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种族对脑肿瘤开颅术后出院处置及住院时间的影响。

The Impact of Race on Discharge Disposition and Length of Hospitalization After Craniotomy for Brain Tumor.

作者信息

Muhlestein Whitney E, Akagi Dallin S, Chotai Silky, Chambless Lola B

机构信息

Department of Neurological Surgery, Vanderbilt University, Vanderbilt University Medical Center, Nashville, Tennessee, USA.

DataRobot Inc., Boston, Massachusetts, USA.

出版信息

World Neurosurg. 2017 Aug;104:24-38. doi: 10.1016/j.wneu.2017.04.061. Epub 2017 May 3.

Abstract

BACKGROUND

Racial disparities exist in health care, frequently resulting in unfavorable outcomes for minority patients. Here, we use guided machine learning (ML) ensembles to model the impact of race on discharge disposition and length of stay (LOS) after brain tumor surgery from the Healthcare Cost and Utilization Project National Inpatient Sample.

METHODS

We performed a retrospective cohort study of 41,222 patients who underwent craniotomies for brain tumors from 2002 to 2011 and were registered in the National Inpatient Sample. Twenty-six ML algorithms were trained on prehospitalization variables to predict non-home discharge and extended LOS (>7 days) after brain tumor resection, and the most predictive algorithms combined to create ensemble models. Partial dependence analysis was performed to measure the independent impact of race on the ensembles.

RESULTS

The guided ML ensembles predicted non-home disposition (area under the curve, 0.796) and extended LOS (area under the curve, 0.824) with good discrimination. Partial dependence analysis showed that black race increases the risk of non-home discharge and extended LOS over white race by 6.9% and 6.5%, respectively. Other, nonblack race increases the risk of extended LOS over white race by 6.0%. The impact of race on these outcomes is not seen when analyzing the general inpatient or general operative population.

CONCLUSIONS

Minority race independently increases the risk of extended LOS and black race increases the risk of non-home discharge in patients undergoing brain tumor resection, a finding not mimicked in the general inpatient or operative population. Recognition of the influence of race on discharge and LOS could generate interventions that may improve outcomes in this population.

摘要

背景

医疗保健领域存在种族差异,这常常给少数族裔患者带来不利的治疗结果。在此,我们使用有指导的机器学习(ML)集成方法,根据医疗成本和利用项目国家住院样本,对种族因素对脑肿瘤手术后出院处置和住院时间(LOS)的影响进行建模。

方法

我们对2002年至2011年期间在国家住院样本中登记的41222例接受脑肿瘤开颅手术的患者进行了一项回顾性队列研究。使用26种ML算法对术前变量进行训练,以预测脑肿瘤切除术后非家庭出院和延长住院时间(>7天)的情况,并将预测性最强的算法组合起来创建集成模型。进行偏倚依赖分析以衡量种族对集成模型的独立影响。

结果

有指导的ML集成模型对非家庭出院(曲线下面积,0.796)和延长住院时间(曲线下面积,0.824)具有良好的辨别力。偏倚依赖分析表明,与白人相比,黑人种族非家庭出院和延长住院时间的风险分别增加6.9%和6.5%。其他非黑人种族与白人相比,延长住院时间的风险增加6.0%。在分析普通住院患者或普通手术人群时,未发现种族对这些结果的影响。

结论

少数族裔种族独立增加了脑肿瘤切除患者延长住院时间的风险,黑人种族增加了非家庭出院的风险,这一发现与普通住院患者或手术人群不同。认识到种族对出院和住院时间的影响可以产生可能改善该人群治疗结果的干预措施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f207/5522624/2fcd54c5810e/nihms873275f1.jpg

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