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UNIST Bioinformatics course syllabus

Revision as of 20:42, 19 April 2015 by imported>S

Syllabus
Course Information  Bioinformatics

Instructor Information Dugwoo Nam & Jong Bhak

Course Code

BIO43101
Instructor
Dugwoo Nam,

Course Title

Bioinformatics
Office

Room 701-8, EB1 (DN)

Room 215, Bldg 103 (JB)

Year/Semester
2015/1st
Telephone
010 4644 6754 (JB)
School
SLS
E-mail

Course Classification

TE-BIO/TE-BME/TE-BMS

Office Hours

TBA

Classroom/Class Time

FRI 13:00-15:30 (NSB S205)

Grading Type

Letter grade
Course Objectives & Description

Bioinformatics course contains introductory information in how to process biological data using computers.

The first part of the course taught by Dougu Nam covers the basic computational methods used for biological data analysis. During the class, students will learn the concepts by short lectures and hands-on experiences. So, please bring a laptop computer to the class from the second week.

 

The second part of the course taught by Jong Bhak will focus on:

1)     What Bioinformatics is

2)     How to independently read research papers

3)     How to critically analyze research papers and topics

4)     How to choose a research topic in bioinformatics and design an experiment and perform research

5)     How to write research report(paper) to make the results known to the public.

6)     The course will be done through active action-oriented learning method(AAO)

7)     Students are required to motivate themselves and bring their research topics after reading research papers.

Grading

Midterm( Two tests: 50 %) / Final Exam( Team project: 50%)

 
 
 
 
 
 
Text
Category

Book and PPT files, on-line links

 
Title
Bioinformatics
 
Author
Jong Bhak
 
ISBN
 
 
Remarks
 
 

Course Reserves Designation

 
 
References
Category
Book, on-line links
 
 
Title
Bioinformatics
 
 
Author
Jong Bhak
 
 
ISBN
 
 
 
Remarks
 
 
 

Course Reserves Designation

 
 
 

 
Weekly Schedule

Week
Contents
01

Introduction to Bioinformatics, Introduction to Microarray, RNA-seq

02

Microarray & gene data analysis I: Normalization, Identification of DEGs (R language), Gene list analysis with DAVID and STRING(web)

03

Microarray & gene data analysis II: Clustering, (R, cluster, treeview), Dimension Reduction (PCA), survival analysis

04
Test 1
05

Gene-set and pathway analysis with GSEA, Introduction to classification analysis (SVM)

06
RNA-seq, ChIP-seq data analysis
07

Introduction to NCBI databases: data and literature search

08
Test 2
09
(2015.May 1st
Friday)
10
11
12
13
14
15