Mitotic count (MC) is an important element for grading canine cutaneous mast cell tumors (ccMCTs) and is determined in 10 consecutive high-power fields with the highest mitotic activity. However, there is variability in area selection between pathologists. In this study, the MC distribution and the effect of area selection on the MC were analyzed in ccMCTs. Two pathologists independently annotated all mitotic figures in whole-slide images of 28 ccMCTs (ground truth). Automated image analysis was used to examine the ground truth distribution of the MC throughout the tumor section area, which was compared with the manual MCs of 11 pathologists. Computerized analysis demonstrated high variability of the MC within different tumor areas. There were 6 MCTs with consistently low MCs (MC<7 in all tumor areas), 13 cases with mostly high MCs (MC ≥7 in ≥75% of 10 high-power field areas), and 9 borderline cases with variable MCs around 7, which is a cutoff value for ccMCT grading. There was inconsistency among pathologists in identifying the areas with the highest density of mitotic figures throughout the 3 ccMCT groups; only 51.9% of the counts were consistent with the highest 25% of the ground truth MC distribution. Regardless, there was substantial agreement between pathologists in detecting tumors with MC ≥7. Falsely low MCs below 7 mainly occurred in 4 of 9 borderline cases that had very few ground truth areas with MC ≥7. The findings of this study highlight the need to further standardize how to select the region of the tumor in which to determine the MC.

References

1. Al-Janabi, S, van Slooten, H-J, Visser, M, et al. Evaluation of mitotic activity index in breast cancer using whole slide digital images . PLoS One. 2013 ;8: e82576 .

Google Scholar Crossref | Medline | ISI

2. Aubreville, M, Bertram, C, Klopfleisch, R, et al. Slide runner . In: Maier, A, Deserno, T, Handels, H, et al. , eds. Bildverarbeitung für die Medizin 2018. Berlin, Germany : Springer Vieweg ; 2018 : 309 – 314 .

Google Scholar

3. Aubreville, M, Bertram, CA, Klopfleisch, R, et al. Field of interest proposal for augmented mitotic cell count: comparison of two convolutional networks. Paper presented at: Proceedings of the 12th International Joint Conference on Biomedical Engineering Systems and Technologies; February 22-24, 2019 ; Prague , Czech Republic .

Google Scholar

4. Aubreville, M, Bertram, CA, Marzahl, C, et al. Field of interest prediction for computer-aided mitotic count . arXiv preprint arXiv:190205414. 2019 .

Google Scholar

5. Aubreville, M, Krappmann, M, Bertram, C, et al. A guided spatial transformer network for histology cell differentiation. Paper presented at: Eurographics Workshop on Visual Computing for Biology and Medicine ; ; Brno , Czech Republic .

Google Scholar

6. Baak, JP, Gudlaugsson, E, Skaland, I, et al. Proliferation is the strongest prognosticator in node-negative breast cancer: significance, error sources, alternatives and comparison with molecular prognostic markers . Breast Cancer Res Treat. 2009 ;115(2): 241 – 254 .

Google Scholar Crossref | Medline | ISI

7. Bertram, CA, Gurtner, C, Dettwiler, M, et al. Validation of digital microscopy compared with light microscopy for the diagnosis of canine cutaneous tumors . Vet Pathol. 2018 ;55(4): 490 – 500 .

Google Scholar SAGE Journals | ISI

8. Bertram, CA, Klopfleisch, R. The pathologist 2.0: an update on digital pathology in veterinary medicine . Vet Pathol. 2017 ;54(5): 756 – 766 .

Google Scholar SAGE Journals | ISI

9. Boiesen, P, Bendahl, P-O, Anagnostaki, L, et al. Histologic grading in breast cancer: reproducibility between seven pathologic departments . Acta Oncol. 2000 ;39(1): 41 – 45 .

Google Scholar Crossref | Medline | ISI

10. Bonert, M, Tate, AJ. Mitotic counts in breast cancer should be standardized with a uniform sample area . BioMed Eng OnLine. 2017 ;16(1): 16 – 28 .

Google Scholar Crossref | Medline

11. Bostock, D . The prognosis following surgical removal of mastocytomas in dogs . J Small Anim Pract. 1973 ;14(1): 27 – 40 .

Google Scholar Crossref | Medline | ISI

12. Collan, Y, Kuopio, T, Baak, J, et al. Standardized mitotic counts in breast cancer evaluation of the method . Pathol Res Pract. 1996 ;192(9): 931 – 941 .

Google Scholar Crossref | Medline

13. Dennis, M, McSporran, K, Bacon, N, et al. Prognostic factors for cutaneous and subcutaneous soft tissue sarcomas in dogs . Vet Pathol. 2011 ;48(1): 73 – 84 .

