4. DPKK Workshop in Bonn/Königswinter 4. DPKK Workshop in Bonn/Königswinter 1.-2.12.2006 1.-2.12.2006 Quantitative multi-gene expression Quantitative multi-gene expression analyses analyses on paired prostate tissue samples from on paired prostate tissue samples from radical prostatectomies and on radical prostatectomies and on artificial prostate biopsies artificial prostate biopsies Susanne Füssel & Susanne Unversucht Susanne Füssel & Susanne Unversucht Axel Meye, Michael Haase, Andrea Lohse, Silke Tomasetti, Michael Axel Meye, Michael Haase, Andrea Lohse, Silke Tomasetti, Michael Fröhner, Uta Schmidt, Rainer Koch, Gustavo Baretton, Manfred. P. Fröhner, Uta Schmidt, Rainer Koch, Gustavo Baretton, Manfred. P. Wirth Wirth Dept. of Urology & Institute of Medical Informatics and Biometry & Dept. of Urology & Institute of Medical Informatics and Biometry & Institute of Pathology Institute of Pathology Technical University of Dresden Technical University of Dresden
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4. DPKK Workshop in Bonn/Königswinter 1.-2.12.2006 Quantitative multi-gene expression analyses on paired prostate tissue samples from radical prostatectomies.
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4. DPKK Workshop in Bonn/Königswinter4. DPKK Workshop in Bonn/Königswinter 1.-2.12.20061.-2.12.2006
Axel Meye, Michael Haase, Andrea Lohse, Silke Tomasetti, Michael Axel Meye, Michael Haase, Andrea Lohse, Silke Tomasetti, Michael
Fröhner, Uta Schmidt, Rainer Koch, Gustavo Baretton, Manfred. P. Fröhner, Uta Schmidt, Rainer Koch, Gustavo Baretton, Manfred. P.
WirthWirth
Dept. of Urology & Institute of Medical Informatics and Biometry & Institute Dept. of Urology & Institute of Medical Informatics and Biometry & Institute
of Pathologyof Pathology
Technical University of DresdenTechnical University of Dresden
•main problemmain problem: : early identificationearly identification of of aggressive PCaaggressive PCa for therapeutic for therapeutic decisionsdecisions
•need for need for new additional PCa-markersnew additional PCa-markers to improve diagnostic and prognostic to improve diagnostic and prognostic powerpower
•quantification of transcript markersquantification of transcript markers as promising toolas promising tool
•expression signaturesexpression signatures more reliable more reliable than single markersthan single markers
ObjectiveObjective
• establishment of establishment of standardized QPCR-assaysstandardized QPCR-assays
• 2. study2. study: 4 new PCa-related genes, TBP as reference : 4 new PCa-related genes, TBP as reference
genegene
• 169 paired tissue samples169 paired tissue samples (Tu + Tf) from RPE explants (Tu + Tf) from RPE explants
• evaluation of evaluation of single & combined markerssingle & combined markers (ROC- (ROC-
analyses)analyses)
• mathematical modelsmathematical models for PCa-specific transcript for PCa-specific transcript
signaturessignatures
• aim: prediction of PCa-presenceaim: prediction of PCa-presence and and tumor tumor extensionextension using minimal tissue specimens (prostate using minimal tissue specimens (prostate biopsies)biopsies)
Material & MethodsMaterial & Methods
Evaluation of single markers: Evaluation of single markers: overexpression in PCa?overexpression in PCa?
