National-Local Joint Engineering Research Center of Rehabilitation Medicine Technology, Fujian University of Traditional Chinese Medicine, Fuzhou, China.
College of Rehabilitation Medicine, Fujian University of Traditional Chinese Medicine, Fuzhou, China.
Front Public Health. 2022 Oct 28;10:1036886. doi: 10.3389/fpubh.2022.1036886. eCollection 2022.
Using wrist-wearable sensors to ecological transient assessment may provide a more valid assessment of physical activity, sedentary time, sleep and circadian rhythm than self-reported questionnaires, but has not been used widely to study the association with mild cognitive impairment and their characteristics.
31 normal cognitive ability participants and 68 MCI participants were monitored with tri-axial accelerometer and nocturnal photo volumetric pulse wave signals for 14 days. Two machine learning algorithms: gradient boosting decision tree and eXtreme gradient boosting were constructed using data on daytime physical activity, sedentary time and nighttime physiological functions, including heart rate, heart rate variability, respiratory rate and oxygen saturation, combined with subjective scale features. The accuracy, precision, recall, F1 value, and AUC of the different models are compared, and the training and model effectiveness are validated by the subject-based leave-one-out method.
The low physical activity state was higher in the MCI group than in the cognitively normal group between 8:00 and 11:00 ( < 0.05), the daily rhythm trend of the high physical activity state was generally lower in the MCI group than in the cognitively normal group ( < 0.05). The peak rhythms in the sedentary state appeared at 12:00-15:00 and 20:00. The peak rhythms of rMSSD, HRV high frequency output power, and HRV low frequency output power in the 6h HRV parameters at night in the MCI group disappeared at 3:00 a.m., and the amplitude of fluctuations decreased; the amplitude of fluctuations of LHratio nocturnal rhythm increased and the phase was disturbed; the oxygen saturation was between 90 and 95% and less than 90% were increased in all time periods ( < 0.05). The F1 value of the two machine learning algorithms for MCI classification of multi-feature data combined with subjective scales were XGBoost (78.02) and GBDT (84.04).
By collecting PSQI Scale data combined with circadian rhythm characteristics monitored by wrist-wearable sensors, we are able to construct XGBoost and GBDT machine learning models with good discrimination, thus providing an early warning solution for identifying family and community members with high risk of MCI.
使用可穿戴腕部传感器进行生态瞬变评估可能比自我报告问卷更能有效评估身体活动、久坐时间、睡眠和昼夜节律,但尚未广泛用于研究与轻度认知障碍的关联及其特征。
31 名认知正常的参与者和 68 名 MCI 参与者佩戴三轴加速度计和夜间光容积脉搏波信号进行 14 天监测。使用白天身体活动、久坐时间和夜间生理功能(包括心率、心率变异性、呼吸率和氧饱和度)的数据,结合主观量表特征,构建了两种机器学习算法:梯度提升决策树和极端梯度提升。比较了不同模型的准确性、精度、召回率、F1 值和 AUC,并通过基于主题的留一法验证了训练和模型有效性。
MCI 组中,8:00 至 11:00 之间的低活动状态高于认知正常组(<0.05),MCI 组中高活动状态的日节律趋势普遍低于认知正常组(<0.05)。在静息状态下的峰值节律出现在 12:00-15:00 和 20:00。在夜间 HRV 参数中,rMSSD、HRV 高频输出功率和 HRV 低频输出功率的 6 小时 HRV 参数的峰值节律在 MCI 组中消失在凌晨 3:00,波动幅度减小;LHratio 夜间节律的波动幅度增加,相位紊乱;氧饱和度在所有时间段内均增加,低于 90%和 90%(<0.05)。XGBoost(78.02)和 GBDT(84.04)两种机器学习算法对多特征数据与主观量表相结合的 MCI 分类的 F1 值。
通过收集 PSQI 量表数据并结合腕戴式传感器监测的昼夜节律特征,我们能够构建具有良好判别能力的 XGBoost 和 GBDT 机器学习模型,从而为识别家庭和社区中具有 MCI 高风险的成员提供预警解决方案。