From the School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta (O.T.I., M.B.P., A.Q.J., A.D., A.O.B.); Division of Cardiology (S.D., T.D.M., L.K.) and Department of Bioengineering and Therapeutic Sciences (S.R.), University of California, San Francisco; and Department of Anesthesiology and Department of Biomedical Engineering, Northwestern University, Chicago, IL (M.E., J.A.H.).
Circ Heart Fail. 2018 Jan;11(1):e004313. doi: 10.1161/CIRCHEARTFAILURE.117.004313.
Remote monitoring of patients with heart failure (HF) using wearable devices can allow patient-specific adjustments to treatments and thereby potentially reduce hospitalizations. We aimed to assess HF state using wearable measurements of electrical and mechanical aspects of cardiac function in the context of exercise.
Patients with compensated (outpatient) and decompensated (hospitalized) HF were fitted with a wearable ECG and seismocardiogram sensing patch. Patients stood at rest for an initial recording, performed a 6-minute walk test, and then stood at rest for 5 minutes of recovery. The protocol was performed at the time of outpatient visit or at 2 time points (admission and discharge) during an HF hospitalization. To assess patient state, we devised a method based on comparing the similarity of the structure of seismocardiogram signals after exercise compared with rest using graph mining (graph similarity score). We found that graph similarity score can assess HF patient state and correlates to clinical improvement in 45 patients (13 decompensated, 32 compensated). A significant difference was found between the groups in the graph similarity score metric (44.4±4.9 [decompensated HF] versus 35.2±10.5 [compensated HF]; <0.001). In the 6 decompensated patients with longitudinal data, we found a significant change in graph similarity score from admission (decompensated) to discharge (compensated; 44±4.1 [admitted] versus 35±3.9 [discharged]; <0.05).
Wearable technologies recording cardiac function and machine learning algorithms can assess compensated and decompensated HF states by analyzing cardiac response to submaximal exercise. These techniques can be tested in the future to track the clinical status of outpatients with HF and their response to pharmacological interventions.
使用可穿戴设备对心力衰竭(HF)患者进行远程监测,可以根据患者的具体情况调整治疗方案,从而有可能减少住院治疗。我们旨在评估在运动背景下使用可穿戴设备测量心脏功能的电学和机械方面来评估 HF 状态。
患有代偿性(门诊)和失代偿性(住院)HF 的患者都配备了可穿戴心电图和心冲击图传感器贴片。患者在初始记录时站立休息,进行 6 分钟步行测试,然后在恢复时站立休息 5 分钟。该方案在门诊就诊时或 HF 住院期间的 2 个时间点(入院和出院)进行。为了评估患者状态,我们设计了一种方法,该方法基于使用图挖掘(图相似得分)比较运动后与休息时心冲击图信号结构的相似性。我们发现,图相似得分可以评估 HF 患者的状态,并与 45 名患者(13 名失代偿,32 名代偿)的临床改善相关。在组间发现图相似得分指标有显著差异(44.4±4.9[失代偿 HF]与 35.2±10.5[代偿 HF];<0.001)。在 6 名具有纵向数据的失代偿患者中,我们发现图相似得分从入院(失代偿)到出院(代偿)有显著变化(44±4.1[入院]与 35±3.9[出院];<0.05)。
记录心脏功能的可穿戴技术和机器学习算法可以通过分析心脏对亚最大运动的反应来评估代偿性和失代偿性 HF 状态。这些技术将来可以进行测试,以跟踪 HF 门诊患者的临床状况及其对药物干预的反应。