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质量结果数据库分析,第2部分。腰椎退行性疾病择期手术后重返工作岗位的预测模型。

An analysis from the Quality Outcomes Database, Part 2. Predictive model for return to work after elective surgery for lumbar degenerative disease.

作者信息

Asher Anthony L, Devin Clinton J, Archer Kristin R, Chotai Silky, Parker Scott L, Bydon Mohamad, Nian Hui, Harrell Frank E, Speroff Theodore, Dittus Robert S, Philips Sharon E, Shaffrey Christopher I, Foley Kevin T, McGirt Matthew J

机构信息

Department of Neurological Surgery, Carolina Neurosurgery and Spine Associates, and Neurological Institute, Carolinas Healthcare System, Charlotte, North Carolina.

Department of Orthopedic Surgery and Neurological Surgery, Vanderbilt Spine Center.

出版信息

J Neurosurg Spine. 2017 Oct;27(4):370-381. doi: 10.3171/2016.8.SPINE16527. Epub 2017 May 12.

Abstract

OBJECTIVE Current costs associated with spine care are unsustainable. Productivity loss and time away from work for patients who were once gainfully employed contributes greatly to the financial burden experienced by individuals and, more broadly, society. Therefore, it is vital to identify the factors associated with return to work (RTW) after lumbar spine surgery. In this analysis, the authors used data from a national prospective outcomes registry to create a predictive model of patients' ability to RTW after undergoing lumbar spine surgery for degenerative spine disease. METHODS Data from 4694 patients who underwent elective spine surgery for degenerative lumbar disease, who had been employed preoperatively, and who had completed a 3-month follow-up evaluation, were entered into a prospective, multicenter registry. Patient-reported outcomes-Oswestry Disability Index (ODI), numeric rating scale (NRS) for back pain (BP) and leg pain (LP), and EQ-5D scores-were recorded at baseline and at 3 months postoperatively. The time to RTW was defined as the period between operation and date of returning to work. A multivariable Cox proportional hazards regression model, including an array of preoperative factors, was fitted for RTW. The model performance was measured using the concordance index (c-index). RESULTS Eighty-two percent of patients (n = 3855) returned to work within 3 months postoperatively. The risk-adjusted predictors of a lower likelihood of RTW were being preoperatively employed but not working at the time of presentation, manual labor as an occupation, worker's compensation, liability insurance for disability, higher preoperative ODI score, higher preoperative NRS-BP score, and demographic factors such as female sex, African American race, history of diabetes, and higher American Society of Anesthesiologists score. The likelihood of a RTW within 3 months was higher in patients with higher education level than in those with less than high school-level education. The c-index of the model's performance was 0.71. CONCLUSIONS This study presents a novel predictive model for the probability of returning to work after lumbar spine surgery. Spine care providers can use this model to educate patients and encourage them in shared decision-making regarding the RTW outcome. This evidence-based decision support will result in better communication between patients and clinicians and improve postoperative recovery expectations, which will ultimately increase the likelihood of a positive RTW trajectory.

摘要

目的 目前与脊柱治疗相关的费用难以为继。曾经有工作的患者出现生产力损失以及缺勤,这给个人乃至更广泛的社会带来了沉重的经济负担。因此,确定腰椎手术后恢复工作(RTW)的相关因素至关重要。在本分析中,作者使用了来自全国前瞻性结局登记处的数据,以建立一个预测模型,预测因退行性脊柱疾病接受腰椎手术后患者的RTW能力。

方法 将4694例因退行性腰椎疾病接受择期脊柱手术、术前有工作且完成了3个月随访评估的患者数据录入一个前瞻性多中心登记处。记录患者报告的结局——Oswestry功能障碍指数(ODI)、背痛(BP)和腿痛(LP)的数字评定量表(NRS)以及EQ-5D评分——在基线和术后3个月时的数据。RTW时间定义为手术至重返工作日期之间的时间段。采用多变量Cox比例风险回归模型,纳入一系列术前因素,对RTW进行分析。使用一致性指数(c指数)评估模型性能。

结果 82%的患者(n = 3855)在术后3个月内重返工作岗位。RTW可能性较低的风险调整预测因素包括术前有工作但就诊时未工作、职业为体力劳动、工伤赔偿、残疾责任保险、术前ODI评分较高、术前NRS-BP评分较高以及女性、非裔美国人种族、糖尿病史和美国麻醉医师协会评分较高等人口统计学因素。与高中以下学历的患者相比,学历较高的患者在3个月内RTW的可能性更高。该模型的c指数为0.71。

结论 本研究提出了一种新型的预测模型,用于预测腰椎手术后重返工作的概率。脊柱护理提供者可使用该模型对患者进行教育,并鼓励他们就RTW结果进行共同决策。这种基于证据的决策支持将改善患者与临床医生之间的沟通,并提高术后恢复预期,最终增加RTW呈积极轨迹的可能性。

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