SlideShare une entreprise Scribd logo
1  sur  47
How to do successful gene expression analysis Jan Hellemans, PhD Center for Medical Genetics Biogazelle qPCR meeting – June 25th 2010 – Sienna, Italy
qPCR: reference technology for nucleic acid quantification sensitivity and specificity wide dynamic range speed relative low cost conceptual and practical simplicity easy to perform ≠ easy to do it right many steps involved all need to be right Introduction
Introduction RNA quality assessment Choice of chemistry RT and PCR  primer design Choice of RT cDNA synthesis strategy Sample extraction Sample selection and handling Assay validation Data reporting Data analysis
prepare – cycle – report
Prepare
Prepare
Power analysis determination of the number of data points needed to reach statistical significance for a given difference variability technical constraints confidence interval (CI)  	 3 (~ critical t-value t*) 	CI = SEM x t*
Power analysis determination of the number of data points needed to reach statistical significance for a given difference variability technical constraints confidence interval (CI)  3 Mann-Whitney test: nA+ nB  8 Wilcoxon test:  6 pairs http://www.cs.uiowa.edu/~rlenth/Power/
how to set-up an experiment with 3 genes of interest (GOI) & 3 reference genes (REF) 11 samples (S) & 1 no template control (NTC) Sample vs gene maximization
Sample vs gene maximization sample maximization – to be preferred no increase in variation due to absence of inter-run variation suitable for retrospective studies and controlled experiments gene maximization introduces (under-estimated) inter-run variation applicable for prospective studies or large studies in which the number of samples do not fit in the run anymore inter-run variation can be measured and corrected for using inter-run calibrators (IRC) through a procedure called inter-run calibration
Prepare
Preparation cDNA synthesis most variable step in the workflow (> RT replicates) different performance of the enzymes linearity and yield are important DNase treament retropseudogenes (15%) and single exon genes (5%) on column vs. in solution verify absence of DNA qPCR for genomic DNA target on RNA as input
Evaluate integrity of 18S and 28S rRNA Agilent Bioanalyzer  Bio-Rad Experion Caliper GX Qiagen QIAxcel Shimadzu MultiNA Quality control – RNA integrity value
Quality control – 5’-3’ ratio 5’ 3’ AAAAAA Cq 5’ Cq 3’ universally expressed low abundant reference anchored oligo(dT) reverse transcription increasing delta-Cq values upon artificial RNA degradation
spiking of synthetic sequence lacking homology with any known human sequence into RNA Quality control – SPUD assay for inhibition SPUD + H2O SPUD + heparin SPUD + RNA1 SPUD + RNA2 SPUD + RNA3 ------------RT-qPCR--------- Cq 22 Cq 27 Cq 22 Cq 25 Cq 22 ΔCq > 1: presence of inhibitors
methods WT-Ovation (NuGEN) limited cycle PCR (PreAmp - Applied Biosystems) preservation of differential expression (fold changes) before (B) and after (A) sample pre-amplification (G1S1)B/(G1S2) B = (G1S1) A/(G1S2) A G1B/G2B  < > G1A/G2A gene G, sample S, before B, after A Pre amplification
Prepare
http://www.rtprimerdb.org
Assay design guidelines location sequence repeats, protein domains splice variants intron spanning vs intra exonic short amplicons: 80-150bp SNPs primers dTm < 2°C identical Tm for all assays maximum 2 GC in last 5 nucleotides use software to design assays Primer3(Plus), BeaconDesigner, RTprimerDB
In silicoassayvalidation do thorough in silico assay evaluation BLAST/BiSearch specificity analysis mfold secondary structure SNP analysis of primer annealing regions splice variant specificity streamline in silico analyses with RTprimerDB pipeline
Empiricalassayvalidation specificity size analysis (only once) agarose or polyacrylamide gel capillary electrophoresis melting curves (SYBR, repeated) [sequence / restriction digest] amplification efficiency standard curve range & number dilution points representative sample [single curve efficiency algorithms] for absolute quantification linear range and limit of detection
