Institute for Infocomm Research, Agency for Science Technology and Research (A*STAR), Singapore, Singapore.
SingHealth Duke-NUS Institute of Precision Medicine, Singapore, Singapore.
J Med Internet Res. 2022 Jul 29;24(7):e34669. doi: 10.2196/34669.
Consumer-grade wearable devices enable detailed recordings of heart rate and step counts in free-living conditions. Recent studies have shown that summary statistics from these wearable recordings have potential uses for longitudinal monitoring of health and disease states. However, the relationship between higher resolution physiological dynamics from wearables and known markers of health and disease remains largely uncharacterized.
We aimed to derive high-resolution digital phenotypes from observational wearable recordings and to examine their associations with modifiable and inherent markers of cardiometabolic disease risk.
We introduced a principled framework to extract interpretable high-resolution phenotypes from wearable data recorded in free-living conditions. The proposed framework standardizes the handling of data irregularities; encodes contextual information regarding the underlying physiological state at any given time; and generates a set of 66 minimally redundant features across active, sedentary, and sleep states. We applied our approach to a multimodal data set, from the SingHEART study (NCT02791152), which comprises heart rate and step count time series from wearables, clinical screening profiles, and whole genome sequences from 692 healthy volunteers. We used machine learning to model nonlinear relationships between the high-resolution phenotypes on the one hand and clinical or genomic risk markers for blood pressure, lipid, weight and sugar abnormalities on the other. For each risk type, we performed model comparisons based on Brier scores to assess the predictive value of high-resolution features over and beyond typical baselines. We also qualitatively characterized the wearable phenotypes for participants who had actualized clinical events.
We found that the high-resolution features have higher predictive value than typical baselines for clinical markers of cardiometabolic disease risk: the best models based on high-resolution features had 17.9% and 7.36% improvement in Brier score over baselines based on age and gender and resting heart rate, respectively (P<.001 in each case). Furthermore, heart rate dynamics from different activity states contain distinct information (maximum absolute correlation coefficient of 0.15). Heart rate dynamics in sedentary states are most predictive of lipid abnormalities and obesity, whereas patterns in active states are most predictive of blood pressure abnormalities (P<.001). Moreover, in comparison with standard measures, higher resolution patterns in wearable heart rate recordings are better able to represent subtle physiological dynamics related to genomic risk for cardiometabolic disease (improvement of 11.9%-22.0% in Brier scores; P<.001). Finally, illustrative case studies reveal connections between these high-resolution phenotypes and actualized clinical events, even for borderline profiles lacking apparent cardiometabolic risk markers.
High-resolution digital phenotypes recorded by consumer wearables in free-living states have the potential to enhance the prediction of cardiometabolic disease risk and could enable more proactive and personalized health management.
消费者级别的可穿戴设备可以在自由生活条件下详细记录心率和步数。最近的研究表明,这些可穿戴设备记录的汇总统计数据对于长期监测健康和疾病状态具有潜在的用途。然而,可穿戴设备的更高分辨率生理动态与已知的健康和疾病标志物之间的关系在很大程度上仍未得到充分描述。
我们旨在从观察性可穿戴设备记录中提取可解释的高分辨率表型,并研究它们与可改变和固有代谢疾病风险标志物的关联。
我们引入了一种从自由生活条件下的可穿戴设备记录中提取可解释的高分辨率表型的原则性框架。该框架标准化了数据不规则性的处理;编码了在任何给定时间底层生理状态的上下文信息;并在活动、久坐和睡眠状态下生成了一组 66 个最小冗余特征。我们将我们的方法应用于来自 SingHEART 研究(NCT02791152)的多模态数据集,该研究包括来自可穿戴设备的心率和步数时间序列、临床筛查概况以及 692 名健康志愿者的全基因组序列。我们使用机器学习来模拟高分辨率表型与血压、血脂、体重和血糖异常的临床或基因组风险标志物之间的非线性关系。对于每种风险类型,我们都基于 Brier 评分进行了模型比较,以评估高分辨率特征优于典型基线的预测价值。我们还定性地描述了实际发生临床事件的参与者的可穿戴表型。
我们发现,高分辨率特征比典型的基于年龄和性别以及静息心率的基线具有更高的预测价值,分别提高了 17.9%和 7.36%(每种情况均 P<.001)。此外,来自不同活动状态的心率动态包含不同的信息(最大绝对相关系数为 0.15)。久坐状态下的心率动态最能预测血脂异常和肥胖,而活动状态下的模式最能预测血压异常(P<.001)。此外,与标准测量相比,可穿戴心率记录中的更高分辨率模式能够更好地代表与代谢疾病基因组风险相关的微妙生理动态(Brier 评分提高了 11.9%-22.0%;P<.001)。最后,说明性案例研究揭示了这些高分辨率表型与实际临床事件之间的联系,即使对于没有明显代谢疾病风险标志物的边缘特征也是如此。
消费者可穿戴设备在自由生活状态下记录的高分辨率数字表型有可能提高代谢疾病风险的预测能力,并能够实现更积极主动和个性化的健康管理。