Interesting and challenging methodological questions arise from the analysis of Big Biomedical Data, where viable solutions are sought with the help of modern computational tools. In this dissertation, I look at problems in biomedical studies related to data integration, data heterogeneity, and related statistical learning algorithms. The overarching strategy throughout the dissertation research is rooted in the treatment of individual datasets, but not individual subjects, as the elements of focus. Thus, I generalized some of the traditional subject-level methods to be tailored for the development of Big Data methodologies. Following an introduction overview in the first chapter, Chapter II concerns the development of fusion learning of m...
We investigate methods of improving medical outcomes through exploiting heterogeneity, with focus on...
Recent advances in Artificial Intelligence and deep learning have provided researchers in various fi...
Data heterogeneity is a challenging problem in modern data analysis. In particular, many classical s...
Interesting and challenging methodological questions arise from the analysis of Big Biomedical Data,...
Jointly analyzing multiple datasets arising from similar studies has drawn increasing attention in r...
abstract: With the development of computer and sensing technology, rich datasets have become availab...
This thesis focuses on developing and implementing new statistical methods to address some of the cu...
This dissertation is centered on the modeling of heterogeneous data which is ubiquitous in this digi...
This century is surely the century of data (Donoho, 2000). Data analysis has been an emerging activi...
Integrating heterogeneous data in an effective manner to construct an efficient model of a system is...
Data science is changing our society and economy, and complicated data from heterogeneous sources is...
In modern biomedical research, an emerging challenge is data heterogeneity. Ignoring such heterogene...
University of Minnesota Ph.D. dissertation. 2016. Major: Biostatistics. Advisors: Sudipto Banerjee, ...
With the development of high-throughput biomedical technologies in recent years, the size of a typic...
Effect-size heterogeneity is a commonly observed phenomenon when aggregating studies from different ...
We investigate methods of improving medical outcomes through exploiting heterogeneity, with focus on...
Recent advances in Artificial Intelligence and deep learning have provided researchers in various fi...
Data heterogeneity is a challenging problem in modern data analysis. In particular, many classical s...
Interesting and challenging methodological questions arise from the analysis of Big Biomedical Data,...
Jointly analyzing multiple datasets arising from similar studies has drawn increasing attention in r...
abstract: With the development of computer and sensing technology, rich datasets have become availab...
This thesis focuses on developing and implementing new statistical methods to address some of the cu...
This dissertation is centered on the modeling of heterogeneous data which is ubiquitous in this digi...
This century is surely the century of data (Donoho, 2000). Data analysis has been an emerging activi...
Integrating heterogeneous data in an effective manner to construct an efficient model of a system is...
Data science is changing our society and economy, and complicated data from heterogeneous sources is...
In modern biomedical research, an emerging challenge is data heterogeneity. Ignoring such heterogene...
University of Minnesota Ph.D. dissertation. 2016. Major: Biostatistics. Advisors: Sudipto Banerjee, ...
With the development of high-throughput biomedical technologies in recent years, the size of a typic...
Effect-size heterogeneity is a commonly observed phenomenon when aggregating studies from different ...
We investigate methods of improving medical outcomes through exploiting heterogeneity, with focus on...
Recent advances in Artificial Intelligence and deep learning have provided researchers in various fi...
Data heterogeneity is a challenging problem in modern data analysis. In particular, many classical s...