IEEE Symposium on Computer-Based Medical Systems (IEEE CBMS 2006) Marriott Salt Lake City City Center, Salt Lake City, Utah, USA, June 22-23, 2006. Special Track Computational Proteomics: Management and Analysis of Proteomics Data Special Track Website: http://bioinformatics.unicz.it/cbms2006/ CALL FOR PAPERS Proteomics is a fastly developing area of biochemical investigation. The basic aim of proteomic analysis is the identification of specific protein patterns from cells, tissues and biological fluids related to physiological or pathological conditions. It provides a different view as compared to gene expression profiling, which does not evaluate post-transcriptional, post-translational modifications as well as protein compartimentalization and half-life changes (for instance ubiquitination and proteasome-driven degradation). All these characteristics make the protein profile much more complex but more informative compared to gene expression profiling. Several approaches have been used to perform proteomic analysis; among them, technologies based on Mass Spectrometry (MS) have revolutionized proteomics and are heavily used to make high-throughput measurements for identifying macromolecules in a specific compound. Recently, Liottas group at the National Institutes of Health, USA, using SELDI-TOF mass spectrometry, has identified in the serum of patients with ovarian cancer a cluster pattern that completely segregated cancer from non-cancer. These results, characterized by a high degree of sensitivity and specificity, represent an extraordinary step forward in the early detection and diagnosis of ovarian cancer and justify a prospective population-based assessment of proteomic pattern technology as a screening tool for all stages of ovarian cancer in high-risk and general populations. Similar studies performed on different types of neoplastic diseases have confirmed the importance of identification of molecular profiles or signatures (either at RNA or protein level) as a powerful tool for innovative diagnostic and therapeutic approaches. This Special Track is designed to bring together computer scientists, biologists and clinicians for exploring the current state-of-the-art research taking place in all aspects of computational proteomics, from basic science to clinical practice. The track intends to provide a forum for the presentation of original research, valuable software tools (basic algorithms, modelling, analysis, and visualization tools, databases), and clinical fallouts, on topics of importance to computational proteomics, with special emphasis on MS-based approaches. Matrix-Assisted Laser Desorption/Ionisation Time Of Flight (MALDI-TOF), Surface-Enhanced Laser Desorption/Ionization Time Of Flight (SELDI-TOF), and Liquid Chromatography (LC-MS/MS) are the main techniques. They separate gas phase ions according to their m/Z (mass to charge ratio) values producing huge volumes of data. MS output is represented, as a (large) sequence of value pairs, containing a measured intensity, which depends on the quantity of the detected biomolecules and a mass to charge ratio m/Z, which depends on the molecular mass of detected biomolecules. A MS experiment usually generates one or more datasets, said spectra, that contains a huge quantity of measurements (m/Z, intensity) said peaks. MS-based proteomics requires bioinformatics methods that can make biological inferences from both the raw experimental data sources (e.g., peptide identifications and mass measurements) and the resulting identifications. Prior to be analysed, spectra need to be cleaned, pre-processed, organized, and stored in an efficient way. Moreover, standard formats enabling laboratory interoperation and experiment replication are needed. The Human Proteome Organization-Proteomic Standard Initiative (HUPO-PSI) is defining novel standards for proteomics data and experiments such as mzData to store spectra data as well as metadata information about proteomics experiments, and mzIdent capturing parameters and results of search engines such as Mascot and Sequest. On the other hand, alone or in combination with MS, fluorescence-based techniques are also used for proteomics analysis. Differential display proteomics increases the information content and throughput of proteomics studies through multiplexed analysis. Main approaches to differential display proteomics such as Difference Gel Electrophoresis (DIGE), Multiplexed Proteomics (MP), and Isotope-Coded Affinity Tagging (ICAT), greatly enhance the applicability of the Two-Dimensional Gel Electrophoresis technique (2D-Gel). Representation, organization and analysis of fluorescence-based proteomics data, such as 2D-Gel data, are also important topics. Genomic and Proteomic data need to be analyzed in combination. The full realization of the concept of genomic medicine, where genomics and proteomics are used to improve healthcare, requires the integration of knowledge from biology and medicine. To exploit the data available in research centres and care facilities new frameworks integrating data, computational methods and tools have to be provided, that bridge bioinformatics, biology and medicine. The semantic integration and further analysis of genomic, proteomics and clinical data is a first step toward the deployment of novel biomedical applications involving research-oriented competence