Journal
GENES
Volume 13, Issue 1, Pages -Publisher
MDPI
DOI: 10.3390/genes13010073
Keywords
web service; time course; clustering; gene expression pattern
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This article introduces an online service called TimesVector-web for analyzing time course gene expression data. The service helps researchers analyze gene expression patterns under multiple conditions and provides downstream biological interpretation, including transcription factor, miRNA target, gene ontology, and pathway analysis.
From time course gene expression data, we may identify genes that modulate in a certain pattern across time. Such patterns are advantageous to investigate the transcriptomic response to a certain condition. Especially, it is of interest to compare two or more conditions to detect gene expression patterns that significantly differ between them. Time course analysis can become difficult using traditional differentially expressed gene (DEG) analysis methods since they are based on pair-wise sample comparison instead of a series of time points. Most importantly, the related tools are mostly available as local Software, requiring technical expertise. Here, we present TimesVector-web, which is an easy to use web service for analysing time course gene expression data with multiple conditions. The web-service was developed to (1) alleviate the burden for analyzing multi-class time course data and (2) provide downstream analysis on the results for biological interpretation including TF, miRNA target, gene ontology and pathway analysis. TimesVector-web was validated using three case studies that use both microarray and RNA-seq time course data and showed that the results captured important biological findings from the original studies.
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