Prepare
Single reference gene quantitative RT-PCR analysis of 10 reference genes (belonging to different functional and abundance classes) on 85 samples from 13 different human tissues 4 3 ACTB HMBS 2 HPRT1 TBP 1 UBC 0 A B C D E F G
Single vs multiple reference genes single reference gene errors related to the use of a single reference gene:> 3 fold in 25% of the cases> 6 fold in 10% of the cases multiple reference genes developed a robust algorithm for assessment of expression stability of candidate reference genes proposed the geometric mean of at least 3 reference genes for accurate and reliable normalisation geNorm analysis in pilot study Vandesompeleet al. Genome Biol. 2002 Jun 18;3(7):RESEARCH0034.
geNorm validation insensitive to outliers reduce most of the variation statistically more significant results accurate assessment of small expression differences de facto standard for reference gene validation 2 400 citations of the geNorm technology ~12 000 geNorm software downloads in 112 countries
genormPLUS
genormPLUS
genormPLUS
Cycle
fast PCR fast ramping ≠ fast qPCR experiment 96-well vs 384-well 384-well system is slightly more expensive 384-well plates harder to pipet (multichannel pipets or pipetting robot) 384-well run gives 4x more data in same time 384-well plates require smaller volumes plate homogeneity test Instrument
Chemistry choose probes for multiplexing genotyping absolute sensitivity (detection past cycle 40) (e.g. clinical-diagnostic setting, GMO detection) choose SYBR Green I for  all other applications low cost seeing what you do
melting curve unique melt peak for all samples? replicates delta-Cq < 0.5 cycles? controls negative control really blankdelta-Cq samples/NTC > 5? positive controls with expected Cq? amplification plot shape (kinetic outlier detection) Controls
Report
Report
Calculation methods Cq RQ NRQ CNRQ Normalization Inter-run calibration Hellemanset al. Genome Biol. 2007;8(2):R19.
Data processing - relative quantification
qbasePLUS
Quality controls PCR replicates ∆Cq < 0.5 cycles no template control no signal (no Cq value) Cq (NTC) > Cq (samples) + 5 reference gene stability M < 0.5M < 1 for heterogeneous samples CV < 25%CV < 50% for heterogeneous samples normalization factors no unexpected high variation
Report
Replicates technical vs biological replicates repeated measures vs. replication PCR replicates (pipetting error & Poisson’s law) RT replicates repeated RNA extraction from same sample repeated cell cultures / patient sampling true biological replicates (from different subjects) no statistics on repeated measures type of replicates dictates conclusions that can be drawn
relative quantities are not normally distributed log transformation makes them more symmetrical relevant tests in the field of relative quantification comparison of 2 unpaired groups t test Mann-Whitney randomization test comparison of 2 paired groups ratio t test (paired t test on log values) Wilcoxon rank sum test correlation analysis Pearson Spearman linear regression correct for multiple testing Statistical tests
Report
MIQE http://www.rdml.org/miqe Bustinet al. ClinChem. 2009 Apr;55(4):611-22. authors improve quality of qPCR experiments reliable and unequivocal interpretation of results  reviewers and editors assess technical merit full disclosure of reagents and analysis methods consumers of published research published results easier to reproduce
MIQE checklist for authors, reviewers and editors experimental design  sample nucleic acid extraction reverse transcription target information oligonucleotides qPCR protocol qPCR validation data analysis E – essential D – desirable
RDML http://www.rdml.org Lefeveret al. NucleicAcidsRes. 2009 Apr;37(7):2065-9.
acknowledgements Jo Vandesompele StefaanDerveaux http://www.biogazelle.com  -  Jan.Hellemans@UGent.be

