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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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1.2. GOALS, OBJECTIVES AND TASKS 9
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Chapter 2 Preliminaries 2.1 Topic O
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2.1. TOPIC OVERVIEW 13 Figure 2.1.1
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2.1. TOPIC OVERVIEW 15 completeness
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2.2. AN EXAMPLE 17 (a) Opera A (b)
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2.2. AN EXAMPLE 19 Figure 2.2.6: Tw
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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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3.2. INTRODUCTION TO MALDI TOF MS 2
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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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3.3. PREPROCESSING 33 Figure 3.3.5:
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3.3. PREPROCESSING 35 Figure 3.3.7:
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3.4. HIGHLY SENSITIVE PEAK DETECTIO
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3.4. HIGHLY SENSITIVE PEAK DETECTIO
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3.4. HIGHLY SENSITIVE PEAK DETECTIO
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3.5. PEAK DETECTION IN 2D MAPS 43
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3.6. PEAK REGISTRATION (ALIGNMENT)
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3.6. PEAK REGISTRATION (ALIGNMENT)
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3.6. PEAK REGISTRATION (ALIGNMENT)
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3.7. IDENTIFYING POTENTIAL FEATURES
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3.7. IDENTIFYING POTENTIAL FEATURES
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3.7. IDENTIFYING POTENTIAL FEATURES
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3.8. EXTRACTING FINGERPRINTS 57 Fig
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3.8. EXTRACTING FINGERPRINTS 59 FID
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3.8. EXTRACTING FINGERPRINTS 61 Dim
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3.9. COMPLEXITY ANALYSIS 63 3.9 Com
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Chapter 4 (Bio-)Medical Application
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4.1. DATA USED 67 4.1.2 Serum Data
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4.2. STATISTICAL REMARKS 69 1. Vali
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4.2. STATISTICAL REMARKS 71 Molar v
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4.2. STATISTICAL REMARKS 73 � Fir
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4.2. STATISTICAL REMARKS 75 Let ˆ
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4.2. STATISTICAL REMARKS 77 the boo
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4.3. STUDY RESULTS 79 Figure 4.3.3:
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4.3. STUDY RESULTS 81 Figure 4.3.4:
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4.3. STUDY RESULTS 83 � kNN (gen.
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4.3. STUDY RESULTS 85 d(x, θi) =
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4.3. STUDY RESULTS 87 pairs of obje
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4.3. STUDY RESULTS 89 � “Peptid
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4.4. IDENTIFICATION OF PROTEOMIC FI
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4.4. IDENTIFICATION OF PROTEOMIC FI
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4.4. IDENTIFICATION OF PROTEOMIC FI
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4.5. IDENTIFICATION OF PROTEOMIC FI
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- Page 179 and 180: Appendix A Implementation Details T
- Page 181 and 182: Appendix B Curriculum Vitae Name Ti
- Page 183 and 184: References Aebersold, R. and Mann,
- Page 185 and 186: REFERENCES 179 Breiman, L. (2001).
- Page 187 and 188: REFERENCES 181 Downard, K. M. and M
- Page 189 and 190: REFERENCES 183 Gillette, M. A., Man
- Page 191 and 192: REFERENCES 185 Huyghe, E., Muller,
- 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).
- Page 199 and 200: REFERENCES 193 Stone, M. (1974). Cr
- Page 201 and 202: REFERENCES 195 Washburn, M. P., Wol