176 APPENDIX B. CURRICULUM VITAE
References Aebersold, R. and Mann, M. (2003). <strong>Mass</strong> spectrometry-based proteomics., Nature 422(6928): 198–207. Aittokallio, T., Nevalainen, O., Ojala, P. and Nevalainen, T. J. (2001). Automated detection <strong>of</strong> differentially expressed fragments in mRNA differential display, Electrophoresis 22(10): 1935–1045. Aldous, D. (1983). Exchangeability and related topics, Vol. 1117 <strong>of</strong> Lecture Notes in Math - Ecole d’ete de probabilites de Saint-Flour, Springer, <strong>Berlin</strong>. Allcock, W., Bester, J., Bresnahan, J., Chervenak, A., Liming, L., Meder, S. and Tuecke, S. (September 2002). Gridftp protocol specification, GGF GridFTP Working Group Document. America, A., Cordewener, J., van Geffen, M., Lommen, A., Vissers, J., Bino, R. and Hall, R. (2006). Alignment and statistical difference analysis <strong>of</strong> complex peptide data sets generated by multidimensional lc-ms, Proteomics 6: 641–653. Anderson, D. P. (2004). Boinc: a system <strong>for</strong> public-resource computing and storage, pp. 4–10. Anderson, T. W. and Darling, D. A. (1952). Asymptotic <strong>the</strong>ory <strong>of</strong> certain ”goodness <strong>of</strong> fit” criteria based on stochastic processes, The Annals <strong>of</strong> Ma<strong>the</strong>matical Statistics 23(2): 193–212. Anthony, D. (1996). A review <strong>of</strong> statistical methods in <strong>the</strong> journal <strong>of</strong> advanced nursing., J Adv Nurs 24(5): 1089–1094. Arkin, E. M., Chew, L. P., Huttenlocher, D. P., Kedem, K. and Mitchell, J. S. B. (1991). An efficiently computable metric <strong>for</strong> comparing polygonal shapes, IEEE Trans. Pattern Anal. Mach. Intell. 13(3): 209–216. Asadzadeh, P., Buyya, R., Kei, C., Nayar, D. and Venugopal, S. (2006). Global Grids and S<strong>of</strong>tware Toolkits: A Study <strong>of</strong> Four Grid Middleware Technologies, Wiley Series on Parallel and Distributed Computing, Wiley Press, <strong>New</strong> Jersey, USA, chapter 22, pp. 431–459. Baggerly, K. A., Morris, J. S., Wang, J., Gold, D., Xiao, L.-C. and Coombes, K. R. (2003). A comprehensive approach to <strong>the</strong> analysis <strong>of</strong> matrix-assisted laser desorption/ionization-time <strong>of</strong> flight proteomics spectra from serum samples., Proteomics 3(9): 1667–1672. Bakan, D. (1970). The test <strong>of</strong> significance in psychological research, Butterworth, NY. 177
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New Statistical Algorithms for the
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Contents Acknowledgments . . . . .
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New Statistical Algorithms for the
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Extended Abstract English Version M
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German Version Das Gebiet der Prote
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Chapter 1 Introduction and Survey 1
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1.2. GOALS, OBJECTIVES AND TASKS 7
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Chapter 2 Preliminaries 2.1 Topic O
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2.2. AN EXAMPLE 21 successes. We ca
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Chapter 3 Mathematical Modeling and
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3.2. INTRODUCTION TO MALDI TOF MS 2
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3.3. PREPROCESSING 31 mix (external
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Chapter 4 (Bio-)Medical Application
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4.3. STUDY RESULTS 83 � kNN (gen.
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5.1. INTRODUCTION 107 of and config
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5.1. INTRODUCTION 109 particular pr
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5.2. THE QUASI AD-HOC (QAD) GRID 11
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- Page 185 and 186: REFERENCES 179 Breiman, L. (2001).
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- Page 193 and 194: REFERENCES 187 Kuijpens, J. L. P.,
- Page 195 and 196: REFERENCES 189 McLachlan, S. M. and
- Page 197 and 198: REFERENCES 191 Platt, J. C. (1999).
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