Contenu connexe

Tendances

Troubleshooting qPCR: What Are My Amplification Curves Telling Me?
Troubleshooting qPCR: What Are My Amplification Curves Telling Me?Troubleshooting qPCR: What Are My Amplification Curves Telling Me?
Troubleshooting qPCR: What Are My Amplification Curves Telling Me?
Integrated DNA Technologies
 
Q biomarkersomaticmutation
Q biomarkersomaticmutationQ biomarkersomaticmutation
Q biomarkersomaticmutation
Elsa von Licy
 

Tendances (20)

qRT PCR
qRT PCRqRT PCR
qRT PCR
 
qPCR Design Strategies for Specific Applications
qPCR Design Strategies for Specific ApplicationsqPCR Design Strategies for Specific Applications
qPCR Design Strategies for Specific Applications
 
Troubleshooting qPCR: What are my amplification curves telling me?
Troubleshooting qPCR: What are my amplification curves telling me?Troubleshooting qPCR: What are my amplification curves telling me?
Troubleshooting qPCR: What are my amplification curves telling me?
 
PCR - From Setup to Cleanup: A Beginner`s Guide with Useful Tips and Tricks -...
PCR - From Setup to Cleanup: A Beginner`s Guide with Useful Tips and Tricks -...PCR - From Setup to Cleanup: A Beginner`s Guide with Useful Tips and Tricks -...
PCR - From Setup to Cleanup: A Beginner`s Guide with Useful Tips and Tricks -...
 
Troubleshooting qPCR: What Are My Amplification Curves Telling Me?
Troubleshooting qPCR: What Are My Amplification Curves Telling Me?Troubleshooting qPCR: What Are My Amplification Curves Telling Me?
Troubleshooting qPCR: What Are My Amplification Curves Telling Me?
 
Accurate detection of low frequency genetic variants using novel, molecular t...
Accurate detection of low frequency genetic variants using novel, molecular t...Accurate detection of low frequency genetic variants using novel, molecular t...
Accurate detection of low frequency genetic variants using novel, molecular t...
 
SNP genotyping on qPCR platforms: Troubleshooting for amplification and clust...
SNP genotyping on qPCR platforms: Troubleshooting for amplification and clust...SNP genotyping on qPCR platforms: Troubleshooting for amplification and clust...
SNP genotyping on qPCR platforms: Troubleshooting for amplification and clust...
 
Real Time PCR
Real Time PCRReal Time PCR
Real Time PCR
 
Advanced Real-Time PCR Array Technology – Coding and Noncoding RNA Expression...
Advanced Real-Time PCR Array Technology – Coding and Noncoding RNA Expression...Advanced Real-Time PCR Array Technology – Coding and Noncoding RNA Expression...
Advanced Real-Time PCR Array Technology – Coding and Noncoding RNA Expression...
 
Real time pcr
Real time pcrReal time pcr
Real time pcr
 
Reverse transcription-quantitative PCR (RT-qPCR): Reporting and minimizing th...
Reverse transcription-quantitative PCR (RT-qPCR): Reporting and minimizing th...Reverse transcription-quantitative PCR (RT-qPCR): Reporting and minimizing th...
Reverse transcription-quantitative PCR (RT-qPCR): Reporting and minimizing th...
 
Advanced miRNA Expression Analysis: miRNA and its Role in Human Disease Webin...
Advanced miRNA Expression Analysis: miRNA and its Role in Human Disease Webin...Advanced miRNA Expression Analysis: miRNA and its Role in Human Disease Webin...
Advanced miRNA Expression Analysis: miRNA and its Role in Human Disease Webin...
 
Q biomarkersomaticmutation
Q biomarkersomaticmutationQ biomarkersomaticmutation
Q biomarkersomaticmutation
 
Real time pcr
Real time  pcrReal time  pcr
Real time pcr
 
RotorGene Q A Rapid, Automatable real-time PCR Instrument for Genotyping and...
RotorGene Q  A Rapid, Automatable real-time PCR Instrument for Genotyping and...RotorGene Q  A Rapid, Automatable real-time PCR Instrument for Genotyping and...
RotorGene Q A Rapid, Automatable real-time PCR Instrument for Genotyping and...
 
