Department of Internal Medicine B, University Medicine Greifswald, Greifswald, Germany; German Centre for Cardiovascular Research (DZHK), partner site Greifswald, Greifswald, Germany.
Department of Internal Medicine B, University Medicine Greifswald, Greifswald, Germany.
JACC Clin Electrophysiol. 2019 Feb;5(2):199-208. doi: 10.1016/j.jacep.2018.10.006. Epub 2018 Nov 28.
The WATCH AF (SmartWATCHes for Detection of Atrial Fibrillation) trial compared the diagnostic accuracy to detect atrial fibrillation (AF) by a smartwatch-based algorithm using photoplethysmographic (PPG) signals with cardiologists' diagnosis by electrocardiography (ECG).
Timely detection of AF is crucial for stroke prevention.
In this prospective, 2-center, case-control trial, a PPG pulse wave recording using a commercially available smartwatch was obtained along with Internet-enabled mobile ECG in 672 hospitalized subjects. PPG recordings were analyzed by a novel automated algorithm. Cardiologists' diagnoses were available for 650 subjects, although 142 (21.8%) datasets were not suitable for PPG analysis, among them 101 (15.1%) that were also not interpretable by the automated Internet-enabled mobile ECG algorithm, resulting in a sample size of 508 subjects (mean age 76.4 years, 225 women, 237 with AF) for the main analyses.
For the PPG algorithm, we found a sensitivity of 93.7% (95% confidence interval [CI]: 89.8% to 96.4%), a specificity of 98.2% (95% CI: 95.8% to 99.4%), and 96.1% accuracy (95% CI: 94.0% to 97.5%) to detect AF.
The results of the WATCH AF trial suggest that detection of AF using a commercially available smartwatch is in principle feasible, with very high diagnostic accuracy. Applicability of the tested algorithm is currently limited by a high dropout rate as a result of insufficient signal quality. Thus, achieving sufficient signal quality remains challenging, but real-time signal quality checks are expected to improve signal quality. Whether smartwatches may be useful complementary tools for convenient long-term AF screening in selected at-risk patients must be evaluated in larger population-based samples. (SmartWATCHes for Detection of Atrial Fibrillation [WATCH AF]:; NCT02956343).
WATCH AF(利用光电容积脉搏波探测房颤的智能手表)试验通过比较基于光电容积脉搏波(PPG)信号的智能手表算法与心电图(ECG)医生诊断检测房颤(AF)的准确性。
及时发现房颤对于预防中风至关重要。
在这项前瞻性、双中心、病例对照试验中,对 672 名住院患者同时使用市售的智能手表进行 PPG 脉搏波记录和可上网的移动 ECG。PPG 记录由一种新的自动算法进行分析。虽然 142 个(21.8%)数据集不适合 PPG 分析,但其中 101 个(15.1%)也无法由自动上网的移动 ECG 算法解释,因此对于主要分析,有 508 个数据集(平均年龄 76.4 岁,225 名女性,237 名患有 AF)可用。
对于 PPG 算法,我们发现其检测 AF 的敏感性为 93.7%(95%置信区间[CI]:89.8%至 96.4%),特异性为 98.2%(95%CI:95.8%至 99.4%),准确率为 96.1%(95%CI:94.0%至 97.5%)。
WATCH AF 试验的结果表明,使用市售智能手表检测 AF 在原理上是可行的,且具有非常高的诊断准确性。由于信号质量不足,测试算法的适用性目前受到高脱落率的限制。因此,实现足够的信号质量仍然具有挑战性,但实时信号质量检查有望改善信号质量。在更大的基于人群的样本中,必须评估智能手表是否可以作为方便的高危患者长期 AF 筛查的有用补充工具。(SmartWATCHes for Detection of Atrial Fibrillation [WATCH AF]:NCT02956343)。