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Dr Matthew Smith Clinical Scientist and Honorary Research Fellow West Midlands Regional Genetics Laboratory University of Birmingham Targeted Treatments of Somatic Mutations in Cancer Tumours contain hallmark mutations within oncogenes or tumour suppressor genes that may confer a heightened susceptibility to targeted anticancer therapies Herceptin targets HER2-overexpressing metastatic breast cancer KIT mutations in gastrointestinal stromal tumours (GISTs) that predict response to imatinib or nilotinib EGFR mutations that are sensitive to erlotinib in Non-small cell lung cancers Lung and colorectal cancers that harbour mutations in the KRAS oncogene are unresponsive to treatment with anti-EGFR agents Chemotherapy susceptibility Defective p53 and ATM susceptible to chemotherapy p53 only mutated – less susceptible ATM only mutated – resistant to certain types of chemotherapy Stratified Medicine Molecular characteristics of a patients tumour to enable targeted treatment to improve cancer care • Why is stratified Medicine so important • Ideal • Effective in all patients Same dose • No Side Effects • Reality • • Dosages vary • Side effects Germline genetics Pharmacogenetics • • Not effective in all patients Current Diagnostic Testing in the NHS Current testing of tumour material for molecular biomarkers is fragmentary, costly and of variable quality Multiple testing Scenarios Single mutation within an exon Multiple mutations within an exon Multiple mutations in multiple exons Targeted Recurrent Mutations in Oncogenes Vs. Inactivating mutations in tumour suppressing genes Available resources Equipment Cost Experience and expertise Delivering Stratified Medicine in the NHS CRUK Stratified Medicine Programme Cancer Research UK's Stratified Medicine Programme is a significant step in making targeted therapies available for people with cancer in the UK. Aims of project Develop assays with clinical utility that are cost effective and commercially viable Provide national molecular diagnostics service delivering ○ high quality ○ cost effective tests for patients ○ routine consent for collection, storage and research ○ use of population-scale genetic and outcomes data. Phase 1 2011-2013 pilot study to demonstrate on a small scale how the NHS can provide molecular diagnosis for all cancer types routinely Infrastructure Research infrastructure Service delivery The Burden of Multiple Tests Samples Rec'd 01.09.2011 to 28.02.2013 Blood Birmingham Tumour Breast Colorectal Lung Melanoma Ovary Prostate Total Tumour 311 10 59 0 8 0 12 89 400 Cambridge 755 225 96 97 40 79 135 672 1427 Edinburgh 1494 236 220 153 27 34 288 958 2452 Totals Sample type 2560 471 375 250 75 113 435 1719 4279 Genes 4 5 4/5 4 4 3 Methods 3 3 4 3 3 3 14130 6750 2500 600 3390 8700 36070 38630 Tests 2560 Total Samples NGS Panel Tests under Development at the WMRGL CRUK working closely with Technology Strategy Board (TSB) Tumour Profiling and data capture WMRGL partners with ○ Oxford Gene Technology – Cancer Gene Panel ○ Affymetrix - MIP Array CRUK Technical Hubs working with Illumina in developing a focused CRUK panel for Phase I In-house developments for tumour studies 58 AML gene panel – RainDance Technologies Number of constitutional panels in service and development Technology Strategy Board (TSB) TSB-Oxford Gene Technology Accelerate Stratified Medicine in the UK. Funding industry lead collaborations Tumour profiling and data capture in cancer care Improving patient care and outcomes Developing cost effective strategies for Tumour profiling in the NHS LEAD PARTNER: INDUSTRY PARTNER: ACADEMIC PARTNER 1: University of Southampton ACADEMIC PARTNER 2: University