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Peter W Hamilton
Professor of Pathology Bioimaging and Informatics
Centre for Cancer Research & Cell Biology
Queen’s University of Belfast
Vice President, Research and Development PathXL
Next generation imaging and
Computer vision in Pathology:
Pipedream to reality
Digital Pathology Growth
Digital Pathology Market worth $437 Million by 2018
Digital Pathology is not new!
Histopathology 1987;9:901-911
Classification of normal colorectal mucosa and
adenocarcinoma by morphometry.
HAMILTON PW*, ALLEN DC*, WATT PCH PATTERSON CC,
BIGGART JD.
The Regrowth of Digital Pathology
1970 1980 1990 2000 2010
Academicactivity
Whole Slide Imaging
Pathology &
Personalised medicine
Whole Slide Imaging
Precision (Personalised) Medicine
Target Discovery Lead Optimization Preclinical/animal
Studies
Clinical Development
I II III
Approval Clinic
Drug Development
Biomarker Discovery Biomarker Validation Assay Development Clinical Utility Testing Approval Clinic
Biomarker Development
The Challenge of Precision Medicine
Therapeutic/diagnostic
co-development
7
Target Discovery Lead Optimization Preclinical/animal
Studies
Clinical Development
I II III
Approval Clinic
Drug Development
Biomarker Discovery Biomarker Validation Assay Development Clinical Utility Testing Approval Clinic
Biomarker Development
Biobanking
Biobanks supply high
quality tissue samples
and images for target
and biomarker
identification
Tissue Microarrays
(TMAs) and remote
biomarker analysis
Digital TMA management,
review and biomarker scoring
for discovery and validation
Image Analysis
Companion Algorithms
Multicentre Clinical Trials
Remote review of tissue
biomarkers for trial and
therapeutic arm selection across
institutions, networks and
countries
Toxicological Pathology
Remote review of slides to
ensure integrity of
pathological interpretation
and interobserver variation
Digital Pathology
in the Drug/Biomarker Development Pipeline
Tumor
Identification
Automated tumor
annotation and % tumor
measurements for
Molecular Diagnostics
Quantitative assays to support
patient stratification and
therapeutic selection
Quantitative automated
assessment of tissue
biomarkers (IHC, ISH)
8
NI Molecular Pathology Lab
Centre for Cancer Research
Queen’s University Belfast
NEXT GENERATION SEQUENCINGHT GE ARRAYS / METHYL / CNV
IMAGING SCANNING LT TESTING (SEQ, Q-PCR)AUT NA EXTR
AUTOMATED IHCAUTOM. FISHAUTOMATED H+E
MICROSCOPYSAMPLE PREPARATION
Integrated Digital Pathology
Biomarker Research Primary Molecular Diagnostics Accredited Laboratory
Cloud Storage and Serving
Integrated Digital Pathology
Central Archive and Image Server
Whole Slide Scanners
Archiving
Biobaking
Training
Tumor Board Meetings
Internal Quality Control
Remote Slide Review
Biomarker Discovery and Validation
Mutisite Collaboration
Multicentre Clinical Trials
The pathologist no longer needs to be in the same room as the glass slide
Errors in Pathology
Subjectivity of visual scoring
Kappa
Pre-invasive lesions of the bronchus 0.55
(Nicholson – Histopathology 2001;38:202-208)
Cervical cytology 0.46
(Stoler – JAMA 2001;285:1500-1505)
Cervical Histology 0.15 – 0.62
(McCluggage – Br J Obs Gynae 1998;105:206-210)
Prostate Cancer 0.58
(Egevad – Urology 2001;57:291-295)
Oral Dysplasia 0.27 – 0.45
(Warnakulasuriya – J Pathol 2001;194:294-297)
Variation in interpretation of renal transplant biopsiesFurness et al.
Aberrant diagnoses by surgical pathologists Wakely et al
Dysplasia classification: pathology in disgrace Bosman.
