最新消息:请大家多多支持

Advanced Bioinformatics Data Analysis: Python, R, And Linux

其他教程 dsgsd 91浏览 0评论

Published 9/2023
MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz
Language: English | Size: 4.76 GB | Duration: 9h 20m

Master Advanced Bioinformatics Data Analysis with Python, R, and Linux: Uncover Insights from Biological Data

What you’ll learn
Perform Data Preprocessing and Cleaning: Students will learn how to clean and preprocess biological data using Python and R. This includes techniques for handli
Apply Common Bioinformatics Algorithms: Learners will gain proficiency in implementing and applying common bioinformatics algorithms and tools. This includes se
Visualize Biological Data: Students will develop skills in creating meaningful visualizations for biological data. They will learn to use libraries like Matplot
Analyze Genomic and Proteomic Data: This course will enable students to work with genomic and proteomic data, including DNA sequences, gene expression data, and
Interpret Results and Draw Biological Insights: After completing the course, learners will be able to interpret the results of bioinformatics analyses and draw

Requirements
Basic Programming Knowledge: While not required, having a basic understanding of programming concepts will be helpful. Familiarity with Python and R is a plus, but the course can also accommodate those new to programming.
Biology Fundamentals: A basic understanding of biology concepts, such as DNA, RNA, proteins, and biological processes, will enhance your comprehension of the course content. However, the course will provide explanations and background information as needed.
Access to a Computer: Learners should have access to a computer with internet connectivity to access course materials, code examples, and bioinformatics tools.
Software and Tools: It’s beneficial to have Python and R installed on your computer. Instructions for installing and setting up these programming environments may be provided as part of the course.
Curiosity and Eagerness to Learn: A strong desire to learn and explore the field of bioinformatics is essential. Bioinformatics can be a complex field, but a curious and motivated mindset will help you succeed.

