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Dr. Rosemary Renaut, renaut@asu Director, Computational Biosciences asu/compbiosci

Dr. Rosemary Renaut, renaut@asu.edu Director, Computational Biosciences www.asu.edu/compbiosci. 1. USDA. 11/28/2005. OUTLINE THE CBS PROGRAM AT ASU : OVERVIEW CBS CURRICULUM REQUIREMENTS SOME HISTORY FUTURE PROJECTS – WHAT DO THEY INVOLVE OUR CASE STUDIES COURSE(S)

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Dr. Rosemary Renaut, renaut@asu Director, Computational Biosciences asu/compbiosci

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  1. Dr. Rosemary Renaut, renaut@asu.edu Director, Computational Biosciences www.asu.edu/compbiosci 1 USDA 11/28/2005

  2. OUTLINE THE CBS PROGRAM AT ASU : OVERVIEW CBS CURRICULUM REQUIREMENTS SOME HISTORY FUTURE PROJECTS – WHAT DO THEY INVOLVE OUR CASE STUDIES COURSE(S) INTRODUCING BASIC MATHEMATICS TO LS/CSE STUDENTS 2 USDA 11/28/2005

  3. A Professional Science Masters Program Mathematics and Statistics The School of Life Sciences Computer Science Engineering W. P Carey Schoool Of Business 3 USDA 11/28/2005

  4. 4 11/28/2005

  5. Scientific Computing for Biosciences (4) Case Studies/ Projects in Biosciences(4) Structural and Molecular Biology(4) Statistics and Experimental Design(6) Business Practice and Ethics(6) Internship and Applied Project(6) CORE REQUIREMENTS 5 USDA 11/28/2005

  6. Genomics/Proteomics Data Mining Data Bases, Medical Imaging Molecular/Functional Genomics Microarray Analysis Individualized ELECTIVE TRACKS 6 USDA 11/28/2005

  7. PRE-REQUISITES 7 USDA 11/28/2005 • Calculus and Differential Equations • Basic Statistics (junior) • Discrete Algorithms and Data Structures • Programming skills(C++/Java) • Cell biology, genetics(junior level) • Organic and Bio Chemistry (junior) • Motivation, creativity, determination!

  8. 8 USDA 11/28/2005 • Interdisciplinary Training/Team Work • Internship/Applied Project Report • Business, Management and Ethics • (Health Services Administration MBA) • Small Groups/Close Faculty Involvement • Computer Laboratory • Extensive Project work/Consulting

  9. 9 USDA 11/28/2005 DATA • Year 4: total 70 students, currently 27 • Graduates: 32 (11 left without graduating) • Internships: NIH, ASU, Tgen, AZ Game and Fish, US Water conservation lab, AZ biodesign • Jobs: Tgen, ASU, Codon Solutions, Medical record keeping, Matlab, St Judes Memphis, Walt Disney! Cisco • PhD programs (10) Biology, Computer Science, Biochemistry, Mathematics

  10. Undergraduate:NIH MARC Quantitative Skills (sophomore)spring 05 Modeling Comp Bio (Junior) spring 05 Doctoral Program Computational Biosciences Molecular Cellular Biology / Mathematics OTHER DEVELOPMENTS 10 USDA 11/28/2005

  11. Database Construction/Mining of Pathology Specimens (Tgen) Gegenbauer high resolution reconstruction for MRI, ASU TLS-SVM for Feature Extraction of Microarray Data, ASU Automated video analysis for cell behavior. Tgen EST DB for Marine Dinoflagellate Crypthecodinium cohnii, ASU Data mining for microsatellites in ESTS from arabidopsis thaliana and brassica species (US Water Conservation Laboratory) The Genome Assembler- Tgen A user interface to support navigation for scientific discovery ASU Cell Migration Software Tool Tgen WHAT DO WE DO: SPRING 2004 11 USDA 11/28/2005

