Unlock the future of biological data analysis with our "Introduction to Bioinformatics" course. This comprehensive course combines bioinformatics, molecular biology, and computational techniques, equipping you with the skills to analyze complex biological and clinical data. Beginning with fundamental concepts, the course explores advanced topics like RNA sequencing analysis, single-cell genomics, gene-gene association studies, and medical text mining.
You'll gain hands-on experience by working with real-world datasets from renowned databases such as NCBI, TCGA, and PubMed, using cutting-edge tools and frameworks. Our course balances theoretical understanding with practical implementation, priming you for roles in biotechnology, pharmaceuticals, and healthcare.
Targeted at biology and computer science students, early-career scientists transitioning into bioinformatics, and healthcare professionals keen on computational methods for improved patient care, the course also suits data analysts and researchers seeking to enhance their bioinformatics skills. Ideal job roles post-completion include bioinformatics analyst, computational biologist, research scientist, and healthcare data specialist.
Whether you're advancing your bioinformatics career or enhancing research capabilities, this course offers essential knowledge and skills to succeed in today's data-driven world. Enrol now to transform your passion for biological data into a rewarding career.
Discover the exciting field of Bioinformatics, focusing on its role in analysing biological data and its applications. Gain foundational knowledge of its interdisciplinary nature and importance in modern biology. Learn about unique methodologies and contributions of each subfield, essential data types, and best practices for data management.
涵盖的内容
15个视频7篇阅读材料6个作业
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15个视频•总计67分钟
About Bioinformatics•5分钟
Meet Your Instructor - Prof. Saby John•2分钟
Meet Your Instructor - Prof. Seetha Parameswaran•2分钟
Meet Your Instructor - Dr. Reddy Rani V•1分钟
Definition of Bioinformatics•4分钟
Application of Bioinformatics•6分钟
Key Functions of Bioinformatics•4分钟
Classification•5分钟
Assembly•4分钟
Resequencing•5分钟
Quantification•5分钟
Data•3分钟
Bioinformatics Data•4分钟
Python and BioPython•3分钟
Demo: Pandas and Matplotlib •15分钟
7篇阅读材料•总计50分钟
Course Overview•10分钟
Course Structure & Critical Information•10分钟
Dive Deeper: Introduction to Bioinformatics•5分钟
The Diverse Landscape of Bioinformatics: Understanding Key Subfields•10分钟
Dive Deeper: Handling Biological Data•5分钟
Python Notebooks used for Demos•5分钟
Dive Deeper: Introduction to Python for Bioinformatics•5分钟
6个作业•总计78分钟
Test Yourself: Introduction to Bioinformatics•30分钟
Check Your Understanding: Bioinformatics•9分钟
Check Your Understanding: Subfields of Bioinformatics•12分钟
Check Your Understanding: Bioinformatics Data•6分钟
Check Your Understanding: Python For Bioinformatics•6分钟
Let's Practice: Introduction to Bioinformatics•15分钟
Biology for Bioinformatics
第 2 单元•小时 后完成
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In this module, you will explore the fundamentals of molecular biology, focusing on the structure and function of nucleic acids, proteins, and other essential biomolecules. You will learn how DNA and RNA store, replicate, and express genetic information. We will cover transcription and translation, revealing how proteins are synthesised and function within the cell. Additionally, you will examine gene regulation, mutations, and the molecular basis of genetic variation and evolution. Understanding these principles is essential for analyzing and interpreting biological data using bioinformatics tools.
