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1 Masterseminar „A statistical framework for the diagnostic of meningioma cancer“ Andreas Keller Supervised by: Professor Doktor H. P. Lenhof Chair for Bioinformatics, Saarland University Outline Outline Introduction Materials and Methods SEREX Microarray Conclusion Discussion 2 Introduction What are meningiomas Benign brain tumors Arising from coverings of brain and spinal cord Slow growing Most common neoplasm (brain) Genetic alterations 3 Introduction 4 Introduction meningioma in proportions Two times more often in women as in men More often in people older than 50 years 5 Outline Outline Introduction Materials and Methods SEREX Microarray Conclusion Discussion 6 SEREX se serological identification of antigens by rrecombinant ex expression cloning 7 SEREX – Identification expression of a human fetal brain library proteins bind on membrane 2nd antibody detection 8 pooled sera SEREX – Screening agar plate patients serum 9 specific genes 2nd antibody detection SEREX – Results 10 Microarrays System: cDNA microarrays 55.000 spots Whole Genome Array Data: 8 samples per WHO grade 2 dura as negative controle 2 refPools as negative controle 11 Microarrays 12 Statistical Learning Supervised Learning Bayesian Statistics Support Vector Machines Discriminant Analysis Unsupervised Learning (Clustering) Feature Subset Selection Component Analysis (PCA, ICA) 13 Statistical Learning Crossvalidation Error Rates Training Error CV Error Test Error Specificity vs. Sensitivity tradeoff Receiver Operating Caracteristic Curve 14 Outline Outline Introduction Materials and Methods SEREX Microarray Conclusion Discussion 15 SEREX Data situation: p = 57 n = 104 Goal: Predict meningioma vs. non meningioma Predict WHO grade 16 Bayesian Approach serum 1 serum 2 serum 3 serum 4 serum 5 serum 6 serum 7 serum 8 serum 9 serum 10 serum 11 serum 12 class gene A gene B 1 1 2 2 3 3 0 0 0 0 0 0 0 1 1 1 0 1 0 0 1 0 0 0 1 1 1 0 1 0 0 0 0 0 0 0 17 Bayesian Approach serum 1 serum 2 serum 3 serum 4 serum 5 serum 6 serum 7 serum 8 serum 9 serum 10 serum 11 serum 12 class gene A gene B 1 1 2 2 3 3 0 0 0 0 0 0 0 1 1 1 0 1 0 0 1 0 0 0 1 1 1 0 1 0 0 0 0 0 0 0 4 6 1 6 4 6 1 0 7 6 18 Bayesian Approach 19 Bayesian Approach serum 1 serum 2 serum 3 serum 4 serum 5 serum 6 serum 7 serum 8 serum 9 serum 10 serum 11 serum 12 class gene A gene B 1 1 2 2 3 3 0 0 0 0 0 0 0 1 1 1 0 1 0 0 1 0 0 0 1 1 1 0 1 0 0 0 0 0 0 0 2 6 5 6 2 6 6 6 20 Bayesian Approach 21 Bayesian Approach 22 SEREX Conclusion Separation meningioma vs. non meningioma seems very well possible Separation into different WHO grades seems to be possible with a certain error 23 SEREX Conclusion Extend to other Brain tumors (glioma) Human cancer Disease Simplify experimental methods Develop a prediction system 24 Outline Outline Introduction Materials and Methods SEREX Microarray Conclusion Discussion 25 Microarray Data situation: p = 53423 n = 26 2 goals: Find significant genes Classify into WHO grades 26 Dimension reduction 6 approaches Component analysis Take genes which differ from DURA Take genes which differ from refPool Take genes which differ between grades Take „publicated“ genes Split into chromosomes 27 Component analysis Principal component analysis Independant component analysis 28 Analysis of grades tissues genes 29 Dura and refPool Justification for Dura Wherefrom to take? How to take? Genes different from normal tissue Good to classify into meningioma vs. healthy Justification for refPool Genes different between WHO grades Good to classify into grades 30 Published genes Several 100 genes are connected with meningioma in several publications Find these genes and investigate them example: Lichter 2004 – 61 genes with different expression WHOI in contrast to WHOII and III 31 Split into chromosomes As mentioned: often karyotypic alterations losses: gains: 22 1p 6q 10q 14q 18q 1p 9q 12q 15q 17q 20q => Split genes into different chromosomes => Compare to karyotype 32 Split into chromosomes 33 Classification Classification: Clustering SVM Discriminant Analysis Least Squares 34 SEREX derived genes 35 BN++ BN++ as a statistical tool Build a C++/R interface?? Use MatLab?? Use C++ librarys?? 36 Outline Outline Introduction Materials and Methods SEREX Microarray Conclusion Discussion 37 Workflow Large scale investigation of suspicious people by antigen analysis. If a positive prediction is made do further analysis (CT or similar). If necessary surgory. Further examinations with the gained tissue. 38 Outline Outline Introduction Materials and Methods SEREX Microarray Conclusion Discussion 39 Outline Outline Introduction Materials and Methods SEREX Microarray Conclusion Discussion 40