Correlation is ubiquitously used in gene expression analysis although its validity as an objective criterion is often questionable. If no normalization reflecting the original mRNA counts in the cells is available, correlation between genes becomes spurious. Yet the need for normalization can be bypassed using a relative analysis approach called log-ratio analysis. This approach can be used to identify proportional gene pairs, i.e. a subset of pairs whose correlation can be inferred correctly from unnormalized data due to their vanishing log-ratio variance. To interpret the size of non-zero log-ratio variances, a proposal for a scaling with respect to the variance of one member of the gene pair was recently made by Lovell et al. Here we der...
Background: In genetic transcription research, gene expression is typically reported in a test sampl...
In the life sciences, many assays measure only the relative abundances of components in each sample....
Background: Gene co-expression analysis has previously been based on measures that include correlat...
Correlation is ubiquitously used in gene expression analysis although its validity as an objective c...
In the life sciences, many measurement methods yield only the relative abundances of different compo...
In the life sciences, many measurement methods yield only the relative abundances of different compo...
In the life sciences, many measurement methods yield only the relative abundances of different compo...
In the life sciences, many measurement methods yield only the relative abundances of different compo...
<div><p>In the life sciences, many measurement methods yield only the relative abundances of differe...
In the life sciences, many measurement methods yield only the relative abundances of dif-ferent comp...
Relative abundance data is common in the life sciences, but appreciation that it needs special analy...
Relative abundance data is common in the life sciences, but appreciation that it needs special analy...
Relative abundance data is common in the life sciences, but appreciation that it needs special analy...
In gene expression, the emergence of large aggregated data sets along with new single-cell technolog...
Abstract Background In genetic transcription research, gene expression is typically reported in a te...
Background: In genetic transcription research, gene expression is typically reported in a test sampl...
In the life sciences, many assays measure only the relative abundances of components in each sample....
Background: Gene co-expression analysis has previously been based on measures that include correlat...
Correlation is ubiquitously used in gene expression analysis although its validity as an objective c...
In the life sciences, many measurement methods yield only the relative abundances of different compo...
In the life sciences, many measurement methods yield only the relative abundances of different compo...
In the life sciences, many measurement methods yield only the relative abundances of different compo...
In the life sciences, many measurement methods yield only the relative abundances of different compo...
<div><p>In the life sciences, many measurement methods yield only the relative abundances of differe...
In the life sciences, many measurement methods yield only the relative abundances of dif-ferent comp...
Relative abundance data is common in the life sciences, but appreciation that it needs special analy...
Relative abundance data is common in the life sciences, but appreciation that it needs special analy...
Relative abundance data is common in the life sciences, but appreciation that it needs special analy...
In gene expression, the emergence of large aggregated data sets along with new single-cell technolog...
Abstract Background In genetic transcription research, gene expression is typically reported in a te...
Background: In genetic transcription research, gene expression is typically reported in a test sampl...
In the life sciences, many assays measure only the relative abundances of components in each sample....
Background: Gene co-expression analysis has previously been based on measures that include correlat...