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Bayesian growth curve model useful for high-dimensional longitudinal data

机译:用于高维纵向数据的贝叶斯增长曲线模型

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Traditional inference on the growth curve model (GCM) requires 'small p large n' () and cannot be applied in high-dimensional scenarios, where we often encounter singularity. Several methods are proposed to tackle the singularity problem, however there are still limitations and gaps. We consider a Bayesian framework to derive a statistic for testing a linear hypothesis on the GCM. Extensive simulations are performed to investigate performance and establish optimality characteristics. We show that the test overcomes the challenge of high-dimensionality and possesses all the desirable optimality characteristics of a good test - it is unbiased, symmetric and monotone with respect to sample size and departure from the null hypotheses. The results also indicate that the test performs very well, possessing a level close to the nominal value and high power in rejecting small departures from the null. The results also show that the test overcomes limitations of a previously proposed test. We illustrated practical applications using a publicly available time course genetic data on breast cancer, where we used our test statistic for gene filtering. The genes were ranked according to the value of the test statistic and the top five genes were annotated.
机译:关于增长曲线模型(GCM)的传统推论需要'small p large n'(),并且不能应用于我们经常遇到奇点的高维场景。提出了几种方法来解决奇异性问题,但是仍然存在局限和差距。我们考虑贝叶斯框架,以得出用于检验GCM线性假设的统计量。执行广泛的仿真以研究性能并建立最佳特性。我们表明,该测试克服了高维挑战,并拥有良好测试的所有理想优化特性-就样本量和偏离原假设而言,它是无偏见,对称和单调的。结果还表明,该测试的性能非常好,具有接近标称值的水平和高功率,可以拒绝零位偏差。结果还表明该测试克服了先前提出的测试的局限性。我们使用可公开获得的乳腺癌时程遗传数据说明了实际应用,其中我们将检验统计量用于基因过滤。根据检验统计值对基因进行排名,并标注前五个基因。

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