Department of Neurosurgery, University Neurosurgical Center Holland, Leiden University Medical Center, Albinusdreef 2, Postal Zone J11-R, 2333ZA, Leiden, The Netherlands.
Haaglanden Medical Center & Haga Teaching Hospitals, The Hague, The Netherlands.
J Neurooncol. 2021 Jan;151(2):201-210. doi: 10.1007/s11060-020-03650-1. Epub 2020 Oct 19.
Meningioma is a heterogeneous disease and patients may suffer from long-term tumor- and treatment-related sequelae. To help identify patients at risk for these late effects, we first assessed variables associated with impaired long-term health-related quality of life (HRQoL) and impaired neurocognitive function on group level (i.e. determinants). Next, prediction models were developed to predict the risk for long-term neurocognitive or HRQoL impairment on individual patient-level.
Secondary data analysis of a cross-sectional multicenter study with intracranial WHO grade I/II meningioma patients, in which HRQoL (Short-Form 36) and neurocognitive functioning (standardized test battery) were assessed. Multivariable regression models were used to assess determinants for these outcomes corrected for confounders, and to build prediction models, evaluated with C-statistics.
Data from 190 patients were analyzed (median 9 years after intervention). Main determinants for poor HRQoL or impaired neurocognitive function were patients' sociodemographic characteristics, surgical complications, reoperation, radiotherapy, presence of edema, and a larger tumor diameter on last MRI. Prediction models with a moderate/good ability to discriminate between individual patients with and without impaired HRQoL (C-statistic 0.73, 95% CI 0.65 to 0.81) and neurocognitive function (C-statistic 0.78, 95%CI 0.70 to 0.85) were built. Not all predictors (e.g. tumor location) within these models were also determinants.
The identified determinants help clinicians to better understand long-term meningioma disease burden. Prediction models can help early identification of individual patients at risk for long-term neurocognitive or HRQoL impairment, facilitating tailored provision of information and allocation of scarce supportive care services to those most likely to benefit.
脑膜瘤是一种异质性疾病,患者可能长期遭受肿瘤和治疗相关后遗症的困扰。为了帮助识别有发生这些晚期效应风险的患者,我们首先评估了与长期健康相关生活质量(HRQoL)受损和神经认知功能受损相关的变量(即决定因素)。然后,我们开发了预测模型,以预测个体患者长期神经认知或 HRQoL 受损的风险。
这是一项基于颅内 WHO 分级 I/II 脑膜瘤患者的横断面多中心研究的二次数据分析,其中评估了 HRQoL(简短 36 项健康调查)和神经认知功能(标准化测试组合)。使用多变量回归模型来评估这些结果的决定因素,并针对混杂因素进行校正,然后构建预测模型,并使用 C 统计量进行评估。
共分析了 190 名患者的数据(干预后中位数 9 年)。HRQoL 或神经认知功能受损的主要决定因素是患者的社会人口统计学特征、手术并发症、再次手术、放疗、存在水肿和最后一次 MRI 上肿瘤直径较大。构建了具有中度/良好区分能力的预测模型,用于区分 HRQoL 或神经认知功能受损和未受损的个体患者(C 统计量分别为 0.73 和 0.78,95%CI 分别为 0.65 至 0.81 和 0.70 至 0.85)。这些模型中的并非所有预测因子(例如肿瘤位置)也是决定因素。
确定的决定因素有助于临床医生更好地了解脑膜瘤的长期疾病负担。预测模型可以帮助早期识别有长期神经认知或 HRQoL 受损风险的个体患者,从而为那些最有可能受益的患者提供有针对性的信息和稀缺的支持性护理服务。