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Biomarker Discovery 台大醫學院生化暨分生所 周綠蘋 Predicting Life Processes (storage) DNA Transcription Gene Expression Translation Proteins Environment Proteomics Biochemical Circuitry Metabolomics Phenotypes (Traits) High Throughput Technologies Genetic Microarray Proteomic Why Proteomics? Same Genome Different Proteome Biobarkers Biomarkers can play roles before cancer diagnosis (in risk assessment and screening), at diagnosis and after diagnosis (in monitoring therapy, selecting additional therapy and detecting recurrence). The BRCA1 (breast cancer 1) gene can be used in breast cancer, both for risk assessment and as a predictor of 10-year survival. Serum CEA is increased in colon, breast and lung cancer, but also in many benign conditions. AFP and b-HCG can be increased for many reasons, their reliability in assessing testicular cancer burden following diagnosis accounts for their integration into staging. PSA, cancer antigen 125, CA19-9, and other, similar markers often fails to correlate with tumour burden. Clinical Proteomics Answering Clinical Questions with Biomarker Patterns Clinical Applications of ProteinChip Technology Find candidate disease markers that can be used for prediction, diagnosis and/or monitoring of therapy. Dissect pathogenesis and mechanisms of disease. Identify markers that predict response to potential drugs (clinical stratification and outcome prediction). Identify markers that can be used to monitor drug toxicity. Limitations of Current Cancer Diagnostics Most of current diagnostics detect cancer after it has already spread to other parts of the body Currently single biomarkers are used for cancer diagnosis which have lower sensitivity and specificity Early detection of cancer improves treatment options and survival rates Novel high value multi-marker diagnostics can be discovered by profiling of serum and tissue samples ProteinChip® Technology ProteinChip Arrays and SELDI-TOF-MS Detection 1. Sample 2. Proteins goes directly onto the ProteinChip Array are captured, retained and purified directly on the chip (affinity capture ) 3. Surface is “read” by Surface-Enhanced Laser Desorption/Ionization (SELDI) 4. Retained proteins can be processed directly on the chip Laser Molecular Weight Sample 100 m2 to 1 mm2 ProteinChip Array Chemical, Biochemical or Biological Capture Surface ProteinChip® Array Technology Chemical Surfaces – Protein Expression Profiling: Hydrophobic Anionic Metal Ion Cationic Normal Phase Biological Surfaces – Protein Interaction Assays: PS-1 or PS-2 Antibody - Antigen Receptor - Ligand DNA - Protein ProteinChip® Array Preparation 1. Apply Crude Sample Proteins bind to chemical or biological “docking sites” on the ProteinChip Array surface through an affinity interaction 2. Wash ProteinChip Array Proteins that bind non-specifically and buffer contaminants are washed away, eliminating sample “noise” 3. Add Energy Absorbing Molecules or “Matrix” After sample processing the Array is dried and EAM is applied to each spot to facilitate desorption and ionization in the TOF-MS Detection Using the ProteinChip® System Retained proteins are “eluted” from the ProteinChip Array by Laser Desorption and Ionization Ionized proteins are detected and their mass accurately determined by Time-of-Flight Mass Spectrometry Detector TOF-MS 5000 Trace View 7500 10000 