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A new meta-ANOVA approach for synthesizing information under signal-heterogeneity setting with application to nuclear magnetic resonance spectroscopic data

机译:一种新的meta-ANOVA方法,用于在信号异质性设置下合成信息,并将其应用于核磁共振光谱数据

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摘要

A new synthesizing statistical methodology is proposed to resolve issues of signal-heterogeneity in data sets collected through high-resolution 1H nuclear magnetic resonance (NMR) spectroscopy. This signal-heterogeneity is typically caused by subjective operations for processing spectral profiles and measuring peak areas, non-homogeneous biological phases of experimental subjects, and variations of systems in multi-center. All these causes are likely to simultaneously impact signals of metabolic changes and their precision in a nonlinear fashion. As a combined effect, signal-heterogeneity chiefly manifests through non-homomorphic patterns of standardized treatment mean deviations spanning all experiments, and makes most remedial statistical models with linearity structure invalid. By avoiding a huge and very complex model, we develop a simple meta-ANOVA approach to synthesize many one-way-layout ANOVA analyses from individual experiments. A scale-invariant F-ratio statistic is taken as the summarizing sufficient statistic of a non-centrality parameter that supposedly captures the information about metabolic change from each experiment. Then a joint-likelihood function of a common non-centrality is constructed as the basis for maximum likelihood estimation and Chi-square likelihood ratio testing for statistical inference. We apply the meta-ANOVA to detect metabolic changes of three metabolites identified through pattern recognition on NMR spectral profiles obtained from muscle and liver tissues. We also detect effect differences among different treatments via meta-ANOVA multiple comparison.
机译:提出了一种新的综合统计方法,以解决高分辨率1 H核磁共振光谱数据集的信号异质性问题。这种信号异质性通常是由用于处理光谱轮廓和测量峰面积的主观操作,实验对象的非均质生物相以及多中心系统的变化引起的。所有这些原因可能以非线性方式同时影响代谢变化的信号及其精确度。作为一种综合效应,信号异质性主要通过跨越所有实验的标准化治疗均值偏差的非同态模式表现出来,并使大多数具有线性结构的补​​救性统计模型无效。通过避免庞大而又非常复杂的模型,我们开发了一种简单的meta-ANOVA方法,可以从单个实验中合成许多单向ANOVA分析。尺度不变的F比率统计量被认为是非中心性参数的充分统计量,该非中心性参数据以捕获每个实验中有关代谢变化的信息。然后构造一个共同的非中心性的联合似然函数作为最大似然估计和卡方似然比检验的基础,以进行统计推断。我们应用meta-ANOVA来检测通过从肌肉和肝脏组织获得的NMR光谱图谱上的模式识别来识别的三种代谢物的代谢变化。我们还通过meta-ANOVA多重比较检测了不同治疗之间的效果差异。

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