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Mixture Random Effect Model Based Meta-analysis for Medical Data Mining

机译:基于混合随机效应模型的医学数据挖掘元分析

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摘要

As a powerful tool for summarizing the distributed medical information, Meta-analysis has played an important role in medical research in the past decades. In this paper, a more general statistical model for meta-analysis is proposed to integrate heterogeneous medical researches efficiently. The novel model, named mixture random effect model (MREM), is constructed by Gaussian Mixture Model (GMM) and unifies the existing fixed effect model and random effect model. The parameters of the proposed model are estimated by Markov Chain Monte Carlo (MCMC) method. Not only can MREM discover underlying structure and intrinsic heterogeneity of meta datasets, but also can imply reasonable subgroup division. These merits embody the significance of our methods for heterogeneity assessment. Both simulation results and experiments on real medical datasets demonstrate the performance of the proposed model.
机译:作为总结分发的医学信息的有力工具,Meta分析在过去几十年中在医学研究中发挥了重要作用。本文提出了一种更通用的荟萃分析统计模型,以有效地整合异构医学研究。该模型是由高斯混合模型(GMM)构造的,称为混合随机效应模型(MREM),将现有的固定效应模型和随机效应模型相结合。提出的模型的参数通过马尔可夫链蒙特卡洛(MCMC)方法进行估计。 MREM不仅可以发现元数据集的底层结构和内在异质性,还可以暗示合理的子组划分。这些优点体现了我们的异质性评估方法的重要性。仿真结果和实际医学数据集上的实验均证明了该模型的性能。

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