Department of Health Sciences, Macquarie University, Sydney, Australia.
School of Allied Health, Curtin University, Perth, Australia.
Musculoskelet Sci Pract. 2023 Apr;64:102746. doi: 10.1016/j.msksp.2023.102746. Epub 2023 Mar 11.
Recurrence of low back pain (LBP) is common. If clinicians could identify an individual's risk of recurrence, this would enhance clinical decision-making and tailored patient care.
OBJECTIVE/DESIGN: To develop and validate a simple tool to predict the probability of a recurrence of LBP by 3- or 12-months following recovery.
Data utilised for the prediction model development came from a prospective inception cohort study of participants (n = 250) recently recovered from LBP, who had sought care from chiropractic or physiotherapy services. The outcome measure was a recurrence of activity-limiting LBP. Candidate predictor variables (e.g., basic demographics, LBP history, levels of physical activity, etc) collected at baseline were considered for inclusion in a multivariable Cox model. The model's performance was tested in a separate validation dataset of participants (n = 261) involved in a randomised controlled trial investigating exercise for the prevention of LBP recurrences.
The final model included the number of previous episodes, total sitting time, and level of education. In the development sample, discrimination was acceptable (Harrell's C-statistic = 0.61, 95% CI, 0.59-0.62), but in the validation sample, discrimination was poor (0.56, 95% CI, 0.54-0.58). Calibration of the model in the validation dataset was acceptable at 3 months but was less precise at 12 months.
The developed prediction model, which included number of previous episodes, total sitting time, and level of education, did not perform adequately in the validation sample to recommend its use in clinical practice. Predicting recurrence of LBP in clinical practice remains challenging.
腰痛(LBP)的复发很常见。如果临床医生能够确定个体的复发风险,这将增强临床决策和个体化患者护理。
目的/设计:开发和验证一种简单的工具,以预测在从 LBP 康复后 3 或 12 个月内复发 LBP 的概率。
用于预测模型开发的数据来自最近从 LBP 康复的参与者(n=250)的前瞻性起始队列研究,他们曾向脊椎按摩或物理治疗服务寻求治疗。结局测量为活动受限性 LBP 的复发。在基线时收集的候选预测变量(例如,基本人口统计学、LBP 史、体力活动水平等)被认为可纳入多变量 Cox 模型。该模型的性能在一项随机对照试验中参与预防 LBP 复发的运动的参与者(n=261)的单独验证数据集进行了测试。
最终模型纳入了先前发作次数、总坐立时间和教育水平。在开发样本中,区分度尚可(哈雷尔 C 统计量=0.61,95%CI,0.59-0.62),但在验证样本中,区分度较差(0.56,95%CI,0.54-0.58)。该模型在验证数据集中的校准在 3 个月时是可以接受的,但在 12 个月时则不太准确。
该开发的预测模型包括先前发作次数、总坐立时间和教育水平,在验证样本中的表现不佳,不建议在临床实践中使用。在临床实践中预测 LBP 的复发仍然具有挑战性。