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美国脊柱手术后的住院费用。

Hospitalization cost after spine surgery in the United States of America.

作者信息

Missios Symeon, Bekelis Kimon

机构信息

Department of Neurosurgery, Cleveland Clinic, Cleveland, OH, USA.

Department of Neurosurgery, Dartmouth-Hitchcock Medical Center, 1 Medical Center Drive, Lebanon, NH 03756, USA.

出版信息

J Clin Neurosci. 2015 Oct;22(10):1632-7. doi: 10.1016/j.jocn.2015.05.005. Epub 2015 Jul 14.

Abstract

The objective of this study was to develop and validate a predictive model of hospitalization costs after spine surgery. Several initiatives have been put in place to minimize healthcare expenditures but there are limited data on the magnitude of the contribution of procedure-specific drivers of cost. We performed a retrospective cohort study involving 672,591 patients who underwent spine surgery and were registered in the National Inpatient Sample from 2005-2010. The cohort underwent 1:1 randomization to create derivation and validation subsamples. Regression techniques were used for the creation of a parsimonious predictive model of total hospitalization cost after spine surgery. Included were 356,783 patients (53.1%) who underwent fusions, and 315,808 (46.9%) non-fusion surgeries. The median hospitalization cost was $14,202 (interquartile range $4772-23,632). Common drivers of cost identified in the multivariate analysis included the length of stay, number of admission diagnoses and procedures, hospital size and region, patient income, fusion surgery, acute renal failure, sex, and coagulopathy. The model was validated in an independent cohort and demonstrated a final coefficient of determination that was very similar to the initial model. The predicted and observed values in the validation cohort demonstrated good correlations. This national study quantified the magnitude of significant drivers of hospitalization cost after spine surgery. We developed a predictive model that can be utilized as an adjunct in the cost containment debate and the creation of data driven policies.

摘要

本研究的目的是开发并验证一个脊柱手术后住院费用的预测模型。已经采取了多项举措来尽量减少医疗支出,但关于特定手术成本驱动因素的贡献程度的数据有限。我们进行了一项回顾性队列研究,涉及672591例接受脊柱手术并在2005年至2010年期间登记在国家住院样本中的患者。该队列进行了1:1随机分组,以创建推导和验证子样本。采用回归技术创建脊柱手术后总住院费用的简约预测模型。其中包括356783例(53.1%)接受融合手术的患者和315808例(46.9%)非融合手术的患者。住院费用中位数为14202美元(四分位间距为4772 - 23632美元)。多变量分析中确定的常见成本驱动因素包括住院时间、入院诊断和手术数量、医院规模和地区、患者收入、融合手术、急性肾衰竭、性别和凝血病。该模型在一个独立队列中得到验证,最终决定系数与初始模型非常相似。验证队列中的预测值和观察值显示出良好的相关性。这项全国性研究量化了脊柱手术后住院费用的重要驱动因素的程度。我们开发了一个预测模型,可作为成本控制辩论和制定数据驱动政策的辅助工具。

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