| Literature DB >> 32411819 |
Zuzana Kos1, Elvire Roblin2,3, Rim S Kim4, Stefan Michiels2,3, Brandon D Gallas5, Weijie Chen5, Koen K van de Vijver6,7, Shom Goel8,9, Sylvia Adams10, Sandra Demaria11, Giuseppe Viale12, Torsten O Nielsen13, Sunil S Badve14, W Fraser Symmans15, Christos Sotiriou16, David L Rimm17, Stephen Hewitt18, Carsten Denkert19, Sibylle Loibl20, Stephen J Luen9,21, John M S Bartlett22,23, Peter Savas9,21, Giancarlo Pruneri24, Deborah A Dillon25,26, Maggie Chon U Cheang27, Andrew Tutt28, Jacqueline A Hall29, Marleen Kok30, Hugo M Horlings6,31, Anant Madabhushi32,33, Jeroen van der Laak34, Francesco Ciompi34, Anne-Vibeke Laenkholm35, Enrique Bellolio36, Tina Gruosso37, Stephen B Fox8,38, Juan Carlos Araya39, Giuseppe Floris40, Jan Hudeček41, Leonie Voorwerk42, Andrew H Beck43, Jen Kerner43, Denis Larsimont44, Sabine Declercq45, Gert Van den Eynden45, Lajos Pusztai46, Anna Ehinger47, Wentao Yang48, Khalid AbdulJabbar49, Yinyin Yuan49, Rajendra Singh50, Crispin Hiley51, Maise Al Bakir51, Alexander J Lazar52, Stephen Naber53, Stephan Wienert54, Miluska Castillo55, Giuseppe Curigliano56, Maria-Vittoria Dieci57,58, Fabrice André59, Charles Swanton51,60, Jorge Reis-Filho61,62, Joseph Sparano63, Eva Balslev64, I-Chun Chen65,66,67, Elisabeth Ida Specht Stovgaard64, Katherine Pogue-Geile4, Kim R M Blenman46, Frédérique Penault-Llorca68, Stuart Schnitt25, Sunil R Lakhani69, Anne Vincent-Salomon70, Federico Rojo71,72, Jeremy P Braybrooke73, Matthew G Hanna61, M Teresa Soler-Monsó74, Daniel Bethmann75, Carlos A Castaneda55, Karen Willard-Gallo76, Ashish Sharma77, Huang-Chun Lien78, Susan Fineberg79, Jeppe Thagaard80, Laura Comerma72,81, Paula Gonzalez-Ericsson82, Edi Brogi61, Sherene Loi9,21, Joel Saltz83, Frederick Klaushen84, Lee Cooper85, Mohamed Amgad86, David A Moore87,88, Roberto Salgado21,45.
Abstract
Stromal tumor-infiltrating lymphocytes (sTILs) are important prognostic and predictive biomarkers in triple-negative (TNBC) and HER2-positive breast cancer. Incorporating sTILs into clinical practice necessitates reproducible assessment. Previously developed standardized scoring guidelines have been widely embraced by the clinical and research communities. We evaluated sources of variability in sTIL assessment by pathologists in three previous sTIL ring studies. We identify common challenges and evaluate impact of discrepancies on outcome estimates in early TNBC using a newly-developed prognostic tool. Discordant sTIL assessment is driven by heterogeneity in lymphocyte distribution. Additional factors include: technical slide-related issues; scoring outside the tumor boundary; tumors with minimal assessable stroma; including lymphocytes associated with other structures; and including other inflammatory cells. Small variations in sTIL assessment modestly alter risk estimation in early TNBC but have the potential to affect treatment selection if cutpoints are employed. Scoring and averaging multiple areas, as well as use of reference images, improve consistency of sTIL evaluation. Moreover, to assist in avoiding the pitfalls identified in this analysis, we developed an educational resource available at www.tilsinbreastcancer.org/pitfalls.Entities:
Keywords: Immunosurveillance; Prognostic markers
Year: 2020 PMID: 32411819 PMCID: PMC7217863 DOI: 10.1038/s41523-020-0156-0
Source DB: PubMed Journal: NPJ Breast Cancer ISSN: 2374-4677
Fig. 1Study flow diagram.
