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Temporal Prediction of Future State Occupation in a Multistate Model from High-Dimensional Baseline Covariates via Pseudo-Value Regression

机译:通过伪值回归从高维基线协变量中预测多状态模型中未来状态的时间

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摘要

In many complex diseases such as cancer, a patient undergoes various disease stages before reaching a terminal state (say disease free or death). This fits a multistate model framework where a prognosis may be equivalent to predicting the state occupation at a future time t. With the advent of high throughput genomic and proteomic assays, a clinician may intent to use such high dimensional covariates in making better prediction of state occupation.In this article, we offer a practical solution to this problem by combining a useful technique, called pseudo value regression, with a latent factor or a penalized regression method such as the partial least squares (PLS) or the least absolute shrinkage and selection operator (LASSO), or their variants. We explore the predictive performances of these combinations in various high dimensional settings via extensive simulation studies. Overall, this strategy works fairly well provided the models are tuned properly. Overall, the PLS turns out to be slightly better than LASSO in most settings investigated by us, for the purpose of temporal prediction of future state occupation. We illustrate the utility of these pseudo-value based high dimensional regression methods using a lung cancer data set where we use the patients' baseline gene expression values.
机译:在许多复杂的疾病(例如癌症)中,患者在达到终末状态(例如无疾病或死亡)之前经历了各种疾病阶段。这适合多状态模型框架,其中预后可能等同于预测未来时间t的状态占用。随着高通量基因组和蛋白质组学检测方法的出现,临床医生可能打算使用这种高维协变量来更好地预测状态占用。在本文中,我们通过结合一种有用的技术(称为伪值)为该问题提供了一种实用的解决方案。回归,使用潜在因子或惩罚性回归方法,例如偏最小二乘(PLS)或最小绝对收缩和选择算子(LASSO),或它们的变体。通过广泛的模拟研究,我们探索了这些组合在各种高维环境下的预测性能。总体而言,只要对模型进行了适当的调整,该策略就可以很好地工作。总体而言,出于对未来国家占领的时间预测的目的,在我们调查的大多数环境中,PLS略好于LASSO。我们使用肺癌数据集说明了这些基于伪值的高维回归方法的实用性,其中我们使用了患者的基线基因表达值。

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