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EHR data+X : expanding the reach of EHR through data integration / Rui Duan.
Connect to full text Available online
View online- Format:
- Book
- Thesis/Dissertation
- Author/Creator:
- Duan, Rui, author.
- Language:
- English
- Subjects (All):
- Biostatistics.
- Epidemiology.
- Epidemiology and Biostatistics--Penn dissertations.
- Penn dissertations--Epidemiology and Biostatistics.
- Local Subjects:
- Biostatistics.
- Epidemiology.
- Epidemiology and Biostatistics--Penn dissertations.
- Penn dissertations--Epidemiology and Biostatistics.
- Genre:
- Academic theses.
- Physical Description:
- 1 online resource (140 pages)
- Contained In:
- Dissertations Abstracts International 81-12B.
- Place of Publication:
- [Philadelphia, Pennsylvania] : University of Pennsylvania ; Ann Arbor : ProQuest Dissertations & Theses, 2020.
- Language Note:
- English
- System Details:
- Mode of access: World Wide Web.
- text file
- Summary:
- The growth of availability and variety of healthcare data sources has provided unique opportunities for data integration and evidence synthesis, which can potentially accelerate knowledge discovery and enable better clinical decision making. However, many practical and technical challenges, such as data privacy, high-dimensionality and heterogeneity across different datasets, remain to be addressed. In Chapters 1-3, we develop several methods for effective integration of electronic health records (EHRs) and other healthcare datasets. We develop communication-efficient distributed algorithms for joint analyses of multiple datasets without the need of sharing patient-level data. Our algorithms do not require iterative communication across sites, and are able to account for heterogeneity across different datasets. We provide theoretical guarantees for the performance of our algorithms, and examples of implementing the algorithms to real world clinical research networks, including the observational health data sciences and informatics (OHDSI) and the national patient-centered clinical research networks (PCORnet). In Chapter 4, we propose a novel bilinear regression model for linking EHR with genetic or imaging data, which incorporates the low-rank and sparse structure of the association between high-dimensional covariates and outcomes. We develop an iterative algorithm to solve the non-convex optimization in the parameter estimation, and a simultaneous hypothesis testing procedure with theoretical guarantees of false discovery rate control. Our method is applied to a multi-view brain network analysis for Parkinson's Disease.
- Notes:
- Source: Dissertations Abstracts International, Volume: 81-12, Section: B.
- Advisors: Chen, Yong; Committee members: John Holmes; Jason Moore; Christopher Forrest; Mary Boland.
- Department: Epidemiology and Biostatistics.
- Ph.D. University of Pennsylvania 2020.
- Local Notes:
- School code: 0175
- ISBN:
- 9798641824406
- Access Restriction:
- Restricted for use by site license.
- This item is not available from ProQuest Dissertations & Theses.
- This item must not be sold to any third party vendors.
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