Development of Training Materials for Pathologists to Provide Machine Learning Validation Data of Tumor-Infiltrating Lymphocytes in Breast Cancer
Abstract
:Simple Summary
Abstract
1. Introduction
2. Materials and Methods
2.1. Pilot Study
2.2. Collected Annotations
2.3. Selecting Regions of Interest for the Expert Panel Sessions
2.4. Expert Panel Sessions
3. Results
- Not all mesenchymal tissue should be considered tumor-associated stroma. For the purposes of sTILs assessments, tumor-associated stroma is defined as the reactive stroma composed of fibroblasts, newly formed vessels, collagen fibers, and extracellular matrix surrounding invasive carcinoma cells and cell nests. Pre-existing normal structures, such as adipose tissue, blood vessels, or nerves, are excluded from the area segmented as tumor-associated stroma. Areas of necrosis and fibrin are also excluded.
- The percent of tumor-associated stroma is calculated with respect to the area of the entire ROI, as previously described. Vessel lumens, adipose tissue, and negative (empty) space should be included in the total ROI area, the denominator of the percent tumor-associated stroma equation. The numerator is only tumor-associated stroma.
- Variations in tumor cell morphology can make it difficult to distinguish stroma from tumor. Tumor cell cytoplasmic eosinophilia can be similar to that of adjacent stroma and cause difficulty in distinguishing these two tissue types. Additional stains may be useful in these scenarios.
- Carcinoma in situ and benign glandular elements entrapped within the tumor area, including intact terminal duct lobular units, should be excluded from the numerator when calculating the percent of tumor-associated stroma.
- The sTILs density score assessment had four identified pitfalls:
- Cells with small/pyknotic nuclei and/or perinuclear clearing can be difficult to categorize as macrophages, tumor cells, plasma cells, or lymphocytes. This may occur with invasive lobular carcinoma or in cases of suboptimal tissue fixation. Additional stains may be helpful.
- Non-lymphoid cells that may be confused for lymphocytes include cross-sectionally cut fibroblasts and tumor cells, particularly if low grade and/or degenerated. Sometimes, cancer cell nuclei are hyperchromatic, due to crush artifacts, overstaining, and/or poor fixation, and can be confused for lymphocytes.
- Error in the percent tumor-associated stroma can lead to inflated or deflated sTILs scores. Stroma may be obscured by dense populations of cells and may be incorrectly excluded from the sTILs evaluation. A lower estimated percent tumor-associated stroma could substantively affect the sTILs score.
- When tumor cells are sparsely distributed throughout the ROI, it may be more challenging to accurately quantitate the sTILs density and percent tumor-associated stroma.
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Disclaimer
References
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Figure | Figure Description | Mean sTILs Density | Variance | Majority Label | Entropy |
---|---|---|---|---|---|
2A | High Variance LE10 | 10 | 400 | Intra-Tumoral Stroma | 1.01 |
2B | Low Variance LE10 | 0 | 0 | Other Regions | 0.64 |
2C | High Variance GT40 | 64.2 | 1008.2 | Intra-Tumoral Stroma | 0.45 |
2D | Low Variance GT40 | 79.83 | 58.97 | Intra-Tumoral Stroma | 0.64 |
3A | High Entropy LE10 | 3.5 | 9.67 | Intra-Tumoral Stroma *AND* Invasive Margin *AND* Tumor with No Intervening Stroma | 1.1 |
3B | Low Entropy LE10 | 9.75 | 70.79 | Intra-Tumoral Stroma | 0 |
3C | High Entropy GT40 | 69.08 | 775.9 | Intra-Tumoral Stroma | 0.86 |
3D | Low Entropy GT40 | 66.83 | 212.17 | Intra-Tumoral Stroma | 0 |
Figure | Figure Description | Invasive Margin | Intra-Tumoral Stroma | Tumor with No Intervening Stroma | Other Regions |
---|---|---|---|---|---|
2A | High Variance LE10 | 1 | 3 | 2 | 0 |
2B | Low Variance LE10 | 0 | 2 | 0 | 4 |