12500 10000 10000 12500 12500 10 5 5000 10 5000 Gel View 5 7500 0 7500 Map View 10000 5000 5000 12500 7500 7500 Weak cation exchange pH 4.5 wash 10000 12500 0 5000 5000 5000 5000 7500 7500 10000 10000 7500 7500 12500 12500 Weak cation exchange pH 10000 10000 4.5 wash 12500 12500 ProteinChip® Systems and Arrays 血清蛋白質指纹圖譜 Cancer Biomarker Discovery 2 9781.51 12500 Ret Map 1-4 Patient 9234.28 9975.5 9227.03 8711.41 8906 10000 8098.46 9404.62 7912.93 7516.78 7500 7699.22 4 5000 6229.73 6422.12 6615.94 2500 3028.2+H 6 4469.89 0 3994.89 2 8908.66 7500 7700.05 7907.11 8092.4+H 4 6226.76 6419.11 6605.27 6 5000 4843.6+H 2500 4467.6+H 3997.86 A Real Example 10000 12500 Control Ret Map 1-3 0 2500 5000 7500 10000 12500 Ret Map 1-4(2) GelViewTM Ret Map 1-3(2) 7.5 5 Difference map comp1 2.5 0 -2.5 2500 2500 5000 5000 7500 7500 10000 10000 12500 12500 6 4 2 0 2500 5000 2500 2500 5000 5000 5000 2 0 2500 4469.89 5000 7500 5000 5000 7500 7500 7500 7500 7500 7500 9404.62 9234.28 9975.5 8711.41 9781.51 9234.28 9227.03 8906 8908.66 9404.62 8908.66 8098.46 7500 7700.05 7907.11 8092.4+H 7500 7912.93 3997.86 6226.76 6419.11 6605.27 4843.6+H 4467.6+H 9975.5 9781. 9227.03 8906 8711.41 7700.05 7912.93 7907.11 8092.4+H 6226.76 6419.11 7516.78 6605.27 8098.46 7516.78 7699.22 5000 6229.73 6422.12 6615.94 5000 7500 7699.22 6 4467.6+H 6229.73 6422.12 4843.6+H 6615.94 3997.86 2500 3994.89 4 3028.2+H 4469.89 3994.89 A real example in cancer 5000 10000 10000 10000 10000 10000 10000 2.5 10000 10000 10000 10000 12500 R 12500 Patient Ret Map 1-4 12500 12500 12500 Control R Ret Map 1-3 12500 Ret Map 1-4(2) 7.5 -2.5 12500 12500 12500 12500 R GelViewTM Ret Map 1-3(2) R 5 comp1 Difference map 0 c The Impact of Multiple Biomarkers & Biomarker Patterns Software Peak A Criteria Peak B Criteria Cancer Normal Peak C Criteria Cancer ID the biomarkers, Link to biology of disease Normal Sensitivity Specificity (“True Positives”) (“True Negatives”) Single Marker 65% 35% Biomarker Pattern 97% 83% Faster Biomarker Discovery 20.0 5000 7500 10000 12500 15000 15.0 100 75 50 25 0 Control 10.0 5.0 100 75 50 25 0 Control 100 75 50 25 0 Control 100 75 50 25 0 Treated Control Groups Treated 20.0 15.0 10.0 10 Control 5.0 0 100 75 50 25 0 10 100 75 50 25 0 10 Control 0 Treated 10 Control Groups Treated Control 0 Treated 0 Treated 10 Treated 0 5000 7500 10000 12500 10 Treated 15000 0 11000 11500 12000 12500 13000 Under specific bind/wash conditions, look for statistically significant up and down regulation of protein signals ProteinChip® Array Application: Breast Cancer Biomarker Discovery Background Breast cancer is the most common form of cancer (other than skin cancer) in women 200,000 new cases of breast cancer detected each year of which 40,000 will die Although mammography increased awareness, its effectiveness is still being investigated CA15.3, a serum biomarker is being is being tested for use in breast cancer detection but it has low sensitivity (23%) and specificity (69%) Multiple markers with higher specificity and sensitivity can improve early detection of breast cancer & save lives Clinical Design 103 Breast cancer sera 4 Stage 0 38 Stage I 37 Stage II 24 Stage III 66 Non-cancer control sera 25 Benign breast disease 41 Healthy Control Representative Spectra of Selected Biomarkers Distribution of BC3 across all diagnostic groups 1.6 BC3 (8.9KD) 1.2 0.8 0.4 0 -0.4 Healthy Donor 100% Benign 