Post-normalization checking of microarrays rarely occurs, despite the problems that using unreliable data for inference can cause. This paper considers a number of different ways to check microarrays after normalization for a variety of potential problems. Four types of problem with microarray data that these checks can identify are: clerical mistakes, array-wide hybridization problems, problems with normalization and mishandling problems. Any of these can seriously affect the results of any analysis. The three main techniques used to identify these problems are dimension reduction techniques, false array plots and correlograms. None of the techniques are computationally very intensive and all can be carried out in the R statistical package...
DNA microarray technologies have the capability of simultaneously measuring the abundance of thousan...
International audienceBACKGROUND: Raw data normalization is a critical step in microarray data analy...
International audienceBACKGROUND: Raw data normalization is a critical step in microarray data analy...
Post-normalization checking of microarrays rarely occurs, despite the problems that using unreliable...
Post-normalization checking of microarrays rarely occurs, despite the problems that using unreliable...
Summary: Microarray data are generated in complex experiments and frequently compromised by a variet...
Motivation: A major challenge in utilizing microarray technologies to measure nucleic acid abundance...
Motivation: A major challenge in utilizing microarray technologies to measure nucleic acid abundance...
We give a brief overview over necessary steps in the analysis of microarray data. We cover quality c...
When using cDNA microarrays, normalization to correct labeling bias is a common preliminary step bef...
MicroRNA arrays possess a number of unique data features that challenge the assumption key to many n...
In the middle of the 1990’s the microarray technology was introduced. The technology allowed for gen...
<div><p>MicroRNA arrays possess a number of unique data features that challenge the assumption key t...
The recent development of complementary DNA microarray technology pro-vides a powerful analytical to...
International audienceAbstract Background Raw data normalization is a critical step in microarray da...
DNA microarray technologies have the capability of simultaneously measuring the abundance of thousan...
International audienceBACKGROUND: Raw data normalization is a critical step in microarray data analy...
International audienceBACKGROUND: Raw data normalization is a critical step in microarray data analy...
Post-normalization checking of microarrays rarely occurs, despite the problems that using unreliable...
Post-normalization checking of microarrays rarely occurs, despite the problems that using unreliable...
Summary: Microarray data are generated in complex experiments and frequently compromised by a variet...
Motivation: A major challenge in utilizing microarray technologies to measure nucleic acid abundance...
Motivation: A major challenge in utilizing microarray technologies to measure nucleic acid abundance...
We give a brief overview over necessary steps in the analysis of microarray data. We cover quality c...
When using cDNA microarrays, normalization to correct labeling bias is a common preliminary step bef...
MicroRNA arrays possess a number of unique data features that challenge the assumption key to many n...
In the middle of the 1990’s the microarray technology was introduced. The technology allowed for gen...
<div><p>MicroRNA arrays possess a number of unique data features that challenge the assumption key t...
The recent development of complementary DNA microarray technology pro-vides a powerful analytical to...
International audienceAbstract Background Raw data normalization is a critical step in microarray da...
DNA microarray technologies have the capability of simultaneously measuring the abundance of thousan...
International audienceBACKGROUND: Raw data normalization is a critical step in microarray data analy...
International audienceBACKGROUND: Raw data normalization is a critical step in microarray data analy...