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

Related Courses

Bioinformatic Methods I
University of Toronto via Coursera
Bioinformatic Methods II
University of Toronto via Coursera
Statistics for Genomic Data Science
Johns Hopkins University via Coursera
Data Analysis for Genomics
Harvard University via edX
Genomic Technologies in Clinical Diagnostics: Next Generation Sequencing
St George's, University of London via FutureLearn