Overview of the glossary related to pcr
Overview of the glossary related to pcrOverview of the glossary related to pcr
Overview of the glossary related to pcr
 
Pcrarraywhitepaper
PcrarraywhitepaperPcrarraywhitepaper
Pcrarraywhitepaper
 
Reproducibility, Quality Control and Importance of Automation
Reproducibility, Quality Control and Importance of AutomationReproducibility, Quality Control and Importance of Automation
Reproducibility, Quality Control and Importance of Automation
 
Extending miRQC’s dynamic range: amplifying the view of Limiting RNA samples ...
Extending miRQC’s dynamic range: amplifying the view of Limiting RNA samples ...Extending miRQC’s dynamic range: amplifying the view of Limiting RNA samples ...
Extending miRQC’s dynamic range: amplifying the view of Limiting RNA samples ...
 
Maximizing PCR and RT-PCR Success - Download the Brochure
Maximizing PCR and RT-PCR Success - Download the BrochureMaximizing PCR and RT-PCR Success - Download the Brochure
Maximizing PCR and RT-PCR Success - Download the Brochure
 

En vedette

Illumina-General-Overview-Q1-17
Illumina-General-Overview-Q1-17Illumina-General-Overview-Q1-17
Illumina-General-Overview-Q1-17
Matthew Holguin
 
30 60 90 Day Sales Plan
30 60 90 Day Sales Plan30 60 90 Day Sales Plan
30 60 90 Day Sales Plan
natevans65
 

En vedette (20)

Gene expression concept and analysis
Gene expression concept and analysisGene expression concept and analysis
Gene expression concept and analysis
 
Illumina Customer Presentation
Illumina Customer PresentationIllumina Customer Presentation
Illumina Customer Presentation
 
Table comparing Illumina s new sequencers
Table comparing Illumina s new sequencersTable comparing Illumina s new sequencers
Table comparing Illumina s new sequencers
 
PCR Array Data Analysis Tutorial: qPCR Technology Webinar Series Part 3
PCR Array Data Analysis Tutorial: qPCR Technology Webinar Series Part 3PCR Array Data Analysis Tutorial: qPCR Technology Webinar Series Part 3
PCR Array Data Analysis Tutorial: qPCR Technology Webinar Series Part 3
 
Introduction to Linux for bioinformatics
Introduction to Linux for bioinformaticsIntroduction to Linux for bioinformatics
Introduction to Linux for bioinformatics
 
RNA-seq for DE analysis: the biology behind observed changes - part 6
RNA-seq for DE analysis: the biology behind observed changes - part 6RNA-seq for DE analysis: the biology behind observed changes - part 6
RNA-seq for DE analysis: the biology behind observed changes - part 6
 
RNA-seq for DE analysis: extracting counts and QC - part 4
RNA-seq for DE analysis: extracting counts and QC - part 4RNA-seq for DE analysis: extracting counts and QC - part 4
RNA-seq for DE analysis: extracting counts and QC - part 4
 
Illumina-General-Overview-Q1-17
Illumina-General-Overview-Q1-17Illumina-General-Overview-Q1-17
Illumina-General-Overview-Q1-17
 
RNA-seq: Mapping and quality control - part 3
RNA-seq: Mapping and quality control - part 3RNA-seq: Mapping and quality control - part 3
RNA-seq: Mapping and quality control - part 3
 
Deep learning with Tensorflow in R
Deep learning with Tensorflow in RDeep learning with Tensorflow in R
Deep learning with Tensorflow in R
 
An introduction to RNA-seq data analysis
An introduction to RNA-seq data analysisAn introduction to RNA-seq data analysis
An introduction to RNA-seq data analysis
 
Introduction to RNA-seq and RNA-seq Data Analysis (UEB-UAT Bioinformatics Cou...
Introduction to RNA-seq and RNA-seq Data Analysis (UEB-UAT Bioinformatics Cou...Introduction to RNA-seq and RNA-seq Data Analysis (UEB-UAT Bioinformatics Cou...
Introduction to RNA-seq and RNA-seq Data Analysis (UEB-UAT Bioinformatics Cou...
 