  12. WHAT DO WE DO: SPRING 2005 12 USDA 11/28/2005 • EVALUATION OF BIOINFORMATICS RESOURCES (Tgen/NIH/ASU) • Pattern recognition Automated Cytoskeleton Reconstruction (ASU) • Develop workable database on crop Lesquerella using Integrated Crop Information Systems (ICIS) (US Water Conservation Laboratory) • Investigation of Xylella fastidiosa Within an Almond Tree Population: A Model System for Golden Death (ASU: Mathecology, AZ) • Search for Epigenetic Properties of DNA and RNA involved in X Chromosome Inactivation, (Codon Solutions LLC)

  13. WHAT DID WE NEED FOR THESE PROJECTS 13 USDA 11/28/2005 Image Analysis Data Mining Fourier Analysis Modeling Differential Equations Sequence Comparisons Mathematics for Genetic Analysis Statistics Data base development : for BIOLOGICAL APPLICATIONS Geographic Information Systems PERL/BIOPERL/MATLAB/MYSQL

  14. Bioinformatics: Managing Scientific Data tackles this challenge head-on by discussing the current approaches and variety of systems available to help bioinformaticians with this increasingly complex issue. The heart of the book lies in the collaboration efforts of eight distinct bioinformatics teams that describe their own unique approaches to data integration and interoperability. Each system receives its own chapter where the lead contributors provide precious insight into the specific problems being addressed by the system, why the particular architecture was chosen, and details on the system's strengths and weaknesses. In closing, the editors provide important criteria for evaluating these systems that bioinformatics professionals will find valuable. 14 USDA 11/28/2005

  15. Computational Modeling Skills Motivated by Case Studies Phylogenetics and Tree Building(for the data make the tree) Human(A) Chimp(B) Gorilla(C) Orang-Utan(D) Gibbon(E) Human(A) - .09190 .1082 .1790 .2057 Chimp(B) .0919/.0821 - .1134 .1940 .2168 Gorilla(C) .1057/.1083 .1161/.1330 - .1882 .2170 Orang-Utan(D) .1806/.1838 .1910.1838 .1895/.1838 - .2172 Gibbon(E) .2067/.2142 .2171/.2142 .2156/.2142 .2172/.2142 - 15 USDA 11/28/2005

  16. All additive trees with 5 branches which is the correctone? 16 USDA 11/28/2005

  17. Repeat for all trees: Use matlab Understand Least Squares Nonnegative constraints Constrained LS Exhaustive search Genetic Algorithms For this tree we can calculate the patristic distances between sequences : pBD=e2+e6+e7+e4 This should match the distance from the measured data We do a goodness of fit for all distances ║p-d║2= ║Ae –d ║2 What is A, what is e? Any conditions on e? 17 USDA 11/28/2005

  18. Computational Modeling Skills Motivated by Case Studies Phylogenetics and Tree Building(for the data make the tree) Human(A) Chimp(B) Gorilla(C) Orang-Utan(D) Gibbon(E) Human(A) - 79 92 144 162 Chimp(B) 79 - 95 154 169 Gorilla(C) 92 96.7 - 150 169 Orang-Utan(D) 149.3 154 152.1 - 169 Gibbon(E) 166.2 170.9 169 169 - 18 USDA 11/28/2005

  19. 19 USDA 11/28/2005 An ultrametric tree : what are the distances ei? Solve the linear programming problem min L(e) = min ∑ ei, where this is the total length of the tree. Moreover each length is positive, and the total lengths are preserved eg e1=e2, and e4+e8=e1+e6+e7 LP problem with constraints max cTx with Ax≤b x ≥ 0 Students identify x, c, b, A? Use matlab: linprog

  20. 20 USDA 11/28/2005 BUT THERE AREMANY DIFFERENT TREE SHAPESAND WHICH IS CORRECT? WE NEED EXHAUSTIVE SEARCH GENETIC ALGORITHMS?