涵盖的内容
10个视频10篇阅读材料5个作业
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10个视频•总计93分钟
Living (Cellular) vs Non-Living (Virus, Viroid, Prion)•11分钟
Viruses•13分钟
Classification of Life •10分钟
Evolution•8分钟
Structure of Bacterial, Plant, Animal Cells•10分钟
Types of Cells in Human•8分钟
Cancer•8分钟
Bacterial and Eukaryotic Chromosomes•9分钟
DNA, RNA - Structure and Function•8分钟
Protein Structure and Function•10分钟
10篇阅读材料•总计50分钟
Dive Deeper: Living vs Non-Living Entities•5分钟
Dive Deeper: Introduction to Viruses •5分钟
Dive Deeper: Classification of Life •5分钟
Dive Deeper: Evolution•5分钟
Dive Deeper: Structure of Bacterial, Plant, Animal Cells •5分钟
Dive Deeper: Types of Cells in Human •5分钟
Dive Deeper: Cancer•5分钟
Dive Deeper: Bacterial and Eukaryotic Chromosomes •5分钟
Dive Deeper: DNA, RNA - Structure and Function •5分钟
Dive Deeper: Protein Structure and Function •5分钟
5个作业•总计90分钟
Test Yourself: Biology for Bioinformatics•15分钟
Check Your Understanding: Life, Systematics and Evolution•24分钟
Check Your Understanding: The Living Cell•18分钟
Check Your Understanding: Chromosomes, DNA, RNA and Proteins•18分钟
Let's Practice: Biology for Bioinformatics•15分钟
Molecular Biology for Bioinformatics
第 3 单元•小时 后完成
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In this module, you will explore crucial molecular biology concepts vital for bioinformatics. Create a comprehensive concept map to understand DNA replication and gene expression processes. Study DNA sequencing principles to learn methods for decoding genetic information, and examine gene structure and regulation in eukaryotes and prokaryotes. Discover the central dogma of molecular biology, describing the flow of genetic information from DNA to RNA to protein. This module builds a solid foundation for applying computational tools in bioinformatics, enhancing your knowledge and skills in this fascinating field.
涵盖的内容
10个视频10篇阅读材料5个作业
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10个视频•总计82分钟
DNA Replication •8分钟
DNA Mutations•7分钟
Nucleic Acid Sequencing•10分钟
Gene Structure & Regulation in Prokaryotes•8分钟
Gene Structure & Regulation in Eukaryotes•8分钟
Genes and Genomics•9分钟
The Central Dogma - Overview•7分钟
Transcription (DNA to RNA)•8分钟
Translation (RNA to Protein)•9分钟
Genetic Code •9分钟
10篇阅读材料•总计50分钟
Dive Deeper: DNA Replication•5分钟
Dive Deeper: DNA Mutations •5分钟
Dive Deeper: Nucleic Acid Sequencing •5分钟
Dive Deeper: Gene Structure & Regulation in Prokaryotes •5分钟
Dive Deeper: Gene Structure and Regulation in Eukaryotes •5分钟
Dive Deeper: Genes and Genomics •5分钟
Dive Deeper: The Central Dogma - Overview•5分钟
Dive Deeper: Transcription (DNA to RNA)•5分钟
Dive Deeper: Translation (RNA to Protein)•5分钟
Dive Deeper: Genetic Code •5分钟
5个作业•总计93分钟
Test Yourself: Molecular Biology for Bioinformatics•30分钟
Check Your Understanding: DNA Replication, Mutations and Sequencing•18分钟
Check Your Understanding: Gene Structure, Regulation and Expression•18分钟
Check Your Understanding: The Central Dogma•12分钟
Let's Practice: Molecular Biology for Bioinformatics•15分钟
Patient Subtyping Using RNA-Seq Data
第 4 单元•小时 后完成
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This module teaches you how to leverage RNA sequencing data for patient subtyping. You will master the entire workflow, from raw data acquisition to grouping samples. Start with hands-on experience in extracting and normalizing RNA-seq data from the NCBI Gene Expression Omnibus (GEO) database. Then, explore and apply two clustering approaches: Hierarchical Clustering and the Louvain Algorithm, to identify meaningful patient subtypes. Conclude by comparing the effectiveness of these clustering methods and learning survival analysis using Kaplan-Meier curves.
