首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Bayesian analysis of mass spectrometry proteomic data using wavelet-based functional mixed models.
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Bayesian analysis of mass spectrometry proteomic data using wavelet-based functional mixed models.

机译:使用基于小波的函数混合模型进行质谱蛋白质组学数据的贝叶斯分析。

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摘要

In this article, we apply the recently developed Bayesian wavelet-based functional mixed model methodology to analyze MALDI-TOF mass spectrometry proteomic data. By modeling mass spectra as functions, this approach avoids reliance on peak detection methods. The flexibility of this framework in modeling nonparametric fixed and random effect functions enables it to model the effects of multiple factors simultaneously, allowing one to perform inference on multiple factors of interest using the same model fit, while adjusting for clinical or experimental covariates that may affect both the intensities and locations of peaks in the spectra. For example, this provides a straightforward way to account for systematic block and batch effects that characterize these data. From the model output, we identify spectral regions that are differentially expressed across experimental conditions, in a way that takes both statistical and clinical significance into account and controls the Bayesian false discovery rate to a prespecified level. We apply this method to two cancer studies.
机译:在本文中,我们应用最近开发的基于贝叶斯小波的功能混合模型方法来分析MALDI-TOF质谱蛋白质组学数据。通过将质谱建模为函数,此方法避免了对峰检测方法的依赖。该框架在建模非参数固定效应和随机效应函数方面的灵活性使其能够同时对多个因子的效应进行建模,从而允许使用同一模型拟合对多个感兴趣的因子进行推断,同时针对可能影响临床或实验协变量的因素进行调整光谱中峰的强度和位置。例如,这提供了一种直接的方法来说明表征这些数据的系统性块效应和批效应。从模型输出中,我们确定在整个实验条件下差异表达的光谱区域,其方式要考虑到统计和临床意义,并将贝叶斯错误发现率控制在预定水平。我们将此方法应用于两项癌症研究。

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