npj Breast Cancer (May 2023)

Image analysis-based tumor infiltrating lymphocytes measurement predicts breast cancer pathologic complete response in SWOG S0800 neoadjuvant chemotherapy trial

  • Kristina A. Fanucci,
  • Yalai Bai,
  • Vasiliki Pelekanou,
  • Zeina A. Nahleh,
  • Saba Shafi,
  • Sneha Burela,
  • William E. Barlow,
  • Priyanka Sharma,
  • Alastair M. Thompson,
  • Andrew K. Godwin,
  • David L. Rimm,
  • Gabriel N. Hortobagyi,
  • Yihan Liu,
  • Leona Wang,
  • Wei Wei,
  • Lajos Pusztai,
  • Kim R. M. Blenman

DOI
https://doi.org/10.1038/s41523-023-00535-0
Journal volume & issue
Vol. 9, no. 1
pp. 1 – 7

Abstract

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Abstract We assessed the predictive value of an image analysis-based tumor-infiltrating lymphocytes (TILs) score for pathologic complete response (pCR) and event-free survival in breast cancer (BC). About 113 pretreatment samples were analyzed from patients with stage IIB-IIIC HER-2-negative BC randomized to neoadjuvant chemotherapy ± bevacizumab. TILs quantification was performed on full sections using QuPath open-source software with a convolutional neural network cell classifier (CNN11). We used easTILs% as a digital metric of TILs score defined as [sum of lymphocytes area (mm2)/stromal area(mm2)] × 100. Pathologist-read stromal TILs score (sTILs%) was determined following published guidelines. Mean pretreatment easTILs% was significantly higher in cases with pCR compared to residual disease (median 36.1 vs.14.8%, p < 0.001). We observed a strong positive correlation (r = 0.606, p < 0.0001) between easTILs% and sTILs%. The area under the prediction curve (AUC) was higher for easTILs% than sTILs%, 0.709 and 0.627, respectively. Image analysis-based TILs quantification is predictive of pCR in BC and had better response discrimination than pathologist-read sTILs%.