RNA-seq for DE analysis: detecting differential expression - part 5
RNA-seq for DE analysis: detecting differential expression - part 5RNA-seq for DE analysis: detecting differential expression - part 5
RNA-seq for DE analysis: detecting differential expression - part 5
 
RNA-seq: analysis of raw data and preprocessing - part 2
RNA-seq: analysis of raw data and preprocessing - part 2RNA-seq: analysis of raw data and preprocessing - part 2
RNA-seq: analysis of raw data and preprocessing - part 2
 
RNA-seq differential expression analysis
RNA-seq differential expression analysisRNA-seq differential expression analysis
RNA-seq differential expression analysis
 
RNA-seq: general concept, goal and experimental design - part 1
RNA-seq: general concept, goal and experimental design - part 1RNA-seq: general concept, goal and experimental design - part 1
RNA-seq: general concept, goal and experimental design - part 1
 
RNA-seq Analysis
RNA-seq AnalysisRNA-seq Analysis
RNA-seq Analysis
 
13 days call center training module
13 days call center training module13 days call center training module
13 days call center training module
 
Shift Happens
Shift HappensShift Happens
Shift Happens
 
30 60 90 Day Sales Plan
30 60 90 Day Sales Plan30 60 90 Day Sales Plan
30 60 90 Day Sales Plan
 

Similaire à How to do successful gene expression analysis - Siena 20100625

Ascb 2007-pcr array-poster
Ascb 2007-pcr array-posterAscb 2007-pcr array-poster
Ascb 2007-pcr array-poster
Elsa von Licy
 
Aai 2007-pcr array-poster
Aai 2007-pcr array-posterAai 2007-pcr array-poster
Aai 2007-pcr array-poster
Elsa von Licy
 
Q pcr poster-20070314
Q pcr poster-20070314Q pcr poster-20070314
Q pcr poster-20070314
Elsa von Licy
 
Pcr plus and predictor 2013
Pcr plus and predictor 2013Pcr plus and predictor 2013
Pcr plus and predictor 2013
Elsa von Licy
 
Cnv and a analysis strategies
Cnv and a analysis strategiesCnv and a analysis strategies
Cnv and a analysis strategies
Elsa von Licy
 
Chi2007val ch ip-qpcr
Chi2007val ch ip-qpcrChi2007val ch ip-qpcr
Chi2007val ch ip-qpcr
Elsa von Licy
 
Pp gef rt2_profiler_0212_web
Pp gef rt2_profiler_0212_webPp gef rt2_profiler_0212_web
Pp gef rt2_profiler_0212_web
Elsa von Licy
 
Q pcr symposium2007-pcrarray
Q pcr symposium2007-pcrarrayQ pcr symposium2007-pcrarray
Q pcr symposium2007-pcrarray
Elsa von Licy
 
Mastering RNA-Seq (NGS Data Analysis) - A Critical Approach To Transcriptomic...
Mastering RNA-Seq (NGS Data Analysis) - A Critical Approach To Transcriptomic...Mastering RNA-Seq (NGS Data Analysis) - A Critical Approach To Transcriptomic...
Mastering RNA-Seq (NGS Data Analysis) - A Critical Approach To Transcriptomic...
Elia Brodsky
 
1073956 wp rt2_profilerarrays_1012
1073956 wp rt2_profilerarrays_10121073956 wp rt2_profilerarrays_1012
1073956 wp rt2_profilerarrays_1012
Elsa von Licy
 
