Abstract Background Many biological knowledge bases gather data through expert curation of published literature. High data volume, selective partial curation, delays in access, and publication of data prior to the ability to curate it can result in incomplete curation of published data. Knowing which data sets are incomplete and how incomplete they are remains a challenge. Awareness that a data set may be incomplete is important for proper interpretation, to avoiding flawed hypothesis generation, and can justify further exploration of published literature for additional relevant data. Computational methods to assess data set completeness are needed. One such method is presented here. Results In this work, a multivariate linear regression mo...
In modern molecular biology, the vast amount of experimental data enables us to obtain more comprehe...
The ever-growing need for gene-expression data analysis motivates studies in sample generation due t...
ABSTRACT: In this era, DNA microarray technology is used combining with different data mining proces...
(1) Background: Gene-expression data usually contain missing values (MVs). Numerous methods focused ...
Numerous biomolecular data are available, but they are scattered in many databases and only some of ...
Abstract Background Large-scale genomic studies often identify large gene lists, for example, the ge...
Poor quality data such as data with missing values (or records) cause negative consequences in many ...
The sophistication of gene prediction algorithms and the abundance of RNA-based evidence for the mai...
A main challenge of data-driven sciences is how to make maximal use of the progressively expanding d...
Abstract Background Reproducibility of results can have a significant impact on the acceptance of ne...
<p>Bioinformatics sequence databases such as Genbank or UniProt contain hundreds of millions of reco...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
Abstract: Genome databases store data about molecular biological entities such as genes, proteins, d...
Microarrays measure expression patterns of thousands of genes at a time, under same or diverse condi...
Differential expression (DE) analysis is performed to identify genes associated to a phenotype based...
In modern molecular biology, the vast amount of experimental data enables us to obtain more comprehe...
The ever-growing need for gene-expression data analysis motivates studies in sample generation due t...
ABSTRACT: In this era, DNA microarray technology is used combining with different data mining proces...
(1) Background: Gene-expression data usually contain missing values (MVs). Numerous methods focused ...
Numerous biomolecular data are available, but they are scattered in many databases and only some of ...
Abstract Background Large-scale genomic studies often identify large gene lists, for example, the ge...
Poor quality data such as data with missing values (or records) cause negative consequences in many ...
The sophistication of gene prediction algorithms and the abundance of RNA-based evidence for the mai...
A main challenge of data-driven sciences is how to make maximal use of the progressively expanding d...
Abstract Background Reproducibility of results can have a significant impact on the acceptance of ne...
<p>Bioinformatics sequence databases such as Genbank or UniProt contain hundreds of millions of reco...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
Abstract: Genome databases store data about molecular biological entities such as genes, proteins, d...
Microarrays measure expression patterns of thousands of genes at a time, under same or diverse condi...
Differential expression (DE) analysis is performed to identify genes associated to a phenotype based...
In modern molecular biology, the vast amount of experimental data enables us to obtain more comprehe...
The ever-growing need for gene-expression data analysis motivates studies in sample generation due t...
ABSTRACT: In this era, DNA microarray technology is used combining with different data mining proces...