Motivation: Batch effects heavily impact results in omics studies, causing bias and false positive results, but software to control them preemptively is lacking. Sample randomization prior to measurement is vital for minimizing these effects, but current approaches are often ad hoc, poorly documented and ill-equipped to handle multiple batches and outcomes.Results: We developed Omixer-a Bioconductor package implementing multivariate and reproducible sample randomization for omics studies. It proactively counters correlations between technical factors and biological variables of interest by optimizing sample distribution across batches.Molecular Epidemiolog
<div><p>In omics experiments, variable selection involves a large number of metabolites/ genes and a...
In omics experiments, variable selection involves a large number of metabolites/ genes and a small n...
Abstract Background Batch effects are notoriously common technical variations in multiomics data and...
14 páginasDiversity of omic technologies has expanded in the last years together with the number of ...
2 hojas, 2 figurasMotivation: Batch effects in omics datasets are usually a source of technical nois...
Motivation: Batch effects in omics datasets are usually a source of technical noise that masks the b...
Abstract Background Batch effect is one type of variability that is not of primary interest but ubiq...
Multi-omics studies are popular but lack rigorous criteria for experimental design. We define Figure...
Careful design of experiments using living organisms (e.g. mice) is of critical importance from both...
The quality of gene expression microarray data has improved dramatically since the first arrays were...
The generation of multiple, large scale genomic datasets has become increasingly common in biologica...
The Omics revolution has provided the researcher with tools and methodologies for qualitative and qu...
In current biomedical and complex trait research, increasing numbers of large molecular profiling (o...
International audienceMulti-omics studies can highlight the interrelationships among data across dif...
Abstract Background Combining genomic data sets from multiple studies is advantageous to increase st...
<div><p>In omics experiments, variable selection involves a large number of metabolites/ genes and a...
In omics experiments, variable selection involves a large number of metabolites/ genes and a small n...
Abstract Background Batch effects are notoriously common technical variations in multiomics data and...
14 páginasDiversity of omic technologies has expanded in the last years together with the number of ...
2 hojas, 2 figurasMotivation: Batch effects in omics datasets are usually a source of technical nois...
Motivation: Batch effects in omics datasets are usually a source of technical noise that masks the b...
Abstract Background Batch effect is one type of variability that is not of primary interest but ubiq...
Multi-omics studies are popular but lack rigorous criteria for experimental design. We define Figure...
Careful design of experiments using living organisms (e.g. mice) is of critical importance from both...
The quality of gene expression microarray data has improved dramatically since the first arrays were...
The generation of multiple, large scale genomic datasets has become increasingly common in biologica...
The Omics revolution has provided the researcher with tools and methodologies for qualitative and qu...
In current biomedical and complex trait research, increasing numbers of large molecular profiling (o...
International audienceMulti-omics studies can highlight the interrelationships among data across dif...
Abstract Background Combining genomic data sets from multiple studies is advantageous to increase st...
<div><p>In omics experiments, variable selection involves a large number of metabolites/ genes and a...
In omics experiments, variable selection involves a large number of metabolites/ genes and a small n...
Abstract Background Batch effects are notoriously common technical variations in multiomics data and...