Abstract Background When many (up to millions) of statistical tests are conducted in discovery set analyses such as genome-wide association studies (GWAS), approaches controlling family-wise error rate (FWER) or false discovery rate (FDR) are required to reduce the number of false positive decisions. Some methods were specifically developed in the context of high-dimensional settings and partially rely on the estimation of the proportion of true null hypotheses. However, these approaches are also applied in low-dimensional settings such as replication set analyses that might be restricted to a small number of specific hypotheses. The aim of this study was to compare different approaches in low-dimensional settings using (a) real data from t...
Popular procedures to control the chance of making type I errors when multiple statistical tests are...
International audienceBackground The use of current high-throughput genetic, genomic and post-genomi...
Background: The use of current high-throughput genetic, genomic and post-genomic data leads to the s...
Background: When many (up to millions) of statistical tests are conducted in discovery set analyses ...
Abstract Background Procedures for controlling the false discovery rate (FDR) are widely applied as ...
In genome-wide genetic studies with a large number of markers, balancing the type I error rate and p...
False Discover Rate (FDR) method provides more powerful multiple hypothesis testing criteria than th...
Background: In high-throughput studies, hundreds to millions of hypotheses are typically tested. Sta...
Stability Selection, which combines penalized regression with subsampling, is a promising algorithm ...
Importance of presenting the variability of the false discovery rate control Yi-Ting Lin and Wen-Chu...
Abstract: Procedures controlling error rates measuring at least k false rejections, instead of at le...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
Popular procedures to control the chance of making type I errors when multiple statistical tests are...
International audienceBackground The use of current high-throughput genetic, genomic and post-genomi...
Background: The use of current high-throughput genetic, genomic and post-genomic data leads to the s...
Background: When many (up to millions) of statistical tests are conducted in discovery set analyses ...
Abstract Background Procedures for controlling the false discovery rate (FDR) are widely applied as ...
In genome-wide genetic studies with a large number of markers, balancing the type I error rate and p...
False Discover Rate (FDR) method provides more powerful multiple hypothesis testing criteria than th...
Background: In high-throughput studies, hundreds to millions of hypotheses are typically tested. Sta...
Stability Selection, which combines penalized regression with subsampling, is a promising algorithm ...
Importance of presenting the variability of the false discovery rate control Yi-Ting Lin and Wen-Chu...
Abstract: Procedures controlling error rates measuring at least k false rejections, instead of at le...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
Popular procedures to control the chance of making type I errors when multiple statistical tests are...
International audienceBackground The use of current high-throughput genetic, genomic and post-genomi...
Background: The use of current high-throughput genetic, genomic and post-genomic data leads to the s...