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首页> 外文期刊>Biostatistics >Gene set differential analysis of time course expression profiles via sparse estimation in functional logistic model with application to time-dependent biomarker detection
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Gene set differential analysis of time course expression profiles via sparse estimation in functional logistic model with application to time-dependent biomarker detection

机译:功能逻辑模型中通过稀疏估计对时程表达谱进行基因集差异分析,并应用于时间依赖性生物标志物检测

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摘要

High-throughput time course expression profiles have been available in the last decade due to developments in measurement techniques and devices. Functional data analysis, which treats smoothed curves instead of originally observed discrete data, is effective for the time course expression profiles in terms of dimension reduction, robustness, and applicability to data measured at small and irregularly spaced time points. However, the statistical method of differential analysis for time course expression profiles has not been well established. We propose a functional logistic model based on elastic net regularization (F-Logistic) in order to identify the genes with dynamic alterations in case/control study. We employ a mixed model as a smoothing method to obtain functional data; then F-Logistic is applied to time course profiles measured at small and irregularly spaced time points. We evaluate the performance of F-Logistic in comparison with another functional data approach, i.e. functional ANOVA test (F-ANOVA), by applying the methods to real and synthetic time course data sets. The real data sets consist of the time course gene expression profiles for long-term effects of recombinant interferon beta on disease progression in multiple sclerosis. F-Logistic distinguishes dynamic alterations, which cannot be found by competitive approaches such as F-ANOVA, in case/control study based on time course expression profiles. F-Logistic is effective for time-dependent biomarker detection, diagnosis, and therapy.
机译:由于测量技术和设备的发展,近十年来已经获得了高通量时程表达谱。功能数据分析可处理平滑曲线,而不是原始观察到的离散数据,对于时程表达式配置文件而言,它在减小尺寸,增强鲁棒性以及适用于在较小且不规则间隔的时间点上测量的数据方面非常有效。但是,对于时程表达谱的差异分析的统计方法尚未很好地建立。我们提出一种基于弹性网正则化的功能逻辑模型(F-Logistic),以便在病例/对照研究中鉴定具有动态变化的基因。我们采用混合模型作为平滑方法来获取功能数据;然后将F-Logistic应用于在较小且不规则间隔的时间点测量的时程剖面。我们通过将方法应用于实时和合成时程数据集,与其他功能数据方法(即功能ANOVA测试(F-ANOVA))相比较来评估F-Logistic的性能。真实的数据集由时程基因表达谱组成,用于重组干扰素β对多发性硬化症疾病进展的长期影响。 F-Logistic可以区分动态变化,而动态变化则无法通过竞争方法(例如F-ANOVA)在基于时程表达特征的案例/对照研究中找到。 F-Logistic对于依赖时间的生物标志物检测,诊断和治疗有效。

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