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Wavelet Analysis of Gene Expression (WAGE) Federico.E. Turkheimer, Dawn Duke, Linda Moran, and Manuel B. Graeber Department of Neuropathology Division of Neuroscience and Psychological Medicine Imperial College London, London, UK Overview http://www.ornl.gov/TechResources/Human_Genome/publicat/primer2001/1.html Protein synthesis Amino acids tRNA 4. Amino acids and Transfer RNA present in cytoplasm Nucleus 3. Messenger RNA travels to the cytoplasm 5. Messenger RNA joins at the ribosome tRNA brings its amino acid to the ribosome ribosome 1. The DNA helix unwinds 2. Messenger RNA molecule makes a copy of the DNA mRNA Biology (1998) Jones, M & Jones, G. Cambridge University Press Protein synthesis II 6. The next tRNA brings its amino acid The 2 amino acids are chemically linked 7. The mRNA moves along. The first tRNA is released. The third tRNA arrives with its amino acid tRNA tRNA Small protein 8. The process continues - A small protein is made Why RNA?: Complexity and Regulation • A coded protein is not necessarily expressed • DNA differences cannot explain all phenotypic variation • These differences may be better detected at the DNA expression levels (RNA) Proteins ~106 DNA~30,000 genes (including post-translational modifications) Ribosome Why RNA? –Omics measurements with microarrays Human genome ~ 33,000 human genes Editorial (1996) To affinity... and beyond. Nature Genetics 14:367-370 Page no: 12 0.0 Affymetrix Microarray 05c m Genes Affymetrix Microarray Preparation Brain Tissue block Isolation of total RNA RNA Reverse transcription Double-stranded cDNA Transcription & fragmentation Biotinylated cRNA Array Hybridisation & array staining Affymetrix Microarray Analysis Detection Analysis: Is the gene present? Statistical testing on the probes assaying the individual gene Scanner Image Present/ Absent Call Noise calculation Expression Value Background subtraction Array normalization Signal Analysis: what is the expression value? Affymetrix Microarray Output Code Gene Name & Description Signal Call Data Analysis and Interpretation Analysis and interpretation of these high dimensional data-sets is not a trivial task. Common approaches adopt supervised methods of analysis (multiple hypothesis testing), or unsupervised (clustering) Multiple Hypothesis testing Clustering Data Analysis and Interpretation II Alternatively one can adopt a model-based approach by re-organizing gene expression values according to one or more of their established functions and then searching the associated mathematical space to unveil hidden relationships and groupings Æ e.g. Pathway Analysis http://www.genmapp.org WAVELET ANALYSIS OF GENE EXPRESSION (WAGE) Human Chromosomes and Genes WAGE model-based approach re-organizes gene expression values according to their chromosomal position and then searches for spatial clusters of activity 1 2 3 4 5 6 7 8 9 13 14 15 16 17 18 19 20 21 10 22 11 12 X Y http://www.ncbi.nlm.nih.gov/books/bookres.fcgi/ Gene expression control at chromosome level •The physical structure of the DNA, as it exists compacted into chromatin, can affect the ability of transcriptional regulatory proteins (transcription factors) and RNA polymerases to find access to specific genes and to activate transcription from them. •Neighbour genes on a given chromosome can be involved in the same pathway. •Co-localized genes share similar vulnerability to environmental or, with particular relevance to tumours, serve as targets for carcinogens. WAGE: the method Mapping Array Æ Chromosome Arrays Raw data Wavelet Transform WAVELET SPACE Filtering Filtered data Inverse Wavelet Transform WAGE: technical detail Wavelet Base: Haar wavelets Wavelet Transform: “Cycle spinning” (Coifman, R. R. and Donoho, D. 1995) Statistic: z = mean(wgroup1)-mean(wgroup2); Noise std estimate: σ = MAD{zf}/ 0.6745 (zf=coeff. finest level) Wavelet estimator: Hard thresholder Wavelet threshold: Universal: τ= σ 2log(N) APPLICATION I: Brain Tumors (gliomas) Deprez M, Turkheimer FE, Munaut C, Moran L, Scheithauer BW, Graeber MB (2004)” Microarray analysis of gliomas: biological insights from the mathematical modeling of histopathologycal types,” Submitted Glioblastomas: Loss of Chromosome 10 Microarray Raw FISH Microarray WAGE Glioblastomas Gain of Chromosome 7 Microarrays Raw FISH Microarrays WAGE Oligodendrogliomas Allelic loss on chromosome 1p Microarrays Raw Microarrays WAGE Astrocytomas Gene clusters on chromosome 21 Interferon receptors alpha and gamma [Genbank# L42243, J03171, U05875] Acute Myeloid Leukemia (AML) proteins [(AML 1b (Genbank # D43968), AML 1c (Genbank # D43969) and AML (Genbank # X90976)]. Microarrays WAGE APPLICATION II: Neurodegeneration Alpha-synuclein immunohistochemistry for a subject diagnosed with alphasynucleinopathy. Note the granular, brown immunoreactivity as well as the dark, spherical, alpha synuclein positive Lewy body (arrow). MHC Class I/Class II Region MHC II immunohistochemistry (CR3/43) for one of the subjects. Note the dark brown stained microglia (arrow). Histones Region It has been recently demonstrated in-vitro and in animal models that the aggregation of alpha-synuclein is dramatically accelarated by the presence of histones (Goers J, et al. Biochemistry, 42(28):846571, 2003) Conclusions • WAGE detects co-localized clusters of RNA espression. • Validation work so far confirms their biological significance • Further methodological work needed to incorporate known mechanisms of regulation (Bayesian models) and more realistic spatial models (un-equally spaced samples)