76% Specificity = 91% Stages 0-I 88% Stage II 78% Stage III 92% Sensitivity = 85% Distribution of the composite index across all diagnostic groups LR Composite Index 1.2 0.6 0 -0.6 -1.2 Healthy Donor 100% Benign 85% Specificity = 91% Stages 0-I 93% Stage II 85% Stage III 94% Sensitivity = 93% Improved cancer diagnostic using multiple SELDI markers 1 + Sensitivity 0.8 0.6 + 0.4 Composite Index (AUC=0.972) BC1 (AUC=0.846, p<0.0001) BC2 (AUC=0.795, p<0.0001) BC3 (AUC=0.934, p<0.01) p-values: AUC comparison of indiv. biomarker against composite index 0.2 0 0 0.1 0.2 0.3 0.4 0.5 0.6 1-Specificity 0.7 0.8 0.9 1 Breast Cancer Biomarker Study Conclusions Specificity (True Negative Ratio) Sensitivity (True Positive Ratio) Single Marker CA15.3 Multiple Markers (BC1-3) by SELDI Profiling 69% 91% 23% 93% Improving Clinical Confidence Multi-marker analysis Current applications of single marker assays Confirmation of diagnosis Limited monitoring Potential applications of multi-marker assays Early detection Correct diagnosis Staging/severity assessment Treatment targeting Prognosis Real-time monitoring of treatment response Clinical trial stratification to aid assessment of efficacy and side-effects Sensitive, full spectrum, toxicology assessment SELDI血清蛋白質指纹圖譜-癌症的早期診斷 0 5000 10000 15000 N 0 5000 10000 15000 0 5000 10000 15000 0 5000 10000 15000 0 5000 10000 15000 0 5000 10000 15000 0 5000 10000 15000 0 5000 10000 15000 0 5000 10000 15000 00 5000 5000 10000 10000 15000 15000 A B C D E F G H A. 肝癌 B. 肺癌 C. 胃癌 D. 腸癌 E. 卵巢癌 F. 乳腺癌 G. 胰腺癌 H. 前列腺癌 Cancer Markers 肝癌: 甲胎蛋白 AFP (靈敏度 42%) SELDI (靈敏度 91%, 特異性 89%) 肺癌: NSE (靈敏度 <50%) SELDI (靈敏度 82%, 特異性 95%) 胃癌: 癌胚抗原 CEA (靈敏度 <50%) SELDI (靈敏度 91%, 特異性 94%) 前列腺癌: PSA (靈敏度 <50%) SELDI (靈敏度 83%, 特異性 97%) 乳腺癌: 癌抗原 CA153 (靈敏度 23%) SELDI (靈敏度 93%, 特異性 91%) 卵巢癌: 癌抗原 CA125 (靈敏度 34%) SELDI (靈敏度 99%, 特異性 99%) 腸癌: 癌胚抗原 CEA (靈敏度 47%) SELDI (靈敏度 83%, 特異性 92%) 胰腺癌: CA199 (靈敏度 <50%) SELDI (靈敏度 85%, 特異性 82%) Bladder (urine cytology )(靈敏度 40%) SELDI (靈敏度 80%, 特異性 86%) NPC SELDI (靈敏度 92%, 特異性 97%) Protein Based Drug Discovery Therapeutic Drugs Inhibitors of HIV Replication ADARC (David Ho, Liqui Zhang and colleagues) Ciphergen Biomarker Discovery Center Science 2002 HIV Infects Cells That Express CD4 Receptors CD4 receptors are found in T-cells, macrophages and dendritic cells Two co-receptros of HIV are Known as CCR5 & CXR4 R5 strains of HIV bind CCR5 Found on the surface of Macrophages & dendritic cells X4 strains of HIV bind CXR4 Found on T-cells CAF suppresses viral production by infected cells but does not kill the infected CD-4+ cell CD4 cell Viral peptide antigens expressed on cell surface in MHC-I molecules CD4 cell CAF secreted by CD8+ T cells HIV Infects CD4+ helper Tcell CD4 cell CD8+ cells suppress HIV production Characteristics of CD8+ Anti-viral Factor (CAF) Present in long term non-progressors (LTNP) Not usually detected in normally progressing AIDS patients Stable at high temperatures (560 C for 30 min or 1000 C for 10 min) Stable at low pH (conditions ranging from pH 2-8) Low MW (under 10 KD) Resistant to trypsin; sensitive to Staphylococcus V8 protease Lacks identity to other known cytokines Inhibits HIV replication regardless of viral phenotype or tropism Discovery of a cluster of small proteins secreted by stimulated CD8+ T cells: LTNP-3 LTNP-3 stimulated 3371.9 * * 7815.0 3442.5 LTNP-3 unstimulated * EC-SELDI-MS Platform Protein Identification Using ProteinChip Interface Protein Sequencing by Collision Induced Dissociation Directly from the ProteinChip Surface Collision Cell ProteinChip Ion Guide Scanning Quadrupole Pulser Detector Microchannel Plates UV Beam Ion Mirror Tandem Mass Spectrometry - MS/MS Ions are produced from all peptides in the sample in ion source Only one type of peptide passes through MS1 This peptide collides with gas molecules in Q2 and fragments The fragments from this peptide are analyzed in MS2 This MS/MS spectrum provides the amino acid sequence of this peptide MS1 MASS FILTER Q2 MS2 Collision Cell MASS FILTER ION DETECTOR ION SOURCE PRECURSOR ION SEPARATION MS Spectrum NEUTRAL GAS COLLISIONS PRODUCT ION SEPARATION MS/MS Spectrum MS/MS Spectrum of Peptides - amino acid sequencing from peptide fragments zn-1 zn-2 yn-1 xn-1 z2 z1 yn-2 +2H xn-2 y1 +2H x1 +2H NH2_ CH_ CO_ NH_ CH_ CO_ NH_ CH_ CO……...... NH_ CH_ CO_ NH_ CH_ CO2H R1 R2 a1 R3 Rn-1 a2 b1 +2H c1 Rn an-1 b2 +2H c2 +2H bn-1 +2H cn-2 cn-1 - y and b ions predominate in low energy MS/MS of tryptic peptides - mass difference between ions of same type (i.e. - y1 and y2) correspond to amino acid molecular weight CID of tryptic digest fragment 1216.63 Copyrighted by Science, 2002 MS-Tag Search Results of 1216.6 tryptic fragment CID The peptide fragment is identical to a region of human a-defensin-1, -2 and -3 10 20 30 Human a-defensin-1 ACYCRIPACIAGERRYGTCIYQGRLWAICC Human a-defensin-2 -CYCRIPACIAGERRYGTCIYQGRLWAICC Human a-defensin-3 DCYCRIPACIAGERRYGTCIYQGRLWAICC What is known about human a -defensins? Antibiotic peptides produced by neutrophils They display cationic properties Hill et al., Science 1991 Multidimentional Protein Profiling 1. Surface type SO3 SO3 SO3 NR3 NR3 NR3 NR3 Me(II) Me(II) Me(II) SO3 0.15 M NaCl 1.0 M NaCl Buffer pH 7 Buffer pH 9 3 M urea 6 M urea 0.1% Tween 20 0.1% CHAPS 7.5 3. Native Mass 5 2.5 0 2000 4000 6000 8000 A standard experiment to characterize a protein or protein mixture would be to choose a set of array surface types and washing conditions. Depending on the chosen surface and/or conditions only a subset of proteins in the complex biological sample’s protein mixture will bind in a specific manner. Which proteins are bound is analysed in the spectra obtained from the MS readout. PatternTrack® Process Cancer Research 64, 5882–5890, August 15, 2004 Three Biomarkers Identified from Serum Proteomic Analysis for the Detection of Early Stage Ovarian Cancer Zhen Zhang, Robert C. Bast, Jr., Yinhua Yu, Jinong Li, Lori J. Sokoll, Alex J. Rai, Jason M. Rosenzweig, Bonnie Cameron, Young Y. Wang, Xiao-Ying Meng, Andrew Berchuck, Carolien van Haaften-Day, Neville F. Hacker, Henk W. A. de Bruijn, Ate G. J. van der Zee, Ian J. Jacobs, Eric T. Fung, and Daniel W. Chan Use of SELDI for discovery, validation, and identification of biomarkers for the detection of early stage ovarian cancer Study Design Discovery 503 serum samples were collected at four medical institutions for discovery phase. 