Summary: Microarray data are generated in complex experiments and frequently compromised by a variety of systematic errors. Subsequent data normalization aims to correct for these errors. Although several normalization methods have recently been proposed, they frequently fail to account for the variability of systematic errors within and between microarray experiments. However, optimal adjustment of normalization procedures to the underlying data structure is crucial for the efficiency of normalization. To overcome this restriction of current methods, we have developed two normalization schemes based on iterative local regression combined with model selection. The schemes have been demonstrated to improve considerably the quality of normali...
Abstract Background ...
DNA microarray technologies have the capability of simultaneously measuring the abundance of thousan...
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...
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...
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...
When using cDNA microarrays, normalization to correct labeling bias is a common preliminary step bef...
International audienceAbstract Background Raw data normalization is a critical step in microarray da...
The recent development of complementary DNA microarray technology pro-vides a powerful analytical to...
Background Data artifacts due to variations in experimental handling are ubiquitous in microarray st...
Post-normalization checking of microarrays rarely occurs, despite the problems that using unreliable...
Abstract Background ...
DNA microarray technologies have the capability of simultaneously measuring the abundance of thousan...
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...
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...
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...
When using cDNA microarrays, normalization to correct labeling bias is a common preliminary step bef...
International audienceAbstract Background Raw data normalization is a critical step in microarray da...
The recent development of complementary DNA microarray technology pro-vides a powerful analytical to...
Background Data artifacts due to variations in experimental handling are ubiquitous in microarray st...
Post-normalization checking of microarrays rarely occurs, despite the problems that using unreliable...
Abstract Background ...
DNA microarray technologies have the capability of simultaneously measuring the abundance of thousan...
Post-normalization checking of microarrays rarely occurs, despite the problems that using unreliable...