Qlucore Omics Explorer Makes RNA-Seq Analysis Simple

25 Aug 2014
Charlotte Moore
Administrator / Office Personnel

Product news

RNAseq data can now be analyzed just as easily as microarray data

In recent years, transcriptomic profiling via next generation sequencing (RNA-seq) has emerged as both a technical and cost-effective alternative to arrays.

Qlucore Omics Explorer 3.0 supports direct import and normalization of RNA-seq data (aligned BAM files) which makes it easier to analyze digital gene expression data. With only a few mouse clicks the discriminating genes are identified and results are available in publication ready lists and plots, using Qlucore’s next-generation bioinformatics software.

One of the most prominent advantages of RNA-seq compared to array-based techniques is that RNA-seq can be applied without extensive knowledge of the genomic sequence and the location of genes or other features of interest. Using Qlucore Omics Explorer, RNAseq data can now be analyzed just as easily as microarray data. These files can be directly imported and normalized and then functionality from heat maps to statistical filters and PCA plots is available.

A key aspect of all functionality in Qlucore Omics Explorer is to make it as easy to use as possible. The purpose is to secure that scientists themselves can analyze and explore the experiment data. This enables new discoveries. With the support for RNA-seq data this option is now also available for the scientists. Additionally it was in the early days of RNA-seq analysis believed that count based statistical methods were required to receive stable results, but it is shown that statistical methods combining a variance-stabilizing transformation with t-test perform very well under many different conditions. They actually also seem to be more robust towards outliers. This means that all existing functionality in Qlucore Omics Explorer can be used directly and the scientist does not have to learn new statical models but can focus on the biological results.

Key RNA-seq analysis and exploration functionality:

• Identify discriminating genes with a few mouse clicks
• Show results in the flexible and easy-to-use heat map with hierarchical clustering
• Verify hypotheses using powerful statistics including ANOVA and different forms of regressions
• Compare with pathways and other biological information using the integrated and user friendly Gene Set Enrichment analysis (GSEA) Workbench

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Microarray AnalysisMicroarrays, also known as biochips, are used for the detection and analysis of multiple genes, proteins, antibodies, or biomarkers on a single microchip. This can reveal information on protein or gene expression, single nucleotide polymorphism (SNP), copy number variation (CNV), epigenetics and patient health in clinical diagnostic tests. Discover a range of microarray scanners and prefabricated antibody, protein, RNA and DNA microarrays for your analysis or consider creating your own custom microarrays with a microarray printer. Find the best microarray products in our peer-reviewed product directory: compare products, check customer reviews and receive pricing direct from manufacturers.Software PlatformsSoftware platforms are useful for various stages of laboratory experiments from data collection to data storage and processing. For instance lab software is available for system control, data management, data analysis and qualification / validation.RNARNA is a nucleic acid that plays a key role in gene expression and protein synthesis. It serves as a messenger between DNA and ribosomes, carrying genetic instructions to produce proteins. Advances in RNA-based therapies, such as mRNA vaccines and gene editing, have revolutionized treatment strategies for genetic disorders and infectious diseases. Explore RNA research tools and therapies in our peer-reviewed product directory; compare products, check customer reviews, and get pricing directly from manufacturers.