In high dimensional data analysis (such as gene expression, spatial epidemiology, or brain imaging studies), we often test thousands or more hypotheses simultaneously. As the number of tests increases, the chance of observing some statistically significant tests is very high even when all null hypotheses are true. Consequently, we could reach incorrect conclusions regarding the hypotheses. Researchers frequently use multiplicity adjustment methods to control type I error rates-primarily the family-wise error rate (FWER) or the false discovery rate (FDR)-while still desiring high statistical power. In practice, such studies may have dependent test statistics (or p-values) as tests can be dependent on each other. However, some commonly-used m...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...
High dimensional data with sparsity is routinely observed in many scientific disciplines. Filtering ...
BACKGROUND: Reproducibility of research findings has been recently questioned in many fields of sci...
In high dimensional data analysis (such as gene expression, spatial epidemiology, or brain imaging s...
In high dimensional data analysis (such as gene expression, spatial epidemiology, or brain imaging s...
It is a typical feature of high dimensional data analysis, for example a microarray study, that a re...
Background We consider effects of dependence among variables of high-dimensional data in multiple hy...
Correlated multiple testing is widely performed in genetic research, particularly in multilocus anal...
Multiple testing of correlations arises in many applications including gene coexpression network ana...
Hypothesis testing is foundational to the discipline of statistics. Procedures exist which control f...
High-dimensional hypothesis testing is ubiquitous in the biomedical sciences, and informative covari...
A large-scale multiple testing problem simultaneously tests thousands or even millions of null hypot...
Funder: Johnson and Johnson; Id: http://dx.doi.org/10.13039/100004331Abstract: High‐dimensional hypo...
Multi-arm clinical trials assessing multiple experimental treatments against a shared control group ...
Many research areas require multiple outcomes. For example, neuropsychological hypotheses may not be...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...
High dimensional data with sparsity is routinely observed in many scientific disciplines. Filtering ...
BACKGROUND: Reproducibility of research findings has been recently questioned in many fields of sci...
In high dimensional data analysis (such as gene expression, spatial epidemiology, or brain imaging s...
In high dimensional data analysis (such as gene expression, spatial epidemiology, or brain imaging s...
It is a typical feature of high dimensional data analysis, for example a microarray study, that a re...
Background We consider effects of dependence among variables of high-dimensional data in multiple hy...
Correlated multiple testing is widely performed in genetic research, particularly in multilocus anal...
Multiple testing of correlations arises in many applications including gene coexpression network ana...
Hypothesis testing is foundational to the discipline of statistics. Procedures exist which control f...
High-dimensional hypothesis testing is ubiquitous in the biomedical sciences, and informative covari...
A large-scale multiple testing problem simultaneously tests thousands or even millions of null hypot...
Funder: Johnson and Johnson; Id: http://dx.doi.org/10.13039/100004331Abstract: High‐dimensional hypo...
Multi-arm clinical trials assessing multiple experimental treatments against a shared control group ...
Many research areas require multiple outcomes. For example, neuropsychological hypotheses may not be...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...
High dimensional data with sparsity is routinely observed in many scientific disciplines. Filtering ...
BACKGROUND: Reproducibility of research findings has been recently questioned in many fields of sci...