  21. HOW WAS THIS USEFUL? OTHER APPLICATIONS USING SIMILAR TECHNIQUES Neural networks for classification –how do they learn? Data mining – k-means clustering – minimize energy Gradient Descent 21 USDA 11/28/2005 Introduction to • data fitting, • optimization, genetic algorithms, exhaustive search • matlab routines, • Realistic solutions (positive branch lengths) • Start on some multivariable calculus to derive normal equations

  22. A Novel Genome Assembler: Using K-mers to Indirectly Perform N2 Comparisons in O(N) Ho-Joon Lee, Stephanie Rogers and Maulik Shah Advisor: Jeffrey Touchman, Arizona State University and Translational Genomics Research Institute, Phoenix The novel, exhaustive approach to genome assembly aims to eliminate traditional heuristics and indirectly compare each sequence fragment to all the others in less than O(N2) running time. The first step in the algorithm involves building a k-mer library; accomplished by scanning through each sequence fragment using a sliding window of size k and cataloging each of these k-mers and the sequence fragment in which it occurs. It is assumed that neighboring fragments from the genome will share k-mers. From this k-mer table, an adjacency table is built; cataloging each sequence fragment and its neighbors. This adjacency table is generated in O(N) and represents all N2 comparisons. Finally, with the information in the adjacency table, multiple breadth-first searches to collect and separate the connected fragments are performed. It is assumed that there exist disjoint graphs in the adjacency table and that each such graph represents an entire contig. This process was performed on two datasets, a simulated set and a real set: both having >40,000 sequence fragments of ~1,000 kb and 9-fold coverage. In both instances, the majority of the fragments were assigned to one contig.

  23. Database Construction and Mining of Pathology Specimens Charu Gaur, Jennifer Szeto and Sotiris Mitropanopoulos Advisor: Dominique Hoelzinger, Translational Genomics Research Institute, Phoenix New technology allows hundreds of pathology specimens from human diseases to be sampled as .6mm punches of tissues that are arrayed into new “TMA” paraffin blocks; these blocks are then sectioned with microtomes to produce hundreds of slides containing hundreds of human tissue specimens (tissue microarrays, TMAs). Databases to support analysis of these high throughput TMAs will include information on diagnosis, treatment, disease response, and multiple images from follow-on studies linked to the coordinates of each of the hundreds of punches on the TMA. Data mining from the results of TMA experiments will allow text mining and image feature extraction. In this project, we present the requirements, design, and a prototype of a web based TMA database application.

  24. Simulating gene expression patterns during zebrafish embryo development Ei-Ei Gaw Advisor: Ajay Chitnis, National Institutes of Health, Maryland During embryo development, it is essential that relatively homogenous groups of cells undergo differentiation to form spatially different patterns and eventually take on many different functions. Intercellular communication and morphogen gradients are two aspects that have been shown to play roles in determining cell fate. To understand better how these activities result in pattern formation, we utilized the NetLogo programming environment to simulate these processes. We were able to observe visually the possible pattern formation of gene expression from activation and inhibition of genes, intercellular interactions (top figure), and the exposure to morphogen gradients (middle and bottom figures). The three developmental phenomena of zebrafish embryos we studied were neurogenesis, somitogenesis, and morphogenesis during anterior/posterior patterning. The model for neurogenesis examines how autocatalysis and lateral inhibition (notch signaling) are required to form stable patterns. In addition, we investigated to what extent the geometry of the domains and the initial noise in the ‘her’ gene expression help determine a cell’s fate. To study somitogenesis, we explored how transcription and translation delays coupled with notch pathway and independent moving wave-front activity of fgf may contribute to the oscillation and synchronization of gene expression during formation of somites. Lastly, we used our models to examine how time and concentration of a morphogen gradient may signal gene activation and eventually form patterns of cells with stable and differing gene expression. Although, there is much room to study in more detail the systems of equations and the numerical analysis we used, overall this method is a good addition to the traditional methods of studying how gene-expression patterns may develop.

  25. Gegenbauer High Resolution Reconstruction of Magnetic Resonance Imaging Jim Estipona and Prasanna Velamuru Advisors: Rick Archibald and Rosemary Renaut, Arizona State University A variety of image artifacts are routinely observed on MRI images. We concentrate on the Gibbs Ringing that manifests itself as bright or dark rings seen at the borders of abrupt intensity change on the images. Gegenbauer High Resolution Reconstruction method has been previously shown to eliminate the undesirable ringing at the jump discontinuities in MRI. Prior work concentrated on applying this reconstruction method on frequency data obtained from reconstructed images and not on raw K-space data obtained from the MRI scanning machine. Our project work concentrates on using the raw k-space data for reconstruction and aims at comparing the reconstructed images obtained to those reconstructed from other commonly used reconstruction methods.

