Evaluation of tumour infiltrating lymphocytes in luminal breast cancer using artificial intelligence

Author:

Makhlouf ShoroukORCID,Wahab Noorul,Toss MichaelORCID,Ibrahim Asmaa,Lashen Ayat G.ORCID,Atallah Nehal M.ORCID,Ghannam Suzan,Jahanifar Mostafa,Lu Wenqi,Graham Simon,Mongan Nigel P.,Bilal Mohsin,Bhalerao Abhir,Snead David,Minhas Fayyaz,Raza Shan E. AhmedORCID,Rajpoot Nasir,Rakha Emad

Abstract

Abstract Background Tumour infiltrating lymphocytes (TILs) are a prognostic parameter in triple-negative and human epidermal growth factor receptor 2 (HER2)-positive breast cancer (BC). However, their role in luminal (oestrogen receptor positive and HER2 negative (ER + /HER2-)) BC remains unclear. In this study, we used artificial intelligence (AI) to assess the prognostic significance of TILs in a large well-characterised cohort of luminal BC. Methods Supervised deep learning model analysis of Haematoxylin and Eosin (H&E)-stained whole slide images (WSI) was applied to a cohort of 2231 luminal early-stage BC patients with long-term follow-up. Stromal TILs (sTILs) and intratumoural TILs (tTILs) were quantified and their spatial distribution within tumour tissue, as well as the proportion of stroma involved by sTILs were assessed. The association of TILs with clinicopathological parameters and patient outcome was determined. Results A strong positive linear correlation was observed between sTILs and tTILs. High sTILs and tTILs counts, as well as their proximity to stromal and tumour cells (co-occurrence) were associated with poor clinical outcomes and unfavourable clinicopathological parameters including high tumour grade, lymph node metastasis, large tumour size, and young age. AI-based assessment of the proportion of stroma composed of sTILs (as assessed visually in routine practice) was not predictive of patient outcome. tTILs was an independent predictor of worse patient outcome in multivariate Cox Regression analysis. Conclusion AI-based detection of TILs counts, and their spatial distribution provides prognostic value in luminal early-stage BC patients. The utilisation of AI algorithms could provide a comprehensive assessment of TILs as a morphological variable in WSIs beyond eyeballing assessment.

Publisher

Springer Science and Business Media LLC

Subject

Cancer Research,Oncology

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