Google Scholar SAGE Journals | ISI

14. Edmondson, E, Hess, A, Powers, B. Prognostic significance of histologic features in canine renal cell carcinomas: 70 nephrectomies . Vet Pathol. 2015 ;52(2): 260 – 268 .

Google Scholar SAGE Journals | ISI

15. Elston, LB, Sueiro, FA, Cavalcanti, JN, et al. Letter to the editor: the importance of the mitotic index as a prognostic factor for survival of canine cutaneous mast cell tumors: a validation study . Vet Pathol. 2009 ;46(2): 362 – 364 .

Google Scholar SAGE Journals | ISI

16. Gamer, M, Lemon, J, Fellows, I, et al. Package ‘irr’ Version 0.84.1: Various coefficients of interrater reliability and agreement . 2019 . https://cran.r-project.org/web/packages/irr/irr.pdf

Google Scholar

17. Hallgren, KA . Computing inter-rater reliability for observational data: an overview and tutorial . Tutor Quant Methods Psychol. 2012 ;8(1): 23 – 34 .

Google Scholar Crossref | Medline

18. Horta, RS, Lavalle, GE, Monteiro, LN, et al. Assessment of canine mast cell tumor mortality risk based on clinical, histologic, immunohistochemical, and molecular features . Vet Pathol. 2018 ;55(2): 212 – 223 .

Google Scholar SAGE Journals | ISI

19. Kirpensteijn, J, Kik, M, Rutteman, G, et al. Prognostic significance of a new histologic grading system for canine osteosarcoma . Vet Pathol. 2002 ;39(2): 240 – 246 .

Google Scholar SAGE Journals | ISI

20. Kiupel, M, Webster, J, Bailey, K, et al. Proposal of a 2-tier histologic grading system for canine cutaneous mast cell tumors to more accurately predict biological behavior . Vet Pathol. 2011 ;48(1): 147 – 155 .

Google Scholar SAGE Journals | ISI

21. Li, C, Wang, X, Liu, W, et al. DeepMitosis: mitosis detection via deep detection, verification and segmentation networks . Med Image Anal. 2018 ;45: 121 – 133 .

Google Scholar Crossref | Medline

22. Loukopoulos, P, Robinson, W. Clinicopathological relevance of tumour grading in canine osteosarcoma . J Comp Pathol. 2007 ;136(1): 65 – 73 .

Google Scholar Crossref | Medline | ISI

23. Malon, C, Brachtel, E, Cosatto, E, et al. Mitotic figure recognition: agreement among pathologists and computerized detector . Anal Cell Pathol. 2012 ;35(2): 97 – 100 .

Google Scholar Crossref

24. McSporran, K . Histologic grade predicts recurrence for marginally excised canine subcutaneous soft tissue sarcomas . Vet Pathol. 2009 ;46(5): 928 – 933 .

Google Scholar SAGE Journals | ISI

25. Meuten, D, Moore, F, George, J. Mitotic count and the field of view area: time to standardize . Vet Pathol. 2016 ;53(1): 7 – 9 .

Google Scholar SAGE Journals | ISI

26. Meuten, DJ . Appendix: diagnostic schemes and algorithms . In: Meuten, D , ed. Tumors in Domestic Animals. New York, NY : John Wiley ; 2016 : 942 – 978 .

Google Scholar Crossref

27. Meyer, JS, Alvarez, C, Milikowski, C, et al. Breast carcinoma malignancy grading by Bloom–Richardson system vs proliferation index: reproducibility of grade and advantages of proliferation index . Mod Pathol. 2005 ;18(8): 1067 – 1078 .

Google Scholar Crossref | Medline

28. Meyer, JS, Cosatto, E, Graf, HP. Mitotic index of invasive breast carcinoma: achieving clinically meaningful precision and evaluating tertial cutoffs . Arch Pathol Lab Med. 2009 ;133(11): 1826 – 1833 .

Google Scholar Medline

29. Mills, S, Musil, K, Davies, J, et al. Prognostic value of histologic grading for feline mammary carcinoma: a retrospective survival analysis . Vet Pathol. 2015 ;52(2): 238 – 249 .

Google Scholar SAGE Journals | ISI

30. Patnaik, A, Ehler, W, MacEwen, E. Canine cutaneous mast cell tumor: morphologic grading and survival time in 83 dogs . Vet Pathol. 1984 ;21(5): 469 – 474 .

Google Scholar SAGE Journals | ISI

31. Peña, L, Andrés, PD, Clemente, M, et al. Prognostic value of histological grading in noninflammatory canine mammary carcinomas in a prospective study with two-year follow-up: relationship with clinical and histological characteristics . Vet Pathol. 2012 ;50(1): 94 – 105 .

