Visualization for Biotechnology and Genomics Training Course.

Visualization for Biotechnology and Genomics Training Course.

Introduction

The biotechnology and genomics sectors are experiencing exponential growth in data complexity, driven by advancements in sequencing technologies, CRISPR, single-cell analysis, and personalized medicine. Effective visualization is critical for interpreting biological data, identifying patterns, and communicating discoveries. This 5-day course equips professionals with cutting-edge visualization techniques to analyze genomic sequences, protein structures, multi-omics datasets, and clinical trial data. Participants will learn to use modern tools and frameworks to address challenges like scalability, reproducibility, and ethical data handling while preparing for future trends like AI-driven insights and immersive 3D visualization.


Objectives

By the end of this course, participants will:

  1. Understand the role of visualization in biotech and genomics research, drug discovery, and clinical applications.

  2. Master tools for visualizing genomic sequences, molecular structures, and multi-omics datasets.

  3. Develop interactive dashboards and visual narratives for stakeholder engagement.

  4. Apply ethical frameworks for handling sensitive genomic and patient data.

  5. Explore AI-enhanced visualization for predictive modeling and high-dimensional data.

  6. Complete a capstone project addressing a real-world biotech/genomics challenge.


Who Should Attend?

  • Biotech researchers and genomic data scientists.

  • Bioinformaticians and computational biologists.

  • Clinical trial analysts and healthcare professionals.

  • Pharma R&D teams working on drug discovery.

  • Academics and students in life sciences or bioinformatics.

  • Tech entrepreneurs developing tools for biotech visualization.


5-Day Course Outline


Day 1: Foundations of Biotech and Genomics Visualization

  • Morning Session:

    • Introduction to Visualization in Biotech/Genomics: Trends, Challenges, and Use Cases

    • Data Types: Genomic Sequences, Protein Structures, Microarray, and Single-Cell Data

    • Ethical Considerations: GDPR, HIPAA, and Anonymization of Patient Data

  • Afternoon Session:

    • Hands-on: Basic Visualization with Python (Matplotlib/Seaborn) and R (ggplot2)

    • Case Study: Visualizing Gene Expression Data from RNA-seq Experiments

    • Tools: Jupyter Notebooks, RStudio, and Bioconductor


Day 2: Genomic Data Visualization

  • Morning Session:

    • Visualizing Sequencing Data: Alignments, Variants, and Phylogenetic Trees

    • Tools: IGV (Integrative Genomics Viewer), UCSC Genome Browser, and Circos

  • Afternoon Session:

    • Hands-on: Creating Variant Call Format (VCF) Heatmaps and Manhattan Plots

    • Case Study: Identifying Structural Variations in Cancer Genomics

    • Tools: Python (Plotly, Bokeh) and Galaxy Platform


Day 3: Molecular and Protein Structure Visualization

  • Morning Session:

    • 3D Visualization of Proteins, DNA, and RNA Structures

    • Tools: PyMOL, ChimeraX, and VMD (Visual Molecular Dynamics)

    • AI-Driven Tools: AlphaFold and RoseTTAFold for Predictive Modeling

  • Afternoon Session:

    • Hands-on: Rendering Protein-Ligand Interactions and Binding Sites

    • Case Study: Visualizing SARS-CoV-2 Spike Protein Mutations

    • Tools: Blender for Scientific Animation and 3D Storytelling


Day 4: Multi-Omics and Systems Biology Visualization

  • Morning Session:

    • Integrating Genomics, Proteomics, and Metabolomics Data

    • Network Visualization: Pathway Analysis and Gene Regulatory Networks

    • Tools: Cytoscape, Gephi, and STRING Database

  • Afternoon Session:

    • Hands-on: Building Interactive Multi-Omics Dashboards

    • Case Study: Visualizing Metabolic Pathways in Rare Diseases

    • Tools: R Shiny, Plotly Dash, and Tableau


Day 5: Capstone Project and Future Trends

  • Morning Session:

    • Capstone Project: Solve a Real-World Problem (e.g., Drug Target Visualization, Clinical Trial Data Dashboards, CRISPR Edit Analysis)

    • Teams integrate genomic, structural, and clinical data into a cohesive visualization.

  • Afternoon Session:

    • Presentations and Peer/Expert Feedback

    • Future Trends:

      • AI & AR/VR: Immersive Visualization of Molecular Dynamics

      • Single-Cell Atlas Exploration: Tools like CellxGene and Loupe Browser

      • Blockchain for Secure Genomic Data Sharing

    • Course Wrap-Up and Certification


Key Features of the Course

  • Domain-Specific Tools: Focus on industry-standard platforms like IGV, PyMOL, and Cytoscape.

  • Ethical Data Practices: Guidelines for handling sensitive genomic and clinical data.

  • AI Integration: Leverage ML models (e.g., AlphaFold) to enhance visualization workflows.

  • Immersive Learning: 3D rendering, animations, and AR/VR demos for molecular structures.

  • Capstone Project: Collaborative work on real datasets (e.g., TCGA, ClinVar, PDB).

  • Expert Insights: Guest lectures from biotech visualization pioneers and genomic researchers.