Differential Gene Expression Analysis – Your Complete A to Z

Become a bioinformatic analysis master: qPCR, RNAseq, Functional Genomics, Transcriptomics, R, RStudio, TUXEDO pipeline

Do you want to be a bioinformatician but don’t know what it entails? Or perhaps you’re struggling with biological data analysis problems? Are you confused amongst the biological, medicals, statistical and analytical terms? Do you want to be an expert in this field and be able to design biological experiments, appropriately apply the concepts and do a complete end-to-end analysis?

What you’ll learn

  • You’ll be able to apply the knowledge of molecular biology to solve problems in differential gene expression analysis specifically, and bioinfomatics generally.
  • You’ll be able to undertake an end-to-end RNAseq analysis pipeline in R.
  • You’ll be able to do a qPCR analysis in R.
  • You’ll be able to do a pathway analysis.
  • You’ll be able to design bioinformatic experiments and do data interpretation.
  • You’ll get a solid foundation on techniques used in bioinformatics.
  • You’ll learn statistical models and methods used in differential gene expression.

Course Content

  • Introduction to the course –> 5 lectures • 16min.
  • Biology for differential gene expression analysis –> 8 lectures • 44min.
  • Sequencing, PCR and microarrays – technical foundation –> 7 lectures • 16min.
  • Experimental, statistical and analytical foundation plus quantitative PCR –> 20 lectures • 2hr 17min.
  • A deep dive into RNAseq and analysis methods –> 34 lectures • 3hr 39min.
  • Pathway analysis for hypothesis generation –> 4 lectures • 24min.
  • Gene expression visualization –> 4 lectures • 26min.
  • Your capstone project –> 2 lectures • 3min.

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Requirements

  • Understanding of basic molecular biology terms such as DNA, RNA, gene and protein is going to be helpful in this course.
  • Familiarity with R programming and UNIX-like terminal command line is advantageous but not necessary as it’ll be covered.
  • Being open-minded and ready to learn!.

Do you want to be a bioinformatician but don’t know what it entails? Or perhaps you’re struggling with biological data analysis problems? Are you confused amongst the biological, medicals, statistical and analytical terms? Do you want to be an expert in this field and be able to design biological experiments, appropriately apply the concepts and do a complete end-to-end analysis?

This is a comprehensive and all-in-one-place course that will teach you differential gene expression analysis with focus on next-generation sequencing, RNAseq and quantitative PCR (qPCR)

In this course we’ll learn together one of the most popular sub-specialities in bioinformatics: differential gene expression analysis. By the end of this course you’ll be able to undertake both RNAseq and qPCR based differential gene expression analysis, independently and by yourself, in R programming language. The RNAseq section of the course is the most comprehensive and includes everything you need to have the skills required to take FASTQ library of next-generation sequencing reads and end up with complete differential expression analysis. Although the course focuses on R as a biological analysis environment of choice, you’ll also have the opportunity not only to learn about UNIX terminal based TUXEDO pipeline, but also online tools. Moreover you’ll become well grounded in the statistical and modelling methods so you can explain and use them effectively to address bioinformatic differential gene expression analysis problems. The course has been made such that you can get a blend of hands-on analysis and experimental design experience – the practical side will allow you to do your analysis, while theoretical side will help you face unexpected problems.

Here is the summary of what will be taught and what you’ll be able to do by taking this course:

  • You’ll learn and be able to do a complete end-to-end RNAseq analysis in R and TUXEDO pipelines: starting with FASTQ library through doing alignment, transcriptome assembly, genome annotation, read counting and differential assessment
  • You’ll learn and be able to do a qPCR analysis in R: delta-Ct method, delta-delta-Ct method, experimental design and data interpretation
  • You’ll learn how to apply the knowledge of molecular biology to solve problems in differential gene expression analysis specifically, and bioinformatics generally
  • You’ll learn the technical foundations of qPCR, microarray, sequencing and RNAseq so that you can confidently deal with differential gene expression data by understanding what the numbers mean
  • You’ll learn and be able to use two main modelling methods in R used for differential gene expression: the general linear model as well as non-parametric rank product frameworks
  • You’ll learn about pathway analysis methods and how they can be used for hypothesis generation
  • You’ll learn and be able to visualise gene expression data from your experiments
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