Google Scholar SAGE Journals

32. Romansik, E, Reilly, C, Kass, P, et al. Mitotic index is predictive for survival for canine cutaneous mast cell tumors . Vet Pathol. 2007 ;44(3): 335 – 341 .

Google Scholar SAGE Journals | ISI

33. Sabattini, S, Bettini, G. Grading cutaneous mast cell tumors in cats . Vet Pathol. 2019 ;56(1): 43 – 49 .

Google Scholar SAGE Journals | ISI

34. Sabattini, S, Bettini, G. Prognostic value of histologic and immunohistochemical features in feline cutaneous mast cell tumors . Vet Pathol. 2010 ;47(4): 643 – 653 .

Google Scholar SAGE Journals | ISI

35. Sabattini, S, Scarpa, F, Berlato, D, et al. Histologic grading of canine mast cell tumor: is 2 better than 3? Vet Pathol. 2015 ;52(1): 70 – 73 .

Google Scholar SAGE Journals | ISI

36. Santos, M, Correia-Gomes, C, Santos, A, et al. Interobserver reproducibility of histological grading of canine simple mammary carcinomas . J Comp Path. 2015 ;153(1): 22 – 27 .

Google Scholar Crossref | Medline

37. Sarli, G, Benazzi, C, Preziosi, R, et al. Evaluating mitotic activity in canine and feline solid tumors: standardizing the parameter . Biotech Histochem. 1999 ;74(2): 64 – 76 .

Google Scholar Crossref | Medline

38. Schott, CR, Tatiersky, LJ, Foster, RA, et al. Histologic grade does not predict outcome in dogs with appendicular osteosarcoma receiving the standard of care . Vet Pathol. 2018 ;55(2): 202 – 211 .

Google Scholar SAGE Journals | ISI

39. Skaland, I, van Diest, PJ, Janssen, EA, et al. Prognostic differences of world health organization–assessed mitotic activity index and mitotic impression by quick scanning in invasive ductal breast cancer patients younger than 55 years . Hum Pathol 2008 ;39(4): 584 – 590 .

Google Scholar Crossref | Medline

40. Sledge, DG, Webster, J, Kiupel, M. Canine cutaneous mast cell tumors: a combined clinical and pathologic approach to diagnosis, prognosis, and treatment selection . Vet J. 2016 ;215: 43 – 54 .

Google Scholar Crossref | Medline

41. Spangler, W, Culbertson, M, Kass, P. Primary mesenchymal (nonangiomatous/nonlymphomatous) neoplasms occurring in the canine spleen: anatomic classification, immunohistochemistry, and mitotic activity correlated with patient survival . Vet Pathol. 1994 ;31(1): 37 – 47 .

Google Scholar SAGE Journals | ISI

42. Spangler, W, Kass, P. The histologic and epidemiologic bases for prognostic considerations in canine melanocytic neoplasia . Vet Pathol. 2006 ;43(2): 136 – 149 .

Google Scholar SAGE Journals | ISI

43. Thompson, J, Pearl, D, Yager, J, et al. Canine subcutaneous mast cell tumor: characterization and prognostic indices . Vet Pathol. 2011 ;48(1): 156 – 168 .

Google Scholar SAGE Journals | ISI

44. Tsuda, H, Akiyama, F, Kurosumi, M, et al. Evaluation of the interobserver agreement in the number of mitotic figures breast carcinoma as simulation of quality monitoring in the Japan National Surgical Adjuvant Study of Breast Cancer (NSAS-BC) protocol . Jpn J Cancer Res. 2000 ;91(4): 451 – 457 .

Google Scholar Crossref | Medline

45. Valli, V, Kass, P, Myint, MS, et al. Canine lymphomas: association of classification type, disease stage, tumor subtype, mitotic rate, and treatment with survival . Vet Pathol. 2013 ;50(5): 738 – 748 .

Google Scholar SAGE Journals | ISI

46. van Diest, PJ, Baak, JP, Matze-Cok, P, et al. Reproducibility of mitosis counting in 2,469 breast cancer specimens: results from the multicenter morphometric mammary carcinoma project . Human Pathol. 1992 ;23(6): 603 – 607 .

Google Scholar Crossref | Medline

47. Vascellari, M, Giantin, M, Capello, K, et al. Expression of Ki67, BCL-2, and COX-2 in canine cutaneous mast cell tumors: association with grading and prognosis . Vet Pathol. 2013 ;50(1): 110 – 121 .

Google Scholar SAGE Journals | ISI

48. Veta, M, Van Diest, PJ, Jiwa, M, et al. Mitosis counting in breast cancer: object-level interobserver agreement and comparison to an automatic method . PLoS One. 2016 ;11(8): e0161286 .

Google Scholar Crossref | Medline