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Resting and Postexercise Heart Rate Detection From Fingertip and Facial Photoplethysmography Using a Smartphone Camera: A Validation Study

机译:使用智能手机相机从指尖和面部光体积描记法检测静息和运动后心率:一项验证研究

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Background Modern smartphones allow measurement of heart rate (HR) by detecting pulsatile photoplethysmographic (PPG) signals with built-in cameras from the fingertips or the face, without physical contact, by extracting subtle beat-to-beat variations of skin color. Objective The objective of our study was to evaluate the accuracy of HR measurements at rest and after exercise using a smartphone-based PPG detection app. Methods A total of 40 healthy participants (20 men; mean age 24.7, SD 5.2 years; von Luschan skin color range 14-27) underwent treadmill exercise using the Bruce protocol. We recorded simultaneous PPG signals for each participant by having them (1) facing the front camera and (2) placing their index fingertip over an iPhone’s back camera. We analyzed the PPG signals from the Cardiio-Heart Rate Monitor + 7 Minute Workout (Cardiio) smartphone app for HR measurements compared with a continuous 12-lead electrocardiogram (ECG) as the reference. Recordings of 20 seconds’ duration each were acquired at rest, and immediately after moderate- (50%-70% maximum HR) and vigorous- (70%-85% maximum HR) intensity exercise, and repeated successively until return to resting HR. We used Bland-Altman plots to examine agreement between ECG and PPG-estimated HR. The accuracy criterion was root mean square error (RMSE) ≤5 beats/min or ≤10%, whichever was greater, according to the American National Standards Institute/Association for the Advancement of Medical Instrumentation EC-13 standard. Results We analyzed a total of 631 fingertip and 626 facial PPG measurements. Fingertip PPG-estimated HRs were strongly correlated with resting ECG HR ( r =.997, RMSE=1.03 beats/min or 1.40%), postmoderate-intensity exercise ( r =.994, RMSE=2.15 beats/min or 2.53%), and postvigorous-intensity exercise HR ( r =.995, RMSE=2.01 beats/min or 1.93%). The correlation of facial PPG-estimated HR was stronger with resting ECG HR ( r =.997, RMSE=1.02 beats/min or 1.44%) than with postmoderate-intensity exercise ( r =.982, RMSE=3.68 beats/min or 4.11%) or with postvigorous-intensity exercise ( r =.980, RMSE=3.84 beats/min or 3.73%). Bland-Altman plots showed better agreement between ECG and fingertip PPG-estimated HR than between ECG and facial PPG-estimated HR. Conclusions We found that HR detection by the Cardiio smartphone app was accurate at rest and after moderate- and vigorous-intensity exercise in a healthy young adult sample. Contact-free facial PPG detection is more convenient but is less accurate than finger PPG due to body motion after exercise.
机译:背景技术现代智能手机可通过内置摄像头从指尖或面部检测脉搏式光电容积描记器(PPG)信号而无需物理接触,通过提取细微的肤色差异来测量心率(HR)。目的我们研究的目的是使用基于智能手机的PPG检测应用程序评估静止和运动后HR测量的准确性。方法采用Bruce方案,对40名健康参与者(20名男性;平均年龄24.7,SD 5.2岁; von Luschan肤色范围14-27)进行了跑步机锻炼。我们通过让每个参与者(1)面对前置摄像头,以及(2)将其食指放在iPhone的后置摄像头上同时记录PPG信号。我们以连续12导联心电图(ECG)为参考,分析了Cardiio-Heart Rate Monitor + 7分钟锻炼(Cardiio)智能手机应用程序中的PPG信号,以进行HR测量。在休息时以及在中等强度(最大HR的50%-70%)和剧烈运动(最大HR的70%-85%)之后立即获取每次20秒的记录,并连续重复直到恢复到静止的HR。我们使用Bland-Altman图来检查ECG和PPG估计的HR之间的一致性。准确度标准为均方根误差(RMSE)≤5次/分钟或≤10%,以美国国家标准协会/医疗仪器促进协会EC-13标准为准,以较高者为准。结果我们分析了总共631个指尖和626个面部PPG测量值。指尖PPG估计的HR与静息ECG HR(r = .997,RMSE = 1.03次/分或1.40%),中等强度运动(r = .994,RMSE = 2.15次/分或2.53%)密切相关,剧烈运动后HR(r = .995,RMSE = 2.01次/分钟或1.93%)。静息ECG HR时面部PPG估计HR的相关性强(r = .997,RMSE = 1.02次/分或1.44%),比中强度运动后(r = .982,RMSE = 3.68次/分或4.11)强%)或剧烈运动后(r = .980,RMSE = 3.84次/分钟或3.73%)。 Bland-Altman图显示,心电图和指尖PPG估计的HR之间的一致性好于心电图和面部PPG估计的HR之间的一致性。结论我们发现,在健康的年轻成年人样本中,通过Cardiio智能手机应用程序进行的HR检测在静止,中等强度和剧烈运动之后都是准确的。由于运动后的身体运动,非接触式面部PPG检测比手指PPG更方便,但准确性较差。

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