Bioinformatic Methods II

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Bioinformatic Methods II

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Description

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About this course: Large-scale biology projects such as the sequencing of the human genome and gene expression surveys using RNA-seq, microarrays and other technologies have created a wealth of data for biologists. However, the challenge facing scientists is analyzing and even accessing these data to extract useful information pertaining to the system being studied. This course focuses on employing existing bioinformatic resources – mainly web-based programs and databases – to access the wealth of data to answer questions relevant to the average biologist, and is highly hands-on. Topics covered include multiple sequence alignments, phylogenetics, gene expression data analysis, and prote…

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When you enroll for courses through Coursera you get to choose for a paid plan or for a free plan

  • Free plan: No certicification and/or audit only. You will have access to all course materials except graded items.
  • Paid plan: Commit to earning a Certificate—it's a trusted, shareable way to showcase your new skills.

About this course: Large-scale biology projects such as the sequencing of the human genome and gene expression surveys using RNA-seq, microarrays and other technologies have created a wealth of data for biologists. However, the challenge facing scientists is analyzing and even accessing these data to extract useful information pertaining to the system being studied. This course focuses on employing existing bioinformatic resources – mainly web-based programs and databases – to access the wealth of data to answer questions relevant to the average biologist, and is highly hands-on. Topics covered include multiple sequence alignments, phylogenetics, gene expression data analysis, and protein interaction networks, in two separate parts. The first part, Bioinformatic Methods I, dealt with databases, Blast, multiple sequence alignments, phylogenetics, selection analysis and metagenomics. This, the second part, Bioinformatic Methods II, will cover motif searching, protein-protein interactions, structural bioinformatics, gene expression data analysis, and cis-element predictions. This pair of courses is useful to any student considering graduate school in the biological sciences, as well as students considering molecular medicine. These courses are based on one taught at the University of Toronto to upper-level undergraduates who have some understanding of basic molecular biology. If you're not familiar with this, something like https://learn.saylor.org/course/bio101 might be helpful. No programming is required for this course although some command line work (though within a web browser) occurs in the 5th module.

Created by:  University of Toronto
  • Taught by:  Nicholas James Provart, Professor

    Cell & Systems Biology
Commitment 12-18 hours of videos and labs Language English How To Pass Pass all graded assignments to complete the course. User Ratings 4.7 stars Average User Rating 4.7See what learners said Coursework

Each course is like an interactive textbook, featuring pre-recorded videos, quizzes and projects.

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Syllabus


WEEK 1


Protein Motifs



In this module we'll be exploring conserved regions within protein families. Such regions can help us understand the biology of a sequence, in that they are likely important for biological function, and also be used to help ascribe function to sequences where we can't identify any homologs in the databases. There are various ways of describing the conserved regions from simple regular expressions to profiles to profile hidden Markov models (HMMs).


4 videos, 4 readings expand


  1. Reading: Acknowledgements
  2. Reading: Course Logistics
  3. Video: Introduction
  4. Video: Lecture
  5. Reading: Lecture Materials
  6. Reading: Lab 1 -- Protein Domain, Motif and Profile Analysis
  7. Video: Lab Discussion
  8. Video: Summary

Graded: Lab 1 Quiz

WEEK 2


Protein-Protein Interactions



In this module we'll be exploring protein-protein interactions (PPIs). Protein-protein interactions are important as proteins don't act in isolation, and often an examination of the interaction partners (determined in an unbiased, perhaps high throughput way) of a given protein can tell us a lot about its biology. We'll talk about some different methods used to determine PPIs and go over their strengths and weaknesses. In the lab we'll use 3 different tools and two different databases to examine interaction partners of BRCA2, a protein that we examined in last module's lab. Finally, we'll touch on a "foundational" concept, Gene Ontology (GO) term enrichment analysis, to help us understand in an overview way the proteins interacting with our example.


