npj Precision Oncology (Nov 2023)

AI-enabled routine H&E image based prognostic marker for early-stage luminal breast cancer

  • Noorul Wahab,
  • Michael Toss,
  • Islam M. Miligy,
  • Mostafa Jahanifar,
  • Nehal M. Atallah,
  • Wenqi Lu,
  • Simon Graham,
  • Mohsin Bilal,
  • Abhir Bhalerao,
  • Ayat G. Lashen,
  • Shorouk Makhlouf,
  • Asmaa Y. Ibrahim,
  • David Snead,
  • Fayyaz Minhas,
  • Shan E. Ahmed Raza,
  • Emad Rakha,
  • Nasir Rajpoot

DOI
https://doi.org/10.1038/s41698-023-00472-y
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 13

Abstract

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Abstract Breast cancer (BC) grade is a well-established subjective prognostic indicator of tumour aggressiveness. Tumour heterogeneity and subjective assessment result in high degree of variability among observers in BC grading. Here we propose an objective Haematoxylin & Eosin (H&E) image-based prognostic marker for early-stage luminal/Her2-negative BReAst CancEr that we term as the BRACE marker. The proposed BRACE marker is derived from AI based assessment of heterogeneity in BC at a detailed level using the power of deep learning. The prognostic ability of the marker is validated in two well-annotated cohorts (Cohort-A/Nottingham: n = 2122 and Cohort-B/Coventry: n = 311) on early-stage luminal/HER2-negative BC patients treated with endocrine therapy and with long-term follow-up. The BRACE marker is able to stratify patients for both distant metastasis free survival (p = 0.001, C-index: 0.73) and BC specific survival (p < 0.0001, C-index: 0.84) showing comparable prediction accuracy to Nottingham Prognostic Index and Magee scores, which are both derived from manual histopathological assessment, to identify luminal BC patients that may be likely to benefit from adjuvant chemotherapy.