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Identifying homogenous subgroups for individual patient meta-analysis based on Rough Set Theory

机译:基于粗糙集理论的个体患者荟萃分析识别同质亚组

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Failure to detect and manage heterogeneity between clinical trials included in meta-analysis may lead to misinterpretation of summary effect estimates. This may ultimately compromise the validity of the results of the meta-analysis. Typically, when heterogeneity between trials is detected, researchers use sensitivity or subgroup analysis to manage it. However, both methods fail to explain why heterogeneity existed in the first place. Here we propose a novel methodology that relies on Rough Set Theory (RST) to detect, explain, and manage the sources of heterogeneity applicable to meta-analysis performed on individual patient data (IPD). The method exploits the RST relations of discernibility and indiscernibility to create homogeneous groups of patients. We applied our methodology on a dataset of 1,111 patients enrolled in 9 randomized controlled trials studying the effect of two transplantation procedures in the management of hematologic malignancies. Our method was able to create three subgroups of patients with remarkably low statistical heterogeneity values (16.8%, 0% and 0% respectively). The proposed methodology has the potential to automatize and standardize the process of detecting and managing heterogeneity in IPD meta-analysis. Future work involves investigating the applications of the proposed methodology in analyzing treatment effects in patients belonging to different risk groups, which will ultimately assist in personalized healthcare decision making.
机译:荟萃分析中未能检测和管理临床试验之间的异质性可能会导致对汇总效应估计值的误解。这最终可能会损害荟萃分析结果的有效性。通常,当检测到试验之间存在异质性时,研究人员将使用敏感性或亚组分析进行管理。但是,这两种方法都无法解释为什么异质性首先存在。在这里,我们提出了一种基于粗糙集理论(RST)的新方法,可以检测,解释和管理适用于对单个患者数据(IPD)进行荟萃分析的异质性来源。该方法利用可区分性和不可区分性的RST关系来创建同质的患者组。我们将我们的方法应用于9个随机对照试验中的1,111名患者的数据集,研究了两种移植程序在血液系统恶性肿瘤治疗中的作用。我们的方法能够创建统计异质性值非常低的三个患者亚组(分别为16.8%,0%和0%)。所提出的方法具有使IPD元分析中检测和管理异质性过程自动化和标准化的潜力。未来的工作包括调查所提出的方法在分析属于不同风险组的患者的治疗效果方面的应用,这最终将有助于个性化的医疗保健决策。

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