Network Analysis in Systems Biology
€0, aangeboden door Coursera
About this course: An introduction to data integration and statistical methods used in contemporary Systems Biology, Bioinformatics and Systems Pharmacology research. The course covers methods to process raw data from genome-wide mRNA expression studies (microarrays and RNA-seq) including data normalization, differential expression, clustering, enrichment analysis and network construction. The course contains practical tutorials for using tools and setting up pipelines, but it also covers the mathematics behind the methods applied within the tools. The course is mostly appropriate for beginning graduate students and advanced undergraduates majoring in fields such as biology, math, physics, chemistry, computer science, biomedical and electrical engineering. The course should be useful for researchers who encounter large datasets in their own research. The course presents software tools developed by the Ma’ayan Laboratory (http://icahn.mssm.edu/research/labs/maayan-laboratory) from the Icahn School of Medicine at Mount Sinai, but also other freely available data analysis and visualization tools. The ultimate aim of the course is to enable participants to utilize the methods presented in this course for analyzing their own data for their own projects. For those participants that do not work in the field, the course introduces the current research challenges faced in the field of computational systems biology.
Created by:Â Â Â Icahn School of Medicine at Mount Sinai
Taught by:    Avi Ma’ayan, PhD, Director, Mount Sinai Center for Bioinformatics
Professor, Department of Pharmacological Sciences
Basic Info
Course 3 of 6 in the Systems Biology and Biotechnology Specialization.
Commitment
6-8 hours/week
Language
English
How To Pass
Pass all graded assignments to complete the course.
User Ratings
4.5 stars
Average User Rating 4.5See all 8 reviews
Course 3 of Specialization
Expertise for Professionals and Students in Biotechnology and Biomedical Data Sciences. Learn Methodologies in Systems Biology Including: Bioinformatics, Dynamical Modeling, Genomics, Network and Statistical Modeling, Proteomics, Omics Technologies Single Cell Research Technologies.
Systems Biology and Biotechnology
Icahn School of Medicine at Mount Sinai
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Coursework
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About Icahn School of Medicine at Mount Sinai
The Icahn School of Medicine at Mount Sinai, in New York City is a leader in medical and scientific training and education, biomedical research and patient care.
Syllabus
WEEK 1
Course Overview and Introductions
The 'Introduction to Complex Systems' module discusses complex systems and leads to the idea that a cell can be considered a complex system or a complex agent living in a complex environment just like us. The 'Introduction to Biology for Engineers' module prov...Â
3 videos, 4 readings
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Graded: Introduction to Complex Systems
WEEK 2
Topological and Network Evolution Models
In the 'Topological and Network Evolution Models' module, we provide several lectures about a historical perspective of network analysis in systems biology. The focus is on in-silico network evolution models. These are simple computational models that, based o...Â
4 videos
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Graded: Rich-Get-Richer
WEEK 3
Types of Biological Networks
The 'Types of Biological Networks' module is about the various types of networks that are typically constructed and analyzed in systems biology and systems pharmacology. This lecture ends with the idea of functional association networks (FANs). Following this ...Â
4 videos
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Graded: Types of Biological Networks
WEEK 4
Data Processing and Identifying Differentially Expressed Genes
This set of lectures in the 'Data Processing and Identifying Differentially Expressed Genes' module first discusses data normalization methods, and then several lectures are devoted to explaining the problem of identifying differentially expressed genes with t...Â
5 videos
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Graded: Data Normalization
WEEK 5
Gene Set Enrichment and Network Analyses
In the 'Gene Set Enrichment and Network Analyses' module the emphasis is on tools developed by the Ma'ayan Laboratory to analyze gene sets. Several tools will be discussed including: Enrichr, GEO2Enrichr, Expression2Kinases and DrugPairSeeker. In addition, one...Â
9 videos
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Graded: The Fisher Exact Test and Enrichr
WEEK 6
Deep Sequencing Data Processing and Analysis
A set of lectures in the 'Deep Sequencing Data Processing and Analysis' module will cover the basic steps and popular pipelines to analyze RNA-seq and ChIP-seq data going from the raw data to gene lists to figures. These lectures also cover UNIX/Linux commands...Â
7 videos
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Graded: RNA-seq and UNIX/Linux Commands
WEEK 7
Principal Component Analysis, Self-Organizing Maps, Network-Based Clustering and Hierarchical Clustering
This module is devoted to various method of clustering: principal component analysis, self-organizing maps, network-based clustering and hierarchical clustering. The theory behind these methods of analysis are covered in detail, and this is followed by some pr...Â
6 videos, 1 reading
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Graded: Principal Component Analysis (PCA) - Part 1
WEEK 8
Resources for Data Integration
The lectures in the 'Resources for Data Integration' module are about the various types of networks that are typically constructed and analyzed in systems biology and systems pharmacology. These lectures start with the idea of functional association networks (...Â
5 videos
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Graded: Big Data in Biology and Data Integration
WEEK 9
Crowdsourcing: Microtasks and Megatasks
The final set of lectures presents the idea of crowdsourcing. MOOCs provide the opportunity to work together on projects that are difficult to complete alone (microtasks) or compete for implementing the best algorithms to solve hard problems (megatasks). You w...Â
2 videos
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Graded: Crowdsourcing: Microtasks and Megatasks
WEEK 10
Final Exam
The final exam consists of multiple choice questions from topics covered in all of modules of the course. Some of the questions may require you to perform some of the analysis methods you learned throughout the course on new datasets. Â
Graded: Final Exam