Department of Orthopaedic Surgery, University of California, San Francisco, 500 Parnassus Avenue, MU West 321, Box 0728, San Francisco, CA, 94143, USA.
Eur Spine J. 2019 Jul;28(7):1690-1696. doi: 10.1007/s00586-019-05937-y. Epub 2019 Mar 9.
To develop a model to predict 30-day readmission rates in elective 1-2 level posterior lumbar spine fusion (PSF) patients.
In this retrospective case control study, patients were identified in the State Inpatient Database using ICD-9 codes. Data were queried for 30-day readmission, as well as demographic and surgical data. Patients were randomly assigned to either the derivation or the validation cohort. Stepwise multivariate analysis was conducted on the derivation cohort to predict 30-day readmission. Readmission after posterior spinal fusion (RAPSF) score was created by including variables with odds ratio (OR) > 1.1 and p < 0.01; value assigned to each variable was based on the OR and calibrated to 100. Linear regression was performed between readmission rate and RAPSF score to test correlation in both cohorts.
There were 92,262 and 90,257 patients in the derivation and validation cohorts. Thirty-day readmission rates were 10.9% and 11.1%, respectively. Variables in RAPSF included: age, female gender, race, insurance, anterior approach, cerebrovascular disease, chronic pulmonary disease, congestive heart failure, diabetes, hemiplegia/paraplegia, rheumatic disease, drug abuse, electrolyte disorder, osteoporosis, depression, obesity, and morbid obesity. Linear regression between readmission rate and RAPSF fits the derivation cohort and validation cohort with an adjusted r of 0.92 and 0.94, respectively, and a coefficient of 0.011 (p < 0.001) in both cohorts.
The RAPSF can accurately predict readmission rates in PSF patients and may be used to guide an evidence-based approach to preoperative optimization and risk adjustment within alternative payment models for elective spine surgery.
开发一个预测择期 1-2 级后路腰椎融合术(PSF)患者 30 天再入院率的模型。
在这项回顾性病例对照研究中,使用 ICD-9 代码在州住院患者数据库中确定患者。查询了 30 天再入院以及人口统计学和手术数据。患者被随机分配到推导队列或验证队列。对推导队列进行逐步多变量分析以预测 30 天再入院。通过纳入比值比(OR)>1.1 和 p<0.01 的变量来创建后路脊柱融合后再入院(RAPSF)评分;为每个变量分配的值基于 OR 并校准为 100。在两个队列中进行再入院率和 RAPSF 评分之间的线性回归,以测试相关性。
推导队列和验证队列中分别有 92262 例和 90257 例患者。30 天再入院率分别为 10.9%和 11.1%。RAPSF 中的变量包括:年龄、女性、种族、保险、前路方法、脑血管疾病、慢性肺部疾病、充血性心力衰竭、糖尿病、偏瘫/截瘫、风湿性疾病、药物滥用、电解质紊乱、骨质疏松症、抑郁症、肥胖症和病态肥胖症。再入院率和 RAPSF 之间的线性回归适用于推导队列和验证队列,调整后的 r 分别为 0.92 和 0.94,两个队列的系数均为 0.011(p<0.001)。
RAPSF 可以准确预测 PSF 患者的再入院率,可用于指导择期脊柱手术替代支付模式下的术前优化和风险调整的循证方法。
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