Tag: R
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How to Analyze RNAseq Data for Absolute Beginners Part 3: From Count Table to DEGs – Best Practices
Video Tutorial As we move forward in our RNAseq analysis journey, we’ll be transitioning from the Linux environment to R, a powerful and versatile statistical analysis tool. R is not only a programming language but also a platform widely used in data science, statistical computing, and predictive modeling. Tech giants like Microsoft, Meta, Google, Amazon,…
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Recent Posts
- How To Analyze ATAC-seq Data For Absolute Beginners Part 1: From FASTQ To Peaks
- How To Analyze ChIP-seq Data For Absolute Beginners Part 5: Mastering Reproducibility With IDR Analysis
- How To Analyze ChIP-seq Data For Absolute Beginners Part 4: From FASTQ To Peaks With MACS2
- How To Analyze ChIP-seq Data For Absolute Beginners Part 3: Differential Binding Analysis and Motif Discovery
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Alternative Splicing Analysis batch effects ChIP-seq ComBat-seq Counts covariates adjustment CPM Data Sharing DESeq2 Differential Expression edgeR FPKM gene expression HOMER HPC Isoform limma MACS2 miRNA miRNA-seq mixed linear models Normalization peak calling Quantification Salmon TPM Transcript Virus Virus-Host Virus Gene Expression