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预测转移性脊柱疾病的生存情况:九种评分系统的比较。

Predicting survival for metastatic spine disease: a comparison of nine scoring systems.

机构信息

Department of Neurosurgery, The Johns Hopkins University School of Medicine, 600 North Wolfe St, Meyer 5-185, Baltimore, MD 21287, USA.

Department of Neurosurgery, The Johns Hopkins University School of Medicine, 600 North Wolfe St, Meyer 5-185, Baltimore, MD 21287, USA; Department of Neurosurgery, Duke University Medical Center, 200 Trent Dr, Durham, NC 27710, USA.

出版信息

Spine J. 2018 Oct;18(10):1804-1814. doi: 10.1016/j.spinee.2018.03.011. Epub 2018 Mar 19.

Abstract

BACKGROUND CONTEXT

Despite advances in spinal oncology, research in patient-based prognostic calculators for metastatic spine disease is lacking. Much of the literature in this area investigates the general predictive accuracy of scoring systems in heterogeneous populations, with few studies considering the accuracy of scoring systems based on patient specifics such as type of primary tumor.

PURPOSE

The aim of the present study was to compare the ability of widespread scoring systems to estimate both overall survival at various time points and tumor-specific survival for patients undergoing surgical treatment for metastatic spine disease in order to provide surgeons with information to determine the most appropriate scoring system for a specific patient and timeline.

STUDY DESIGN

This is a retrospective study.

PATIENT SAMPLE

Patients who underwent surgical resection for metastatic spine disease at a single institution were included.

OUTCOME MEASURES

Areas under the receiver operating characteristic curves were generated from comparison of actual survival of patients and survival as predicted by application of prevalent scoring systems.

METHODS

A preoperative score for all 176 patients was retrospectively calculated utilizing the Skeletal Oncology Research Group (SORG) Classic Scoring Algorithm, SORG Nomogram, original Tokuhashi, revised Tokuhashi, Tomita, original Bauer, modified Bauer, Katagiri, and van der Linden scoring systems. Univariate and multivariate Cox proportional hazard models were constructed to assess the association of patient variables with survival. Receiver operating characteristic analysis modeling was utilized to quantify the accuracy of each test at different end points and for different primary tumor subgroups. No funds were received in support of this work. The authors have no conflicts of interest to disclose.

RESULTS

Among all patients surgically treated for metastatic spine disease, the SORG Nomogram demonstrated the highest accuracy at predicting 30-day (area under the curve [AUC] 0.81) and 90-day (AUC 0.70) survival after surgery. The original Tokuhashi was the most accurate at predicting 365-day survival (AUC 0.78). Multivariate analysis demonstrated multiple preoperative factors strongly associated with survival after surgery for spinal metastasis. The accuracy of each scoring system in determining survival probability relative to primary tumor etiology and time elapsed since surgery was assessed.

CONCLUSIONS

Among the nine scoring systems assessed, the present study determined the most accurate scoring system for short-term (30-day), intermediate (90-day), and long-term (365-day) survival, relative to primary tumor etiology. The findings of the present study may be utilized by surgeons in a personalized effort to select the most appropriate scoring system for a given patient.

摘要

背景

尽管脊柱肿瘤学取得了进展,但在转移性脊柱疾病的基于患者的预后计算器方面的研究仍很缺乏。该领域的许多研究调查了评分系统在异质人群中的总体预测准确性,只有少数研究考虑了基于患者具体情况(如原发肿瘤类型)的评分系统的准确性。

目的

本研究旨在比较广泛使用的评分系统在预测接受手术治疗的转移性脊柱疾病患者的总体生存率和肿瘤特异性生存率方面的能力,以便为外科医生提供信息,确定最适合特定患者和时间线的评分系统。

研究设计

这是一项回顾性研究。

患者样本

纳入在一家机构接受手术切除治疗的转移性脊柱疾病患者。

观察指标

通过比较实际生存时间和应用现有评分系统预测的生存时间,生成接收者操作特征曲线下的面积。

方法

使用骨骼肿瘤研究组(SORG)经典评分算法、SORG 诺莫图、原始 Tokuhashi、修订 Tokuhashi、Tomita、原始 Bauer、改良 Bauer、Katagiri 和 van der Linden 评分系统,对 176 例患者进行回顾性术前评分。构建单变量和多变量 Cox 比例风险模型,以评估患者变量与生存的关系。接收者操作特征分析模型用于量化每种检测方法在不同终点和不同原发肿瘤亚组中的准确性。

结果

在所有接受手术治疗的转移性脊柱疾病患者中,SORG 诺莫图在预测术后 30 天(曲线下面积 [AUC] 0.81)和 90 天(AUC 0.70)生存率方面的准确性最高。原始 Tokuhashi 是预测 365 天生存率(AUC 0.78)最准确的评分系统。多变量分析表明,多个术前因素与脊柱转移瘤手术后的生存密切相关。评估了每个评分系统在确定相对于原发肿瘤病因和手术时间的生存概率方面的准确性。

结论

在所评估的九个评分系统中,本研究确定了最准确的评分系统,可预测原发性肿瘤病因相关的短期(30 天)、中期(90 天)和长期(365 天)生存率。本研究的发现可帮助外科医生进行个性化努力,为特定患者选择最合适的评分系统。

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