Show simple item record

Joint Bayesian Image and Prediction Modeling.

dc.contributor.authorWu, Jincaoen_US
dc.date.accessioned2011-09-15T17:08:55Z
dc.date.availableNO_RESTRICTIONen_US
dc.date.available2011-09-15T17:08:55Z
dc.date.issued2011en_US
dc.date.submitteden_US
dc.identifier.urihttps://hdl.handle.net/2027.42/86283
dc.description.abstractIn this dissertation, I focus on Bayesian joint modeling of neuroimaging 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.en_US
dc.language.isoen_USen_US
dc.subjectBayesianen_US
dc.subjectImageen_US
dc.subjectPredictionen_US
dc.titleJoint Bayesian Image and Prediction Modeling.en_US
dc.typeThesisen_US
dc.description.thesisdegreenamePhDen_US
dc.description.thesisdegreedisciplineBiostatisticsen_US
dc.description.thesisdegreegrantorUniversity of Michigan, Horace H. Rackham School of Graduate Studiesen_US
dc.contributor.committeememberJohnson, Timothy D.en_US
dc.contributor.committeememberBraun, Thomas M.en_US
dc.contributor.committeememberNan, Binen_US
dc.contributor.committeememberRoss, Brian Daleen_US
dc.subject.hlbsecondlevelStatistics and Numeric Dataen_US
dc.subject.hlbtoplevelScienceen_US
dc.description.bitstreamurlhttp://deepblue.lib.umich.edu/bitstream/2027.42/86283/1/jincaowu_1.pdf
dc.owningcollnameDissertations and Theses (Ph.D. and Master's)


Files in this item

Show simple item record

Remediation of Harmful Language

The University of Michigan Library aims to describe library materials in a way that respects the people and communities who create, use, and are represented in our collections. Report harmful or offensive language in catalog records, finding aids, or elsewhere in our collections anonymously through our metadata feedback form. More information at Remediation of Harmful Language.

Accessibility

If you are unable to use this file in its current format, please select the Contact Us link and we can modify it to make it more accessible to you.