소장자료
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100 | 1 | ▼aSamorodnitsky, Sarah Nathalie.▲ | |
245 | 1 | 0 | ▼aBayesian Dimension Reduction and Prediction With Multiple Datasets▼h[electronic resource]▲ |
260 | ▼a[S.l.]: ▼bUniversity of Minnesota. ▼c2023▲ | ||
260 | 1 | ▼aAnn Arbor : ▼bProQuest Dissertations & Theses, ▼c2023▲ | |
300 | ▼a1 online resource(152 p.)▲ | ||
500 | ▼aSource: Dissertations Abstracts International, Volume: 85-02, Section: B.▲ | ||
500 | ▼aAdvisor: Lock, Eric F.▲ | ||
502 | 1 | ▼aThesis (Ph.D.)--University of Minnesota, 2023.▲ | |
506 | ▼aThis item must not be sold to any third party vendors.▲ | ||
520 | ▼aBiomedical investigators are increasingly able to collect multiple sources of omics data in pursuit of the understanding of disease pathogenesis. Integrative factorization methods for multi-omic datasets have been developed to reveal latent biological patterns driving variation among the observations. However, few methods can accommodate prediction for clinical or biological outcomes within datasets having this complex structure. In Chapter 2, we propose a framework for dimension reduction and prediction in the context of multi-omic, multi-cohort (bidimensional) datasets. We also extend the oft-used Bayesian variable selection approach, the spike-and-slab prior, to accommodate hierarchical variable selection across multiple regression models. We applied this framework to multi-omic data from the Cancer Genome Atlas to predict overall survival across disparate cancer types. We identified multi-omic biological patterns related to survival that persist across multiple cancers. In Chapter 3, we proposed a Bayesian framework to perform either integrative factorization or simultaneous factorization and prediction, which we term Bayesian Simultaneous Factorization and Prediction (BSFP). BSFP concurrently estimates latent factors driving variation within and across omics datasets while estimating their effects on an outcome, providing a complete framework for uncertainty. We show via simulation the importance of accounting for uncertainty in the estimated factorization within the predictive model and the flexibility of this framework for multiple imputation. We also apply BSFP to metabolomic and proteomic data to predict lung function decline among individuals living with HIV. Finally, in Chapter 4, we extend the framework described in Chapter 3 to accommodate simultaneous factorization and prediction using bidimensional data, i.e. across multiple omics sources and multiple sample cohorts, which we term multi-cohort BSFP, or MCBSFP. We evaluate the performance of this framework in recovering latent variation structures via simulation and we use this model to reanalyze the proteomic and metabolomic data from the study considered in Chapter 3.▲ | ||
590 | ▼aSchool code: 0130.▲ | ||
650 | 4 | ▼aBiostatistics.▲ | |
650 | 4 | ▼aOncology.▲ | |
650 | 4 | ▼aBioinformatics.▲ | |
653 | ▼aBayesian hierarchical modeling▲ | ||
653 | ▼aBidimensionally-linked matrices▲ | ||
653 | ▼aIntegrative factorization▲ | ||
653 | ▼aMulti-omics▲ | ||
653 | ▼aSpike-and-slab priors▲ | ||
690 | ▼a0308▲ | ||
690 | ▼a0992▲ | ||
690 | ▼a0715▲ | ||
710 | 2 | 0 | ▼aUniversity of Minnesota.▼bBiostatistics.▲ |
773 | 0 | ▼tDissertations Abstracts International▼g85-02B.▲ | |
773 | ▼tDissertation Abstract International▲ | ||
790 | ▼a0130▲ | ||
791 | ▼aPh.D.▲ | ||
792 | ▼a2023▲ | ||
793 | ▼aEnglish▲ | ||
856 | 4 | 0 | ▼uhttp://www.riss.kr/pdu/ddodLink.do?id=T16933381▼nKERIS▼z이 자료의 원문은 한국교육학술정보원에서 제공합니다.▲ |
Bayesian Dimension Reduction and Prediction With Multiple Datasets[electronic resource]
자료유형
국외eBook
서명/책임사항
Bayesian Dimension Reduction and Prediction With Multiple Datasets [electronic resource]
발행사항
[S.l.] : University of Minnesota. 2023 Ann Arbor : ProQuest Dissertations & Theses , 2023
형태사항
1 online resource(152 p.)
일반주기
Source: Dissertations Abstracts International, Volume: 85-02, Section: B.
Advisor: Lock, Eric F.
Advisor: Lock, Eric F.
학위논문주기
Thesis (Ph.D.)--University of Minnesota, 2023.
요약주기
Biomedical investigators are increasingly able to collect multiple sources of omics data in pursuit of the understanding of disease pathogenesis. Integrative factorization methods for multi-omic datasets have been developed to reveal latent biological patterns driving variation among the observations. However, few methods can accommodate prediction for clinical or biological outcomes within datasets having this complex structure. In Chapter 2, we propose a framework for dimension reduction and prediction in the context of multi-omic, multi-cohort (bidimensional) datasets. We also extend the oft-used Bayesian variable selection approach, the spike-and-slab prior, to accommodate hierarchical variable selection across multiple regression models. We applied this framework to multi-omic data from the Cancer Genome Atlas to predict overall survival across disparate cancer types. We identified multi-omic biological patterns related to survival that persist across multiple cancers. In Chapter 3, we proposed a Bayesian framework to perform either integrative factorization or simultaneous factorization and prediction, which we term Bayesian Simultaneous Factorization and Prediction (BSFP). BSFP concurrently estimates latent factors driving variation within and across omics datasets while estimating their effects on an outcome, providing a complete framework for uncertainty. We show via simulation the importance of accounting for uncertainty in the estimated factorization within the predictive model and the flexibility of this framework for multiple imputation. We also apply BSFP to metabolomic and proteomic data to predict lung function decline among individuals living with HIV. Finally, in Chapter 4, we extend the framework described in Chapter 3 to accommodate simultaneous factorization and prediction using bidimensional data, i.e. across multiple omics sources and multiple sample cohorts, which we term multi-cohort BSFP, or MCBSFP. We evaluate the performance of this framework in recovering latent variation structures via simulation and we use this model to reanalyze the proteomic and metabolomic data from the study considered in Chapter 3.
주제
ISBN
9798379958459
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