...
首页> 外文期刊>Statistics in medicine >A recursive partitioning approach for subgroup identification in individual patient data meta‐analysis
【24h】

A recursive partitioning approach for subgroup identification in individual patient data meta‐analysis

机译:个体患者数据荟萃分析中子组识别的递归分区方法

获取原文
获取原文并翻译 | 示例
           

摘要

Background Motivated by the setting of clinical trials in low back pain, this work investigated statistical methods to identify patient subgroups for which there is a large treatment effect (treatment by subgroup interaction). Statistical tests for interaction are often underpowered. Individual patient data (IPD) meta‐analyses provide a framework with improved statistical power to investigate subgroups. However, conventional approaches to subgroup analyses applied in both a single trial setting and an IPD setting have a number of issues, one of them being that factors used to define subgroups are investigated one at a time. As individuals have multiple characteristics that may be related to response to treatment, alternative exploratory statistical methods are required. Methods Tree‐based methods are a promising alternative that systematically searches the covariate space to identify subgroups defined by multiple characteristics. A tree method in particular, SIDES, is described and extended for application in an IPD meta‐analyses setting by incorporating fixed‐effects and random‐effects models to account for between‐trial variation. The performance of the proposed extension was assessed using simulation studies. The proposed method was then applied to an IPD low back pain dataset. Results The simulation studies found that the extended IPD‐SIDES method performed well in detecting subgroups especially in the presence of large between‐trial variation. The IPD‐SIDES method identified subgroups with enhanced treatment effect when applied to the low back pain data. Conclusions This work proposes an exploratory statistical approach for subgroup analyses applicable in any research discipline where subgroup analyses in an IPD meta‐analysis setting are of interest.
机译:背景技术通过在低腰疼痛中进行临床试验的设定,这项工作调查了鉴定患者亚组的统计方法(通过亚组相互作用处理)。用于互动的统计测试通常是可动力的。个体患者数据(IPD)元分析提供了一种改进统计能力的框架来调查亚组。然而,在单个试用设置和IPD设置中应用的常规方法对单个试用设置和IPD设置具有许多问题,其中一个是用于定义子组的因素是一次调查。由于个体具有多种可能与治疗响应相关的特征,因此需要替代探索性统计方法。方法基于树的方法是有前途的替代方案,系统地搜索协变量空间以识别由多个特征定义的子组。特别地,通过结合固定效果和随机效应模型来描述和扩展到IPD元分析设置中的侧面的树法,以便在试验变异之间进行算法来应用于IPD元分析设置。使用模拟研究评估所提出的延伸的性能。然后将所提出的方法应用于IPD低背疼痛数据集。结果模拟研究发现,延伸的IPD侧方法在检测亚组中表现良好,特别是在试验变化之间存在大的存在。 IPD侧面方法在施加到低背疼痛数据时识别具有增强的治疗效果的子组。结论这项工作提出了适用于适用于任何研究学科的划分组统计分析的探索性统计方法,其中亚组分析IPD META分析环境中的户籍分析。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号