  26. Robust Clustering of PET Data Prasanna Velamuru Advisors: Rosemary Renaut and Hongbin Guo, Arizona State University Clustering has recently been demonstrated to be an important preprocessing step prior to parametric estimation from dynamic PET images. Clustering, as a form of segmentation, is useful in improving the accuracy of voxel level quantification in PET images. Classical clustering algorithms such as hierarchical clustering and K-means clustering can be applied to dynamic PET data using an appropriate weighting technique. New variants of hierarchical clustering with different preprocessing criteria were developed by Dr. Guo recently. Our research focus is to validate these different algorithms with respect to their efficiency and accuracy. Different inter and intra cluster measures and statistical tests are considered to assess the quality of the different cluster results.

  27. Regularized Total Least Squares in a Support Vector Machine Sting Chen, Beryl Liu and Carol Barner Advisor: Rosemary Renaut, Arizona State University The goal was learn about Support Vector Machines, and explore use of the Regularized Total Least Squares statistical method in Support Vector Machine classification of microarray data. SVM is a special case of a Neural Net algorithm. It eliminates the rows (patient cases) of data items least valuable in determining the hyperplane until only key data items are left. Then these points are weighted, with heavier weights being given to those points that are close to the hyperplane boundary. These points are called Support Vectors. The new reduced, weighted space is called Feature Space. Finally, the trained program is given test data to see how well it can classify new patients as sick or normal.

  28. Software Development for Alzheimer's Disease Diagnosis and Research Guadalupe Ayala Advisor: Rosemary Renaut, Arizona State University We are interested in using PET to image brain activity in patients with Alzheimer’s disease (AD). In AD studies, one way to measure disease progression is by measuring Flouro-Deoxy-Glucose (FDG), which is an analog of glucose uptake in the brain. Studies which determine a local cerebral metabolic rate (LCMR) of FDG uptake in a region of interest have proved successful in understanding AD progression. More specific information may be obtained by estimating the individual kinetic parameters which describe FDG metabolism. In particular, it is believed that the individual FDG kinetic parameters may be used for early detection of AD. We had developed an application that is used to estimate the kinetic parameters in order to be able to focus towards understanding the spatial distribution of kinetic parameters in AD, and as well as towards developing a precise measure for utilization in the early detection of AD. It uses dynamic PET data obtained from one-dimensional, two-dimensional or three-dimensional measurements. It also allows the user to compare results with respect to the computational and estimation methods, filters, constraints, and input sources chosen by the user. Comparing the results could help find out what are the optimal estimation methods, what are the constraints or what is the best filtering technique that provides optimal results. Results could be compared with expected results according to theoretical information, and an educated decision can be made on what are the optimal computational methods to use for every situation. Figures: (top) sample input images (bottom) user interface

  29. BioNavigation: Selecting Resources to Evaluate Scientific Queries Kaushal Parekh Advisor: Dr. Zoé Lacroix, Arizona State University Answering biological queries involves the navigation of numerous richly interconnected scientific data sources. The BioNavigation system supports the scientist in exploring these sources and paths. Scientific queries can be posed at the conceptual level rather than being restricted to particular data sources. The BioNavigation interface provides a scientist with information about the available data sources and the scientific classes they represent. The user can graphically create a navigational query. BioNavigation will evaluate the query and will return a list of suitable paths through the data sources identified by the ESearch algorithm. ESearch searches a graph for paths satisfying a regular expression and ranks them using benefit and cost metrics. BioNavigation thus complements the traditional mediation approach and provides scientists with much needed guidance in selecting data sources and navigational paths.

