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Thomas Nordahl Petersen, Associate Prof, Food DTU
Sundhed og Informatik Thomas Nordahl Petersen, Associate Prof, Food DTU Building 204, room 105 Mail:
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Lectures and exercises
Lectures+Exercises: 9:15 – 12:00 Wireless network: Written exam Dec 20, bring computer, books and notes 4 hour written Undervisning er på dansk, men undervisningsmateriale er fortrinsvis på engelsk. Course program:
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Teachers Thomas Nordahl Petersen Henrik Nielsen Anders Gorm Pedersen
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This is a hands-on course
Lectures are giving the background/theory of a bioinformatics topic The exercises are giving you a hands-on experience the that topic Example Theory of sequence alignment Alignment by hand, filling out scoring matrices Learning about the amino acids Building amino acids by hand (Model building)
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Teaching material 5
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Outline of the course Topics will cover a general introduction to bioinformatics Evolution DNA / Protein and amino acids Alignment and scoring matrices How does it work & what are the numbers Visualization of multiple alignments Phylogenetic trees and logo plots Commonly used databases Uniprot/Genbank Genotype, phenotype & SNP’s Protein 3D-structure Artificial neural networks Practical use of bioinformatics tools Sequence information and Logo plots
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Outline of the course
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The Amino Acids Thr (T) Phe (F) Val (V) Ala (A) His (H) Arg (R)
Ser (S) Leu (L) Cys (C) Met (M) Asp (D) Lys (K) Asn (N) Ile (I) Trp (W) Gln (Q) Glu (E) Tyr (Y) Pro (P) Gly (G) 8
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Automated sequencing The major break-through of sequencing has happended through automation. Fluorescent dyes. Laser based scanning. Capillary electrophoresis Computer based base-calling and assembly. Images:
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Theory of evolution Charles Darwin 1809-1882
CENTER FOR BIOLOGICAL SEQUENCE ANALYSIS Charles Darwin
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Phylogenetic tree
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Sequence alignment - Blast
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Sequence alignment - Blast
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BLAST Exercise
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Protein 3D-structure
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Protein 3D-structure
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Neural Networks From knowledge to information
Protein sequence Biological feature
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Prediction of biological features Surface accessible
Predict surface accessible from amino acid sequence only.
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Logo plots
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Logo plots
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Logo plots Information content, how is it calculated - what does it mean.
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Written Exam
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