涵盖的内容
12个视频4篇阅读材料6个作业
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12个视频•总计76分钟
Why Patient Subtyping•7分钟
Retrieving RNA-Seq Data - NCBI GEO Database •8分钟
Normalisation of RNA-Seq Data•9分钟
Patient Subtyping Methods•6分钟
Hierarchical Clustering Part A•7分钟
Hierarchical Clustering Part B•5分钟
Louvain Algorithm•9分钟
Kaplan-Meier Curves•6分钟
Conclusion and Findings •4分钟
Demo of Downloading Data from NCBI•4分钟
Demo of Hierarchical Clustering•5分钟
Demo of Louvain Clustering•6分钟
4篇阅读材料•总计55分钟
Essential Reading: Data Extraction and Preprocessing •15分钟
Essential Reading: Clustering Algorithms •15分钟
Essential Reading: Validating the Subtypes •15分钟
Essential Reading: Files Used for Demos•10分钟
6个作业•总计81分钟
Test Yourself: Patient Subtyping using RNA-Seq Data•30分钟
Check Your Understanding: Data Extraction & Preprocessing•9分钟
Check Your Understanding: Clustering Algorithms•12分钟
Check Your Understanding: Validating the Subtypes•6分钟
Check Your Understanding: Clustering Techniques•9分钟
Let's Practice: Patient Subtyping using RNA-Seq Data•15分钟
Cell Classification Using Single Cell RNA-Seq Data
第 5 单元•小时 后完成
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In this module, you will explore machine learning applications for cell type classification using single-cell RNA sequencing (scRNA-seq) data. Learn the full workflow, from data acquisition and preprocessing to feature selection and classification algorithm implementation. Engage in hands-on exercises to build and evaluate models for accurate cell type identification, gaining practical insights into scRNA-seq data analysis for biological research.
涵盖的内容
10个视频4篇阅读材料6个作业
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10个视频•总计62分钟
RNA-Seq vs scRNA-Seq Study•8分钟
Classification of Cells•7分钟
Feature Selection•7分钟
Principal Component Analysis (PCA)•11分钟
Visualising High Dimension Data•6分钟
Decision Tree Fundamentals•9分钟
Evaluating Classification Results•5分钟
Demo: Dimensionality Reduction using Principle Component Analysis•4分钟
Demo: Implementing Decision Tree for Cell Type Classification•3分钟
Demo: Implementing a Confusion Matrix•2分钟
4篇阅读材料•总计20分钟
Dive Deeper: Introduction to Single-Cell RNA Sequencing•5分钟
Dive Deeper: Dimensionality Reduction and Visualisation•5分钟
Dive Deeper: Classifying Cells of Lung Cancer Data•5分钟
Python Notebooks Used for Demos•5分钟
6个作业•总计75分钟
Test Yourself: Cell Classification Using Single Cell RNA-Seq Data•30分钟
Check your understanding: Introduction to Single-Cell RNA Sequencing•6分钟
Check your understanding: Dimensionality Reduction and Visualisation•9分钟
Check your understanding: Classifying Cells of Lung Cancer Data•6分钟
Check your understanding: Dimensionality Reduction using Principle Component Analysis•9分钟
Let's Practice: Cell Classification Using Single Cell RNA-Seq Data•15分钟
Gene-Gene Association Analysis of a Phenotype
第 6 单元•小时 后完成
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Explore gene-gene associations using methylation and mRNA data from The Cancer Genome Atlas (TCGA). Learn to process and analyze high-dimensional omics data, construct gene association networks, and handle real cancer datasets. Master normalization techniques, network construction methods, and visualizations to enhance your biological understanding through practical, hands-on experience.
涵盖的内容
12个视频4篇阅读材料6个作业
显示有关单元内容的信息
12个视频•总计78分钟
TCGA Database Overview•6分钟
Understanding Gene-Gene Associations•6分钟
Data Downloading•5分钟
Data Normalisation Techniques•8分钟
Network Construction – Part A•8分钟
Network Construction – Part B•5分钟
Visualisation using Cytoscape•7分钟
Understanding Graph Theory - Part A•6分钟
Understanding Graph Theory - Part B•8分钟
Demo: TCGA Download•8分钟
Demo: Implementing Network Construction•4分钟
Demo: Cytoscape Exploration•6分钟
4篇阅读材料•总计25分钟
Dive Deeper: Data for Gene-Gene Association Studies•5分钟
Dive Deeper: Network Construction•5分钟
Dive Deeper: Network Science•5分钟
Files Used for Demos•10分钟
6个作业•总计81分钟
Test Yourself: Gene-Gene Association Analysis of a Phenotype•30分钟
Check your understanding: Data for Gene-Gene Association Studies•12分钟
Check your understanding: Network Construction•6分钟
Check your understanding: Network Science•9分钟
Check your understanding: Using Cytoscape•9分钟
Let's Practice: Gene-Gene Association Analysis of a Phenotype•15分钟
Gene Ontology & Pathway Enrichment Analysis
第 7 单元•小时 后完成
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In this module, you will explore the core concepts and practical applications of gene enrichment and pathway analysis in biological research. Learn to analyse gene lists, understand Gene Ontology structures, and interpret biological pathways. Gain hands-on experience with industry-standard tools like DAVID and STRING to transform complex genomic data into meaningful insights. Emphasise understanding pathway networks and disease associations to prepare for real-world genomics research applications.