4 videos, 2 readings expand


  1. Video: Introduction
  2. Video: Lecture
  3. Reading: Lecture Materials
  4. Reading: Lab 2 -- Protein-Protein Interactions
  5. Video: Lab Discussion
  6. Video: Summary

Graded: Lab 2 Quiz

WEEK 3


Protein Structure



The determination of a protein's tertiary structure in three dimensions can tell us a lot about the biology of that protein. In this module's mini-lecture, we'll talk about some different methods used to determine a protein's tertiary structure and cover the main database for protein structure data, the PDB. In the lab we'll explore the PDB and an online tool for searching for structural (as opposed to sequence) similarity, VAST. We'll then use a nice piece of stand-alone software, PyMOL, to explore several protein structures in more detail.


4 videos, 2 readings expand


  1. Video: Introduction
  2. Video: Lecture
  3. Reading: Lecture Materials
  4. Reading: Lab 3 -- Structural Bioinformatics
  5. Video: Lab Discussion
  6. Video: Summary

Graded: Lab 3 Quiz

WEEK 4


Review: Protein Motifs, Protein-Protein Interactions, and Protein Structure





    Graded: Quiz: Protein Motifs, Protein-Protein Interactions, and Protein Structure

    WEEK 5


    Gene Expression Analysis I



    When and where genes are expressed (active) in tissues or cells is one of the main determinants of what makes that tissue or cell the way it is, both in terms of morphology and in terms of response to external stimuli. Several different methods exist for generating gene expression levels for all of the genes in the genome in tissues or even at cell-type-specific resolution. In this class we'll be processing and then examining some gene expression data generated using RNA-seq. We'll explore one of the main databases for RNA-seq expression data, the Sequence Read Archive (SRA), and then use an open-source suite of programs in R called BioConductor to process the raw reads from 4 RNA-seq data sets, to summarize their expression levels, to select significantly differentially expressed genes, and finally to visualize these as a heat map.


    4 videos, 2 readings expand


    1. Video: Introduction
    2. Video: Lecture
    3. Reading: Lecture Materials
    4. Reading: Lab 4 -- Gene Expression Analysis I
    5. Video: Lab Discusssion
    6. Video: Summary

    Graded: Lab 4 Quiz

    WEEK 6


    Gene Expression Analysis II



    When and where genes are expressed (active) in tissues or cells is one of the main determinants of what makes that tissue or cell the way it is, both in terms of morphology and in terms of response to external stimuli. Several different methods exist for generating gene expression levels for all of the genes in the genome in tissues or even at cell-type-specific resolution. In this class we'll be hierarchically clustering our significantly differentially expressed genes from last time using BioConductor and the built-in function of an online tool, called Expression Browser. Then we'll be using another online tool that uses a similarity metric, the Pearson correlation coefficient, to identify genes responding in a similar manner to our gene of interest, in this case AP3. We'll use a second tool, ATTED-II to corroborate our gene list. We'll also be exploring some online databases of gene expression and an online tool for doing a Gene Ontology enrichment analysis.


    5 videos, 2 readings expand


    1. Video: Introduction
    2. Video: Lecture part 1
    3. Video: Lecture part 2
    4. Reading: Lecture Materials
    5. Reading: Lab 5 -- Gene Expression Data Analysis II
    6. Video: Lab Discussion
    7. Video: Summary

    Graded: Lab 5 Quiz

    WEEK 7


    Cis Regulatory Systems



    When and where genes are expressed in tissues or cells is one of the main determinants of what makes that tissue or cell the way it is, both in terms of morphology and in terms of response to external stimuli. Gene expression is controlled in part by the presence of short sequences in the promoters (and other parts) of genes, called cis-elements, which permit transcription factors and other regulatory proteins to bind to direct the patterns of expression in certain tissues or cells or in response to environmental stimuli: We'll explore a couple of sets of promoters of genes that are coexpressed with AP3 from Arabidopsis, and with INSULIN from human, for the presence of known cis-elements, and we'll also try to predict some new ones using a couple of different methods.


    4 videos, 2 readings expand


    1. Video: Introduction
    2. Video: Lecture
    3. Reading: Lecture Materials
    4. Reading: Lab 6 -- Cis Regulatory Element Mapping and Prediction
    5. Video: Lab Discussion
    6. Video: Summary

    Graded: Lab 6 Quiz

    WEEK 8


    Review: Gene Expression Analysis and Cis Regulatory Systems + Final Assignment



    1 reading expand


    1. Reading: Final Assignment Instructions

    Graded: Quiz: Modules 5-7
    Graded: Final Assignment
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