1 / 37

Quantitative Assessment of Tissue-based IHC Biomarkers

Quantitative Assessment of Tissue-based IHC Biomarkers. Next Generation Pharmaceutical Summit David Young 7 Apr 09. Digital Pathology. Digital Pathology – Research and Clinical Possibilities Quantitative Digital pathology IHC – Traditional evaluation vs Image analysis

jerry
Download Presentation

Quantitative Assessment of Tissue-based IHC Biomarkers

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Quantitative Assessment of Tissue-based IHC Biomarkers Next Generation Pharmaceutical Summit David Young 7 Apr 09

  2. Digital Pathology • Digital Pathology – Research and Clinical Possibilities • Quantitative Digital pathology • IHC – Traditional evaluation vs Image analysis • Tools not limited to pathologists

  3. Digital Pathology – Where Are We Headed?

  4. Digital Pathology • Digital Pathology – Research and Clinical Possibilities • Archival of pathology specimens • Diagnosis • Digital slide conferencing • Consultation • Help from Development Teams • putting the power in the hands of the people who know it best

  5. Quantitative Digital Pathology - The Next Step

  6. Quantitative Digital Pathology • Pathologist opinions • Good enough for government work, or • Close, but no cigar • X number of pathologists = Y number of results • Diagnoses • IHC analysis • subjective; based on familiarity of tissue and experience

  7. IHC Assessment of Tissue-based Biomarkers

  8. Immunohistochemistry Analyses and Quantitative Digital Pathology • Not an exact science • Basis of many aspects of drug development and drug selection

  9. Biomarker Scoring Consensus • Clark (2006) – ‘there is no consensus in the literature about how to summarize these scoring assessments into a single determination of EGFR protein expression status as EGFR positive or EGFR negative.’ • ‘Evaluation of the clinical significance of EGFR expression by IHC has been complicated by the use of different antibodies, different scoring systems, and different clinical endpoints.’ Clark, et al: J Thorac Oncol 2006

  10. Importance of Standardized Scoring • Prevalence and tumor surveillance • Prognostic factors • Predictive factors • Comparing study results from a recognized baseline of analysis

  11. IHC Scoring Concordance – Pathologists Variability Concordance Total scoring = 78% Cut point <100 = 92% Concordance Total scoring = 75% Cut point <100 = 100%

  12. Pathologist Variation Pathologist 1 Scores: Y = 0.96X + 3.21 R = 0.987 Pathologist 2 Scores: Y = 0.97X -2.72 R = 0.974 Legend: Red – Pathologist 1 Blue – Pathologist 2

  13. Image Analysis– Lessens Subjectivity of Scoring Quantify: Size (area) Positive cells Negative cells Intensity levels

  14. Tissue-based Biomarkers – Case Study • E-Cadherin • Marker of epithelial phenotype • Associated with cell-to-cell adhesion • Membrane protein • Vimentin • Marker of mesenchymal phenotype • Associated with cellular skeleton • Cytoplasmic protein

  15. Experimental Xenograft model H&E E-cad Vim

  16. Heterogeneity in Tumor Tissue – E-cad

  17. Heterogeneity in Tumor Tissue – Vim

  18. Traditional IHC Score (H-Score) 1% 10% 30% 100% 0 75% Proportion Score (PS) 0 – 100% Intensity Score (IS) 0 = negative 1 = weak 2 = intermed 3 = strong Score range: 0-300

  19. Factors Affecting IHC Analysis – Not Just the Pathologist • Tumor acquisition (pre-analytical factors) • Tumor size • Tumor type (Tumor tissue and host response) • Antibodies • Processing factors • Individual variation in evaluation

  20. Cell Culture - E-cadherin

  21. NSCLC Criteria setup

  22. Cell Culture - Vimentin

  23. Xenograft model - E-cadherin

  24. Xenograft model - Vimentin

  25. NSCLC – example 1

  26. NSCLC – example 1 (higher mag)

  27. NSCLC – example 2

  28. NSCLC – example 3

  29. NSCLC – example 4 (Whole tumor; E-Cadherin)

  30. NSCLC – example 4 (Vimentin)

  31. Pancreas – Xenograft 1 H&E E-cad Vim

  32. Pancreas – Xenograft 1

  33. Pancreas – Xenograft 2

  34. Summary – What have we learned so far? • Selection of site for IHC evaluation is important; may or may not be reflective of whole tumor • Tumor heterogeneity affects tissue-based biomarker assessment and analysis • IA correlates well with traditional IHC scoring methods. • Validation removes pathologists scoring variability • ‘Tweaking’ of algorithms required prior to universal deployment

  35. Putting the Power in the Hands of the People

  36. Investigator Asks the Questions

  37. Thank you!

More Related