涵盖的内容
11个视频5篇阅读材料6个作业
显示有关单元内容的信息
11个视频•总计75分钟
Introduction to Gene Enrichment and Pathway Analysis•6分钟
Gene Lists and Background Sets•6分钟
Introduction to Gene Ontology•8分钟
Statistical Methods in Enrichment Analysis•7分钟
Fisher’s Exact Test •9分钟
Chi-Square Test•9分钟
Multiple Comparisons Test•5分钟
DAVID - Gene Enrichment Tool •6分钟
Pathway Interaction Network•10分钟
Demo: Statistical Methods for Gene Significance Analysis•6分钟
Demo: Using STRING for Analyzing PPIs•5分钟
5篇阅读材料•总计25分钟
Dive Deeper: Gene Enrichment Analysis•5分钟
Dive Deeper: Statistical methods in Gene Enrichment Studies•5分钟
Dive Deeper: Interpretation and Visualisation•5分钟
Files Used for Demos•5分钟
Dive Deeper: Advanced Statistical Methods for Gene Category Analysis•5分钟
6个作业•总计78分钟
Test Yourself: Gene Ontology & Pathway Enrichment Analysis•30分钟
Check Your Understanding: Foundations of Enrichment Analysis•9分钟
Check Your Understanding: Gene Ontology and Pathway Enrichment•12分钟
Check Your Understanding: Interpretation and Visualisation•6分钟
Explore Natural Language Processing (NLP) with a focus on biomedical applications. Start with core NLP concepts and progress through essential libraries and preprocessing techniques for medical text data. Delve into specialised topics like Named Entity Recognition and pattern matching in clinical contexts. Learn about transformer architectures and their applications in biomedical text analysis. Gain hands-on experience with tools like BioBERT and NLTK to process, analyse, and extract insights from medical literature.
涵盖的内容
10个视频3篇阅读材料5个作业
显示有关单元内容的信息
10个视频•总计64分钟
Introduction to NLP Fundamentals•6分钟
NLP Libraries (NLTK, spaCy)•4分钟
Text Preprocessing Techniques•10分钟
Named Entity Recognition•3分钟
Pattern Matching•4分钟
Rule Based System•5分钟
Contextual Analysis•4分钟
Demo: Text Processing using NLTK•10分钟
Demo: Medical NER using NLTK •8分钟
Demo: Medical Text Analysis•11分钟
3篇阅读材料•总计30分钟
Essential Reading: Foundations of NLP•15分钟
Dive Deeper: Text Analysis•5分钟
Files Used for Demos•10分钟
5个作业•总计75分钟
Test Yourself: NLP Foundations•30分钟
Check Your Understanding: Foundations of NLP•9分钟
Check Your Understanding: Text Analysis•12分钟
Check Your Understanding: Using NLTK•9分钟
Let's Practice: NLP Foundations•15分钟
Knowledge Discovery
第 9 单元•小时 后完成
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Explore medical text mining and knowledge extraction in this module. Begin by examining the unique characteristics of medical text and PubMed data organization. Progress through medical ontologies and specialised language models like BioBERT for a solid text analysis foundation. Finally, extract and analyze complex medical relationships, including disease-symptom associations, drug interactions, and comorbidity patterns. Apply advanced NLP techniques to gain actionable insights from medical literature.
