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创建胶质母细胞瘤切除术后高价值护理结果的预测模型和在线计算器:纳入邻里社会经济地位指数。

Creating a predictive model and online calculator for high-value care outcomes following glioblastoma resection: incorporating neighborhood socioeconomic status index.

作者信息

Kazemi Foad, Gendreau Julian L, Parker Megan, Chakravarti Sachiv, Jimenez Adrian E, Ahmed A Karim, Rincon-Torroella Jordina, Jackson Christopher, Gallia Gary L, Bettegowda Chetan, Weingart Jon, Brem Henry, Mukherjee Debraj

机构信息

Department of Neurosurgery, Johns Hopkins University School of Medicine, 1800 Orleans St, Baltimore, MD, 21287, USA.

Department of Neurosurgery, Columbia University Medical Center, New York, NY, USA.

出版信息

J Neurooncol. 2025 Apr;172(2):407-416. doi: 10.1007/s11060-024-04927-5. Epub 2025 Jan 4.

Abstract

PURPOSE

Social determinants of health including neighborhood socioeconomic status, have been established to play a profound role in overall access to care and outcomes in numerous specialized disease entities. To provide glioblastoma multiforme (GBM) patients with high-quality care, it is crucial to identify predictors of hospital length of stay (LOS), discharge disposition, and access to postoperative adjuvant chemoradiation. In this study, we incorporate a novel neighborhood socioeconomic status index (NSES) and develop three predictive algorithms for assessing post-operative outcomes in GBM patients, offering a tool for preoperative risk stratification of GBM patients.

METHODS

Adult GBM patients who underwent surgical resection from a single center were identified; NSES was identified via patient street address of residence, with lower scores representing disadvantaged neighborhoods. Multivariate logistic regression analysis was used to predict high value care outcomes. The Hosmer-Lemeshow test was used to assess model calibration.

RESULTS

A total of 467 patients were included, with a mean age of 59.85 ± 13.21 years and 58.7% being male. The mean NSES for our cohort was 63.77 ± 14.91, indicating that the majority resided in neighborhoods with a higher socioeconomic status compared to the national average NSES of 50. One hundred nine (23.3%) patients had extended LOS, 28.9% had non-routine discharge, and 19.1% did not follow the Stupp protocol following surgery. On multivariate regression, worse NSES was significantly and independently associated with extended LOS (OR = 0.981, p = 0.026), non-routine discharge disposition (OR = 0.984, p = 0.033), and non-compliance with the Stupp protocol (OR = 0.977, p = 0.014). Our three models predicting high-value care outcomes had acceptable C-statistics > 0.70, and all models demonstrated adequate calibration (p > 0.05). Final models are accessible via online calculator. https://neurooncsurgery4.shinyapps.io/GBM_NSES_Caclulator/ CONCLUSION: NSES scores are readily available and may be utilized via our open-access calculators. After external validation, our predictive models have the potential to assist in providing patients with individualized risk estimates for post-operative outcomes following GBM resection.

摘要

目的

包括邻里社会经济地位在内的健康社会决定因素,已被证实对多种专科疾病实体的整体医疗可及性和治疗结果起着深远作用。为多形性胶质母细胞瘤(GBM)患者提供高质量护理,识别住院时间(LOS)、出院处置方式以及术后辅助放化疗可及性的预测因素至关重要。在本研究中,我们纳入了一种新型邻里社会经济地位指数(NSES),并开发了三种预测算法来评估GBM患者的术后结果,为GBM患者术前风险分层提供一种工具。

方法

确定来自单一中心接受手术切除的成年GBM患者;通过患者居住街道地址确定NSES,得分越低代表邻里环境越不利。采用多因素逻辑回归分析预测高价值护理结果。使用Hosmer-Lemeshow检验评估模型校准情况。

结果

共纳入467例患者,平均年龄59.85±13.21岁,男性占58.7%。我们队列的平均NSES为63.77±14.91,这表明与全国平均NSES 50相比,大多数患者居住在社会经济地位较高的社区。109例(23.3%)患者住院时间延长,28.9%患者有非常规出院情况,19.1%患者术后未遵循Stupp方案。在多因素回归分析中,较差的NSES与住院时间延长(OR = 0.981,p = 0.026)、非常规出院处置方式(OR = 0.984,p = 0.033)以及未遵循Stupp方案(OR = 0.977,p = 0.014)显著且独立相关。我们预测高价值护理结果的三个模型的C统计量>0.70,具有可接受性,且所有模型校准良好(p>0.05)。最终模型可通过在线计算器获取。https://neurooncsurgery4.shinyapps.io/GBM_NSES_Caclulator/ 结论:NSES得分易于获取,可通过我们的开放获取计算器使用。经过外部验证后,我们的预测模型有可能帮助为患者提供GBM切除术后个体化的术后结果风险估计。

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