| Literature DB >> 23071848 |
Men Long Liong1, Chun Ren Lim, Hengxuan Yang, Samuel Chao, Chin Wei Bong, Wing Seng Leong, Prashanta Kumar Das, Chit Sin Loh, Ban Eng Lau, Choon Geok Yu, Edie Jian Jiek Ooi, Robert K Nam, Paul D Allen, Graeme S Steele, Karl Wassmann, Jerome P Richie, Choong Chin Liew.
Abstract
PURPOSE: Prostate cancer is a bimodal disease with aggressive and indolent forms. Current prostate-specific-antigen testing and digital rectal examination screening provide ambiguous results leading to both under-and over-treatment. Accurate, consistent diagnosis is crucial to risk-stratify patients and facilitate clinical decision making as to treatment versus active surveillance. Diagnosis is currently achieved by needle biopsy, a painful procedure. Thus, there is a clinical need for a minimally-invasive test to determine prostate cancer aggressiveness. A blood sample to predict Gleason score, which is known to reflect aggressiveness of the cancer, could serve as such a test.Entities:
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Year: 2012 PMID: 23071848 PMCID: PMC3461021 DOI: 10.1371/journal.pone.0045802
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Clinical characteristics of the patient cohorts for microarray hybridization.
| North American Site | Asian Site | ||||||
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| 124 | 42 |
| 40 | 49 | ||
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| 67 | 71 | 0.23 |
| 65.5 | 73 | 0.0001 |
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| 26.24 | 26.6 | 0.53 |
| NA | NA | |
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| 13 (10.5%) | 4(9.5%) | 1.00 |
| 0 | 0 | 1.00 |
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| White | 104 (83.9) | 32 (76.2) | 0.26 | Chinese | 29 (72.5%) | 35 (71.4%) | 1.00 |
| Asian | 11 (8.9) | 5 (11.9) | 0.38 | Indonesian | 4 (10.0%) | 5 (10.2%) | 1.00 |
Figure 1Gene identification and validation process.
Gene Identification using Affymetrix U133Plus 2.0 GeneChip oligonucleotide arrays was carried out in Toronto, Canada, and Penang, Malaysia, in parallel. In Toronto, analysis was conducted on 166 samples (G8 = 42, G0 = 124). At the Malaysian site, 89 samples were profiled (49 G8, 40 G0). From microarray data analysis, 85 genes identified at both sites were tested in a series of quantitative real-time PCR verification studies. Twenty genes were verified through a Cohort I study on several cohorts of EDTA samples (total 245). These 20 genes were further tested in a Cohort II series of experiments on PAXgene samples (total 182), executed independently in Penang, Malaysia. 10 of the genes were verified, of which 7 genes became our final biomarkers and also confirmed in another independent sample set-Cohort III test (total 121).
High grade prostate cancer (Gleason score 8 and above) biomarker gene list and differential expression ratio in Cohort II verification sample set (80 disease and 102 controls).
| Gene Name# | Description | Sequence Accession ID | Expression Fold Change | Expression P Value | Expression AUC |
| CRTAM | cytotoxic and regulatory T cell molecule | NM_019604 | 1.58 | 3.46E-05 | 0.67 |
| CXCR3 | chemokine (C-X-C motif) receptor 3 | NM_001504 | 1.59 | 3.38E-05 | 0.66 |
| FCRL3 | Fc receptor-like 3 | NM_052939 | 1.61 | 2.85E-06 | 0.69 |
| KIAA1143 | KIAA1143 | NM_020696 | 1.44 | 1.82E-07 | 0.73 |
| KLF12 | Kruppel-like factor 12 | NM_007249; NM_016285 | 1.66 | 8.16E-07 | 0.71 |
| TMEM204 | transmembrane protein 204 | NM_024600 | 1.52 | 8.40E-05 | 0.67 |
| SAMSN1 | SAM domain, SH3 domain and nuclear localization signals 1 | NM_022136 | – | – | – |
# The 7 biomarkers were picked up from the 10 that were verified in Cohort II samples, using gene-ratio algorithm, based on the best AUC of combined gene-pair.
Determined by qRT-PCR analysis using SAMSN1 as a partner gene, gene ratio was calculated using delta delta Ct calculation.
Calculated by Mann-Whitney test.
area under receiver-operating-characteristic curve.
Figure 2PCR data from a sample set of 122 PAXgene samples of prostate cancer from the G8 group and 138 PAXgene samples from the control group were performed in a 1000×2-fold cross-validation test.
Histograms of AUC were plotted and compared; results showed AUCs from the PCR data were well separated from the null sets, with an overlap of less than 5%.
Combined PSA and mRNA model.
| Constant | CRTAM | CXCR3 | FCRL3 | KIAA1143 | KLF12 | TMEM204 | Log2PSA |
| −2.83 | 0.208 | −0.729 | 0.752 | −0.779 | 3.77 | 0.427 | 3.22 |
Inputs are CT values for genes and Log2 transformation of PSA in ng/ml.
Figure 3Predictions for independent Cohort III and Cohort IV samples.
The negative prediction rate for control cases is charted along with the positive prediction rates for cancer cases. PSA alone has high positive predictive rates for all cancer grades (>87%) but the combined PSA and RNA panel has lower positive prediction rates for the less aggressive G6 and G7(3+4) subgroups, 55%, and 49% respectively) while nearly the same positive prediction rate for the more aggressive G7(4+3) as G8 groups (79% and 83% respectively.