Raw data and original scanned images from 3 previously performed ring studies were evaluated (shaded Box 1).
Fig. 2Reference images representing percent sTIL scores.
Available at www.tilsinbreastcancer.org.
Fig. 3Standard deviation as a function of mean across all sTILs scores for each slide in 3 ring studies assessing concordance amongst pathologists.
a Ring study 1, 32 pathologists evaluated 60 scanned core biopsy specimens. b Ring study 2, 28 pathologists evaluated 60 scanned core biopsy specimens. c Ring study 3, 6 pathologists evaluated 100 scanned whole section specimens. 10% of cases in each study showing the greatest variability in sTIL scores are shown as red squares. Black triangles identify additional cases identified for slide assessment.
Comparison of intraclass correlation coefficient and pair-wise observer concordance rate for 3 ring studies.
| Ring study 1 | Ring study 2 | Ring study 3 | |
|---|---|---|---|
| 0.7 (0.62–0.78) | 0.89 (0.85–0.92) | 0.76 (0.69–0.83) | |
| TILs <1 vs ≥1% | 0.94 (±0.08) | 0.94 (±0.04) | 0.91 (±0.06) |
| TILs <5 vs ≥5% | 0.83 (±0.09) | 0.89 (±0.05) | 0.84 (±0.1) |
| TILs <10 vs ≥10% | 0.77 (±0.08) | 0.86 (±0.05) | 0.79 (±0.06) |
| TILs <30 vs ≥30% | 0.81 (±0.08) | 0.93 (±0.03) | 0.87 (±0.04) |
| TILs <75 vs ≥75% | 0.90 (±0.06) | 0.92 (±0.03) | 0.94 (±0.03) |
ICC intraclass correlation coefficient, TILs tumor-infiltrating lymphocytes.
aThe concordance of all pairs of pathologists was calculated for five different TIL-groups. The values in the table are the sample mean and sample standard deviation of these concordance rates for all pairs of pathologists in each study.
Pitfalls in sTIL assessment in breast cancer slides identified from cases showing the highest variation in 3 ring studies (RS)—heterogeneity of lymphocyte distribution.
| Pitfall | Frequency seen | Recommendation |
|---|---|---|
| Increased sTILs at the leading edge compared to central tumor (Fig. | RS1: 3/7 (43%) RS2: 1/6 (17%) RS3: 7/13 (54%) | Increased density of lymphocytes at the leading front should be included as long as the lymphocytes are within the boundary of the tumor. Scoring multiple areas and averaging the results can help with heterogeneous tumors. |
| Marked hterogeneity in sTIL density within the tumor (Fig. | RS1: 2/7 (29%) RS2: 0 RS3: 0 | All stroma within the boundary of a single tumor is included in sTIL assessment. Scoring multiple distinct areas encompassing the range of sTIL density and averaging the results can assist in providing a more reproducible overall sTIL score. |
| Variably spaced apart clusters of cancer cells with a dense tight lymphocytic infiltrate separated by collagenous stroma with sparse infiltrate (Fig. | RS1: 2/7 (29%) RS2: 3/6 (50%) RS3: 0 | All stroma within a single tumor is included within the sTIL assessment. In this situation, both the higher density areas closely associated with (but not touching) epithelial clusters and the lower density areas located between epithelial clusters are included. [The exception is a central hyalinized scar, which is excluded from scoring.] Scoring multiple areas and averaging the results can help with heterogeneous tumors. |
RS1 Ring Study 1, RS2 Ring Study 2, RS3 Ring Study 3.
Fig. 4Heterogeneity in sTIL distribution as a cause of variation in sTIL assessment in breast cancer.
Different examples of heterogeneity include a increased sTILs at the leading edge (blue arrow) compared to the central tumor (yellow arrow); b marked heterogeneity in sTIL density within the tumor; and c variably spaced apart clusters of cancer cells with a dense tight lymphocytic infiltrate separated by collagenous stroma with sparse infiltrate.
