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Joint Bayesian Image and Prediction Modeling.
[摘要] In this dissertation, I focus on Bayesian joint modeling ofneuroimaging data and outcomes. In the first project, I propose a joint classification model to predict treatment efficacy, as measured by one-year survival status, based on quantitative MRI (qMRI) for patients with malignant gliomas. In stage I, I smooth the images using a multivariate spatio-temporal pairwise-difference prior and propose four summary statistics. In stage II, I build a generalized non-linear model with stage I summary statistics as covariates and use Multivariate Adaptive Regression Splines as the basis functions. To assess therapeutic efficacy more efficiently, I modify stage II to incorporate censoring. I propose a Bayesian joint survival model and model patients’ health status as a latent Wiener process. Patients;; survival time is modeled as the first hitting time (FHT) to an absorbing state (i.e. death). I link the summary statistics derived from the qMRI data to the distribution parameters of the FHT via a Bayesian hierarchical model. My third project is motivated by the challenges of using MRI to diagnose an irreversible and progressive brain disease: Alzheimer;;s disease. In an MRI study, white matter changes are highly heterogeneous and differ in size and location making it difficult to use MRI as an accurate diagnostic tool. To mitigate these problems, I propose to jointly model MRI data and the disease status (normal, mild cognitive impairment or Alzheimer’s disease) using wavelets. In stage I, a 3-D discrete wavelet transformation is applied on the MRI data.The Bayesian Lasso is used to denoise the wavelet images and then I derive summary statistics based on these denoised images. In stage II, I include the summary statistics from stage I as covariates and build a cumulative probit regression model to predict the polychotomous disease status.Through both simulation studies and model performance comparisons, I show that our modeling approach can improve prediction by accounting for correlation in the images and by jointly modeling the images and outcomes.
[发布日期]  [发布机构] University of Michigan
[效力级别] Image [学科分类] 
[关键词] Bayesian;Image;Prediction;Statistics and Numeric Data;Science;Biostatistics [时效性] 
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