of Birmingham Next Generation Platform – Illumina MiSeq • Benchtop Sequencer • Sequencing by synthesis technology • 2X150 paired end read in 24hours • 4.5-5 Gb of data • >80% reads above Q30 (1 in 1000 of an error) Challenges of Panel Design and using NGS for Solid Tumours What to sequence How deep to sequence The NGS tests needs to be on a par or better than the established tests What constitutes clinically relevant Sample procurement Data analysis burden Diagnostic vs Discovery Small clinically relevant panels vs. Larger discovery panels Turnaround time Cost MAJOR challenge is the material that will be used DNA from Formalin-fixed, paraffin-embedded (FFPE) tissue Working with FFPE-DNA FFPE tissue is one of the most widely practiced methods for clinical sample preservation and archiving Standard for histopathology and microscopic investigation FFPE samples pose a major challenge for molecular pathologists nucleic acids are heavily modified and trapped by extensive protein-nucleic acid and proteinprotein cross linking. FFPE DNA cont’d Nucleic acids highly fragmented and often in the presence of high conc of contaminates Large variation in sample quantity, quality and purity Non-reproducible sequence artefacts are frequently detected in DNA from formalinfixed and paraffin-embedded (FFPE) tissues Cytosine deamination C>T (and G>A) sequence artefacts Represents a significant challenge in NGS Tumour Enrichment • For solid tumours this can be achieved through macrodissection • Scrolls – deep enough read depth to balance the presence of “normal” Which Capture Technology Choice of enrichment assay driven by the application. PCR-amplicon and hybridisation capture approaches Amplicon based Microfluidics – Fluidigm and Raindance Hybridisation probes or ‘baits’ to hybridise and capture target DNA Array or solution based Enrichment for TSB-OGT Stratified Medicine Panel Hybridisation Based Hybridisation/Amplicon • 3 in solution hybridisation technologies • Haloplex Criteria – Sequencing-platform agnostic V1 SMP Enrichment Assay Evaluation V1 Panel Agilent/ Basic Agilent/ OGT Agilent/ Exp Comp 1 Comp 2 Haloplex AKT1 BRCA2 HRAS PTEN APC CDKN2A KIT RB1 ARID1A CTNNB1 KRAS RET ATM CYP2D6 NF1 SMAD4 BRAF EGFR NRAS STK11 BRCA1 FGFR3 PIK3CA TP53 UGT1A1 red = COSMIC top 21 gene panel blue = TSB required Comp 1 and 2 excluded due to poor coverage Haloplex and Sureselect taken forward Haloplex Sureselect FFPE-DNA Quantity and Quality Conc. Nanodrop Conc. Nanodrop (ng/µl) (ng) Conc. Qubit (ng/µl) Conc. Qubit (ng) Volume (µl) Sample 1 24.1 4820 1.8 358 200 Sample 2 39.5 7898 8.3 1656 200 Sample 3 18.3 3650 0.6 115.6 200 Sample 4 51.5 10300 8.4 1676 200 577 3078 A2 B1 C1 0 421 247 50 3104 3161 1671 2479 2271 2381 2428 1946 1796 1328 5142 FFPE-DNA and Enrichment ROI Enrichment Starting Material DNA requirement Agilent/OGT concordance for 147 variants Sample 1 (3000ng) (500ng) (100ng) WGA (from 25 ng) 100% 98.0% 97.3% 96.3% HaloPlex – concordance for 113 variants Sample 1 (900ng) (450ng) (200ng) WGA (from 25 ng) 100% 98.2% 95.6% 97.3% Filtered variants on exon + near exon No apparent bias introduced by WGA - add additional time and expense OGT-Sureselect Vs Haloplex V2 Panel Cosmic genes TSB required genes Requested genes Genes common to other panels Version 2 60 full genes Including UTRs SureSelect size: 466Kb OGT SureSelect OGT HaloPlex %bases with 0x coverage 0.76% %bases with 2x coverage % bases with 10x coverage Metric %bases with 20x coverage %bases with 30x coverage Birmingham SureSelect Birmingham HaloPlex 0.09% 0.88% 0.11% 98.46% 97.80% 98.37% 96.19% 97.93% 94.93% 97.66% 90.61% 97.49% 92.36% 96.77% 85.34% 97.07% 89.99% 95.66% 80.95% % on target 47.12% 71.81% 52.97% 69.53% Mean