e-learning
Building an amplicon sequence variant (ASV) table from 16S data using DADA2
Abstract
The investigation of environmental microbial communities and microbiomes has been revolutionized by the
About This Material
This is a Hands-on Tutorial from the GTN which is usable either for individual self-study, or as a teaching material in a classroom.
Questions this will address
- What are the primary steps involved in generating an ASV table using DADA2 from 16S rRNA gene sequencing data?
- How does DADA2 improve the accuracy of microbial community analysis compared to traditional OTU-based methods?
- What is the importance of quality filtering in the DADA2 workflow, and how does it impact downstream analyses?
- How does the error rate learning process contribute to the identification of true biological sequences in DADA2?
- What role does chimera removal play in the DADA2 pipeline, and why is it crucial for obtaining reliable ASV data?
- How can phyloseq be used to explore and visualize the ASV table generated by DADA2, and what types of ecological insights can it provide?
Learning Objectives
- Identify the key steps in the DADA2 workflow for generating an ASV table from 16S rRNA gene sequencing data
- Explain the importance of quality filtering, error rate learning, and chimera removal in ensuring accurate microbial community analysis
- Execute the DADA2 pipeline to process raw 16S sequencing data and produce a high-resolution ASV table
- Compare the advantages of ASV-based methods over traditional OTU-based approaches in terms of accuracy and resolution
- Assess the effectiveness of using phyloseq for exploring and visualizing ASV data to gain ecological and evolutionary insights
Licence: Creative Commons Attribution 4.0 International
Keywords: 16S, Microbiome, metabarcoding, microgalaxy
Target audience: Students
Resource type: e-learning
Version: 8
Status: Active
Prerequisites:
Introduction to Galaxy Analyses
Learning objectives:
- Identify the key steps in the DADA2 workflow for generating an ASV table from 16S rRNA gene sequencing data
- Explain the importance of quality filtering, error rate learning, and chimera removal in ensuring accurate microbial community analysis
- Execute the DADA2 pipeline to process raw 16S sequencing data and produce a high-resolution ASV table
- Compare the advantages of ASV-based methods over traditional OTU-based approaches in terms of accuracy and resolution
- Assess the effectiveness of using phyloseq for exploring and visualizing ASV data to gain ecological and evolutionary insights
Date modified: 2024-09-26
Date published: 2024-06-05
Contributors: Clea Siguret, Matthias Bernt
Scientific topics: Metagenomics, Microbial ecology, Taxonomy, Sequence analysis, Metabarcoding
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