Article ID Journal Published Year Pages File Type
2146098 Mutation Research/Fundamental and Molecular Mechanisms of Mutagenesis 2016 8 Pages PDF
Abstract

•A combined algorithm is proposed to mine biomarkers of spaceflight in C. elegans.•This algorithm makes the feature selection more reliable and robust.•Apply this algorithm to predict 17 positive biomarkers to space environment stress.•The strategy can be used as a general method to select important features.

To identify the potential biomarkers associated with space flight, a combined algorithm, which integrates the feature selection techniques, was used to deal with the microarray datasets of Caenorhabditis elegans obtained in the Shenzhou-8 mission. Compared with the ground control treatment, a total of 86 differentially expressed (DE) genes in responses to space synthetic environment or space radiation environment were identified by two filter methods. And then the top 30 ranking genes were selected by the random forest algorithm. Gene Ontology annotation and functional enrichment analyses showed that these genes were mainly associated with metabolism process. Furthermore, clustering analysis showed that 17 genes among these are positive, including 9 for space synthetic environment and 8 for space radiation environment only. These genes could be used as the biomarkers to reflect the space environment stresses. In addition, we also found that microgravity is the main stress factor to change the expression patterns of biomarkers for the short-duration spaceflight.

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