“Individuality” in the specialty of surgical pathology Ackerman
Errors in pathological diagnosis
Automated
Computer Vision and Analysis of Tissues
Nuclear Staining Cytoplasmic Staining Membrane Staining
Biomarker Marker Discovery Studies
458 samples across 4 TMAs
BAX IHC
Scored by x2 experienced pathologists
BAX & BAK as predictors of patient outcome
Automated imaging of BAX IHC
MANUAL SCORE
QPATH AUTOMATED
Num.scored > 100
Num.scored > 100
Computerised imaging allows you to do difficult
things…
Augmented Visualisation in Pathology
(AVP)
Allows you to measure the seeable
Allows you to detect the unseeable
Computerised imaging allows you to do difficult things…
Tumour
Stroma
Q Nuclear H-score
Q Cyto H-score
Q Nuclear H-score
Q Cyto H-score
FLIP Pro-caspase 8
Adenocarcinoma Squamous carcinoma
Phenotypic signature
FLIP CASP8
High High
Low Low
High Low
Low High
HET
FLIP
Adenocarcinoma: Q H-score>170 = High
Squamous cell: Q H-score>245 = High
CASP8
Adenocarcinoma: Q H-score>160 = High
Squamous cell: Q H-score>195 = High
p= <0.0001
HR 14.37
95% CI 3.41-60.49
p= 0.05
HR 2.57
95% CI 0.67-6.77
Adenocarcinoma specific H-score
p= 0.03
HR 3.15
95% CI 1.12-8.84
Squamous cell carcinoma specific H-score
Cytoplasmic expression (not nuclear) was prognostic in NSCLC – Ad and Sq
Image analysis of Tissue Heterogeneity
Potts et al. Lab Invest 2012;92:1342-57
Immuno-oncology and immuno-therapy
ER
PR
HER2
Mib1 (KI67)
p53
CK5/6
CK14
CK-17
Baseline IHC BiomarkersOropharynx TMA 1
Mesothelioma TMA 1
Ovarian TMA 1
Ovarian TMA 2
Ovarian TMA 2A (Stroma)
Ovarian TMA 3B
Gastric Cancer TMA Sing
Oesophageal TMA ICR
NSCLC TMA1
COIN TRIAL (TMA 1-40)
Breast TMA 1-4
CK20
E-cadherin
Retrospective tissue series & TMAS
S100
HBME1
p16
CA125
CA19.9
High Throughput Image Analysis of Baseline Biomarkers
Breast Cancer
Colorectal Cancer
Ovarian Cancer
Prostate Cancer
Head & Neck Cancer
Lung Cancer
Prospective Biobank Collections
Bladder TMA 1-3
Moving from small local cohorts to large mutinational patient populations
High Performance Image Analysis
HP Blade System Cluster 900 processor cores
MS Message Passage Interface (MPI)
Centralised Dynamic Load Balancing
HPC provides significant analytical speedup for
automated TMA analysis
• Evaluation and fine tuning of biomarker algorithms on large datasets
• Multiplex Biomarker experiments across large tissue cohorts, multiple TMAs and multiple markers
• FAST-PATH FP7 Marie Curie Programme
Wang Y & Hamilton , et al. Ultrafast processing of gigapixel TMA images using HPC. PLoS ONE 2010; 6(2): e15818
X50 – X100 fold speed up in processing time
300 tissue core arrays - IHC
Accelerator Award
A national digital pathology and image analysis programme for solid tumour analysis
Clinical Fellowship programme in Molecular Pathology
Belfast
Southampton
ICR/Royal Marsden
Manchester
Newcastle
Leicester
Automated Imaging in tissue research is going to drive discovery
of next generation of tissue biomarkers
for precision medicine
But won’t tissue pathology be redundant
in next few years?
