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预测老年背痛患者腰椎X光片上脊柱结构型骨关节炎的诊断模型:开发与内部验证

Diagnostic models to predict structural spinal osteoarthritis on lumbar radiographs in older adults with back pain: Development and internal validation.

作者信息

Chamoro Mirna, Heymans Martijn W, Oei Edwin H G, Bierma-Zeinstra Sita M A, Koes Bart W, Chiarotto Alessandro

机构信息

Department of General Practice, Erasmus MC, University Medical Center, Rotterdam, the Netherlands.

Department of Epidemiology and Biostatistics, Amsterdam University Medical Center, Amsterdam, the Netherlands.

出版信息

Osteoarthr Cartil Open. 2024 Jul 22;6(3):100506. doi: 10.1016/j.ocarto.2024.100506. eCollection 2024 Sep.

Abstract

OBJECTIVE

It is difficult for health care providers to diagnose structural spinal osteoarthritis (OA), because current guidelines recommend against imaging in patients with back pain. Therefore, the aim of this study was to develop and internally validate multivariable diagnostic prediction models based on a set of clinical and demographic features to be used for the diagnosis of structural spinal OA on lumbar radiographs in older patients with back pain.

DESIGN

Three diagnostic prediction models, for structural spinal OA on lumbar radiographs (i.e. multilevel osteophytes, multilevel disc space narrowing (DSN), and both combined), were developed and internally validated in the 'Back Complaints in Older Adults' (BACE) cohort (N ​= ​669). Model performance (i.e. overall performance, discrimination and calibration) and clinical utility (i.e. decision curve analysis) were assessed. Internal validation was performed by bootstrapping.

RESULTS

Mean age of the cohort was 66.9 years (±7.6 years) and 59% were female. All three models included age, gender, back pain duration and duration of spinal morning stiffness as predictors. The combined model additionally included restricted lateral flexion and spinal morning stiffness severity, and exhibited the best model performance (optimism adjusted c-statistic 0.661; good calibration with intercept -0.030 and slope of 0.886) and acceptable clinical utility. The other models showed suboptimal discrimination, good calibration and acceptable decision curves.

CONCLUSION

All three models for structural spinal OA displayed lesuboptimal discrimination and need improvement. However, these internally validated models have potential to inform primary care clinicians about a patient with risk of having structural spinal OA on lumbar radiographs. External validation before implementation in clinical care is recommended.

摘要

目的

医疗保健提供者很难诊断脊柱结构型骨关节炎(OA),因为当前指南不建议对背痛患者进行影像学检查。因此,本研究的目的是基于一组临床和人口统计学特征,开发并在内部验证多变量诊断预测模型,用于诊断老年背痛患者腰椎X线片上的脊柱结构型OA。

设计

在“老年人背部疾病”(BACE)队列(N = 669)中开发并内部验证了三个用于腰椎X线片上脊柱结构型OA的诊断预测模型(即多级骨赘、多级椎间盘间隙狭窄(DSN)以及两者结合)。评估了模型性能(即总体性能、区分度和校准度)和临床实用性(即决策曲线分析)。通过自抽样法进行内部验证。

结果

该队列的平均年龄为66.9岁(±7.6岁),59%为女性。所有三个模型都将年龄、性别、背痛持续时间和脊柱晨僵持续时间作为预测因素。联合模型还包括受限的侧屈和脊柱晨僵严重程度,并且表现出最佳的模型性能(乐观调整c统计量为0.661;校准良好,截距为-0.030,斜率为0.886)和可接受的临床实用性。其他模型显示出次优的区分度、良好的校准度和可接受的决策曲线。

结论

所有三个用于脊柱结构型OA的模型均显示出次优的区分度,需要改进。然而,这些经过内部验证的模型有可能让初级保健临床医生了解腰椎X线片上有脊柱结构型OA风险的患者。建议在临床护理中实施之前进行外部验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/483f/11342188/4dc8f8f6231e/gr1.jpg

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