监测并不可行。一个小型电池操作的可穿戴监测设备放置在颈部胸骨上切迹处,以记录包含呼吸和心音信息的声信号。获得的心音受到呼吸周期和其他外部伪影的严重干扰。本文提出了一种从这种声学记录中可靠地提取心率的新算法,同时考虑到可穿戴技术带来的限制。该方法通过计算信号的瞬时特性来构建信号的希尔伯特能量包络,利用其定时特性将心动周期分段并分类为 S1 和 S2 声音。该算法在包含 13 名受试者的数据集上进行了测试,该数据集的近似数据长度为 75 小时,与正在使用的商业设备相比,其准确率为 94.34%,均方根误差为 3.96 bpm,相关系数为 0.93。