1073958 wp guide-develop-pcr_primers_1012
1073958 wp guide-develop-pcr_primers_10121073958 wp guide-develop-pcr_primers_1012
1073958 wp guide-develop-pcr_primers_1012
Elsa von Licy
 
Rt2q pcr primerassays
Rt2q pcr primerassaysRt2q pcr primerassays
Rt2q pcr primerassays
Elsa von Licy
 

Similaire à How to do successful gene expression analysis - Siena 20100625 (20)

Ascb 2007-pcr array-poster
Ascb 2007-pcr array-posterAscb 2007-pcr array-poster
Ascb 2007-pcr array-poster
 
Aai 2007-pcr array-poster
Aai 2007-pcr array-posterAai 2007-pcr array-poster
Aai 2007-pcr array-poster
 
Aacr poster2007
Aacr poster2007Aacr poster2007
Aacr poster2007
 
Abrf poster2007
Abrf poster2007Abrf poster2007
Abrf poster2007
 
Tfpcr array poster
Tfpcr array posterTfpcr array poster
Tfpcr array poster
 
Cn presentation
Cn presentationCn presentation
Cn presentation
 
Q pcr poster-20070314
Q pcr poster-20070314Q pcr poster-20070314
Q pcr poster-20070314
 
Pcr plus and predictor 2013
Pcr plus and predictor 2013Pcr plus and predictor 2013
Pcr plus and predictor 2013
 
Validaternai
ValidaternaiValidaternai
Validaternai
 
Cnv and a analysis strategies
Cnv and a analysis strategiesCnv and a analysis strategies
Cnv and a analysis strategies
 
Chi2007val ch ip-qpcr
Chi2007val ch ip-qpcrChi2007val ch ip-qpcr
Chi2007val ch ip-qpcr
 
Som aacr2011poster
Som aacr2011posterSom aacr2011poster
Som aacr2011poster
 
Sh rn awhitepaper
Sh rn awhitepaperSh rn awhitepaper
Sh rn awhitepaper
 
Pp gef rt2_profiler_0212_web
Pp gef rt2_profiler_0212_webPp gef rt2_profiler_0212_web
Pp gef rt2_profiler_0212_web
 
Q pcr symposium2007-pcrarray
Q pcr symposium2007-pcrarrayQ pcr symposium2007-pcrarray
Q pcr symposium2007-pcrarray
 
Characterization of Novel ctDNA Reference Materials Developed using the Genom...
Characterization of Novel ctDNA Reference Materials Developed using the Genom...Characterization of Novel ctDNA Reference Materials Developed using the Genom...
Characterization of Novel ctDNA Reference Materials Developed using the Genom...
 
Mastering RNA-Seq (NGS Data Analysis) - A Critical Approach To Transcriptomic...
Mastering RNA-Seq (NGS Data Analysis) - A Critical Approach To Transcriptomic...Mastering RNA-Seq (NGS Data Analysis) - A Critical Approach To Transcriptomic...
Mastering RNA-Seq (NGS Data Analysis) - A Critical Approach To Transcriptomic...
 
1073956 wp rt2_profilerarrays_1012
1073956 wp rt2_profilerarrays_10121073956 wp rt2_profilerarrays_1012
1073956 wp rt2_profilerarrays_1012
 
1073958 wp guide-develop-pcr_primers_1012
1073958 wp guide-develop-pcr_primers_10121073958 wp guide-develop-pcr_primers_1012
1073958 wp guide-develop-pcr_primers_1012
 
Rt2q pcr primerassays
Rt2q pcr primerassaysRt2q pcr primerassays
Rt2q pcr primerassays
 

Dernier

Dernier (20)

AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of Brazil
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
HTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation StrategiesHTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation Strategies
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 

