Mining brain imaging and genetics data via structured sparse learning

dc.contributor.advisorWu, Huanmei
dc.contributor.authorYan, Jingwen
dc.contributor.otherShen, Li
dc.contributor.otherFang, Shiaofen
dc.contributor.otherLiu, Xiaowen
dc.date.accessioned2016-01-11T15:46:46Z
dc.date.available2016-01-11T15:46:46Z
dc.date.issued2015-04-29
dc.degree.date2015
dc.degree.disciplineSchool of Informatics
dc.degree.grantorIndiana University
dc.degree.levelPh.D.
dc.descriptionIndiana University-Purdue University Indianapolis (IUPUI)en_US
dc.description.abstractAlzheimer's disease (AD) is a neurodegenerative disorder characterized by gradual loss of brain functions, usually preceded by memory impairments. It has been widely affecting aging Americans over 65 old and listed as 6th leading cause of death. More importantly, unlike other diseases, loss of brain function in AD progression usually leads to the significant decline in self-care abilities. And this will undoubtedly exert a lot of pressure on family members, friends, communities and the whole society due to the time-consuming daily care and high health care expenditures. In the past decade, while deaths attributed to the number one cause, heart disease, has decreased 16 percent, deaths attributed to AD has increased 68 percent. And all of these situations will continue to deteriorate as the population ages during the next several decades. To prevent such health care crisis, substantial efforts have been made to help cure, slow or stop the progression of the disease. The massive data generated through these efforts, like multimodal neuroimaging scans as well as next generation sequences, provides unprecedented opportunities for researchers to look into the deep side of the disease, with more confidence and precision. While plenty of efforts have been made to pull in those existing machine learning and statistical models, the correlated structure and high dimensionality of imaging and genetics data are generally ignored or avoided through targeted analysis. Therefore their performances on imaging genetics study are quite limited and still have plenty to be improved. The primary contribution of this work lies in the development of novel prior knowledge-guided regression and association models, and their applications in various neurobiological problems, such as identification of cognitive performance related imaging biomarkers and imaging genetics associations. In summary, this work has achieved the following research goals: (1) Explore the multimodal imaging biomarkers toward various cognitive functions using group-guided learning algorithms, (2) Development and application of novel network structure guided sparse regression model, (3) Development and application of novel network structure guided sparse multivariate association model, and (4) Promotion of the computation efficiency through parallelization strategies.en_US
dc.identifier.urihttps://hdl.handle.net/1805/8028
dc.identifier.urihttp://dx.doi.org/10.7912/C2/952
dc.language.isoen_USen_US
dc.subjectAlzheimer's diseaseen_US
dc.subjectBiomarker discoveryen_US
dc.subjectData intensive computingen_US
dc.subjectImaging geneticsen_US
dc.subjectStructured sparse learningen_US
dc.subject.lcshAlzheimer's disease -- Researchen_US
dc.subject.lcshAlzheimer's disease -- Patients -- Careen_US
dc.subject.lcshMedical geneticsen_US
dc.subject.lcshDiagnostic imagingen_US
dc.subject.lcshImage processingen_US
dc.subject.lcshNeural networks (Neurobiology)en_US
dc.subject.lcshBrain -- Physiologyen_US
dc.titleMining brain imaging and genetics data via structured sparse learningen_US
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