Transforming how we practice pathology
Gene Panels and Clinical Sequencing
Molecular testing, FFPE and H&E Review
EGFR
KRAS
BRAF
NRAS
CMET
MMR
Oncotype Dx
Mammaprint
Foundation One
Clinical Sequencing
Sample
FFPE
Tumour Markup
Tumour
Sufficiency
Macrodissection
DNA Extraction
DNA
Quantification
Platform
Molecular Assay Output
Sanger
QPCR
NGS
Pre-Analytical
Analytical
OperatorVariability
To automatically identify tumour and calculate tumour
percentage in digital H&E tissue sections using image analysis
Pathologist mark-up TissueMark mark-up
I. Tumour Identification
TissueMark
Molecular Diagnos cs
Image Viewing Image Management Image Conversion Image Serving Workflow crea on
Digital Image Handling
Tile Management Pa ern recogni on
Object management
& analysis
Image Processing Visualisa on
Image Processing and Analysis
Biomarker AnalysisImmunocell analysisCancer detec on Tumor boundary analysis
Tissue Recogni on and Cancer detec on
Gland recogni on Epithelial analysis Nuclear analysis
Tissue Architecture and Cellular Quan ta on
Histo iden fica on Tumor Cell Counts
Histological ScreeningBiomarker Clinical Trials Immuno-oncology
PathXL’s Tissue Recogition Engine
II. Computation of a macrodissection boundary
Original
Original
Original
Lung
Breast
Colon
Across different tissue types
% Tumour cells ?
III. % Tumour cells
KRAS: COBAS 5%, Sanger 15%
EGFR: COBAS 5%, Sanger 30%
BRAF: COBAS 5%, Sanger 30%
Next Generation Sequencing: 5% - 70%
Foundation One: 20%
TCGA: 80%
Limits of sensitivity & Percentage Tumour DNA
• 20 High resolution images NSCLC
▪ Circulated to 4 pathologists
▪ % tumour estimates
Variation in lung % tumour cell estimates
amongst pathologists
Lung Cancer % Tumour Estimates
Patented algorithms for the counting of cells and calculating
% tumor in H&E tissue samples
r = 0.972
P<0.0001
TissueMark Validation
Lung Tumours
Workflow for easy integration
Automated Imaging and Decision
Support for Primary Diagnostics
Significantly improves objectivity and reliability of diagnosis
FDA have given 510k approval for use of algorithms for Her2 measurement routine
ASCO/CAP Recommendations (Wolff et al 2007)
Health insurers in USA reimburse for Her2 image analysis tests
0 2+ 3+
Subjective: 20% misclassification
1+
Her2 IHC - biomarker in breast cancer
Routine Adoption of Quantitative Imaging
is
Reliant on Adoption of Digital Pathology for
Primary Review and Diagnosis
https://digitalpathologyassociation.org/healthcare-faqs
FDA and digital pathology
These applications make your life easier
These applications make the quality of
your work better
https://digitalpathologyassociation.org/healthcare-faqs
Is Digital Pathology Safe?
Is Digital Pathology Cost Effective?
Is digital pathology for primary review safe?
Is digital pathology for primary cost-effective?
5-years:
Total cost savings based on
anticipated improvements in
pathology productivity and
histology lab consolidation
were estimated at
$12.4 million
for an institution with 219,000
annual accessions.
Potentially reduce costs of
incorrect treatment by $5.4
million
The Digital Pathology Cockpit
95%
5%
IHC
H&E
Reducing Error
Rates in Pathology
Computerised Imaging and H&E analysis?
Image Analysis for H&E evaluation
Image Analysis for H&E evaluation
Mapping Tissue Phenotype and Morphological Heterogeneity
Integrating phenotype and genotype to capture tumour heterogenity
Next generation imaging:
From pipedream to reality
Professor Manuel Salto-Tellez
PhD students
Mr Ryan Hutchinson
Mr Nick McCarthy
Post-doctoral Researchers
Dr Peter Bankhead, PhD
Dr Darragh McArt, PhD
Dr Yinhai Wang, PhD
Dr Ching-Wei Wang, PhD
Dr Stephen Keenan, PhD
Dr Andrena McCavinagh, PhD
Pathologists
Dr Jackie James, MD
Dr Maurice Loughrey, MD
Dr Damian McManus, MD
Professor R Montironi, MD
Professor R Williams, MD
PathXL
Dr Jim Diamond (PathXL)
Mr David McCleary (PathXL)
Mr Jonathon Tunstall (PathXL)
Dr Giussepe Lippolis (Fast-Path)
Dr Nick McCarthy (Fast-Path)
Acknowledgements

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Peter Hamilton on Next generation Imaging and Computer Vision in Pathology: pipedream or reality?