How to do successful gene expression analysis - Siena 20100625

  • 1. How to do successful gene expression analysis Jan Hellemans, PhD Center for Medical Genetics Biogazelle qPCR meeting – June 25th 2010 – Sienna, Italy
  • 2. qPCR: reference technology for nucleic acid quantification sensitivity and specificity wide dynamic range speed relative low cost conceptual and practical simplicity easy to perform ≠ easy to do it right many steps involved all need to be right Introduction
  • 3. Introduction RNA quality assessment Choice of chemistry RT and PCR primer design Choice of RT cDNA synthesis strategy Sample extraction Sample selection and handling Assay validation Data reporting Data analysis
  • 4. prepare – cycle – report
  • 7. Power analysis determination of the number of data points needed to reach statistical significance for a given difference variability technical constraints confidence interval (CI)  3 (~ critical t-value t*) CI = SEM x t*
  • 8. Power analysis determination of the number of data points needed to reach statistical significance for a given difference variability technical constraints confidence interval (CI)  3 Mann-Whitney test: nA+ nB  8 Wilcoxon test:  6 pairs http://www.cs.uiowa.edu/~rlenth/Power/
  • 9. how to set-up an experiment with 3 genes of interest (GOI) & 3 reference genes (REF) 11 samples (S) & 1 no template control (NTC) Sample vs gene maximization
  • 10. Sample vs gene maximization sample maximization – to be preferred no increase in variation due to absence of inter-run variation suitable for retrospective studies and controlled experiments gene maximization introduces (under-estimated) inter-run variation applicable for prospective studies or large studies in which the number of samples do not fit in the run anymore inter-run variation can be measured and corrected for using inter-run calibrators (IRC) through a procedure called inter-run calibration
  • 12. Preparation cDNA synthesis most variable step in the workflow (> RT replicates) different performance of the enzymes linearity and yield are important DNase treament retropseudogenes (15%) and single exon genes (5%) on column vs. in solution verify absence of DNA qPCR for genomic DNA target on RNA as input
  • 13. Evaluate integrity of 18S and 28S rRNA Agilent Bioanalyzer Bio-Rad Experion Caliper GX Qiagen QIAxcel Shimadzu MultiNA Quality control – RNA integrity value
  • 14. Quality control – 5’-3’ ratio 5’ 3’ AAAAAA Cq 5’ Cq 3’ universally expressed low abundant reference anchored oligo(dT) reverse transcription increasing delta-Cq values upon artificial RNA degradation
  • 15. spiking of synthetic sequence lacking homology with any known human sequence into RNA Quality control – SPUD assay for inhibition SPUD + H2O SPUD + heparin SPUD + RNA1 SPUD + RNA2 SPUD + RNA3 ------------RT-qPCR--------- Cq 22 Cq 27 Cq 22 Cq 25 Cq 22 ΔCq > 1: presence of inhibitors
  • 16. methods WT-Ovation (NuGEN) limited cycle PCR (PreAmp - Applied Biosystems) preservation of differential expression (fold changes) before (B) and after (A) sample pre-amplification (G1S1)B/(G1S2) B = (G1S1) A/(G1S2) A G1B/G2B < > G1A/G2A gene G, sample S, before B, after A Pre amplification
  • 19. Assay design guidelines location sequence repeats, protein domains splice variants intron spanning vs intra exonic short amplicons: 80-150bp SNPs primers dTm < 2°C identical Tm for all assays maximum 2 GC in last 5 nucleotides use software to design assays Primer3(Plus), BeaconDesigner, RTprimerDB
  • 20. In silicoassayvalidation do thorough in silico assay evaluation BLAST/BiSearch specificity analysis mfold secondary structure SNP analysis of primer annealing regions splice variant specificity streamline in silico analyses with RTprimerDB pipeline
  • 21. Empiricalassayvalidation specificity size analysis (only once) agarose or polyacrylamide gel capillary electrophoresis melting curves (SYBR, repeated) [sequence / restriction digest] amplification efficiency standard curve range & number dilution points representative sample [single curve efficiency algorithms] for absolute quantification linear range and limit of detection
