About Course
This course equips students with the knowledge and skills for comprehensive analysis of single-cell and nucleus RNA sequencing data, emphasizing hands-on work with quality control, normalization, clustering, differential expression, pathway enrichment, trajectory analysis, cell-cell communication, spatial transcriptomics, and multiomics integration.
Course abbreviation: SCDA
Instructor: Dr. Fadhl Alakwaa
Research Investigator, University of Michigan, Ann Arbor, USA
Workload: 12 lectures.
Entrance requirements: Not specified
Used media: State-of-the-art single-cell data analysis tools and techniques
Objectives
- Understand principles of single-cell and nucleus RNA sequencing technologies
- Perform quality control on scRNA-seq and snRNA-seq data
- Apply preprocessing and clustering algorithms
- Annotate cell types using references and tools
- Use visualization tools and relevant datasets
- Conduct differential expression and pathway analysis
- Investigate cell-cell communication and trajectory analysis
- Integrate single-cell RNA-seq with other omics data
- Complete a real-world single-cell RNA-seq analysis project
Assessment
- Project presentations
- Feedback and discussion on projects
- Comprehensive project demonstrating proficiency in single-cell RNA-seq analysis
Course Content
Lecture 1: Introduction to the Course
-
Introduction to the Course
00:00
Lecture 2: Quality Control of the Data
Lecture 3: Preprocessing and Clustering
Lecture 4: Cell Types Annotation
Lecture 5: Visualization Tools and Datasets
Lecture 6: DEGs (Differential Expression Genes)
Lecture 7: Pathway Analysis
Lecture 8: Cell-Cell Chat
Lecture 9: Trajectory Analysis
Lecture 10: Multi-Omics Data Integration
Lecture 11: Project
Lecture 12: Project Presentations
Student Ratings & Reviews
No Review Yet

