BACKGROUND: The imputation of missing values is necessary for the efficient use of DNA microarray data, because many clustering algorithms and some statistical analysis require a complete data set. A few imputation methods for DNA microarray data have been introduced, but the efficiency of the methods was low and the validity of imputed values in these methods had not been fully checked. RESULTS: We developed a new cluster-based imputation method called sequential K-nearest neighbor (SKNN) method. This imputes the missing values sequentially from the gene having least missing values, and uses the imputed values for the later imputation. Although it uses the imputed values, the efficiency of this new method is greatly improved in its accura...
Microarrays are able to measure the patterns of expression of thousands of genes in a genome to give...
Amongst the high-throughput technologies, DNA microarray experiments provide enormous quantity of ge...
Background Missing value estimation is an important preprocessing step in microarray analysis. Altho...
While microarrays make it feasible to rapidly investigate many complex biological problems, their mu...
While microarrays make it feasible to rapidly investigate many complex biological problems, their mu...
BMC Genomics ISI Document Delivery No.: 565GZ Times Cited: 11 Cited Reference Count: 84 Celton, Maga...
Background: Microarray technologies produced large amount of data. In a previous study, we have show...
Abstract — Many attempts have been carried out to deal with missing values (MV) in microarrays data ...
Background Microarray technology has become popular for gene expression profiling, and many analysis...
Background: In modern biomedical research of complex diseases, a large number of demographic and cli...
Next generation sequencing (NGS) has revolutionized biomedical research and has a broad impact and a...
In gene expression studies missing values have been a common problem. It has an important consequen...
Gene expression microarray data often include multiple missing values. Most gene expression analysis...
In gene expression studies, missing values are a common problem with important consequences for the ...
Microarrays measure expression patterns of thousands of genes at a time, under same or diverse condi...
Microarrays are able to measure the patterns of expression of thousands of genes in a genome to give...
Amongst the high-throughput technologies, DNA microarray experiments provide enormous quantity of ge...
Background Missing value estimation is an important preprocessing step in microarray analysis. Altho...
While microarrays make it feasible to rapidly investigate many complex biological problems, their mu...
While microarrays make it feasible to rapidly investigate many complex biological problems, their mu...
BMC Genomics ISI Document Delivery No.: 565GZ Times Cited: 11 Cited Reference Count: 84 Celton, Maga...
Background: Microarray technologies produced large amount of data. In a previous study, we have show...
Abstract — Many attempts have been carried out to deal with missing values (MV) in microarrays data ...
Background Microarray technology has become popular for gene expression profiling, and many analysis...
Background: In modern biomedical research of complex diseases, a large number of demographic and cli...
Next generation sequencing (NGS) has revolutionized biomedical research and has a broad impact and a...
In gene expression studies missing values have been a common problem. It has an important consequen...
Gene expression microarray data often include multiple missing values. Most gene expression analysis...
In gene expression studies, missing values are a common problem with important consequences for the ...
Microarrays measure expression patterns of thousands of genes at a time, under same or diverse condi...
Microarrays are able to measure the patterns of expression of thousands of genes in a genome to give...
Amongst the high-throughput technologies, DNA microarray experiments provide enormous quantity of ge...
Background Missing value estimation is an important preprocessing step in microarray analysis. Altho...