153 patients with invasive epithelial ovarian cancer 42 with other ovarian cancers 166 with benign pelvic masses 142 healthy women Validation and Multi-Variate Pattern Analysis A multi-variate pattern including three biomarkers and CA-125 was determined for diagnosis of early stage (I/II) ovarian cancer. Purification and Identification Cross validation with samples from different medical institutions was performed to ensure biomarker association with ovarian cancer. Three biomarkers were purified and further identified using SELDI technology. Assay 142 independently archived samples were collected at a fifth medical institute. Samples were tested using an independent immunoassay to validate the biomarker panel. Multi-Center Study Design Groningen Univ Hosp Ca I/II (20) Discovery Set 2 H. Control (30) Benign (50) Duke Univ Med Cntr Ca I/II (35) Discovery Set 1 Selected Biomarkers and CA125 H. Control (49) Royal Hosp for Women Ca I/II (35) Test Set Ca: 29, HC: 46 Multivariate Model Derivation Ca III/IV (2) Benign (90) Training Set Ca: 28, HC: 33 Cross-Validation Multivariate Predictive Models Candidate Biomarkers Ca III/IV (103) Benign (26) MD Anderson Ca Cntr H. Control (63) Independent Validation Validation Set 1 Johns Hopkins Med Inst Ca III/IV (41) Breast Ca (20) Colon Ca (20) Prost. Ca (20) H. Control (41) Immunoassay Test Validation Set 2 Protein Identification Selected Biomarkers and CA125 Identified Biomarkers Independent Validation Validation Set 1 Automated Biomarker Discovery using Pattern Track™ Technology Copper Ion Anion Exchange Hydrophobic pH9+FT pH7 Denatured Serum Sample pH5 pH4 Replicate 1 Replicate 2 Replicate 3 Cation Exchange Randomized profiling of replicates on 4 arrays using Biomek® 2000 robot pH3 organic Automated pre-fractionation using 96-well microplates containing anion exchange chromatographic sorbent ProteinChip System SELDI TOF-MS Calibrate Baseline Subtract Normalize 25000 50000 75000 25000 50000 75000 20 15 10 5 0 Multi-variate Analysis SELDI Analysis of Fractionated Serum from Ovarian Cancer Patients and Healthy Women Fraction pH4, IMAC-Cu Fraction pH9, IMAC-Cu Stage I ovarian cancer patient 1 Stage I ovarian cancer patient 2 Healthy woman 1 Healthy woman 2 m/z 12,828 m/z 28,043 m/z 3,272 ProteinChip Assisted Protein Purification Strategy NP20 ProteinChip Arrays Identification of Three Biomarkers Differentially Expressed Peaks 3,272 Da Up-regulated in ovarian cancer samples 12,828 Da Down-regulated in ovarian cancer samples 28,043 Da Down-regulated in ovarian cancer samples Biomarker Identity Fragment of inter-a-trypsin inhibitor, heavy chain H4 Truncated form of transthyretin Apolipoprotein A1 Model Comparison Using Receiver Operating Characteristic (ROC) Curves 1.0 0.9 0.8 Sensitivity 0.7 0.6 0.5 — CA125, AUC=0.770 0.4 — 3 Markers + CA125, AUC=0.885, p=0.023 — 3 Markers, AUC=0.920, p=0.028 0.3 0.2 0.1 0 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1.0 1 - Specificity Independent validation set: stages I/II epithelial ovarian cancer vs. healthy controls. OvaRI assay clinical trial Diagnostic Markers for Tuberculosis Lancet 2006; 368: 1012–21 Serum 179 TB 170 Controls A key advantage of SELDI-ToF MS lies in the discovery phase, which can profile large numbers of samples in a high throughput fashion, and by using whole signatures, reduce problems with individual variability in peak detection. CM10 ProteinChip for protein profiling Multiple Biomarkers ProteinChip® Biomarker Discovery – Multi-marker Discovery, Validation & Screening OUTPUT Current Discovery Methods Low Efficacy Single Markers Ciphergen ProteinChip Technology High Efficacy Multi-markers 0 0.5 Biomarker Discovery/ID 1 Ab Dev. 1.5 Assay Dev. 2 2.5 Validation 3 HT Screen 3.5