Haslam Bryan, Gordhandas Ankit, Ricciardi Catherine, Verghese George, Heldt Thomas
Computational Physiology and Clinical Inference Group, ResearchLaboratory of Electronics, Massachusetts Institute of Technology, CambridgeMA, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2011;2011:1729-32. doi: 10.1109/IEMBS.2011.6090495.
Medical electronic systems are generating ever larger data sets from a variety of sensors and devices. Such systems are also being packaged in wearable designs for easy and broad use. The large volume of data and the constraints of low-power, extended-duration, and wireless monitoring impose the need for on-chip processing to distill clinically relevant information from the raw data. The higher-level information, rather than the raw data, is what needs to be transmitted. We present one example of information processing for continuous, high-sampling-rate data collected from wearable and portable devices. A wearable cardiac and motion monitor designed by colleagues at MIT simultaneously records electrocardiogram (ECG) and 3-axis acceleration to onboard memory, in an ambulatory setting. The acceleration data is used to generate a continuous estimate of physical activity. Additionally, we use a Portapres continuous blood pressure monitor to concurrently record the arterial blood pressure (ABP) waveform. To help reduce noise, which is an increased challenge in ambulatory monitoring, we use both the ECG and ABP waveforms to generate a robust measure of heart rate from noisy data. We also generate an overall signal abnormality index to aid in the interpretation of the results. Two important cardiovascular quantities, namely cardiac output (CO) and total peripheral resistance (TPR), are then derived from this data over a sequence of physical activities. CO and TPR can be estimated (to within a scale factor) from heart rate, pulse pressure and mean arterial blood pressure, which in turn are directly obtained from the ECG and ABP signals. Data was collected on 10 healthy subjects. The derived quantities vary in a manner that is consistent with known physiology. Further work remains to correlate these values with the cardiac health state.
医疗电子系统正从各种传感器和设备中生成越来越大的数据集。此类系统也正被封装成可穿戴设计,以便于轻松广泛使用。大量的数据以及低功耗、长时间续航和无线监测的限制,使得需要进行片上处理,以便从原始数据中提取临床相关信息。需要传输的是更高层次的信息,而非原始数据。我们给出了一个针对从可穿戴和便携式设备收集的连续、高采样率数据进行信息处理的示例。麻省理工学院的同事设计的一款可穿戴心脏和运动监测器,在动态环境中同时将心电图(ECG)和三轴加速度记录到板载存储器中。加速度数据用于生成身体活动的连续估计值。此外,我们使用一款连续血压监测仪同时记录动脉血压(ABP)波形。为了帮助减少噪声(这在动态监测中是一个更大的挑战),我们利用ECG和ABP波形从有噪声的数据中生成可靠的心率测量值。我们还生成一个总体信号异常指数,以辅助结果的解读。然后,从一系列身体活动的数据中得出两个重要的心血管参数,即心输出量(CO)和总外周阻力(TPR)。CO和TPR可以(在一个比例因子范围内)从心率、脉压和平均动脉血压估计得出,而这些又直接从ECG和ABP信号中获得。我们收集了10名健康受试者的数据。得出的参数变化方式与已知生理学一致。进一步的工作仍需将这些值与心脏健康状态相关联。