A class of multivariate tests for case-control studies with high-dimensional low sample size data and with complex dependence structure, which are common in medical imaging and molecular biology, is proposed. The tests can be applied when the number of variables is much larger than the number of subjects and when the underlying population distributions are heavy-tailed or skewed. As a motivating application, we consider a case-control study where phase-contrast cinematic cardiovascular magnetic resonance imaging has been used to compare many cardiovascular characteristics of young healthy smokers and young healthy non-smokers. The tests are based on the combination of tests on interpoint distances. It is theoretically proved that the ...
In longitudinal studies with small samples and incomplete data, multivariate normal-based models con...
Two classical multivariate statistical problems, testing of multivariate normality and the k-sample ...
Two classical multivariate statistical problems, testing of multivariate normality and the k-sample ...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
The multivariate location problem is addressed. The most familiar method to address the problem is t...
Modern data collection techniques allow to analyze a very large number of endpoints. In biomedical r...
In biomedical research, multiple endpoints are commonly analyzed in "omics" fields like genomics, pr...
Acknowledgements The authors are grateful to the Editor, Associate Editor and three anonymous refere...
In this article, we develop a multivariate theory for analyzing multivariate datasets that have fewe...
The work proposes a methodological solution to complex testing problems. In particular, it is focuse...
We propose a test for multisample comparison studies that can be applied without strict assumptions,...
We review and compare multiple hypothesis testing procedures used in clinical trials and those in ge...
With technological, research, and theoretical advancements, the amount of data being generated for a...
In longitudinal studies with small samples and incomplete data, multivariate normal-based models con...
Two classical multivariate statistical problems, testing of multivariate normality and the k-sample ...
Two classical multivariate statistical problems, testing of multivariate normality and the k-sample ...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
The multivariate location problem is addressed. The most familiar method to address the problem is t...
Modern data collection techniques allow to analyze a very large number of endpoints. In biomedical r...
In biomedical research, multiple endpoints are commonly analyzed in "omics" fields like genomics, pr...
Acknowledgements The authors are grateful to the Editor, Associate Editor and three anonymous refere...
In this article, we develop a multivariate theory for analyzing multivariate datasets that have fewe...
The work proposes a methodological solution to complex testing problems. In particular, it is focuse...
We propose a test for multisample comparison studies that can be applied without strict assumptions,...
We review and compare multiple hypothesis testing procedures used in clinical trials and those in ge...
With technological, research, and theoretical advancements, the amount of data being generated for a...
In longitudinal studies with small samples and incomplete data, multivariate normal-based models con...
Two classical multivariate statistical problems, testing of multivariate normality and the k-sample ...
Two classical multivariate statistical problems, testing of multivariate normality and the k-sample ...