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R Programming for Data Analytics in Bioinformatics

INR ₹2,499.00 INR ₹24,999.00Price range: INR ₹2,499.00 through INR ₹24,999.00

R Programming for Bioinformatics: Unlock Data, Drive Discovery!

Registration Ends: 2024-09-24 (Indian Standard Timing 7:00 PM)

Workshop Dates: 2024-09-24 to 2024-09-26 (Indian Standard Timing 8:00 PM)

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Aim

This course focuses on R programming as a powerful tool for data analytics in bioinformatics. Participants will learn to apply R for analyzing biological data such as genomic sequences, gene expression data, and protein structures. The course provides a practical introduction to statistical methods, visualization, and data manipulation using R, with applications specifically geared towards bioinformatics.

Program Objectives

  • Learn the basics of R programming and how to use it for data manipulation and analysis in bioinformatics.
  • Explore statistical methods commonly used in bioinformatics, such as hypothesis testing and regression analysis.
  • Understand how to process and analyze large biological datasets like gene expression data, next-generation sequencing (NGS) data, and protein structure data.
  • Gain hands-on experience using R libraries like ggplot2, dplyr, and Bioconductor for data visualization, manipulation, and analysis in bioinformatics contexts.
  • Learn how to integrate bioinformatics data with statistical models for insights into biological questions.

Program Structure

Module 1: Introduction to R Programming

  • Overview of R programming language and its significance in bioinformatics.
  • Introduction to R Studio and basic programming concepts: variables, data types, functions, loops, and conditionals.
  • Hands-on exercise: Writing your first R script and performing basic data manipulations.

Module 2: Data Manipulation in R

  • Introduction to dplyr and tidyr packages for data cleaning and manipulation.
  • Transforming biological data: subsetting, filtering, sorting, and reshaping datasets.
  • Hands-on exercise: Using dplyr to clean and manipulate genomic data.

Module 3: Statistical Methods in Bioinformatics

  • Introduction to statistical methods in bioinformatics: hypothesis testing, t-tests, ANOVA, and chi-square tests.
  • Regression analysis for predicting biological outcomes from gene expression data.
  • Hands-on exercise: Performing basic statistical analyses on genomic datasets using R.

Module 4: Data Visualization with R

  • Introduction to data visualization with ggplot2 for creating informative plots.
  • Visualizing gene expression data, sequence alignments, and molecular data.
  • Hands-on exercise: Creating bar plots, scatter plots, and heatmaps for bioinformatics data.

Module 5: Bioinformatics Data Analysis Tools in R

  • Exploring Bioconductor for handling biological data, such as microarray and NGS data.
  • Gene expression analysis: Identifying differentially expressed genes using RNA-Seq data.
  • Hands-on exercise: Analyzing gene expression data using limma and edgeR packages in R.

Module 6: Advanced Topics in R for Bioinformatics

  • Integrating R with external bioinformatics tools (e.g., BLAST, FASTA, and GenBank).
  • Protein structure analysis and visualizing 3D molecular structures in R.
  • Introduction to R Shiny for building interactive web applications for bioinformatics data analysis.

Module 7: Final Project

  • Design and implement a complete bioinformatics analysis pipeline using R.
  • Apply techniques learned throughout the course to analyze a biological dataset (e.g., RNA-Seq, genome sequencing, or protein structure data).
  • Example projects: Gene expression analysis in cancer, protein structure prediction, or functional genomics analysis.

Participant Eligibility

  • Students and professionals in bioinformatics, biology, computer science, and related fields.
  • Data scientists and researchers who want to apply R programming to biological and healthcare data.
  • Anyone interested in learning how to manipulate, analyze, and visualize biological data using R in the context of bioinformatics.

Program Outcomes

  • Gain proficiency in R programming and its application to bioinformatics data analysis.
  • Ability to preprocess, analyze, and visualize biological datasets using R and R packages.
  • Understand the application of statistical methods and machine learning in bioinformatics research.
  • Experience using advanced bioinformatics tools in R for genomic data analysis, including RNA-Seq and protein structure analysis.
  • Hands-on experience with real-world bioinformatics datasets and practical applications of R in biological research.

Program Deliverables

  • Access to e-LMS: Full access to course materials, resources, and video tutorials.
  • Hands-on Projects: Implement and apply bioinformatics techniques using real-world datasets.
  • Final Project: Apply R programming to solve a bioinformatics problem and present your findings.
  • Certification: Certification awarded after successful completion of the course and final project.
  • e-Certification and e-Marksheet: Digital credentials provided upon successful completion.

Future Career Prospects

  • Bioinformatics Analyst
  • Computational Biologist
  • Genomics Researcher
  • Data Scientist in Healthcare
  • Biostatistician

Job Opportunities

  • Bioinformatics Companies: Developing software solutions for genomic data analysis.
  • Healthcare Organizations: Analyzing genomic data for precision medicine and personalized healthcare.
  • Research Institutions: Conducting computational biology and bioinformatics research.
  • Pharmaceutical Companies: Using bioinformatics to discover new drugs and treatments.
Category

E-LMS, E-LMS+Video, E-LMS+Video+Live Lectures

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