  • 23. Single reference gene quantitative RT-PCR analysis of 10 reference genes (belonging to different functional and abundance classes) on 85 samples from 13 different human tissues 4 3 ACTB HMBS 2 HPRT1 TBP 1 UBC 0 A B C D E F G
  • 24. Single vs multiple reference genes single reference gene errors related to the use of a single reference gene:> 3 fold in 25% of the cases> 6 fold in 10% of the cases multiple reference genes developed a robust algorithm for assessment of expression stability of candidate reference genes proposed the geometric mean of at least 3 reference genes for accurate and reliable normalisation geNorm analysis in pilot study Vandesompeleet al. Genome Biol. 2002 Jun 18;3(7):RESEARCH0034.
  • 25. geNorm validation insensitive to outliers reduce most of the variation statistically more significant results accurate assessment of small expression differences de facto standard for reference gene validation 2 400 citations of the geNorm technology ~12 000 geNorm software downloads in 112 countries
  • 29. Cycle
  • 30. fast PCR fast ramping ≠ fast qPCR experiment 96-well vs 384-well 384-well system is slightly more expensive 384-well plates harder to pipet (multichannel pipets or pipetting robot) 384-well run gives 4x more data in same time 384-well plates require smaller volumes plate homogeneity test Instrument
  • 31. Chemistry choose probes for multiplexing genotyping absolute sensitivity (detection past cycle 40) (e.g. clinical-diagnostic setting, GMO detection) choose SYBR Green I for all other applications low cost seeing what you do
  • 32. melting curve unique melt peak for all samples? replicates delta-Cq < 0.5 cycles? controls negative control really blankdelta-Cq samples/NTC > 5? positive controls with expected Cq? amplification plot shape (kinetic outlier detection) Controls
  • 35. Calculation methods Cq RQ NRQ CNRQ Normalization Inter-run calibration Hellemanset al. Genome Biol. 2007;8(2):R19.
  • 36. Data processing - relative quantification
  • 38.
  • 39. Quality controls PCR replicates ∆Cq < 0.5 cycles no template control no signal (no Cq value) Cq (NTC) > Cq (samples) + 5 reference gene stability M < 0.5M < 1 for heterogeneous samples CV < 25%CV < 50% for heterogeneous samples normalization factors no unexpected high variation
  • 41. Replicates technical vs biological replicates repeated measures vs. replication PCR replicates (pipetting error & Poisson’s law) RT replicates repeated RNA extraction from same sample repeated cell cultures / patient sampling true biological replicates (from different subjects) no statistics on repeated measures type of replicates dictates conclusions that can be drawn
  • 42. relative quantities are not normally distributed log transformation makes them more symmetrical relevant tests in the field of relative quantification comparison of 2 unpaired groups t test Mann-Whitney randomization test comparison of 2 paired groups ratio t test (paired t test on log values) Wilcoxon rank sum test correlation analysis Pearson Spearman linear regression correct for multiple testing Statistical tests
  • 44. MIQE http://www.rdml.org/miqe Bustinet al. ClinChem. 2009 Apr;55(4):611-22. authors improve quality of qPCR experiments reliable and unequivocal interpretation of results reviewers and editors assess technical merit full disclosure of reagents and analysis methods consumers of published research published results easier to reproduce
  • 45. MIQE checklist for authors, reviewers and editors experimental design sample nucleic acid extraction reverse transcription target information oligonucleotides qPCR protocol qPCR validation data analysis E – essential D – desirable
  • 46. RDML http://www.rdml.org Lefeveret al. NucleicAcidsRes. 2009 Apr;37(7):2065-9.
  • 47. acknowledgements Jo Vandesompele StefaanDerveaux http://www.biogazelle.com - Jan.Hellemans@UGent.be