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Metagenomics, Resistome Analysis, and Horizontal Gene Transfer Course

Original price was: USD $120.00.Current price is: USD $59.00.

The Metagenomics, Resistome Analysis, and Horizontal Gene Transfer Course explores advanced genomic approaches to study microbial communities and antibiotic resistance. Learners will understand metagenomic sequencing, resistome profiling, and mechanisms of gene transfer among microorganisms. The course highlights how bioinformatics tools analyze microbial diversity and resistance genes, supporting research in microbiology, public health, environmental science, and biotechnology.

Item
Details
Format
Intensive short course
Duration
3 days
Level
Intermediate
Mode
Workshop / online instructor-led training
Core Focus
Metagenomics-based resistome and HGT analysis
Primary Domain
Antimicrobial resistance bioinformatics
Hands-on
Yes – Full NGS to HGT network workflow
Target Audience
Researchers, PhD scholars, microbiome professionals

About the Course
This course is built around a specific research problem: how to identify, quantify, and interpret antimicrobial resistance genes in metagenomic datasets, while also assessing their potential mobility through MGEs and HGT-linked patterns.
Resistome analysis is more demanding than it sounds. Preprocessing affects assembly; assembly affects annotation; and once mobile genetic elements enter the picture, interpretation shifts from simple presence to ecological context.

Why This Topic Matters
AMR research has moved beyond culture-based surveillance. Metagenomics now plays a central role in detecting resistance reservoirs across wastewater, livestock systems, and human microbiomes.

A resistance gene sitting in a chromosome is one thing; a gene associated with plasmids or transposons is another, raising immediate questions about dissemination risk. This field sits at the intersection of:

  • Microbial genomics and bioinformatics
  • Epidemiology and outbreak intelligence
  • Environmental genomics and One Health research
  • Computational biology and network analysis

What Participants Will Learn
• Perform quality control with FastQC/Trimmomatic
• Assemble metagenomic reads with MEGAHIT/SPAdes
• Annotate contigs using Prokka and MGnify
• Run DeepARG for gene detection and abundance
• Identify plasmids using PlasFlow
• Profiling transposons with MobileElementFinder
• Integrate ARG and MGE profiles for HGT potential
• Visualize patterns in R (ggplot2) and Python
• Compare environmental and clinical resistomes
• Map HGT networks and interpret diversity plots

Course Structure / Table of Contents

Module 1 — Foundations of Metagenomics, Resistomes, and HGT
  • The resistome concept: intrinsic, acquired, and environmental determinants
  • Horizontal gene transfer mechanisms: transformation, transduction, and conjugation
  • Why MGEs matter in resistance dissemination
  • Common research questions in environmental and clinical resistome studies

Module 2 — NGS Data Formats and Quality Preprocessing
  • FASTQ structure and metadata-aware handling
  • Sequence quality control using FastQC
  • Adapter removal and trimming with Trimmomatic
  • Preparing data for reproducible metagenomic workflows

Module 3 — Metagenomic Assembly and Contig Annotation
  • Principles of assembly in complex microbial communities
  • Hands-on assembly using MEGAHIT or SPAdes
  • Annotation with Prokka and MGnify-style workflows
  • Contig-level interpretation and assembly quality considerations

Module 4 — ARG Databases and Detection Strategies
  • Working with MEGARes, CARD, ResFinder, and DeepARG
  • Homology-based versus model-based detection (DeepARG)
  • Estimating ARG abundance and interpreting output tables

Module 5 — Detecting Mobile Genetic Elements
  • Using PlasFlow to identify plasmid-associated sequences
  • Using MobileElementFinder for transposon detection
  • Interpreting co-localization signals between ARGs and MGEs

Module 6 — Integrating Profiles for HGT Assessment
  • Linking resistance genes with potential mobility signatures
  • Distinguishing gene prevalence from transfer potential
  • Assessing ecological and epidemiological significance

Module 7 — Visualization of Resistome Patterns
  • Plotting abundance in R with ggplot2
  • Visualizing results in Python with matplotlib and seaborn
  • Building publication-ready resistome summaries and diversity plots

Module 8 — Comparative Interpretation and Network Mapping
  • Environmental versus clinical resistome comparison
  • Constructing and interpreting HGT network maps
  • Identifying patterns worth follow-up in ecological studies

Area Conceptual Focus Hands-On Focus
Preprocessing Read quality, trimming logic FastQC, Trimmomatic
Assembly Assembly in mixed communities MEGAHIT, SPAdes
Annotation Contig labeling & labeling Prokka, MGnify workflows
ARG Detection Database logic & strategies DeepARG, CARD interpretation
MGE Analysis Mobility and transfer potential PlasFlow, MobileElementFinder

Tools, Techniques, or Platforms Covered
MEGAHIT / SPAdes
DeepARG
CARD / MEGARes
PlasFlow
MobileElementFinder
R (ggplot2)
Python (Seaborn)

Real-World Applications
Environmental Microbiology: Identifying resistance reservoirs in wastewater, river systems, and agricultural soils to support ecological monitoring.
Clinical Research: Characterizing microbial communities linked to patient environments or microbiome-associated resistance burden.
One Health interface: Comparing resistomes across human, animal, and environmental interfaces with technical confidence.

Who Should Attend
  • PhD scholars in AMR, microbial ecology, or metagenomics research
  • Postgraduate students in bioinformatics, genomics, or public health
  • Bioinformatics professionals expanding into resistome and HGT analysis
  • Public health and surveillance professionals using sequence-based methods
  • Researchers Transitioning from wet-lab into sequence data interpretation

Prerequisites or Recommended Background
Basic familiarity with microbiology or AMR concepts. Introductory understanding of NGS data and some comfort with command-line workflows or R/Python for visualization.

Why This Course Stands Out
This course connects resistome analysis with HGT assessment rather than treating them as separate topics. It covers both detection and interpretation, using recognized AMR databases and publication-quality visualization techniques suited for real-world datasets.

Frequently Asked Questions
What is this course about?
It is a 3-day course on metagenomics, resistome profiling, and horizontal gene transfer analysis, covering assembly to HGT mapping.
Do I need prior coding experience?
Some familiarity with command-line bioinformatics or scripting is helpful, but advanced coding is not required.
Will the course include hands-on work?
Yes. Curriculum includes practical work with FastQC, Trimmomatic, MEGAHIT, SPAdes, DeepARG, and PlasFlow.
How is this useful in research or surveillance?
It supports wastewater monitoring, clinical microbiome characterization, and One Health comparative studies.
Is this focused on detection or HGT?
It covers both, specifically the point where they meet: integrating resistance profiles with mobility evidence.
Is this suitable for beginners?
It is best for learners with some background in genomics or bioinformatics. It is beginner-friendly but dense.

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What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

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