2C | High Variance GT40 | 0 | 5 | 1 | 0 |
2D | Low Variance GT40 | 2 | 4 | 0 | 0 |
3A | High Entropy LE10 | 2 | 2 | 2 | 0 |
3B | Low Entropy LE10 | 0 | 8 | 0 | 0 |
3C | High Entropy GT40 | 2 | 10 | 3 | 0 |
3D | Low Entropy GT40 | 0 | 6 | 0 | 0 |
All Densities | ≤10% | 10% < % ≤ 40% | >40% | |
---|---|---|---|---|
Crowd-All | 48.10 (20.58–110.31) | 30.70 (15.07–59.50) | 111.50 (56.30–245.13) | 324.55 (278.17–627.50) |
Crowd-Select | 212.24 (39.33–549.50) | 44.67 (4.05–225.28) | 246.80 (67.58–646.18) | 358.75 (210.17–762.73) |
Experts | 14.17 (4.23–178.67) | 3.07 (0.98–4.32) | 70.00 (14.17–224.17) | 96.67 (39.42–275.03) |
All Densities | ≤10% | 10% < % ≤ 40% | >40% | |
---|---|---|---|---|
Crowd-All | 0.23 (0.00–0.45) | 0.23 (0.00–0.41) | 0.24 (0.00- 0.50) | 0.00 (0.00–0.45) |
Crowd-Select | 0.56 (0.00–0.86) | 0.64 (0.45–0.99) | 0.64 (0.24–0.92) | 0.45 (0.00–0.52) |
Experts | 0.00 (0.00–0.45) | 0.00 (0.00–0.45) | 0.00 (0.00–0.45) | 0.00 (0.00–0.50) |
Majority Label | Crowd-All | Crowd-Select | Experts |
---|---|---|---|
Intra-Tumoral Stroma | 525 (82.03%) | 54 (75%) | 56 (77.78%) |
Intra-Tumoral Stroma *AND* Invasive Margin | 10 (1.56%) | 1 (1.39%) | 1 (1.39%) |
Intra-Tumoral Stroma *AND* Invasive Margin *AND* Tumor with No Intervening Stroma | 1 (0.16%) | 1 (1.39%) | 0 (0%) |
Intra-Tumoral Stroma *AND* Other Regions | 2 (0.31%) | 0 (0%) | 2 (2.78%) |
Intra-Tumoral Stroma *AND* Tumor with No Intervening Stroma | 4 (0.62%) | 1 (1.39%) | 0 (0%) |
Invasive Margin | 8 (1.25%) | 2 (2.78%) | 1 (1.39%) |
Invasive Margin *AND* Other Regions | 1 (0.16%) | 1 (1.39%) | 0 (0%) |
Other Regions | 80 (12.5%) | 7 (9.72%) | 12 (16.67%) |
Tumor with No Intervening Stroma | 9 (1.41%) | 5 (6.94%) | 0 (0%) |
Pitfall Type | Pitfall Summary |
---|---|
Percent of Tumor-Associated Stroma | Exclude thick-walled vessels, benign glandular elements, adipocytes, carcinoma in situ, and necrosis from the area of tumor-associated stroma |
Calculate with respect to the entire ROI area | |
Variations in tumor cell morphology can make it difficult to distinguish stroma from tumor | |
sTILs Density Score | Cells with small/pyknotic nuclei and/or perinuclear clearing can be difficult to categorize |
Non-lymphoid cells may be confused for lymphocytes | |
Error in the percent tumor-associated stroma can affect the sTILs density | |
Sparsely distributed tumor cells may be more challenging to quantitate |
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Garcia, V.; Elfer, K.; Peeters, D.J.E.; Ehinger, A.; Werness, B.; Ly, A.; Li, X.; Hanna, M.G.; Blenman, K.R.M.; Salgado, R.; et al. Development of Training Materials for Pathologists to Provide Machine Learning Validation Data of Tumor-Infiltrating Lymphocytes in Breast Cancer. Cancers 2022, 14, 2467. https://doi.org/10.3390/cancers14102467
Garcia V, Elfer K, Peeters DJE, Ehinger A, Werness B, Ly A, Li X, Hanna MG, Blenman KRM, Salgado R, et al. Development of Training Materials for Pathologists to Provide Machine Learning Validation Data of Tumor-Infiltrating Lymphocytes in Breast Cancer. Cancers. 2022; 14(10):2467. https://doi.org/10.3390/cancers14102467
Chicago/Turabian StyleGarcia, Victor, Katherine Elfer, Dieter J. E. Peeters, Anna Ehinger, Bruce Werness, Amy Ly, Xiaoxian Li, Matthew G. Hanna, Kim R. M. Blenman, Roberto Salgado, and et al. 2022. "Development of Training Materials for Pathologists to Provide Machine Learning Validation Data of Tumor-Infiltrating Lymphocytes in Breast Cancer" Cancers 14, no. 10: 2467. https://doi.org/10.3390/cancers14102467
APA StyleGarcia, V., Elfer, K., Peeters, D. J. E., Ehinger, A., Werness, B., Ly, A., Li, X., Hanna, M. G., Blenman, K. R. M., Salgado, R., & Gallas, B. D. (2022). Development of Training Materials for Pathologists to Provide Machine Learning Validation Data of Tumor-Infiltrating Lymphocytes in Breast Cancer. Cancers, 14(10), 2467. https://doi.org/10.3390/cancers14102467