centres, specialized proteomics facilities, and health centres where clinical guidelines are applied. Key issues to be faced when considering integrated management and analysis of MS proteomics data are: * spectra data models and databases; * spectra pre-processing; * spectra analysis (e.g. peptide identification, protein identification, etc.); * spectra visualization; * integration and interaction with biological data banks (e.g. sequence, structure, and peptide data banks); * data models and databases for integrated genomics and proteomics data; * integrated analysis of genomic and proteomic data with clinical/instrumental findings; * identification of new biomarkers for early diagnosis and tailored therapeutics; TOPICS OF INTEREST Methods, algorithms and techniques for proteomics data organization, storage and analysis, as well as the use of proteomics methods and techniques in clinical practice are the key topics of this Special Track. Whatever technique being used, proteomics data are huge, involve heterogeneous platforms and require high performance computing, so presentation of high performance and Grid-based computational methods, as well as semantic-rich methods for in silico workflow composition are welcomed. Examples of areas of interest include, but are not restricted to: * Spectra data models and databases * Spectra-related data banks (e.g. Mascot, Sequest) * Spectra pre-processing algorithms * Peptide/protein identification * Protein-protein interactions * Data Mining techniques for proteomics data * Statistical analysis of proteomics data * Image analysis and visualization of proteomics data * 2-D Gel proteomics data and analysis * Virtual Proteomics Laboratory * Data integration and proteomics * Technologies and models to store phenotype, genotype and proteotype data; * Integration of proteomics and clinical data for diagnosis and treatment * Application of proteomics methods in clinical practice * Workflow of proteomics experiments * Knowledge Management and ontologies in proteomics * Parallel and Grid-based computational proteomics * Standards in proteomics IMPORTANT DATES: January 31, 2006 Deadline for paper submissions March 1, 2006 Notification of acceptance April 5, 2006 Final camera-ready paper (6 pages, maximum) due April 8, 2006 Pre-registration deadline May 22, 2006 Hotel room reservations due June 22-23, 2006 Conference PAPER SUBMISSION Unlike workshops, where position papers and reports on initial and intended work are appropriate, papers selected for a special track should report on significant unpublished work suitable for publication as a conference paper. Interested authors should submit a 3-6 pages manuscript (or approximately 1500-3000 words) clearly describing background, goals, methods, results and a listing of primary references. Presented material should include sufficient detail to enable the program committee in reviewing the article. The article should be composed on US Letter page format and submitted as a PDF or Microsoft Word document. The article review is double blind and as such personally identifying information is discouraged. Author name and address should be withheld from the article text for review purposes. Article text should be in font size of at least 10 point. Authors should indicate the Special Track title in their submissions. All submissions including special track papers will be done electronically via the CBMS web submission system, which will be open approximately one month before the deadline. Please note that the format of IEEE CBMS 2006 proceedings will be the IEEE Computer Science Press 8.5x11-inch format, available at: ftp://pubftp.computer.org/press/outgoing/proceedings/8.5x11%20-%20Formatting%20files For more details please see the website of IEEE CBMS 2006: http://cbms2006.ece.byu.edu/how.html#submission TRACK CHAIRS * Mario Cannataro (University Magna Gr�ia of Catanzaro, Italy) * Giovanni Cuda (University Magna Gr�ia of Catanzaro, Italy) * Pierangelo Veltri (University Magna Gr�ia of Catanzaro, Italy) PROGRAM COMMITTEE (provisional) * Alberto Apostolico (Georgia Institute of Technology, USA, and University of Padova, Italy) * Gerard Cagney (Conway Institute, University College Dublin, Ireland) * Tim Clark (Harvard Medical School - MassGeneral Institute for Neurodegenerative Disease, USA) * David De Roure (University of Southampton, UK) * Giuseppe Di Fatta (ICAR-CNR, Italy, and University of Konstanz, Germany) * Marco Gaspari (University Magna Gr�ia of Catanzaro, Italy) * Carole Goble (University of Manchester, UK) * Concettina Guerra (University of Padova, Italy) * Des Higgins (Conway Institute, University College Dublin, Ireland) * Hasan Jamil (Wayne State University, Michigan, USA) * Maria Mirto (University of Lecce, Italy) * Giovanni Morrone (University Magna Gr�ia of Catanzaro, Italy) * Luigi Palopoli (University of Calabria, Italy) * Helen Parkinson (European Bioinformatics Institute, UK) * Stephen Pennington (Conway Institute, University College Dublin, Ireland) * Emmanuel F. Petricoin (National Cancer Institute, USA) * Omer F. Rana (Cardiff University, UK) * Roberto Tagliaferri (University of Salerno, Italy) * Domenico Talia (University of Calabria, Italy) * Chris Taylor (European Bioinformatics Institute, UK) * Rosa Terracciano (University Magna Gr�ia of Catanzaro, Italy) * Gordon R. Whiteley (National Cancer Institute, USA)