  • 1. Peter W Hamilton Professor of Pathology Bioimaging and Informatics Centre for Cancer Research & Cell Biology Queen’s University of Belfast Vice President, Research and Development PathXL Next generation imaging and Computer vision in Pathology: Pipedream to reality
  • 2. Digital Pathology Growth Digital Pathology Market worth $437 Million by 2018
  • 3. Digital Pathology is not new! Histopathology 1987;9:901-911 Classification of normal colorectal mucosa and adenocarcinoma by morphometry. HAMILTON PW*, ALLEN DC*, WATT PCH PATTERSON CC, BIGGART JD.
  • 4. The Regrowth of Digital Pathology 1970 1980 1990 2000 2010 Academicactivity Whole Slide Imaging Pathology & Personalised medicine
  • 7. Target Discovery Lead Optimization Preclinical/animal Studies Clinical Development I II III Approval Clinic Drug Development Biomarker Discovery Biomarker Validation Assay Development Clinical Utility Testing Approval Clinic Biomarker Development The Challenge of Precision Medicine Therapeutic/diagnostic co-development 7
  • 8. Target Discovery Lead Optimization Preclinical/animal Studies Clinical Development I II III Approval Clinic Drug Development Biomarker Discovery Biomarker Validation Assay Development Clinical Utility Testing Approval Clinic Biomarker Development Biobanking Biobanks supply high quality tissue samples and images for target and biomarker identification Tissue Microarrays (TMAs) and remote biomarker analysis Digital TMA management, review and biomarker scoring for discovery and validation Image Analysis Companion Algorithms Multicentre Clinical Trials Remote review of tissue biomarkers for trial and therapeutic arm selection across institutions, networks and countries Toxicological Pathology Remote review of slides to ensure integrity of pathological interpretation and interobserver variation Digital Pathology in the Drug/Biomarker Development Pipeline Tumor Identification Automated tumor annotation and % tumor measurements for Molecular Diagnostics Quantitative assays to support patient stratification and therapeutic selection Quantitative automated assessment of tissue biomarkers (IHC, ISH) 8
  • 9. NI Molecular Pathology Lab Centre for Cancer Research Queen’s University Belfast
  • 10. NEXT GENERATION SEQUENCINGHT GE ARRAYS / METHYL / CNV IMAGING SCANNING LT TESTING (SEQ, Q-PCR)AUT NA EXTR AUTOMATED IHCAUTOM. FISHAUTOMATED H+E MICROSCOPYSAMPLE PREPARATION
  • 11. Integrated Digital Pathology Biomarker Research Primary Molecular Diagnostics Accredited Laboratory
  • 12. Cloud Storage and Serving Integrated Digital Pathology Central Archive and Image Server Whole Slide Scanners Archiving Biobaking Training Tumor Board Meetings Internal Quality Control Remote Slide Review Biomarker Discovery and Validation Mutisite Collaboration Multicentre Clinical Trials The pathologist no longer needs to be in the same room as the glass slide
  • 13.
  • 14.
  • 15. Errors in Pathology Subjectivity of visual scoring
  • 16. Kappa Pre-invasive lesions of the bronchus 0.55 (Nicholson – Histopathology 2001;38:202-208) Cervical cytology 0.46 (Stoler – JAMA 2001;285:1500-1505) Cervical Histology 0.15 – 0.62 (McCluggage – Br J Obs Gynae 1998;105:206-210) Prostate Cancer 0.58 (Egevad – Urology 2001;57:291-295) Oral Dysplasia 0.27 – 0.45 (Warnakulasuriya – J Pathol 2001;194:294-297) Variation in interpretation of renal transplant biopsiesFurness et al. Aberrant diagnoses by surgical pathologists Wakely et al Dysplasia classification: pathology in disgrace Bosman. “Individuality” in the specialty of surgical pathology Ackerman Errors in pathological diagnosis
  • 17. Automated Computer Vision and Analysis of Tissues Nuclear Staining Cytoplasmic Staining Membrane Staining
  • 18.
