MRC Centre for Reproductive Health, University of Edinburgh, Edinburgh EH16 4TJ, UK.
Centre for Clinical Brain Sciences, University of Edinburgh, Edinburgh EH16 4SB, UK.
Sensors (Basel). 2023 Jan 17;23(3):1069. doi: 10.3390/s23031069.
Actigraphy may provide new insights into clinical outcomes and symptom management of patients through passive, continuous data collection. We used the GENEActiv smartwatch to passively collect actigraphy, wrist temperature, and ambient light data from 27 participants after stroke or probable brain transient ischemic attack (TIA) over 42 periods of device wear. We computed 323 features using established algorithms and proposed 25 novel features to characterize sleep and temperature. We investigated statistical associations between the extracted features and clinical outcomes evaluated using clinically validated questionnaires to gain insight into post-stroke recovery. We subsequently fitted logistic regression models to replicate clinical diagnosis (stroke or TIA) and disability due to stroke. The model generalization performance was assessed using a leave-one-subject-out cross validation method with the selected feature subsets, reporting the area under the curve (AUC). We found that several novel features were strongly correlated (|r|>0.3) with stroke symptoms and mental health measures. Using selected novel features, we obtained an AUC of 0.766 to estimate diagnosis and an AUC of 0.749 to estimate whether disability due to stroke was present. Collectively, these findings suggest that features extracted from the temperature smartwatch sensor may reveal additional clinically useful information over and above existing actigraphy-based features.
通过被动、连续的数据收集,动作活动记录仪(Actigraphy)可能为患者的临床结果和症状管理提供新的见解。我们使用 GENEActiv 智能手表,在 42 个设备佩戴周期中,从 27 名中风或可能的短暂性脑缺血发作(TIA)患者身上被动收集动作活动记录仪、手腕温度和环境光数据。我们使用既定算法计算了 323 个特征,并提出了 25 个新特征来描述睡眠和温度。我们通过使用临床验证问卷评估的临床结果,研究了提取特征之间的统计关联,以深入了解中风后的恢复情况。我们随后拟合逻辑回归模型来复制临床诊断(中风或 TIA)和中风引起的残疾。使用选定的特征子集,我们通过留一受试者外交叉验证方法评估模型的泛化性能,报告曲线下面积(AUC)。我们发现,一些新特征与中风症状和心理健康测量指标密切相关(|r|>0.3)。使用选定的新特征,我们得到了 0.766 的 AUC 来估计诊断,0.749 的 AUC 来估计是否存在因中风引起的残疾。总之,这些发现表明,从温度智能手表传感器提取的特征可能会提供比现有的基于动作活动记录仪的特征更多的额外临床有用信息。