涵盖的内容
13个视频4篇阅读材料6个作业
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13个视频•总计75分钟
Introduction to Medical NLP•4分钟
PubMed Data Structure•4分钟
Medical Ontologies•4分钟
Transformers•6分钟
BERT and BioBERT Models•7分钟
Relationship Extraction•6分钟
Disease-Symptom Relationships•4分钟
Drug-Disease Relationships•5分钟
Comorbidity Detection•5分钟
Demo: Drug-Disease Relationship Extraction Using NLTK•7分钟
Demo: Disease Symptom Relationship Using NLTK •6分钟
Demo: Comorbidity Detection Using NLTK•10分钟
Demo: Relationship Extraction Using BioBERT•7分钟
4篇阅读材料•总计25分钟
Dive Deeper: Medical Text Mining Foundations•5分钟
Dive Deeper: Introduction to Transformers•5分钟
Dive Deeper: Relationship Mining•5分钟
Files Used for Demos•10分钟
6个作业•总计84分钟
Test Yourself: Knowledge Discovery•30分钟
Check Your Understanding: Medical Text Mining Foundations•9分钟
Check Your Understanding: Introduction to Transformers•6分钟
Check Your Understanding: Relationship Mining•12分钟
Check Your Understanding: Relationship Mining using NLTK and BioBERT•12分钟
Let's Practice: Knowledge Discovery•15分钟
DNA Data Analysis
第 10 单元•小时 后完成
单元详情
In this module, you'll learn the essential knowledge and techniques for working with raw DNA data, including understanding its structure and organization, like SNP data. You'll dive into genetic distance metrics to identify genetic relationships between individuals and explore common distance calculation algorithms and DNA matching techniques. You'll also learn methods for statistically analyzing genetic match results and building a relationship prediction system. Finally, you'll explore visualization and network analysis approaches to gain deeper insights from DNA match data, create interactive chromosome-level visualizations, and use graph-theoretic methods to uncover complex familial relationships within the DNA match network.
涵盖的内容
11个视频5篇阅读材料5个作业
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11个视频•总计56分钟
DNA Data Analysis•3分钟
Understanding Raw DNA Data•4分钟
Data Import and Cleaning•4分钟
Genetic Distance Metrics•4分钟
DNA Matching Algorithms•5分钟
Building a Relationship Prediction System•7分钟
Chromosome Visualisation•2分钟
Demo: Generating Synthetic DNA Data and Calculating Distance Metrics•6分钟
Demo: DNA Matching Algorithms and Statistical Analysis•8分钟
Demo: Relationship Prediction and Model Evaluation•9分钟
Demo: Chromosome Ideogram•4分钟
5篇阅读材料•总计35分钟
Dive Deeper: DNA Data•5分钟
Dive Deeper: DNA Matching•5分钟
Dive Deeper: Relationship Prediction System and Visualisation•5分钟
Files Used for Demos•10分钟
Course Summary•10分钟
5个作业•总计66分钟
Test Yourself: DNA Data Analysis•30分钟
Check Your Understanding: DNA Data•9分钟
Check Your Understanding: DNA Matching•6分钟
Check Your Understanding: Relationship Prediction System and Visualisation•6分钟
Let's Practice: DNA Data Analysis•15分钟
攻读学位
课程 是 Birla Institute of Technology & Science, Pilani提供的以下学位课程的一部分。如果您被录取并注册,您已完成的课程可计入您的学位学习,您的学习进度也可随之转移。
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攻读学位
课程 是 Birla Institute of Technology & Science, Pilani提供的以下学位课程的一部分。如果您被录取并注册,您已完成的课程可计入您的学位学习,您的学习进度也可随之转移。
Birla Institute of Technology & Science, Pilani (BITS Pilani) is one of only ten private universities in India to be recognised as an Institute of Eminence by the Ministry of Human Resource Development, Government of India. It has been consistently ranked high by both governmental and private ranking agencies for its innovative processes and capabilities that have enabled it to impart quality education and emerge as the best private science and engineering institute in India.
BITS Pilani has four international campuses in Pilani, Goa, Hyderabad, and Dubai, and has been offering bachelor's, master’s, and certificate programmes for over 58 years, helping to launch the careers for over 1,00,000 professionals.
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