Bioinformatics lectures at Rice University Li Zhang Lecture 11: Networks and integrative genomic analysis-3 Genomic data

Slides:



Advertisements
Similar presentations
Approaches, Tools, and Applications Islam A. El-Shaarawy Shoubra Faculty of Eng.
Advertisements

Bioinformatics lectures at Rice University Li Zhang Lecture 1 Department of Bioinformatics and Computational Biology MD Anderson Cancer Center March-April,
4 Intelligent Systems.
Bioinformatics lectures at Rice University Li Zhang Lecture 10: Networks and integrative genomic analysis-2 Genome instability and DNA copy number data.
Bioinformatics at WSU Matt Settles Bioinformatics Core Washington State University Wednesday, April 23, 2008 WSU Linux User Group (LUG)‏
Yanxin Shi 1, Fan Guo 1, Wei Wu 2, Eric P. Xing 1 GIMscan: A New Statistical Method for Analyzing Whole-Genome Array CGH Data RECOMB 2007 Presentation.
27803::Systems Biology1CBS, Department of Systems Biology Schedule for the Afternoon 13:00 – 13:30ChIP-chip lecture 13:30 – 14:30Exercise 14:30 – 14:45Break.
MS Computer Science: Dr. William J. Wolfe Professor and Chair Computer Science CSUCI MS Mathematics: Dr. Ivona Grzegorczyk Professor and Chair Mathematics.
Schedule for the Afternoon 13:00 – 13:30ChIP-chip lecture 13:30 – 14:30Exercise 14:30 – 14:45Break 14:45 – 15:15Regulatory pathways lecture 15:15 – 15:45Exercise.
Bio 465 Summary. Overview Conserved DNA Conserved DNA Drug Targets, TreeSAAP Drug Targets, TreeSAAP Next Generation Sequencing Next Generation Sequencing.
1 CIS607, Fall 2006 Semantic Information Integration Instructor: Dejing Dou Week 10 (Nov. 29)
Scientific Data Mining: Emerging Developments and Challenges F. Seillier-Moiseiwitsch Bioinformatics Research Center Department of Mathematics and Statistics.
27803::Systems Biology1CBS, Department of Systems Biology Schedule for the Afternoon 13:00 – 13:30ChIP-chip lecture 13:30 – 14:30Exercise 14:30 – 14:45Break.
1 BrainWave Biosolutions Limited Accelerating Life Science Research through Technology.
Learning Programs Danielle and Joseph Bennett (and Lorelei) 4 December 2007.
DASHBOARDS Dashboard provides the managers with exactly the information they need in the correct format at the correct time. BI systems are the foundation.
CSE 515 Statistical Methods in Computer Science Instructor: Pedro Domingos.
341: Introduction to Bioinformatics Dr. Natasa Przulj Deaprtment of Computing Imperial College London
Medical Informatics Basics
CS Machine Learning. What is Machine Learning? Adapt to / learn from data  To optimize a performance function Can be used to:  Extract knowledge.
Bioinformatics Jan Taylor. A bit about me Biochemistry and Molecular Biology Computer Science, Computational Biology Multivariate statistics Machine learning.
9/30/2004TCSS588A Isabelle Bichindaritz1 Introduction to Bioinformatics.
 The institute started in 1989 as a UNDP funded project called the National Agricultural Genetic Engineering Laboratory (NAGEL).  The Agricultural.
Bioinformatics Sean Langford, Larry Hale. What is it?  Bioinformatics is a scientific field involving many disciplines that focuses on the development.
Bioinformatics Timothy Ketcham Union College Gradutate Seminar 2003 Bioinformatics.
Tennessee Technological University1 The Scientific Importance of Big Data Xia Li Tennessee Technological University.
Radiogenomics in glioblastoma multiforme
Medical Informatics Basics
Tools of Bioinformatics
Medical Informatics Basics Lection 1 Associated professor Andriy Semenets Department of Medical Informatics.
Master’s Degrees in Bioinformatics in Switzerland: Past, present and near future Patricia M. Palagi Swiss Institute of Bioinformatics.
Machine Learning Lecture 1. Course Information Text book “Introduction to Machine Learning” by Ethem Alpaydin, MIT Press. Reference book “Data Mining.
Practically Genomic A hands-on bioinformatics IAP Course Materials: Instructors: Paola Favaretto, Sebastian Hoersch,
Computing and Communications and Biology Molecular Communication; Biological Communications Technology Workshop Arlington, VA 20 February 2008 Jeannette.
Social Networks in Most Visible Form. Social Networking Techniques in Business Several social networking techniques can help us in reaching maximum number.
Intelligent systems in bioinformatics Introduction to the course.
Integrating the Bioinformatic Technology Group into your research programme Introduction People and Skills Examples Integrating the BTG Contacts BHRC Away.
Bioinformatics lectures at Rice University Li Zhang Lecture 9: Networks and integrative genomic analysis
Bioinformatics Core Facility Guglielmo Roma January 2011.
NEURAL - FUZZY LOGIC FOR AUTOMATIC OBJECT RECOGNITION.
Introduction to Bioinformatics (Lecture for CS397-CXZ Algorithms in Bioinformatics) Jan. 21, 2004 ChengXiang Zhai Department of Computer Science University.
Biological Signal Detection for Protein Function Prediction Investigators: Yang Dai Prime Grant Support: NSF Problem Statement and Motivation Technical.
Overview of Bioinformatics 1 Module Denis Manley..
Evolution of BINF Bioinformatics Certificate Foothill College R. Cormia, L. English, K. Erickson.
COMPUTATIONAL ANALYSIS OF MULTILEVEL OMICS DATA FOR THE ELUCIDATION OF MOLECULAR MECHANISMS OF CANCER Presented by Azeez Ayomide Fatai Supervisor: Junaid.
Data Mining and Decision Trees 1.Data Mining and Biological Information 2.Data Mining and Machine Learning Techniques 3.Decision trees and C5 4.Applications.
EB3233 Bioinformatics Introduction to Bioinformatics.
Bioinformatics Curriculum Issues, goals, curriculum.
Mining the Biomedical Research Literature Ken Baclawski.
Biocomputation: Comparative Genomics Tanya Talkar Lolly Kruse Colleen O’Rourke.
Opportunities for Text Mining in Bioinformatics (CS591-CXZ Text Data Mining Seminar) Dec. 8, 2004 ChengXiang Zhai Department of Computer Science University.
Kaifeng Chen Institute for Theoretical Physics Synthetic Biology with Engineering Tools 1 Francis Chen.
Shankar Subramaniam University of California at San Diego Data to Biology.
Bioinformatics Dipl. Ing. (FH) Patrick Grossmann
GeneScout: a data mining system for predicting vertebrate genes in genomic DNA sequences Authors: Michael M. Yin and Jason T. L. Wang Sources: Information.
Effect of Alcohol on Brain Development NormalFetal Alcohol Syndrome.
Chapter 9 : Application Areas. 2 Some Advance Application Areas of Computers  Software Development  Artificial Intelligence  Robotics  Industrial.
Bioinformatics lectures at Rice University Li Zhang Lecture 1 Department of Bioinformatics and Computational Biology MD Anderson Cancer Center March-April,
University of Pavia Dep. of Electrical, Computer and Biomedical Engineering Laboratory of Bioinformatics, Mathematical Modelling and Synthetic Biology.
Presenter: Bradley Green.  What is Bioinformatics?  Brief History of Bioinformatics  Development  Computer Science and Bioinformatics  Current Applications.
1 Finding disease genes: A challenge for Medicine, Mathematics and Computer Science Andrew Collins, Professor of Genetic Epidemiology and Bioinformatics.
High-throughput Biological Data The data deluge
KEY CONCEPT Entire genomes are sequenced, studied, and compared.
KEY CONCEPT Entire genomes are sequenced, studied, and compared.
KEY CONCEPT Entire genomes are sequenced, studied, and compared.
Schedule for the Afternoon
Introduction to Bioinformatic
Applying principles of computer science in a biological context
KEY CONCEPT Entire genomes are sequenced, studied, and compared.
KEY CONCEPT Entire genomes are sequenced, studied, and compared.
Presentation transcript:

Bioinformatics lectures at Rice University Li Zhang Lecture 11: Networks and integrative genomic analysis-3 Genomic data

How to find the modules?

Testing results of the method

URL:cancergenome.nih.gov

The network approach

Mapping interactions

Module detection

DCTN2 module is a new module discovered by the automated process

Limitations of the study Network analysis is only as good as the network itself. Human interaction and pathway data remain sparse and fragmented, and we must assume that the Human Interaction Network (HIN) used here represents a small portion of the full human interactome [47]. Interactions and pathways in our network are completely devoid of the context in which they were originally described, and we can only use the HIN as an approximate model for in vivo interactions. As a quality filter, we have also specifically. Distinguishing genes implicated by copy number alterations remains problematic, even when candidate genes are filtered through a network. For example, KIT, KDR and PDGFRA are all located at 4q12, a region of frequent amplification in GBM, and it is difficult to determine which one(s) are the true targets.

Summary of the course

What is bioinformatics? Bioinformatics is the application of computer science and information technology to the field of biology and medicine. Bioinformatics deals with algorithms, databases and information systems, web technologies, artificial intelligence and soft computing, information and computation theory, software engineering, data mining, image processing, modeling and simulation, signal processing, discrete mathematics, control and system theory, circuit theory, and statistics, for generating new knowledge of biology and medicine, and improving & discovering new models of computation (e.g. DNA computing, neural computing, evolutionary computing, immuno-computing, swarm- computing, cellular-computing).computer scienceinformation technologybiology medicine Commonly used software tools and technologies in this field include Java, XML, Perl, C, C++, Python, R, MySQL, SQL, CUDA, MATLAB, and Microsoft Excel.JavaXMLPerlCC++PythonRMySQL SQLCUDAMATLABMicrosoft Excel

Statistical concepts and algorithms Shannon entropy Mutual information, ARACNE, correlated mutations Maximum information coefficient GISTIC Hidden Markov Models Network analysis: redundant genes Network analysis: Gen Set Enrichment Analysis Network analysis: Modularity

Biological context High throughput genomics technologies (microarrays and next generation sequencing) Gene expression data DNA copy number data (characteristics and interpretation) Gene expression regulation network (ARACNE) Information coded in a gene sequence HMM used in decoding DNA sequences Integrative genomics Network analysis