  30. Evolution of Reaction Center in Photosynthetic Organisms: Conserved sequences in Photosystems Sumedha Gholba Advisor: Robert Blankenship, Arizona State University The study of reaction center proteins from both the photosystems and the primordial reaction centers from bacteria reveal the conservation of certain amino acids. The multiple sequence alignment and phylogenetic trees created from the proteins show high degree of conserved regions in photosystem-II and bacterial reaction center-II, implying common genealogy. Also, the similarity between photosystem-I heterodimers and reaction center I homodimer proteins, indicate them having a single precursor. It is seen that even though L-M and D1-D2 show similar evolution with gene duplication, L-M proteins show step-by-step diversification whereas the other branch bifurcates into D1s and D2s just at the end. The reaction center I homodimer is placed nearly at the center between the photosystem I and II portions of the tree, suggesting it to be an ancestral type of reaction center. The structural alignment of these proteins depicts five well aligned -carbon helices. Their sequences show good amount of similarity in the hydrophobic domains forming the transmembrane helices, which are the main functional regions. Figures: (top) phylogenetic tree (bottom left) structural alignment (bottom right) hydropathy plots

  31. Otolith Aging and AnalysisWilliam T. StewartAdvisors Dr. Rosemary Renaut Dr. Paul MarshArizona State University Scott Byan Kirk Young Marianne MedingArizona Game and Fish Department Otoliths, also known as earstones are paired calcified structures used for balance and hearing in teleost fish. An otolith is acellular and metabolically inert providing biologists with a record of exposure to both the temperature and composition of the ambient water. Otoliths provide an abundance of information ranging from temperature history, detection of anadromy, determination of migration pathways, stock identification, use as a natural tag, and most importantly age validation. Growth rings (annuli) on the otolith record the age and growth of a fish from birth to death. With the use of Matlab the goal of this project is to design a program that uses digital otolith images to semi-automate the aging process.  There are three main components to this task.

  32. Sequencing a Microbial GenomeMaulik Shah Advisors Dr. Jeffrey Touchman Dr. Rosemary Renaut Dr. Phillip Stafford Although many genomes are available for download today, the underlying technologies should not be taken for granted. By using shotgun sequencing techniques and a gauntlet of informatics, we are able to produce high-quality DNA sequence. We will first look at some of the robotics and chemistries of preparing DNA as samples for the sequencing instruments. Then we will look at the series of applications used in taking raw data signals, converting them to sequence and then finally assembling the data into a single genome. Highlighted will be some of the techniques used to speed the informatics processes as well as some of the challenges that informatics faces in processing data and assembling the genome.

  33. Supertree Analysis of the Plant Family Fabaceae Tiffany J. Morris Advisor Martin F. Wojciechowski School of Life Sciences, Arizona State University The “Tree-of-Life” is a national and international project to collect information about the origin, evolution, and diversity of organisms, with the goal of producing a tree of all life on Earth (Pennisi, 2003). The obstacles to achieving this goal are many. From questions related to the kinds and number of data to be used, to building that phylogeny, to the methodological and computational resources required to analyze the massive amounts of data expected to be necessary to bring this to fruition. The goal of this project is to obtain a Supertree for the plant family Fabaceae utilizing phylogenetic trees found in previously published studies.

  34. PROTEIN INTERACTION MAPPING: USE OF OSPREY TO MAP SURVIVAL OF MOTOR NEURON PROTEIN INTERACTIONS by Margaret BarnhartAdvisor: Dr. Ron Nieman Spinal Muscular Atrophy is one of the leading genetic causes of death in infants. In humans, the disease state is characterized by homozygous deletion of the telomeric copy of the survival of motor neuron gene (SMN1). The centromeric copy, SMN2, rescues lethality by producing a small amount of full-length SMN protein as its minor product. The SMN gene was first characterized in 1995, and research efforts to describe the molecular mechanisms of SMN protein in the cell have since revealed a highly complex set of functions and interactions for SMN. The large amount of protein-protein interaction data collected for SMN exceeds the limitations imposed by current methods of interaction visualization. Osprey allows a network representation of protein-protein interactions and has been used to describe the recorded sets of interactions of SMN. This method of interaction visualization allows relationships to be drawn between the functions of SMN and analogous proteins, clustering of interactions based on level of interaction or function, and ultimately, the derivation of clues to the critical function of SMN.

  35. Internships: Requirements 35 USDA 11/28/2005 • Internship is at least 400 hours , possible full time summer • Student must write a project report with required format • Student presents report to committee in oral exam • International students can work off campus using EIP program • Encourage students to seek projects outside AZ

  36. More Information: please contact renaut@asu.edu More information on projects: www.asu.edu/compbiosci Do you have projects? Internships? Jobs? 36 USDA 11/28/2005

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