Data Analysis for Life Sciences 3: Statistical Inference and Modeling for High-throughput Experiments (edX)

Data Analysis for Life Sciences 3: Statistical Inference and Modeling for High-throughput Experiments (edX)
Free Course
Categories
Effort
Certification
Languages
"Statistics and R for the Life Sciences" and "Introduction to Linear Models and Matrix Algebra" or basic programming, intro to statistics, intro to linear algebra
Misc
Data Analysis for Life Sciences 3: Statistical Inference and Modeling for High-throughput Experiments (edX)
A focus on the techniques commonly used to perform statistical inference on high throughput data. In this course you’ll learn various statistics topics including multiple testing problem, error rates, error rate controlling procedures, false discovery rates, q-values and exploratory data analysis. We then introduce statistical modeling and how it is applied to high-throughput data.


A newer version of this course is available here:
Statistical Inference and Modeling for High-throughput Experiments


In particular, we will discuss parametric distributions, including binomial, exponential, and gamma, and describe maximum likelihood estimation. We provide several examples of how these concepts are applied in next generation sequencing and microarray data. Finally, we will discuss hierarchical models and empirical bayes along with some examples of how these are used in practice. We provide R programming examples in a way that will help make the connection between concepts and implementation.

Given the diversity in educational background of our students we have divided the series into seven parts. You can take the entire series or individual courses that interest you. If you are a statistician you should consider skipping the first two or three courses, similarly, if you are biologists you should consider skipping some of the introductory biology lectures. Note that the statistics and programming aspects of the class ramp up in difficulty relatively quickly across the first three courses. By the third course will be teaching advanced statistical concepts such as hierarchical models and by the fourth advanced software engineering skills, such as parallel computing and reproducible research concepts.

The courses in this series will be released sequentially each month and are self-paced:
PH525.1x: Statistics and R for the Life Sciences
PH525.2x: Introduction to Linear Models and Matrix Algebra
PH525.3x: Statistical Inference and Modeling for High-throughput Experiments
PH525.4x: High-Dimensional Data Analysis
PH525.5x: Introduction to Bioconductor: annotation and analysis of genomes and genomic assays
PH525.6x: High-performance computing for reproducible genomics
PH525.7x: Case studies in functional genomics





Free Course
"Statistics and R for the Life Sciences" and "Introduction to Linear Models and Matrix Algebra" or basic programming, intro to statistics, intro to linear algebra