Gero PTE. LTD., Singapore 409051, Singapore.
Moscow Institute of Physics and Technology, Moscow Region 141700, Russia.
Aging (Albany NY). 2021 Mar 14;13(6):7900-7913. doi: 10.18632/aging.202816.
Biological age acceleration (BAA) models based on blood tests or DNA methylation emerge as a standard for quantitative characterizations of the aging process. We demonstrate that deep neural networks trained to predict morbidity risk from wearable sensor data can provide a high-quality and cheap alternative for BAA determination. The GeroSense BAA model was trained and validated using steps per minute recordings from 103,830 one-week long and 2,599 of up to 2 years-long longitudinal samples and exhibited a superior association with life-expectancy over the average number of steps per day in, e.g., groups stratified by professional occupations. The association between the BAA and effects of lifestyles, the prevalence of future incidence of diseases was comparable to that of BAA from models based on blood test results. Wearable sensors let sampling of BAA fluctuations at time scales corresponding to days and weeks and revealed the divergence of organism state recovery time (resilience) as a function of chronological age. The number of individuals suffering from the lack of resilience increased exponentially with age at a rate compatible with Gompertz mortality law. We speculate that due to the stochastic character of BAA fluctuations, its mean and auto-correlation properties together comprise the minimum set of biomarkers of aging in humans.
基于血液检测或 DNA 甲基化的生物年龄加速 (BAA) 模型已成为定量描述衰老过程的标准。我们证明,经过训练可从可穿戴传感器数据预测发病率风险的深度神经网络,可以为 BAA 测定提供高质量且廉价的替代方案。使用来自 103830 个为期一周和 2599 个长达两年的纵向样本的每分钟步数记录来训练和验证 GeroSense BAA 模型,与例如按职业分层的组中的每天平均步数相比,它与预期寿命的相关性更高。BAA 与生活方式的影响之间的关联,以及未来疾病发病率的流行情况,与基于血液检测结果的模型的 BAA 关联相当。可穿戴传感器可以在与天和周对应的时间尺度上对 BAA 波动进行采样,并揭示了生物体状态恢复时间(弹性)作为与年龄相关的函数的差异。缺乏弹性的个体数量随年龄呈指数增长,增长率与 Gompertz 死亡率定律相匹配。我们推测,由于 BAA 波动的随机性,其均值和自相关特性共同构成了人类衰老的最小一组生物标志物。