  • 19. Biomarker Marker Discovery Studies 458 samples across 4 TMAs BAX IHC Scored by x2 experienced pathologists BAX & BAK as predictors of patient outcome Automated imaging of BAX IHC
  • 20. MANUAL SCORE QPATH AUTOMATED Num.scored > 100 Num.scored > 100
  • 21. Computerised imaging allows you to do difficult things…
  • 22. Augmented Visualisation in Pathology (AVP) Allows you to measure the seeable Allows you to detect the unseeable
  • 23.
  • 24. Computerised imaging allows you to do difficult things… Tumour Stroma Q Nuclear H-score Q Cyto H-score Q Nuclear H-score Q Cyto H-score FLIP Pro-caspase 8 Adenocarcinoma Squamous carcinoma Phenotypic signature FLIP CASP8 High High Low Low High Low Low High HET FLIP Adenocarcinoma: Q H-score>170 = High Squamous cell: Q H-score>245 = High CASP8 Adenocarcinoma: Q H-score>160 = High Squamous cell: Q H-score>195 = High
  • 25. p= <0.0001 HR 14.37 95% CI 3.41-60.49 p= 0.05 HR 2.57 95% CI 0.67-6.77 Adenocarcinoma specific H-score p= 0.03 HR 3.15 95% CI 1.12-8.84 Squamous cell carcinoma specific H-score Cytoplasmic expression (not nuclear) was prognostic in NSCLC – Ad and Sq
  • 26. Image analysis of Tissue Heterogeneity Potts et al. Lab Invest 2012;92:1342-57
  • 28.
  • 29. ER PR HER2 Mib1 (KI67) p53 CK5/6 CK14 CK-17 Baseline IHC BiomarkersOropharynx TMA 1 Mesothelioma TMA 1 Ovarian TMA 1 Ovarian TMA 2 Ovarian TMA 2A (Stroma) Ovarian TMA 3B Gastric Cancer TMA Sing Oesophageal TMA ICR NSCLC TMA1 COIN TRIAL (TMA 1-40) Breast TMA 1-4 CK20 E-cadherin Retrospective tissue series & TMAS S100 HBME1 p16 CA125 CA19.9 High Throughput Image Analysis of Baseline Biomarkers Breast Cancer Colorectal Cancer Ovarian Cancer Prostate Cancer Head & Neck Cancer Lung Cancer Prospective Biobank Collections Bladder TMA 1-3 Moving from small local cohorts to large mutinational patient populations
  • 30. High Performance Image Analysis HP Blade System Cluster 900 processor cores MS Message Passage Interface (MPI) Centralised Dynamic Load Balancing
  • 31. HPC provides significant analytical speedup for automated TMA analysis • Evaluation and fine tuning of biomarker algorithms on large datasets • Multiplex Biomarker experiments across large tissue cohorts, multiple TMAs and multiple markers • FAST-PATH FP7 Marie Curie Programme Wang Y & Hamilton , et al. Ultrafast processing of gigapixel TMA images using HPC. PLoS ONE 2010; 6(2): e15818 X50 – X100 fold speed up in processing time 300 tissue core arrays - IHC
  • 32. Accelerator Award A national digital pathology and image analysis programme for solid tumour analysis Clinical Fellowship programme in Molecular Pathology Belfast Southampton ICR/Royal Marsden Manchester Newcastle Leicester
  • 33. Automated Imaging in tissue research is going to drive discovery of next generation of tissue biomarkers for precision medicine
  • 34. But won’t tissue pathology be redundant in next few years?
  • 35. Transforming how we practice pathology
  • 36. Gene Panels and Clinical Sequencing
  • 37. Molecular testing, FFPE and H&E Review EGFR KRAS BRAF NRAS CMET MMR Oncotype Dx Mammaprint Foundation One Clinical Sequencing Sample FFPE Tumour Markup Tumour Sufficiency Macrodissection DNA Extraction DNA Quantification Platform Molecular Assay Output Sanger QPCR NGS Pre-Analytical Analytical OperatorVariability
  • 38.