Description
Advanced Bioinformatics Data Analysis: Python, R, and LinuxWelcome to “Advanced Bioinformatics Data Analysis: Python, R, and Linux,” a comprehensive course designed to equip you with the advanced skills and knowledge needed to excel in the dynamic field of bioinformatics. Whether you’re a biologist seeking to harness the power of computational tools, a data scientist looking to specialize in genomics, or a curious learner eager to explore the fascinating intersection of biology and data analysis, this course is your gateway to mastering bioinformatics.Course OverviewUnlock the Potential of Biological DataThe era of big data has ushered in a new age of discovery in the life sciences. Biological data, encompassing genomics, proteomics, and beyond, holds the key to solving complex biological questions, from understanding the genetic basis of diseases to unraveling the mysteries of evolution. This course empowers you to unlock the potential of biological data by providing hands-on experience in advanced data analysis techniques.Master Python, R, and LinuxThe course’s foundation is built on three pillars: Python, R, and Linux. Python and R are indispensable programming languages in bioinformatics, known for their versatility, rich libraries, and data analysis capabilities. Linux, the preferred operating system in scientific computing, offers unparalleled control and efficiency. Throughout the course, you’ll become proficient in these essential tools, gaining the technical prowess required to tackle complex bioinformatics challenges.What You’ll LearnThis comprehensive course covers a wide array of topics, ensuring you have a holistic understanding of advanced bioinformatics data analysis. Here’s a glimpse of what you’ll master:1. Data Preprocessing and Quality ControlBefore embarking on any analysis, you’ll learn how to clean and preprocess biological data, ensuring its accuracy and reliability. Techniques for handling missing data, outlier detection, and data normalization will become second nature to you.2. Genomic Data AnalysisGenomic data, including DNA sequences and genetic variation, is at the heart of many bioinformatics studies. You’ll delve into sequence alignment, variant calling, and genome-wide association studies (GWAS), unraveling the secrets encoded within genomes.3. Proteomic Data AnalysisProteins are the workhorses of biology, and their analysis is crucial for understanding cellular processes. You’ll explore protein structure prediction, functional annotation, and differential expression analysis, gaining insights into the world of proteomics.4. Biological Data VisualizationA picture is worth a thousand words, and this holds true in bioinformatics. You’ll become skilled in creating meaningful visualizations using libraries like Matplotlib, Seaborn, and ggplot2, allowing you to communicate your findings effectively.5. Linux for BioinformaticsMastering Linux is essential for bioinformatics work. You’ll learn the command-line interface, shell scripting, and how to harness the power of the Linux environment for data analysis, making you a proficient Linux user.6. Advanced Topics in BioinformaticsAs you progress, you’ll tackle advanced topics such as motif discovery, phylogenetic tree construction, and metagenomics analysis. These topics will challenge and expand your bioinformatics skill set.7. Real-World ProjectsTheory alone won’t make you an expert. Throughout the course, you’ll engage in hands-on projects that simulate real-world bioinformatics challenges. These projects will give you the confidence and experience needed to excel in practical applications.8. Biological Insights and ResearchUltimately, the goal of bioinformatics is to derive meaningful biological insights. You’ll learn how to interpret your analysis results in a biologically relevant context, making your work valuable to the scientific community.Who Should Take This Course?This course is designed for a diverse audience:Biologists and Life Scientists: Enhance your research by incorporating computational techniques and data analysis into your work.Data Scientists and Analysts: Specialize in bioinformatics and apply your data analysis expertise to biological data.Students and Researchers: Whether you’re a student pursuing a degree in biology or an experienced researcher, this course will expand your bioinformatics toolkit.Healthcare and Medical Professionals: Genomic data is becoming increasingly important in healthcare. Learn how to analyze this data to inform medical decisions.Computer Scientists: Leverage your programming skills to address biological questions and contribute to cutting-edge research.Career Changers: Transition into a rewarding career in bioinformatics with a solid foundation in data analysis and programming.Enthusiastic Beginners: If you have a strong interest in bioinformatics and a willingness to learn, this course provides a gentle yet comprehensive introduction.PrerequisitesThis course is designed to be accessible to a wide range of learners, and there are no strict prerequisites. However, the following recommendations will help you get the most out of the course:Basic Programming Knowledge: Familiarity with programming concepts is helpful but not required. The course caters to learners with varying levels of programming experience.Biology Fundamentals: Understanding fundamental biology concepts, such as DNA, RNA, and proteins, will enhance your comprehension of the course content. However, the course provides background information as needed.Access to a Computer: You’ll need a computer with internet connectivity to access course materials, code examples, and bioinformatics tools.Software and Tools: It’s beneficial to have Python and R installed on your computer. Instructions for installation and setup may be provided as part of the course.Curiosity and Eagerness to Learn: A strong desire to explore bioinformatics and a curious mindset are essential for success in this course.Course FormatThe course is structured to accommodate learners of all backgrounds and skill levels. It includes:Video Lectures: Engage with comprehensive video lectures that explain concepts and guide you through practical examples.Hands-on Exercises: Apply what you’ve learned through hands-on exercises and projects that reinforce your skills.Quizzes and Assessments: Test your knowledge and track your progress with quizzes and assessments throughout the course.Discussion Forums: Connect with fellow learners, ask questions, and collaborate on bioinformatics challenges in dedicated discussion forums.Real-World Projects: Work on practical projects that simulate real bioinformatics scenarios, helping you build a portfolio of valuable work.Instructor Support: Access to instructor support and guidance for clarifying doubts and addressing questions.Your Journey in Bioinformatics Starts HereAs the field of bioinformatics continues to evolve, the demand for skilled professionals who can unlock the secrets hidden in biological data is on the rise. This course empowers you to embark on a fulfilling journey into bioinformatics, where you’ll gain the expertise to make meaningful contributions to the life sciences.Are you ready to dive into advanced bioinformatics data analysis with Python, R, and Linux? Enroll today and embark on a transformative learning experience that will open doors to exciting career opportunities and groundbreaking research.

Overview
Section 1: Python Section

Lecture 1 Introduction to Bioinformatics and Why Python

Lecture 2 BioPython Introduction

Lecture 3 GitHub Repository for Python

Lecture 4 Setting up Coding Environment

Lecture 5 Explaining the libraries for the course

Lecture 6 Advance File Formats of Bioinformatics with BioPython

Lecture 7 Sequence Analysis Using Biopython

Lecture 8 Database Retrieval/Accessing Using Biopython

Lecture 9 Working With Genomes Using Biopython

Lecture 10 Phylogenetic Tree Construction using Biopython

Lecture 11 Proteomics Analysis Using Biopython

Lecture 12 Machine Learning in Bioinformatics

Section 2: R Section

Lecture 13 Introduction to Bioinformatics and R: Exploring the Intersection of Biology

Lecture 14 Getting Started with R: Installation and Variables Understanding

Lecture 15 Working with R Packages: Installing, Loading, and Exploring Bioinformatics

