YoVDO

High Throughput Sequencing

Offered By: YouTube

Tags

Bioinformatics Courses Python Courses RNA-Seq Courses Principal Component Analysis Courses

Course Description

Overview

Dive into a comprehensive 6-hour playlist covering essential topics in high-throughput sequence analysis. Learn about RNA-seq, ChIP-Seq, Principal Component Analysis (PCA), normalization techniques, statistical methods, and data visualization. Explore concepts such as RPKM, FPKM, TPM, MDS, PCoA, t-SNE, hierarchical clustering, and heatmaps. Gain insights into DESeq2, edgeR, independent filtering, p-values, false discovery rates, and Fisher's Exact Test. Understand the challenges of technical replicates in RNA-seq, logarithms, linear models, t-tests, ANOVA, design matrices, and K-means clustering. Master practical applications using R and Python for various analyses in this in-depth exploration of high-throughput sequencing techniques.

Syllabus

StatQuest: A gentle introduction to RNA-seq.
StatQuest: A gentle introduction to ChIP-Seq.
StatQuest: Principal Component Analysis (PCA), Step-by-Step.
StatQuest: PCA in R.
StatQuest: PCA in Python.
RPKM, FPKM and TPM, Clearly Explained!!!.
StatQuest: MDS and PCoA.
StatQuest: t-SNE, Clearly Explained.
StatQuest: Hierarchical Clustering.
Drawing and Interpreting Heatmaps.
StatQuest: DESeq2, part 1, Library Normalization.
StatQuest: edgeR, part 1, Library Normalization.
StatQuest: edgeR and DESeq2, part 2 - Independent Filtering.
StatQuest: MDS and PCoA in R.
StatQuest: P Values, clearly explained.
False Discovery Rates, FDR, clearly explained.
Fisher's Exact Test and the Hypergeometric Distribution.
StatQuest: RNA-seq - the problem with technical replicates.
StatQuest: Logs (logarithms), clearly explained.
StatQuest: PCA main ideas in only 5 minutes!!!.
Principal Component Analysis (PCA) clearly explained (2015).
StatQuest: Linear Models Pt.1 - Linear Regression.
StatQuest: Linear Regression in R.
StatQuest: Linear Models Pt.2 - t-tests and ANOVA.
StatQuest: Linear Models Pt.3 - Design Matrices (old version).
StatQuest: Linear Models Pt.3 - Design Matrix Examples in R.
StatQuest: K-means clustering.


Taught by

StatQuest with Josh Starmer

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