Pitfalls in sTIL assessment in breast cancer slides identified from cases showing the highest variation in 3 ring studies (RS)—technical factors.
| Pitfall | Frequency seen | Recommendation |
|---|---|---|
| Poor quality slides / Histological artifacts secondary to prolonged ischemic time, poor fixation or issues during processing (Fig. | RS1: 0 RS2: 0 RS3: 11/13 (85%) | Thankfully, in the current era, with greater awareness and monitoring of preanalytical and analytic variables, these sorts of poor quality H&E slides should not be an issue. If presented with such a case, only intact, morphologically assessable areas should be included in sTIL score. If applicable, one can cut and stain an additional section or select a different block for assessment. |
| Crush artifact (Fig. | RS1: 1/7 (14%) RS2: 0 RS3: 0 | More commonly seen in biopsy samples, crush artifact can compromise sTIL assessment. Areas of crushing should be excluded from sTIL evaluation. |
| Out-of-focus scan (Fig. | RS1: 1/7 (14%) RS2: 1/6 (17%) RS3: 0 | As part of a study one may struggle with scoring an out-of-focus scan. In clinical practice, however, particularly as sTILs are poised to impact patient management, there is no good justification to not rescan the slide. If this is not a possibility most computer programs have some capability of image correction. |
RS1 Ring Study 1, RS2 Ring Study 2, RS3 Ring Study 3.
Fig. 5Technical factors as a cause of variation in sTIL assessment in breast cancer.
Examples of different technical factors include a a poor quality slide as can be seen secondary to prolonged ischemic time, poor fixation or issues during processing; b crush artifact; and c out-of-focus scan.
Pitfalls in sTIL assessment in breast cancer slides identified from cases showing the highest variation in 3 ring studies (RS)—scoring wrong area or cells.
| Pitfall | Frequency seen | Recommendation |
|---|---|---|
| Defining tumor boundary and scoring outside of tumor (Fig. | RS1: 0 RS2: 2/6 (33%) RS3: 2/13 (15%) | Do not include fibrous scars (image; yellow arrow) or lymphoid aggregates (blue arrow) beyond the invasive front of the tumor. |
| Including lymphocytes surrounding DCIS (Fig. | RS1: 2/7 (29%) RS2: 1/6 (17%) RS3: 0 | Lymphocytes surrounding DCIS are excluded from assessment of sTILs. Myoepithelial stains can be used if there is doubt as to whether a particular focus is invasive or in situ. |
| Including lymphocytes associated with encapsulated papillary carcinoma (Fig. | RS1: 1/7 (14%) RS2: 0 RS3: 0 | Only score sTILs associated with conventional invasive carcinoma. Similar to DCIS, lymphocytes associated with encapsulated papillary carcinoma should not be included in the sTIL assessment of the invasive component. |
| Including lymphocytes surrounding benign glands (Fig. | RS1: 1/7 (14%) RS2: 0 RS3: 0 | Lymphocytes associated with benign lobules or ducts should be excluded from sTIL counts when carcinoma surrounds benign structures. Similar lymphocytic infiltrates outside of the tumor boundary can identify these as not tumor-related. |
| Including intratumoral TILs (iTILS) (Fig. | RS1: 2/7 (29%) RS2: 1/6 (17%) RS3: 0 | Certain cases show dense lymphocytic infiltrates within the tumor epithelial nests, sometimes obscuring the boundary between tumor cells and stroma. It is important to be aware that intratumoral TILs are excluded from the assessment, which only includes TILs within the intervening stroma. If necessary, a cytokeratin stain may assist with defining tumor from stroma. |
| Including neutrophils (Fig. | RS1: 1/7 (14%) RS2: 0 RS3: 0 | Only lymphocytes and plasma cells are included in sTIL evaluation. Pathologists should assess slides at a sufficiently high power to be able to differentiate between types of immune cells. Neutrophils, eosinophils, basophils, and histiocytes/ macrophages are all excluded from sTIL assessment. |
| Including histiocytes (Fig. | RS1: 1/7 (14%) RS2: 0 RS3: 0 | Only lymphocytes and plasma cells are included in sTIL evaluation. Pathologists should assess slides at a sufficiently high power to be able to differentiate between types of immune cells. Neutrophils, eosinophils, basophils, and histiocytes/ macrophages are all excluded from sTIL counts. |
| Misinterpreting apoptotic cells as lymphocytes (Fig. | RS1: 1/7 (14%) RS2: 0 RS3: 0 | At low power apoptotic cells can mimic lymphocytes. Pathologists should assess slides at a sufficiently high power to differentiate this mimic. |
| Artifactual falling apart of cells mimicking TILs Fig. | RS1: 1/7 (14%) RS2: 0 RS3: 0 | Artifactual falling apart of tumor cells is more common in biopsy specimens, particularly along the edge. At low power discohesive tumor cells can mimic lymphocytes. Pathologists should assess slides at a sufficiently high power to differentiate this mimic. |
RS1 Ring Study 1, RS2 Ring Study 2, RS3 Ring Study 3.
