| Literature DB >> 22672250 |
Leander Van Neste1, Joseph Bigley, Adam Toll, Gaëtan Otto, James Clark, Paul Delrée, Wim Van Criekinge, Jonathan I Epstein.
Abstract
BACKGROUND: PSA-directed prostate cancer screening leads to a high rate of false positive identifications and an unnecessary biopsy burden. Epigenetic biomarkers have proven useful, exhibiting frequent and abundant inactivation of tumor suppressor genes through such mechanisms. An epigenetic, multiplex PCR test for prostate cancer diagnosis could provide physicians with better tools to help their patients. Biomarkers like GSTP1, APC and RASSF1 have demonstrated involvement with prostate cancer, with the latter two genes playing prominent roles in the field effect. The epigenetic states of these genes can be used to assess the likelihood of cancer presence or absence.Entities:
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Year: 2012 PMID: 22672250 PMCID: PMC3431995 DOI: 10.1186/1471-2490-12-16
Source DB: PubMed Journal: BMC Urol ISSN: 1471-2490 Impact factor: 2.090
Figure 1Output characteristics of the all-in-one multiplex assay versus 4 singleplex assays. (A) Relative copy number changes for the individual assays for paired samples presented as the ratio of the multiplex over the singleplex copy numbers. Dot plots for the paired copy numbers of ACTB (B), APC (C), GSTP1 (D) and RASSF1 (E) for the multiplex assay (y-axis) versus the singleplex assay (x-axis). The gray line represents identity, i.e. equal result for both versions of the assay, while the black, dashed line represents the median signal change obtained from the transition of a singleplex to a multiplex assay. The greater the angle between both lines, the higher the increase. The results from the linear fit are shown with the black, full line. The quality of the fit is represented by the adjusted R2-values. (F) Phi or Matthews correlation coefficient (MCC) in function of the methylation ratio that is used as a cutoff. The maximal value for MCC is shown as a circle, for each individual assay. Shifts due to the transition of singleplex to multiplex, between the optimal cutoffs, identified here through maximal correlation, can be observed for each assay separately.
Figure 2Reliably measuring DNA input quality and quantity. (A) Relative DNA yield in terms of ACTB copy numbers per micron of biopsy tissue, stratified by age and sample quantity groups. Outliers, i.e. data points exceeding 1.5 times the respective interquartile distances, are not represented. (B) Relative amount of detectable samples, in terms of possessing a minimum of ACTB copies, as a function of the total amount of ACTB. Gray horizontal lines represent possible, minimal cutoffs to assure sufficient DNA quantity and quality, set here at 50 and 100 ACTB copies.
Relative sample amount for which methylation can be determined as function of quantity and age
| 10 μm | > = 5 years | 45 (60%) | 67% | 81% | 81% | 48% |
| <= 1 year | 53 (72%) | 87% | 80% | 86% | 84% | |
| 20 μm | > = 5 years | 45 (73%) | 78% | 90% | 93% | 81% |
| <= 1 year | 53 (92%) | 100% | 91% | 94% | 93% | |
| 40 μm | > = 5 years | 45 (82%) | 93% | 86% | 88% | 83% |
| <= 1 year | 53 (92%) | 100% | 96% | 90% | 93% | |
Samples eligible for downstream analyses have sufficient quantity and quality of input DNA. For methylation, only samples with sufficient DNA (over 63 ACTB copies) are considered. Samples are labeled methylated when exceeding .27, 26.8 or 25.8 copies for GSTP1, APC and RASSF1 respectively, as preliminary determined based on the results of Figure 1F, optimizing for maximal correlation with the presence of cancer foci. The percentage of correctly analyzable samples is the combination of sufficient input DNA and detectability of methylation signals of either assay, when methylation should have been detected.