  • 39. To automatically identify tumour and calculate tumour percentage in digital H&E tissue sections using image analysis Pathologist mark-up TissueMark mark-up
  • 40. I. Tumour Identification TissueMark Molecular Diagnos cs Image Viewing Image Management Image Conversion Image Serving Workflow crea on Digital Image Handling Tile Management Pa ern recogni on Object management & analysis Image Processing Visualisa on Image Processing and Analysis Biomarker AnalysisImmunocell analysisCancer detec on Tumor boundary analysis Tissue Recogni on and Cancer detec on Gland recogni on Epithelial analysis Nuclear analysis Tissue Architecture and Cellular Quan ta on Histo iden fica on Tumor Cell Counts Histological ScreeningBiomarker Clinical Trials Immuno-oncology PathXL’s Tissue Recogition Engine
  • 41. II. Computation of a macrodissection boundary
  • 43. % Tumour cells ? III. % Tumour cells
  • 44. KRAS: COBAS 5%, Sanger 15% EGFR: COBAS 5%, Sanger 30% BRAF: COBAS 5%, Sanger 30% Next Generation Sequencing: 5% - 70% Foundation One: 20% TCGA: 80% Limits of sensitivity & Percentage Tumour DNA
  • 45. • 20 High resolution images NSCLC ▪ Circulated to 4 pathologists ▪ % tumour estimates Variation in lung % tumour cell estimates amongst pathologists
  • 46. Lung Cancer % Tumour Estimates
  • 47. Patented algorithms for the counting of cells and calculating % tumor in H&E tissue samples
  • 48. r = 0.972 P<0.0001 TissueMark Validation Lung Tumours
  • 49. Workflow for easy integration
  • 50.
  • 51. Automated Imaging and Decision Support for Primary Diagnostics
  • 52.
  • 53. Significantly improves objectivity and reliability of diagnosis FDA have given 510k approval for use of algorithms for Her2 measurement routine ASCO/CAP Recommendations (Wolff et al 2007) Health insurers in USA reimburse for Her2 image analysis tests 0 2+ 3+ Subjective: 20% misclassification 1+ Her2 IHC - biomarker in breast cancer
  • 54. Routine Adoption of Quantitative Imaging is Reliant on Adoption of Digital Pathology for Primary Review and Diagnosis
  • 56. These applications make your life easier These applications make the quality of your work better https://digitalpathologyassociation.org/healthcare-faqs
  • 57. Is Digital Pathology Safe? Is Digital Pathology Cost Effective?
  • 58. Is digital pathology for primary review safe?
  • 59. Is digital pathology for primary cost-effective? 5-years: Total cost savings based on anticipated improvements in pathology productivity and histology lab consolidation were estimated at $12.4 million for an institution with 219,000 annual accessions. Potentially reduce costs of incorrect treatment by $5.4 million
  • 61. 95% 5% IHC H&E Reducing Error Rates in Pathology Computerised Imaging and H&E analysis?
  • 62. Image Analysis for H&E evaluation
  • 63. Image Analysis for H&E evaluation
  • 64.
  • 65. Mapping Tissue Phenotype and Morphological Heterogeneity
  • 66. Integrating phenotype and genotype to capture tumour heterogenity
  • 67. Next generation imaging: From pipedream to reality
  • 68. Professor Manuel Salto-Tellez PhD students Mr Ryan Hutchinson Mr Nick McCarthy Post-doctoral Researchers Dr Peter Bankhead, PhD Dr Darragh McArt, PhD Dr Yinhai Wang, PhD Dr Ching-Wei Wang, PhD Dr Stephen Keenan, PhD Dr Andrena McCavinagh, PhD Pathologists Dr Jackie James, MD Dr Maurice Loughrey, MD Dr Damian McManus, MD Professor R Montironi, MD Professor R Williams, MD PathXL Dr Jim Diamond (PathXL) Mr David McCleary (PathXL) Mr Jonathon Tunstall (PathXL) Dr Giussepe Lippolis (Fast-Path) Dr Nick McCarthy (Fast-Path) Acknowledgements