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There are 4 modules in this course
An introduction to the statistics behind the most popular genomic data science projects. This is the sixth course in the Genomic Big Data Science Specialization from Johns Hopkins University.
This course is structured to hit the key conceptual ideas of normalization, exploratory analysis, linear modeling, testing, and multiple testing that arise over and over in genomic studies.
What's included
21 videos3 readings1 assignment
Show info about module content
21 videos•Total 129 minutes
Welcome to Statistics for Genomic Data Science•3 minutes
What is Statistics?•3 minutes
Finding Statistics You Can Trust (4:44)•5 minutes
Getting Help (3:44)•4 minutes
What is Data? (4:28)•4 minutes
Representing Data (5:23)•5 minutes
Module 1 Overview (1:07)•1 minute
Reproducible Research (3:42)•4 minutes
Achieving Reproducible Research (5:02)•5 minutes
R Markdown (6:26)•6 minutes
The Three Tables in Genomics (2:10)•2 minutes
The Three Tables in Genomics (in R) (3:46)•4 minutes
Experimental Design: Variability, Replication, and Power (14:17)•14 minutes
Experimental Design: Confounding and Randomization (9:26)•9 minutes
Exploratory Analysis (9:21)•9 minutes
Exploratory Analysis in R Part I (7:22)•7 minutes
Exploratory Analysis in R Part II (10:07)•10 minutes
Exploratory Analysis in R Part III (7:26)•7 minutes
Data Transforms (7:31)•8 minutes
Clustering (8:43)•9 minutes
Clustering in R (9:09)•9 minutes
3 readings•Total 30 minutes
Syllabus•10 minutes
Pre Course Survey•10 minutes
Introduction and Materials•10 minutes
1 assignment•Total 30 minutes
Module 1 Quiz•30 minutes
Module 2
Module 2•2 hours to complete
Module details
This week we will cover preprocessing, linear modeling, and batch effects.
What's included
14 videos1 assignment
Show info about module content
14 videos•Total 97 minutes
Module 2 Overview (1:12)•1 minute
Dimension Reduction (12:13)•12 minutes
Dimension Reduction (in R) (8:48)•9 minutes
Pre-processing and Normalization (11:26)•11 minutes
Quantile Normalization (in R) (4:49)•5 minutes
The Linear Model (6:50)•7 minutes
Linear Models with Categorical Covariates (4:08)•4 minutes
Adjusting for Covariates (4:16)•4 minutes
Linear Regression in R (13:03)•13 minutes
Many Regressions at Once (3:50)•4 minutes
Many Regressions in R (7:21)•7 minutes
Batch Effects and Confounders (7:11)•7 minutes
Batch Effects in R: Part A (8:18)•8 minutes
Batch Effects in R: Part B (3:50)•4 minutes
1 assignment•Total 30 minutes
Module 2 Quiz•30 minutes
Module 3
Module 3•2 hours to complete
Module details
This week we will cover modeling non-continuous outcomes (like binary or count data), hypothesis testing, and multiple hypothesis testing.
What's included
15 videos1 assignment
Show info about module content
15 videos•Total 86 minutes
Module 3 Overview (1:07)•1 minute
Logistic Regression (7:03)•7 minutes
Regression for Counts (5:02)•5 minutes
GLMs in R (9:28)•9 minutes
Inference (4:18)•4 minutes
Null and Alternative Hypotheses (4:45)•5 minutes
Calculating Statistics (5:11)•5 minutes
Comparing Models (7:08)•7 minutes
Calculating Statistics in R•10 minutes
Permutation (3:26)•3 minutes
Permutation in R (3:33)•4 minutes
P-values (6:04)•6 minutes
Multiple Testing (8:25)•8 minutes
P-values and Multiple Testing in R: Part A (5:58)•6 minutes
P-values and Multiple Testing in R: Part B (4:23)•4 minutes
1 assignment•Total 30 minutes
Module 3 Quiz•30 minutes
Module 4
Module 4•2 hours to complete
Module details
In this week we will cover a lot of the general pipelines people use to analyze specific data types like RNA-seq, GWAS, ChIP-Seq, and DNA Methylation studies.
What's included
14 videos1 reading1 assignment
Show info about module content
14 videos•Total 74 minutes
Module 4 Overview (1:21)•1 minute
Gene Set Enrichment (4:19)•4 minutes
More Enrichment (3:59)•4 minutes
Gene Set Analysis in R (7:43)•8 minutes
The Process for RNA-seq (3:59)•4 minutes
The Process for Chip-Seq (5:25)•5 minutes
The Process for DNA Methylation (5:03)•5 minutes
The Process for GWAS/WGS (6:12)•6 minutes
Combining Data Types (eQTL) (6:04)•6 minutes
eQTL in R (10:36)•11 minutes
Researcher Degrees of Freedom (5:49)•6 minutes
Inference vs. Prediction (8:52)•9 minutes
Knowing When to Get Help (2:31)•3 minutes
Statistics for Genomic Data Science Wrap-Up (1:53)•2 minutes
1 reading•Total 10 minutes
Post Course Survey•10 minutes
1 assignment•Total 30 minutes
Module 4 Quiz•30 minutes
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4.2
379 reviews
5 stars
54.61%
4 stars
26.64%
3 stars
11.34%
2 stars
2.11%
1 star
5.27%
Showing 3 of 379
M
MJ
4·
Reviewed on Aug 7, 2020
Very helpful and i understood i should master statistics and do more research
H
HD
5·
Reviewed on Apr 8, 2021
This is the best. It opens my eye for genomic data analysis.
R
RH
4·
Reviewed on Feb 11, 2017
Overall, a very good course. Not without its flaws (inconsistent video audio levels), but I have walked away knowing far more about Genomic Data Science than I expected to.
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