Finan Patrick H, Hessler Eric E, Amazeen Polemnia G, Butner Jonathan, Zautra Alex J, Tennen Howard
Department of Psychology, Arizona State University, USA.
Nonlinear Dynamics Psychol Life Sci. 2010 Jan;14(1):27-46.
Dynamical systems modeling was used to analyze fluctuations in the pain prediction process of people with rheumatoid arthritis. 170 people diagnosed with rheumatoid arthritis completed 29 consecutive days of diaries. Difference scores between pain predictions and next-day pain experience ratings provided a time series of pain prediction accuracy. Pain prediction accuracy oscillated over time. The oscillation amplitude was larger at the start of the diary than at the end, which indicates damping toward more accurate predictions. State-level psychological characteristics moderated the damping pattern such that the oscillations for patients with lower negative affect and higher pain control damped more quickly than the oscillations for their counterparts. Those findings suggest that low negative affect and high pain control generally contributed to a more accurate pain prediction process in the chronically ill. Positive affect did not differentiate the damping pattern but, within each oscillation cycle, patients with higher positive affect spent more time making inaccurate predictions than their counterparts. The current analyses highlight the need to account for change in data through dynamical modeling, which cannot be fully observed through traditional statistical techniques.
动态系统建模被用于分析类风湿性关节炎患者疼痛预测过程中的波动情况。170名被诊断为类风湿性关节炎的患者连续29天完成了日记记录。疼痛预测与次日疼痛体验评分之间的差异分数提供了一个疼痛预测准确性的时间序列。疼痛预测准确性随时间振荡。日记开始时的振荡幅度大于结束时,这表明向更准确预测的衰减。状态层面的心理特征调节了衰减模式,使得消极情绪较低且疼痛控制较好的患者的振荡比其对应患者的振荡衰减得更快。这些发现表明,低消极情绪和高疼痛控制通常有助于慢性病患者进行更准确的疼痛预测过程。积极情绪并没有区分衰减模式,但在每个振荡周期内,积极情绪较高的患者做出不准确预测的时间比其对应患者更长。当前的分析强调了通过动态建模来考虑数据变化的必要性,而这是传统统计技术无法完全观察到的。