An Open-Source, Automated Tumor-Infiltrating Lymphocyte Algorithm for Prognosis in Triple-Negative Breast Cancer

Although tumor-infiltrating lymphocytes (TIL) assessment has been acknowledged to have both prognostic and predictive importance in triple-negative breast cancer (TNBC), it is subject to inter and intraobserver variability that has prevented widespread adoption. Here we constructed a machine-learnin...

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Published inClinical cancer research Vol. 27; no. 20; pp. 5557 - 5565
Main Authors Bai, Yalai, Cole, Kimberly, Martinez-Morilla, Sandra, Ahmed, Fahad Shabbir, Zugazagoitia, Jon, Staaf, Johan, Bosch, Ana, Ehinger, Anna, Nimeus, Emma, Hartman, Johan, Acs, Balazs, Rimm, David L.
Format Journal Article
LanguageEnglish
Published United States 15.10.2021
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Summary:Although tumor-infiltrating lymphocytes (TIL) assessment has been acknowledged to have both prognostic and predictive importance in triple-negative breast cancer (TNBC), it is subject to inter and intraobserver variability that has prevented widespread adoption. Here we constructed a machine-learning based breast cancer TIL scoring approach and validated its prognostic potential in multiple TNBC cohorts. Using the QuPath open-source software, we built a neural-network classifier for tumor cells, lymphocytes, fibroblasts, and "other" cells on hematoxylin-eosin (H&E)-stained sections. We analyzed the classifier-derived TIL measurements with five unique constructed TIL variables. A retrospective collection of 171 TNBC cases was used as the discovery set to identify the optimal association of machine-read TIL variables with patient outcome. For validation, we evaluated a retrospective collection of 749 TNBC patients comprised of four independent validation subsets. We found that all five machine TIL variables had significant prognostic association with outcomes ( ≤ 0.01 for all comparisons) but showed cell-specific variation in validation sets. Cox regression analysis demonstrated that all five TIL variables were independently associated with improved overall survival after adjusting for clinicopathologic factors including stage, age, and histologic grade ( ≤ 0.0003 for all analyses). Neural net-driven cell classifier-defined TIL variables were robust and independent prognostic factors in several independent validation cohorts of TNBC patients. These objective, open-source TIL variables are freely available to download and can now be considered for testing in a prospective setting to assess clinical utility. .
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Authors’ Contributions
Writing, review, and/or revision of the manuscript: Y. Bai, B. Acs, K. Cole, S. Martinez-Morilla, J. Staaf, A. Bosch, A. Ehinger, E. Nimeus, J. Hartman, F. S. Ahmed, J. Zugazagoitia, D.L. Rimm
Study supervision: Y. Bai, B. Acs, D.L. Rimm
B.A. and D.L.R. contributed equally as corresponding authors.
Administrative, technical, or material support (i.e., reporting or organizing data, constructing databases): Y. Bai, B. Acs, K. Cole, S. Martinez-Morilla, J. Staaf, A. Bosch, A. Ehinger, E. Nimeus, J. Hartman, F. S. Ahmed, J. Zugazagoitia, D.L. Rimm
Acquisition of data (provided animals, acquired and managed patients, provided facilities, etc.): Y. Bai, B. Acs, K. Cole, S. Martinez-Morilla, J. Staaf, A. Bosch, A. Ehinger, E. Nimeus, J. Hartman, F. S. Ahmed, J. Zugazagoitia
Conception and design: Y. Bai, B. Acs, D.L. Rimm
Development of methodology: Y. Bai, B. Acs, D.L. Rimm
Analysis and interpretation of data (e.g., statistical analysis, biostatistics, computational analysis): Y. Bai, B. Acs, K. Martinez-Morilla, F.S. Ahmed, J. Zugazagoitia, D.L. Rimm
ISSN:1078-0432
1557-3265
1557-3265
DOI:10.1158/1078-0432.CCR-21-0325