CISC667, F05, Lec24, Liao1 CISC 667 Intro to Bioinformatics (Fall 2005) DNA Microarray, 2d gel, MSMS, yeast 2-hybrid.

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CISC667, F05, Lec24, Liao1 CISC 667 Intro to Bioinformatics (Fall 2005) DNA Microarray, 2d gel, MSMS, yeast 2-hybrid.

CISC667, F05, Lec24, Liao2 Gene expression –How many copies of a gene (its product) is present in the cell? –For experimental reasons, gene expressions are measured by numbers of mRNAs, not directly by proteins. (See Proteomics) –Various cell types are due to different genes expressed. –The difference between diseased (e.g., cancerous) and non-diseased –Diseased cells are often resulted from the abnormal levels of expression of key genes.

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4 Microarray –Oligonucleotide (Affymetrix) array Oligo (~ 25 bases long) High density (1cm 2 contain 100k oligos) –cDNA array cDNA (RT-PCR), much longer (> 1000 bases) Varied density of cDNA on each spot, hybridization depends on length Less possibility for false positives –Image processing –Background subtraction –Normalization

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7 Applications Understanding correlation b/w genotype and phenotype predicting genotype phenotype Phenotypes: –drug/therapy response –drug-drug interactions for expression –drug mechanism –interacting pathways of metabolism

CISC667, F05, Lec24, Liao8 What is proteomics? Like genomics is the study of all genes in a genome, proteomics is the study of all proteins of a cell at a given time. Three aspects –Biological process (why is this being done? e.g. movement of cell) –Molecular function (what kind of molecule is this? e.g., ATPase) –Cellular component (where is this located? e.g., ribosome) Why is it difficult? Moving target –Cell-to-cell variations –Cell behavior changes with time Lack of high throughput technology –Protein chips? Protein sequences do not have hybridization that DNA sequences have.

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10 2D gel electrophoresis –Isoelectric points (first dimension) –Molecular weights (second dimension) Both pI and MW are functions of amino acid sequence of a protein. Some proteins do not resolve well by 2D gels. Issues: Detection of spots (image processing) Quantification of each spot Identification of each spot (Mass Spectrometry)

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