Ceolini Enea, Brunner Iris, Bunschoten Johanna, Majoie Marian H J M, Thijs Roland D, Ghosh Arko
Cognitive Psychology Unit, Institute of Psychology, Leiden University, Wassenaarseweg 52, Leiden 2333, the Netherlands.
IRIS Brunner, Hammel Neurocenter and University Research Clinic, Aarhus University, Aarhus, Denmark.
iScience. 2022 Aug 5;25(8):104792. doi: 10.1016/j.isci.2022.104792. eCollection 2022 Aug 19.
Smartphones offer unique opportunities to trace the convoluted behavioral patterns accompanying healthy aging. Here we captured smartphone touchscreen interactions from a healthy population (N = 684, ∼309 million interactions) spanning 16 to 86 years of age and trained a decision tree regression model to estimate chronological age based on the interactions. The interactions were clustered according to their next interval dynamics to quantify diverse smartphone behaviors. The regression model well-estimated the chronological age in health (mean absolute error = 6 years, R = 0.8). We next deployed this model on a population of stroke survivors (N = 41) to find larger prediction errors such that the estimated age was advanced by 6 years. A similar pattern was observed in people with epilepsy (N = 51), with prediction errors advanced by 10 years. The smartphone behavioral model trained in health can be used to study altered aging in neurological diseases.
智能手机为追踪伴随健康衰老的复杂行为模式提供了独特的机会。在此,我们收集了年龄在16至86岁之间的健康人群(N = 684,约3.09亿次交互)的智能手机触摸屏交互数据,并训练了一个决策树回归模型,以根据这些交互来估计实际年龄。根据交互的下一个时间间隔动态对交互进行聚类,以量化各种智能手机行为。该回归模型能很好地估计健康人群的实际年龄(平均绝对误差 = 6岁,R = 0.8)。接下来,我们将此模型应用于中风幸存者群体(N = 41),发现预测误差更大,估计年龄提前了6岁。在癫痫患者(N = 51)中也观察到了类似的模式,预测误差提前了10年。在健康人群中训练的智能手机行为模型可用于研究神经疾病中衰老的改变。