Zhang Chunbo, Yu Kunyao, Jin Zhe, Bao Yingcong, Zhang Cheng, Liao Jiping, Wang Guangfa
Department of Respiratory and Critical Care Medicine, Peking University First Hospital, Beijing, China.
Digit Health. 2025 Mar 13;11:20552076251320730. doi: 10.1177/20552076251320730. eCollection 2025 Jan-Dec.
Intelligent wearable devices have potential for chronic obstructive pulmonary disease (COPD) monitoring, but the effectiveness of combining cough and blowing sounds for disease assessment is unclear.
The objective was to assess COPD severity via physiological parameters and audio data collected by a smartwatch.
COPD patients underwent lung function tests, electrocardiograms, blood gas analysis, and 6-min walk tests. The patients' peripheral arterial oxygen saturation (SpO), heart rate variability (HRV), heart rate (HR), and respiratory rate (RR) were continuously monitored via a smartwatch for 7-14 days, and voluntary cough and forceful blowing sounds were recorded twice daily. The HR, SpO, and RR were categorized into all-day, sleep, and wake periods and summarized using the mean, standard deviation, median, 25th percentile, 75th percentile and percent variation. The correlations among lung function, physiological parameters, and audio data were analyzed to develop a model for predicting COPD severity.
Twenty-nine stable patients, with a mean age of 67.0 ± 5.8 years, were enrolled, and 89.7% were male. HR, HRV, RR, cough sounds, and blowing sounds were significantly correlated with the Global Initiative for Chronic Obstructive Lung Disease (GOLD) grade, with cough sounds showing the highest correlation (r = 0.7617, < .001). Cough sounds also had the strongest correlation with the mean 6-minute walking distance (r = 0.6847, < .001), whereas blowing sounds had the strongest correlation with the Body mass index, airflow Obstruction, Dyspnea, and Exercise capacity index (r = -0.6749, < .001). A logistic regression model using the RR and blowing sounds as key predictors achieved accuracies of 0.77-0.89 in determining the GOLD grade, with a Cohen's kappa coefficient of 0.6757.
Audio data were more strongly correlated with lung function in COPD patients than were physiological parameters. A smartwatch with audio collection capabilities effectively assessed COPD severity.
ClinicalTrials.gov NCT05551169.
智能可穿戴设备在慢性阻塞性肺疾病(COPD)监测方面具有潜力,但结合咳嗽声和吹气声进行疾病评估的有效性尚不清楚。
通过智能手表收集的生理参数和音频数据评估COPD的严重程度。
COPD患者接受肺功能测试、心电图、血气分析和6分钟步行测试。通过智能手表连续7至14天监测患者的外周动脉血氧饱和度(SpO)、心率变异性(HRV)、心率(HR)和呼吸频率(RR),并每天记录两次自主咳嗽声和用力吹气声。将HR、SpO和RR分为全天、睡眠和清醒时段,并使用均值、标准差、中位数、第25百分位数、第75百分位数和变异百分比进行汇总。分析肺功能、生理参数和音频数据之间的相关性,以建立预测COPD严重程度的模型。
纳入29例稳定患者,平均年龄67.0±5.8岁,89.7%为男性。HR、HRV、RR、咳嗽声和吹气声与慢性阻塞性肺疾病全球倡议(GOLD)分级显著相关,咳嗽声相关性最高(r = 0.7617,<0.001)。咳嗽声与平均6分钟步行距离的相关性也最强(r = 0.6847,<0.001),而吹气声与体重指数、气流阻塞、呼吸困难和运动能力指数的相关性最强(r = -0.6749,<0.001)。以RR和吹气声作为关键预测指标的逻辑回归模型在确定GOLD分级时的准确率为0.77 - 0.89,Cohen's kappa系数为0.6757。
在COPD患者中,音频数据与肺功能的相关性比生理参数更强。具有音频收集功能的智能手表可有效评估COPD的严重程度。
ClinicalTrials.gov NCT05551169。