Bayesian penalized model for classification and selection of functional predictors using longitudinal MRI data from ADNI

IF 0.7 Q3 STATISTICS & PROBABILITY
Asish Banik, T. Maiti, Andrew R. Bender
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引用次数: 0

Abstract

ABSTRACT The main goal of this paper is to employ longitudinal trajectories in a significant number of sub-regional brain volumetric MRI data as statistical predictors for Alzheimer's disease (AD) classification. We use logistic regression in a Bayesian framework that includes many functional predictors. The direct sampling of regression coefficients from the Bayesian logistic model is difficult due to its complicated likelihood function. In high-dimensional scenarios, the selection of predictors is paramount with the introduction of either spike-and-slab priors, non-local priors, or Horseshoe priors. We seek to avoid the complicated Metropolis-Hastings approach and to develop an easily implementable Gibbs sampler. In addition, the Bayesian estimation provides proper estimates of the model parameters, which are also useful for building inference. Another advantage of working with logistic regression is that it calculates the log of odds of relative risk for AD compared to normal control based on the selected longitudinal predictors, rather than simply classifying patients based on cross-sectional estimates. Ultimately, however, we combine approaches and use a probability threshold to classify individual patients. We employ 49 functional predictors consisting of volumetric estimates of brain sub-regions, chosen for their established clinical significance. Moreover, the use of spike-and-slab priors ensures that many redundant predictors are dropped from the model.
利用ADNI的纵向MRI数据对功能预测因子进行分类和选择的贝叶斯惩罚模型
摘要本文的主要目标是在大量亚区域脑体积MRI数据中使用纵向轨迹作为阿尔茨海默病(AD)分类的统计预测因素。我们在贝叶斯框架中使用逻辑回归,该框架包括许多函数预测因子。贝叶斯逻辑模型的回归系数的直接采样由于其复杂的似然函数而变得困难。在高维场景中,通过引入尖峰和平板先验、非局部先验或马蹄先验,预测因子的选择至关重要。我们试图避免复杂的Metropolis Hastings方法,并开发一个易于实施的吉布斯采样器。此外,贝叶斯估计提供了对模型参数的适当估计,这对于构建推理也是有用的。使用逻辑回归的另一个优点是,它根据选定的纵向预测因素计算AD与正常对照组的相对风险的对数,而不是简单地根据横断面估计对患者进行分类。然而,最终,我们将各种方法结合起来,并使用概率阈值对个别患者进行分类。我们采用了49个功能预测因子,包括大脑亚区域的体积估计,根据其既定的临床意义进行选择。此外,尖峰和板先验的使用确保了许多冗余的预测因子从模型中删除。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.90
自引率
20.00%
发文量
21
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