Lecture 16 Differential Gene Expression Analysis with Deseq2: Preparing Data

Lecture 17 Deseq2 Code Understanding

Lecture 18 Converting Ensembl Gene IDs to Gene Symbols: Using R Techniques and Packages

Lecture 19 Visualizing Gene Expression Data: Creating Stunning Plots with ggplot2

Lecture 20 Introduction to Single-Cell RNA Sequencing (scRNA-seq) Data Analysis

Lecture 21 Exploring scRNA-seq Code: Cell Trajectories and Gene Expression Dynamics

Lecture 22 GitHub Source Code for R

Section 3: Microarray Data Analysis Using R

Lecture 23 Introduction of Microarray

Lecture 24 Microarray Databases

Lecture 25 Microarray Analysis Using GEO2R

Lecture 26 Microarray Analysis on R

Lecture 27 Source Code for Microarray Section

Section 4: Linux/WSL for Bioinformatics

Lecture 28 Introduction and Why CLI in Bioinformatics

Lecture 29 CLI and GUI Explanation

Lecture 30 if we already have Graphical user interface system why we should use CLI?

Lecture 31 Short Practical with Programming Language

Lecture 32 Why Would You Use CLI over GUI?

Lecture 33 Foundation behind CLI Shell explanation

Lecture 34 Drawbacks of CLI and GUI

Lecture 35 Linux Introduction and Usage Over years

Lecture 36 Linux Distros

Lecture 37 Why Ubuntu Operating System

Lecture 38 WSL Explanation

Lecture 39 Linux Vs Unix

Lecture 40 (Practical) Making A Subsystem For Linux In Windows OS

Lecture 41 Linux File Handling Commands

Lecture 42 Accessing And Creating Files In Windows Os

Lecture 43 Basic Process Management Commands for Linux OS

Lecture 44 E-utilities on the Linux Command Line

Lecture 45 Installing NCBI through CLi

Lecture 46 Code Used in Lectures

Lecture 47 Entrez Direct Functions

Lecture 48 Mrna And Protein Seq Retrieval

Lecture 49 Batch Retrieval of Protein Using Taxon Id

Lecture 50 Retrieving CDS From Reference Genome

Lecture 51 Explaining Different Commands

Section 5: Bioinformatics Pipeline

Lecture 52 Pipeline Explanation

Section 6: NGS data Analysis on Command Line

Lecture 53 Getting the SRA Reads

Lecture 54 Checking the Quality of Data

Lecture 55 Quality Trimming of data

Lecture 56 Aligners and Aligning Reads to genome

Lecture 57 SAM and Bam File Indexing and Sorting

Lecture 58 Feature Extraction

Lecture 59 Pipeline Code

Section 7: Variant Calling Pipeline Using Linux

Lecture 60 Variants and Types

Lecture 61 Understanding the Metadata and Softwares

Lecture 62 Getting Data From SRA Using SRA Toolkit

Lecture 63 Quality Control and Trimming

Lecture 64 Sam and Bcf Tools and Fixing NS and Calling Variants

Lecture 65 Alignment to Reference Genome

Lecture 66 Separation of SNP’s and Indels Variants

Lecture 67 Visualizing Variants Using IGV and UCSC Browser

Lecture 68 Pipeline Code

Biologists and Life Scientists: Biologists, biochemists, geneticists, and other life science professionals who want to enhance their data analysis skills and leverage computational tools to extract meaningful insights from biological data.,Data Scientists and Analysts: Data professionals with a background in programming who wish to specialize in bioinformatics and apply their data analysis expertise to biological datasets.,Students and Researchers: Undergraduate and graduate students pursuing degrees in biology, bioinformatics, genetics, or related fields, as well as researchers in academia and industry seeking to expand their knowledge in bioinformatics.,Healthcare and Medical Professionals: Healthcare practitioners, clinicians, and medical researchers interested in genomics and personalized medicine who want to understand how to analyze genomic and proteomic data.,Computer Scientists: Computer science students and professionals interested in applying their programming skills to solve real-world biological problems.,Career Changers: Individuals looking to transition into a career in bioinformatics who may not have prior experience but possess a strong interest in biology and data analysis.,Enthusiastic Beginners: Anyone with a genuine interest in bioinformatics and a willingness to learn, regardless of their background or experience level. The course is designed to be accessible to beginners and gradually progress to more advanced topics.


Password/解压密码www.tbtos.com

资源下载此资源仅限VIP下载,请先

转载请注明:0daytown » Advanced Bioinformatics Data Analysis: Python, R, And Linux

您必须 登录 才能发表评论!