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Drivers of hospitalization cost after craniotomy for tumor resection: creation and validation of a predictive model

机译:开颅手术切除肿瘤后住院费用的驱动因素:建立和验证预测模型

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Background The economic sustainability of all areas of medicine is under scrutiny. Limited data exist on the drivers of cost after a craniotomy for tumor resection (CTR). The objective of the present study was to develop and validate a predictive model of hospitalization cost after CTR. Methods We performed a retrospective study involving CTR patients who were registered in the Nationwide Inpatient Sample (NIS) database from 2005–2010. This cohort underwent 1:1 randomization to create derivation and validation subsamples. Regression techniques were used for the creation of a parsimonious predictive model. Results Of the 36,433 patients undergoing CTR, 14638 (40.2%) underwent craniotomies for primary malignant, 9574 (26.3%) for metastatic, and 11414 (31.3%) for benign tumors. The median hospitalization cost was $24,504 (Interquartile Range (IQR), $4,265-$44,743). Common drivers of cost identified in the multivariate analyses included: length of stay, number of procedures, hospital size and region, and patient income. The models were validated in independent cohorts and demonstrated final R2 very similar to the initial models. The predicted and observed values in the validation cohort demonstrated good correlation. Conclusions This national study identified significant drivers of hospitalization cost after CTR. The presented model can be utilized as an adjunct in the cost containment debate and the creation of data-driven policies.
机译:背景技术所有医学领域的经济可持续性都受到了审查。开颅肿瘤切除术(CTR)后成本驱动因素的数据有限。本研究的目的是开发和验证CTR后住院费用的预测模型。方法我们对2005年至2010年在全国住院样本(NIS)数据库中注册的CTR患者进行了回顾性研究。该队列接受1:1随机分组以创建派生和验证子样本。回归技术用于创建简约预测模型。结果在接受CTR的36433例患者中,有14638例(40.2%)接受了原发恶性开颅手术,9574例(26.3%)进行了转移,良性肿瘤11414例(31.3%)。住院费用中位数为$ 24,504(四分位间距(IQR),$ 4,265- $ 44,743)。多元分析中确定的常见成本驱动因素包括:住院时间,手术次数,医院规模和地区以及患者收入。该模型在独立队列中进行了验证,并证明了最终R 2 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。结论这项全国性研究确定了CTR后住院费用的重要驱动因素。提出的模型可以用作成本控制辩论和数据驱动策略创建的辅助工具。

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