Oravecz Zita, Harrington Karra D, Hakun Jonathan G, Katz Mindy J, Wang Cuiling, Zhaoyang Ruixue, Sliwinski Martin J
Department of Human Development and Family Studies, Pennsylvania State University, University Park, PA, United States.
Institute for Computational and Data Sciences, Pennsylvania State University, University Park, PA, United States.
Front Aging Neurosci. 2022 Sep 26;14:897343. doi: 10.3389/fnagi.2022.897343. eCollection 2022.
Monitoring early changes in cognitive performance is useful for studying cognitive aging as well as for detecting early markers of neurodegenerative diseases. Repeated evaluation of cognition via a measurement burst design can accomplish this goal. In such design participants complete brief evaluations of cognition, multiple times per day for several days, and ideally, repeat the process once or twice a year. However, long-term cognitive change in such repeated assessments can be masked by short-term within-person variability and retest learning (practice) effects. In this paper, we show how a Bayesian double exponential model can account for retest gains across measurement bursts, as well as warm-up effects within a burst, while quantifying change across bursts in peak performance. We also highlight how this approach allows for the inclusion of person-level predictors and draw intuitive inferences on cognitive change with Bayesian posterior probabilities. We use older adults' performance on cognitive tasks of processing speed and spatial working memory to demonstrate how individual differences in peak performance and change can be related to predictors of aging such as biological age and mild cognitive impairment status.
监测认知表现的早期变化,对于研究认知老化以及检测神经退行性疾病的早期标志物均具有重要意义。通过测量突发设计对认知进行重复评估可实现这一目标。在这种设计中,参与者需在数天内每天多次完成简短的认知评估,理想情况下,每年重复该过程一到两次。然而,此类重复评估中的长期认知变化可能会被短期的个体内变异性和重测学习(练习)效应所掩盖。在本文中,我们展示了贝叶斯双指数模型如何能够解释测量突发期间的重测增益以及突发内的热身效应,同时量化峰值表现跨突发的变化。我们还强调了这种方法如何能够纳入个体水平的预测因子,并利用贝叶斯后验概率对认知变化进行直观推断。我们利用老年人在处理速度和空间工作记忆的认知任务上的表现,来证明峰值表现和变化中的个体差异如何能够与诸如生物学年龄和轻度认知障碍状态等老化预测因子相关联。