Staartjes Victor E, Quddusi Ayesha, Klukowska Anita M, Schröder Marc L
Machine Intelligence in Clinical Neuroscience (MICN) Lab, Department of Neurosurgery, Clinical Neuroscience Center, University Hospital Zurich, University of Zurich, Zurich, Switzerland.
Department of Neurosurgery, Bergman Clinics, Amsterdam, The Netherlands.
Eur Spine J. 2020 Jul;29(7):1702-1708. doi: 10.1007/s00586-020-06343-5. Epub 2020 Feb 18.
The five-repetition sit-to-stand (5R-STS) test was designed to capture objective functional impairment and thus provided an adjunctive dimension in patient assessment. The clinical interpretability and confounders of the 5R-STS remain poorly understood. In clinical use, it became apparent that 5R-STS performance may differ between patients with lumbar disk herniation (LDH), lumbar spinal stenosis (LSS) with or without low-grade spondylolisthesis, and chronic low back pain (CLBP). We seek to evaluate the extent of diagnostic information contained within 5R-STS testing.
Patients were classified into gold standard diagnostic categories based on history, physical examination, and imaging. Crude and adjusted comparisons of 5R-STS performance were carried out among the three diagnostic categories. Subsequently, a machine learning algorithm was trained to classify patients into the three categories using only 5R-STS test time and patient age, gender, height, and weight.
From two prospective studies, 262 patients were included. Significant differences in crude and adjusted test times were observed among the three diagnostic categories. At internal validation, classification accuracy was 96.2% (95% CI 87.099.5%). Classification sensitivity was 95.7%, 100%, and 100% for LDH, LSS, and CLBP, respectively. Similarly, classification specificity was 100%, 95.7%, and 100% for the three diagnostic categories.
5R-STS performance differs according to the etiology of back and leg pain, even after adjustment for demographic covariates. In combination with machine learning algorithms, OFI can be used to infer the etiology of spinal back and leg pain with accuracy comparable to other diagnostic tests used in clinical examination. These slides can be retrieved under Electronic Supplementary Material.
五次重复坐立试验(5R-STS)旨在捕捉客观功能损害,从而为患者评估提供一个辅助维度。5R-STS的临床可解释性和混杂因素仍知之甚少。在临床应用中,很明显腰椎间盘突出症(LDH)、伴有或不伴有轻度椎体滑脱的腰椎管狭窄症(LSS)以及慢性下腰痛(CLBP)患者的5R-STS表现可能有所不同。我们试图评估5R-STS测试中包含的诊断信息程度。
根据病史、体格检查和影像学检查将患者分为金标准诊断类别。对这三个诊断类别进行5R-STS表现的粗略和校正比较。随后,训练一种机器学习算法,仅使用5R-STS测试时间以及患者的年龄、性别、身高和体重将患者分为这三个类别。
纳入了两项前瞻性研究中的262例患者。在这三个诊断类别中观察到粗略和校正后的测试时间存在显著差异。在内部验证中,分类准确率为96.2%(95%CI 87.0-99.5%)。LDH、LSS和CLBP的分类敏感性分别为95.7%、100%和100%。同样,这三个诊断类别的分类特异性分别为100%、95.7%和100%。
即使在对人口统计学协变量进行校正后,5R-STS表现仍因腰腿痛病因不同而有所差异。结合机器学习算法,OFI可用于推断脊柱腰腿痛的病因,其准确性与临床检查中使用的其他诊断测试相当。这些幻灯片可在电子补充材料中获取。