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Biological Sequence Analysis using R Programming

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

The aim of this workshop is to provide participants with hands-on experience in utilizing R Studio for computational biology and bioinformatics tasks. Participants will gain practical skills in analyzing DNA and protein sequences, constructing phylogenetic trees, conducting differential gene expression analysis, and performing functional annotation using R.

Introduction to the Course

The Biological Sequence Analysis using R Programming course is a practical, hands-on program designed to teach you how to analyze DNA, RNA, and protein sequences using R. Whether you’re a beginner or looking to enhance your skills, this course takes you through the fundamentals and practical workflows of bioinformatics. You’ll explore how biological sequences are expressed computationally, learn data cleaning techniques, and gain insights into biological research using R packages and standard analysis methods.

Course Objectives

  • Understand the fundamentals of biological sequences and their importance in genomics and proteomics.
  • Learn R programming techniques specifically designed for handling and analyzing biological data.
  • Conduct motif discovery and functional annotation of DNA, RNA, and protein sequences.
  • Explore phylogenetic relationships and evolutionary analysis using R.
  • Appreciate the limitations, challenges, and ethical considerations when working with biological sequence data.

What Will You Learn (Modules)

Module 1: R for Bioinformatics and Sequence Data Basics (Beginner)

  • Learn the basics of R programming for bioinformatics and how biological sequences are represented in computers.
  • Understand file formats like FASTA/FASTQ, sequence representation (alphabet), and quality scores (FASTQ).
  • Hands-on exercise: Read and analyze sequence files in R and generate a simple report on the data.

Module 2: Sequence Cleaning, Manipulation & Basic Statistics

  • Learn how to clean sequences, deal with ambiguous bases, and apply basic statistics for sequence analysis.
  • Understand concepts like length distribution, GC content, base composition, and quality filtering (FASTQ).
  • Hands-on exercise: Generate sequence quality plots and prepare cleaned data for further analysis.

Module 3: k-mers, Motifs & Pattern Searching (Core Sequence Analytics)

  • Understand how to find patterns in biological sequences and their biological significance.
  • Learn techniques such as k-mer counting, motif searching, regex pattern searching, and frequency analysis.
  • Hands-on exercise: Search for motifs and k-mer patterns in sequence data.

Module 4: Translation, ORFs & Protein-Level Insights

  • Learn how DNA/RNA sequences are translated into proteins and how to detect Open Reading Frames (ORFs).
  • Study codons, translation, peptide characteristics, and properties of protein sequences derived from DNA/RNA sequences.
  • Hands-on exercise: Predict ORFs, translate sequences, and calculate basic protein sequence attributes.

Module 5: Alignment Concepts & Similarity Interpretation (Intermediate)

  • Learn the importance of sequence alignment and how it relates to similarity, evolution, and function.
  • Understand pairwise alignment and how to interpret alignment results.
  • Hands-on exercise: Perform basic sequence alignment and create similarity reports using R.

Final Project

  • Import, clean, and filter sequence data for analysis.
  • Profile patterns/motifs or k-mers and interpret findings.
  • Analyze ORFs and perform translation where applicable.
  • Create a final, reproducible report using R Markdown, detailing your analysis and findings.

Who Should Take This Course?

This course is ideal for:

  • Students (UG/PG) in biotechnology, bioinformatics, genetics, microbiology, or computational biology.
  • Researchers working with genomic, transcriptomic, or protein datasets.
  • Life Science Professionals moving into bioinformatics or data-driven biology roles.
  • Data Science Learners interested in entering the field of computational biology and genomics.
  • Career Switchers aiming for roles in genomics, sequencing labs, or bioinformatics teams.

Job Opportunities

Upon completing this course, students will be well-prepared for roles such as:

  • Bioinformatics Analyst: Analyzing genomic and proteomic data to identify patterns and functional elements.
  • Computational Biologist: Developing algorithms and workflows for large-scale sequence analysis.
  • Genomics Data Scientist: Integrating sequence data with other omics datasets for research insights.
  • Research Scientist: Conducting studies in molecular biology, evolutionary biology, or personalized medicine.
  • Pharmaceutical & Biotechnology Analyst: Using sequence data for drug discovery and biomarker development.

Why Learn With Nanoschool?

At Nanoschool, you will receive expert-led training that combines the theory of bioinformatics with hands-on applications. Key benefits include:

  • Expert-Led Training: Learn from instructors with extensive experience in bioinformatics and computational biology.
  • Hands-On Learning: Work with real sequence datasets and R tools used in professional bioinformatics workflows.
  • Industry-Relevant Skills: Stay up-to-date with the latest methods in sequence analysis and bioinformatics.
  • Career Support: Get guidance on projects, portfolios, and job opportunities in bioinformatics and computational biology.

Key Outcomes of the Course

After completing the Biological Sequence Analysis using R Programming course, you will:

  • Develop practical skills in bioinformatics and sequence analysis using R programming.
  • Learn to clean, manipulate, and analyze biological sequence data effectively.
  • Apply techniques such as motif discovery, alignment, and sequence translation in real-world contexts.
  • Create reproducible reports using R Markdown to present your bioinformatics findings.
  • Enhance your career prospects in bioinformatics, computational biology, and related fields.

Enroll now and discover how R programming can help you analyze biological sequences, uncover patterns, and contribute to cutting-edge research in genomics and biotechnology.

Category

E-LMS, E-LMS+Recordings, E-LMS+Recordings+Live Lectures

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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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