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</script>pmid: 22874386
Pluripotent stem cells are able to self-renew and to differentiate into all adult cell types. Many studies report data describing these cells and characterize them in molecular terms. Gene expression data of pluripotent and non-pluripotent cells from mouse were assembled. Machine learning was applied to classify samples into pluripotent and non-pluripotent cells. To identify minimal sets of best biomarkers, three methods were used: information gain, random forests, and genetic algorithm.
Pluripotent Stem Cells, Mice, Proteome, Artificial Intelligence, Gene Expression Profiling, Databases, Genetic, Animals, Data Mining, Database Management Systems, Biomarkers
Pluripotent Stem Cells, Mice, Proteome, Artificial Intelligence, Gene Expression Profiling, Databases, Genetic, Animals, Data Mining, Database Management Systems, Biomarkers
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