Department of Anesthesiology, Perioperative, and Pain Medicine, Stanford University School of Medicine, Stanford, California.
Child Health Evaluative Sciences, The Hospital for Sick Children, Toronto, Ontario, Canada.
J Pain. 2020 Mar-Apr;21(3-4):467-476. doi: 10.1016/j.jpain.2019.08.015. Epub 2019 Sep 12.
Targeting individually based psychosocial profiles when treating children with chronic pain and their families is key to effective behavioral health intervention and in line with tenants of precision medicine. Extant research is primarily driven by variable-centered models that focus on broad, group-level differences. The current study adopts a person-centered approach, latent profile analysis (LPA), to identify patient subgroups. Cross-sectional data are presented from 366 children (8-17 years; M = 14.48; standard deviation = 2.36) with chronic pain and a primary caregiver (94% mothers). LPA indicator variables were self-reported: fatigue, internalizing symptoms, pain catastrophizing, and pain acceptance; and parent-reported: pain catastrophizing and responses to child pain. One-way analyses of variances examined the effect of profiles on child age, pain, and function. LPA identified a 4-profile solution. Class 1 (12%) demonstrated the lowest scores (conveying least risk) across 5 of 6 factors. Class 4 (37%) had the highest scores (conveying greatest risk) across all factors. Classes 2 (12%) and 3 (39%) demonstrated more variability across domains. Results revealed significant effects of profile based on child age, pain, and function. This study highlights differential presentation of treatment-modifiable domains within a large sample. LPA methodology is showcased to potentially facilitate clinical conceptualizations and tailored approaches to intervention in pediatric chronic pain. PERSPECTIVE: This article presents a methodological and statistical approach that may be beneficial to better assess individual profiles of pediatric pain functioning. Tools that allow providers to better match patient presentation and intervention are in line with the tenants of precision medicine and may ultimately serve to improve child outcomes.
当治疗患有慢性疼痛的儿童及其家庭时,针对个体的心理社会特征进行治疗是有效行为健康干预的关键,符合精准医学的原则。现有研究主要由变量为中心的模型驱动,这些模型侧重于广泛的、群体水平的差异。本研究采用以个体为中心的方法,即潜在剖面分析(LPA),来识别患者亚组。从 366 名患有慢性疼痛的儿童(8-17 岁;M=14.48;标准差=2.36)和一名主要照顾者(94%为母亲)中呈现了横断面数据。LPA 的指标变量是自我报告的:疲劳、内化症状、疼痛灾难化和疼痛接受;以及父母报告的:疼痛灾难化和对儿童疼痛的反应。单因素方差分析检验了不同特征对儿童年龄、疼痛和功能的影响。LPA 确定了一个 4 特征的解决方案。第 1 类(12%)在 6 个因素中的 5 个因素中得分最低(表示风险最低)。第 4 类(37%)在所有因素中得分最高(表示风险最高)。第 2 类(12%)和第 3 类(39%)在各领域的变化更大。结果显示,基于儿童年龄、疼痛和功能的特征存在显著影响。本研究突出了在一个大样本中治疗可改变的领域的不同表现。LPA 方法学展示了如何促进对儿科慢性疼痛的临床概念化和量身定制的干预方法。观点:本文介绍了一种方法学和统计学方法,可能有助于更好地评估儿科疼痛功能的个体特征。允许提供者更好地匹配患者表现和干预的工具符合精准医学的原则,最终可能有助于改善儿童的结局。