Fig. 6Scoring the wrong area as a cause of variation in sTIL assessment in breast cancer.
Scenarios where there may be challenges in deciding which areas to score include a difficulty defining the tumor boundary (dashed line) and including fibrous scars (yellow arrow) or lymphoid aggregates (blue arrow) beyond the invasive front; b including lymphocytes surrounding ductal carcinoma in situ (DCIS) which may be difficult to distinguish from invasive carcinoma; c including lymphocytes associated with an encapsulated papillary carcinoma component of a tumor; and d including lymphocytes surrounding benign glands. Shown is invasive carcinoma (yellow arrows) surrounding a benign lobule with associated lymphocytes; adjacent benign lobules (blue arrows) show dense lymphoid aggregates identify the lymphocytic infiltrate to be related to the entrapped lobule rather than the carcinoma.
Fig. 7Scoring the wrong cells as a cause of variation in sTIL assessment in breast cancer.
Examples where the wrong cells are scored include a counting intratumoral TILs (iTILS); b counting neutrophils; c counting histiocytes; d misinterpreting apoptotic cells as lymphocytes; and e artifactual falling apart of cells mimicking TILs.
Pitfalls in sTIL assessment in breast cancer slides identified from cases showing the highest variation in 3 ring studies (RS)—limited tumor stroma.
| Pitfall | Frequency seen | Recommendation |
|---|---|---|
| Small volume of intratumoral stroma present for evaluation (Fig. | RS1: 0 RS2: 0 RS3: 6/13 (46%) | Assessing % sTILs is difficult when the denominator is very small. Evaluation should be restricted to areas where there is clear stroma. The leading edge ought to provide at least some tumor stroma for assessment. |
| Large areas of necrosis (decreases scorable stromal component) (Fig. | RS1: 1/7 (14%) RS2: 0 RS3: 0 | Necrosis and associated granulocytes are excluded from sTIL assessment. Some tumors show extensive necrosis with only a thin rim of viable cells at the periphery. Only lymphocytes associated with viable tumor should be included. Even in highly necrotic tumor, there are typically at least some viable areas along the invasive front. |
| Mucinous tumors (Fig. | RS1: 0 RS2: 0 RS3: 2/13 (15%) | Lymphocytes generally are absent within extracellular mucin. Thin septa and fibrous bands are often present providing a stromal component for assessment. Stroma associated with any ‘no special type’ component should be included. |
RS1 Ring Study 1, RS2 Ring Study 2, RS3 Ring Study 3.
Fig. 8Limited stroma within tumors as a cause of variation in sTIL assessment in breast cancer.
Difficulties in sTIL assessment related to stroma include a tumor with small volume of intratumoral stroma present for evaluation; b large areas of necrosis which decrease scorable stromal component; and c mucinous tumors.
Fig. 9Variation in outcome estimation based on stromal TIL assessment.
Shown is the variation in estimated outcome based on sTIL assessment for a 60-year-old patient with a histological grade 3 tumor, 2–5cm in size and receiving anthracycline+taxane based chemotherapy. Presuming a true value for sTILs of 30%, changes in estimated 5-year iDFS for 5, 10, and 20% deviations (increase and decrease) in sTIL assessments are represented with 95% confidence bands. (All calculations were performed using the online triple-negative breast cancer (TNBC)-prognosis tool[9] available at www.tilsinbreastcancer.org).