ROC-analysis of theROC-analysis of the4-gene-combination4-gene-combination
probability (p) of PCa presence probability (p) of PCa presence in the analyzed tissue samples in the analyzed tissue samples
(Tf and Tu)(Tf and Tu)median p Tu 0.81 Tf 0.21median p Tu 0.81 Tf 0.21
tumorfrei Tumor0
0.25
0.50
0.75
1.00predictedprobability
for tumor
pre
dic
ted
pro
bab
ility
of
tum
or
• classification of relative expression levels of these 4 genes classification of relative expression levels of these 4 genes according optimized cut-offs according optimized cut-offs logit-value for each tissue sample logit-value for each tissue sample (Tu and Tf)(Tu and Tf)
• logit-model 1logit-model 1: p = exp(logit)/[1+exp(logit)] : p = exp(logit)/[1+exp(logit)]
correctly predictedcorrectly predicted::•with pwith p0.7 for Tu :0.7 for Tu : 70 % of Tu- 70 % of Tu-samplessamples•with pwith p0.3 for Tf :0.3 for Tf : 73 % of Tf- 73 % of Tf-samplessamples•sensitivity 79.3% & specificity 84.0%sensitivity 79.3% & specificity 84.0%
2. Study: optimized 8-gene-model for PCa-2. Study: optimized 8-gene-model for PCa-
ROC-analysis of theROC-analysis of the8-gene-combination8-gene-combination
probability (p) of PCa presence probability (p) of PCa presence in the analyzed tissue samples in the analyzed tissue samples
(Tf and Tu)(Tf and Tu)median p Tu 0.93 Tf 0.07median p Tu 0.93 Tf 0.07
correctly predictedcorrectly predicted::•with pwith p0.7 for Tu :0.7 for Tu : 78 % of Tu- 78 % of Tu-samplessamples•with pwith p0.3 for Tf :0.3 for Tf : 78 % of Tf- 78 % of Tf-samplessamples•sensitivity 89.3% & specificity 86.4%sensitivity 89.3% & specificity 86.4%
Dependence of marker expression on tumor Dependence of marker expression on tumor
stage:stage:Discrimination between of organ-confined disease (OCD) Discrimination between of organ-confined disease (OCD)
and non- organ-confined disease (NOCD) for therapeutic and non- organ-confined disease (NOCD) for therapeutic
decision?decision?
• comparison only of Tu-samples of OCD vs. NOCD comparison only of Tu-samples of OCD vs. NOCD oror
• comparison of TF-samples vs. Tu-samples of OCD vs. Tu-samples NOCDcomparison of TF-samples vs. Tu-samples of OCD vs. Tu-samples NOCD
mathematical models for OCD-prediction in processmathematical models for OCD-prediction in process
prostein
Tf OCD NOCD
pro
stei
n /
TB
P (
zmol
/ zm
ol)
0
20
40
60
80
100TRPM8
Tf OCD NOCD
TR
PM
8 / T
BP
(zm
ol /
zmol
)
0
50
100
150
200
PSA
Tf OCD NOCD
PS
A /
TB
P (
zmol
/ zm
ol)
0
500
1000
1500
• translation of the techniques to prostate biopsiestranslation of the techniques to prostate biopsies additional diagnostic tools for better PCa-prediction?additional diagnostic tools for better PCa-prediction?
• correct prediction of tumor stage & aggressivenesscorrect prediction of tumor stage & aggressiveness RPE or not, adjuvant hormone therapy or CT or notRPE or not, adjuvant hormone therapy or CT or not
• correlation of transcript signatures with outcome?correlation of transcript signatures with outcome? follow-up needed for prognostic purposesfollow-up needed for prognostic purposes
• detection of PCa-specific transcripts in urine samplesdetection of PCa-specific transcripts in urine samples non-invasive tumor detection?non-invasive tumor detection?
OutlookOutlook
AimAim::
• transfer of techniques/ statistical models to transfer of techniques/ statistical models to artificial prostate biopsies from RPE explantsartificial prostate biopsies from RPE explants
additional diagnostic tools on minimal prostateadditional diagnostic tools on minimal prostate tissue samplestissue samples
11 selected PCa-related genes and TBP 11 selected PCa-related genes and TBP (reference)(reference)
first results of application and validation of two first results of application and validation of two multi-gene-models for PCa predictionmulti-gene-models for PCa prediction
from radical prostatectomiesfrom radical prostatectomies
Material & methodsMaterial & methods:: •artificial biopsies (11 patients): Tf/Tu from one RPE explant artificial biopsies (11 patients): Tf/Tu from one RPE explant
•snap-frozen in liquid nitrogensnap-frozen in liquid nitrogen
cryo-cuttings for RNA-isolation / cryo-cuttings for RNA-isolation / pathological surveypathological survey