| Literature DB >> 30785924 |
Ah-Young Kwon1, Ha Young Park2, Jiyeon Hyeon3, Seok Jin Nam4, Seok Won Kim4, Jeong Eon Lee4, Jong-Han Yu4, Se Kyung Lee4, Soo Youn Cho5, Eun Yoon Cho5.
Abstract
The Ki-67 labeling index (LI) is an important prognostic factor in breast carcinoma. The Ki-67 LI is traditionally calculated via unaided microscopic estimation; however, inter-observer and intra-observer variability and low reproducibility are problems with this visual assessment (VA) method. For more accurate assessment and better reproducibility with Ki-67 LI, digital image analysis was introduced recently. We used both VA and automated digital image analysis (ADIA) (Ventana Virtuoso image management software) to estimate Ki-67 LI for 997 cases of breast carcinoma, and compared VA and ADIA results. VA and ADIA were highly correlated (intraclass correlation coefficient 0.982, and Spearman's correlation coefficient 0.966, p<0.05). We retrospectively analyzed cases with a greater than 5% difference between VA and ADIA results. The cause of these differences was: (1) tumor heterogeneity (98 cases, 56.0%), (2) VA interpretation error (32 cases, 18.3%), (3) misidentification of tumor cells (26 cases, 14.9%), (4) poor immunostaining or slide quality (16 cases, 9.1%), and (5) Estimation of non-tumor cells (3 cases, 1.7%). There were more discrepancies between VA and ADIA results in the group with a VA value of 10-20% compared to groups with <10% and ≥20%. Although ADIA is more accurate than VA, there are some limitations. Therefore, ADIA findings require confirmation by a pathologist.Entities:
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Year: 2019 PMID: 30785924 PMCID: PMC6382355 DOI: 10.1371/journal.pone.0212309
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Automated digital image analysis by Ventana Virtuoso image analysis software.
Each slide is scanned and several areas are selected. A green line surrounds the selected area, and a black line excluded area. The selected areas are analyzed automatically, marking stained tumor cells with red dots and non-stained tumor cells with green dots. The non-tumor cells are excluded in analysis automatically.
Clinicopathologic characteristics of 997 cases with breast carcinoma of 964 patients.
| Clinicopathologic parameters | n (%) | |
|---|---|---|
| Age (years) | < 50 | 510 (52.9%) |
| ≥ 50 | 454 (47.1%) | |
| Specimen | Core biopsy | 14 (1.4%) |
| Mammotome biopsy | 8 (0.8%) | |
| Excision | 27 (2.7%) | |
| Lumpectomy (partial mastectomy) | 598 (60.0%) | |
| Total mastectomy | 350 (35.1%) | |
| T stage | Tis | 158 (16.2%) |
| T1 | 506 (51.8%) | |
| T2 | 267 (28.3%) | |
| T3 | 42 (4.3%) | |
| T4 | 3 (0.3%) | |
| N stage | Metastasis present (N1, 2, 3) | 280 (30.4%) |
| Metastasis absent (N0) | 641 (69.6%) | |
| Histologic diagnosis | Invasive ductal carcinoma | 695 (70.9%) |
| Ductal carcinoma in situ | 149 (15.2%) | |
| Invasive lobular carcinoma | 57 (5.8%) | |
| Lobular carcinoma in situ | 6 (0.6%) | |
| Mixed invasive ductal and | 8 (0.8%) | |
| Mucinous carcinoma | 30 (3.1%) | |
| Metaplastic carcinoma | 12 (1.2%) | |
| Invasive micropapillary carcinoma | 9 (0.9%) | |
| Tubular carcinoma | 5 (0.5%) | |
| Encapsulated papillary carcinoma | 4 (0.4%) | |
| Solid papillary carcinoma | 3 (0.3%) | |
| Giant cell carcinoma | 2 (0.2%) | |
| Nuclear grade | Low | 128 (13.1%) |
| Intermediate | 587 (59.9%) | |
| High | 265 (27.0%) | |
| Immuno-histochemical stain | ER positive | 777 (78.8%) |
| ER negative | 209 (21.2%) | |
| PR positive | 696 (70.6%) | |
| PR negative | 290 (29.4%) | |
| HER2 positive | 183 (18.6%) | |
| HER2 equivocal | 39 (4.0%) | |
| HER2 negative | 764 (77.5%) | |
The intraclass correlation coefficient (ICC) and Spearman’s correlation coefficient, stratified by visual assessment values.
| Groups | n | ICC (95% CI) | p-value | Spearman’s ρ | p-value |
|---|---|---|---|---|---|
| <10% | 350 | 0.581 (0.507–0.646) | <0.001 | 0.698 | <0.001 |
| 10%-20% | 264 | 0.407 (0.301–0.503) | <0.001 | 0.546 | <0.001 |
| ≥20% | 383 | 0.965 (0.957–0.971) | <0.001 | 0.947 | <0.001 |
Causes of Ki-67 LI discrepancies between visual assessment and automated digital image analysis.
| Cause of discrepancy | n (%) |
|---|---|
| Tumor heterogeneity | 98 (56.0%) |
| Visual assessment interpretation error | 32 (18.3%) |
| Misidentification of tumor cells | 26 (14.9%) |
| Poor immunostaining or slide quality | 16 (9.1%) |
| Non-tumor cells estimated | 3 (1.7%) |
Fig 2The causes of discrepancy between two visual assessment and automated data image analysis.
(a) Heterogeneity of Ki-67 immunostaining. The left side green-lined box had a higher Ki-67 labeling index (LI) than the right side, indicating a difference between visual assessment and automated digital image analysis. (b—c) Misidentification of tumor cells. (b) Some tumor cells (arrow) were not recognized due to limitation of the automated algorithm. (c) Pleomorphic large cells or dumbbell-shaped tumor cells were estimated as two or more cells. (d—e) Poor Ki-67 immunostaining quality. (d) Poor tissue fixation led to poor Ki-67 staining quality and interfered with automatic image analysis. (e) Changing the tissue block and re-staining for Ki-67 led to clear staining and image analysis. (f—g) Erroneous recognition of non-tumor cells as Ki-67-negative tumor cells. (f) Some stromal cells were assessed as Ki-67-negative tumor cells. (g) Areas with stromal cells and/or inflammatory cells should be excluded; tumor cells were selected (black line) to exclude non-tumor cells as much as possible.