target coverage 472 480 199 480 % bases with 30x coverage Is an important indicator of uniformity of sequence enrichment. % on-target is a direct measure of enrichment efficiency, and shows the number of sequenced bases which fall into the targeted regions. Mean target coverage is the average number of reads observed for all bases within the targeted region Analysis Pipeline Challenges in detecting true low level mutations come from sequencing error, library contamination, PCR artefacts Samples analysed together Increase confidence of genuine variation Exclude strand bias Exclude Duplicates Set minimum coverage and read cut-off Min of 10 reads Should you keep only high quality data Low quality data could be localised – loss of seq information Accuracy of genotyping for difficult samples improved by using more than one genotyper Software is evolving Variant % tumour SureSelect – Gene DoC OGT BIRM SureSelect – Position DoC OGT BIRM Halo- Gene DoC OGT BIRM Halo – Position DoC OGT BIRM Detected? BRAF V600 Not known Not known Not known 380x, 103x 376x, 202x 324x, 103x 94x, 80x YES 416x, 189x 264x, 205x 396x, 207x 203x, 87x YES 416x, 189x 142x, 89x 396x, 207x 161x, 102x YES 30-40% 257x, 113x 289x, 93x 195x, 130x 49x, 12x YES^ 20-30% 225x, 91x 237x, 65x 187x, 64x 18x, 6x 5-10% 281x,109x 349x, 102x 350x, 108x 68x, 29x SureSelect only^ SureSelect only^ KIT c.1676T>A p.Val559Asp KIT c.1735_1737delGAT p.Asp579del KRAS c.34G>T p.Gly12Cys* KRAS c.34G>C p.Gly12Arg KRAS c.38G>A p.Gly13Asp ^ Variants were not detected by standard analysis algorithms, but were detected using OGT’s optimised pipeline for tumour analysis SureSelect discrimination at high depth Dilution T Allele (%) A Allele (%) Neat (Heterozygous 50%) 415 (56%) 320 (43%) 1:2 (25%) 596 (73%) 214 (26%) 1:10 (5%) 573 (93%) 42 (7%) 1:20 (2.5%) 699 (95%) 37 (5%) 1:50 (1.25%) 625 (96%) 24 (4%) 1:100 (0.5%) 712 (99%) 8 (1%) Detected? Technical validation – Summary OGT SureSelect Haloplex Coverage Uniform Variable Bases at 30X Avg 96% Avg 85% On Target Avg 50% Avg 70% DNA to data 5-6 days 3-4days Experimental steps >15 <10 Additional Equipment Yes - Covaris No SURESELECT OVER HALOPLEX Data quality Sensitivity for detecting variants In process QC Assay stability HALOPLEX OVER SURESELECT No additional expensive equipment Less technically demanding Quicker turnaround SURESELECT Enrichment Selected Panel Revision • • Version 2 Version 2.1 • 60 full genes • Including UTRs • SureSelect size: 466Kb • Samples per lane for 500x: 7 • 58 full genes • Minus UTRs • SureSelect size: 244kb • Samples per lane for 500x: 12 (estimated) 6 month ≥300 clinical samples will be run @ OGT, Salisbury and Birmingham as part of the clinical validation/utility assessment • 48 Pancreatic cancer samples – defined clinical cohort • 48 Oesophageal cancer samples – defined clinical cohort Bait design with be further improved NGS of Solid Tumours as a Diagnostic service • How do you truly validate these panels • Confirmation of low level variants • Confirmation test has lower sensitivity • Determining a mutant allele threshold • Quoted to achieve a sensitivity of 1%, a read depth of 1000X required • More reads = greater sensitivity • Panel size vs. throughput at desired coverage • Increased costs • Increased TAT • Quality control • Improving the quality of starting material • Impose a quality cut-off • Duplex testing – in poor quality samples the number of variants can be reduced by comparing variant calls unique to either of the runs • Assay re-validation given continuing hardware software improvements Acknowledgments Simon Hughes James Clough Daniel Swan Zandra Carrington Mike Griffiths Jennie Bell Brendan O’Sullivan Claire Hoey Chris Mattocks Matt Lyons