Breast (Oct 2021)

The usefulness of CanAssist breast in the assessment of recurrence risk in patients of ethnic Indian origin

  • Dinesh Chandra Doval,
  • Anurag Mehta,
  • S.P. Somashekhar,
  • Aparna Gunda,
  • Gurpreet Singh,
  • Amanjit Bal,
  • Siddhant Khare,
  • Chandra Prakash V Serkad,
  • Manjula Adinarayan,
  • Naveen Krishnamoorthy,
  • Devanhalli Govinda Vijay,
  • Radha Anantakrishnan,
  • G.S. Bhattacharyya,
  • Manjiri M. Bakre

Journal volume & issue
Vol. 59
pp. 1 – 7

Abstract

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Accurate recurrence risk assessment in hormone receptor positive, HER2/neu negative breast cancer is critical to plan precise therapy. CanAssist Breast (CAB) assesses recurrence risk based on tumor biology using artificial intelligence-based approach. We report CAB risk assessment correlating with disease outcomes in multiple clinically high- and low-risk subgroups. In this retrospective cohort of 925 patients [median age-54 (22–86)] CAB had hazard ratio (HR) of 3 (1.83–5.21) and 2.5 (1.45–4.29), P = 0.0009) in univariate and multivariate analysis. CAB's HR in sub-groups with the other determinants of outcome, T2 (HR: 2.79 (1.49–5.25), P = 0.0001); age [16% as high-risk with recurrence rates of up to 12%. In clinically high-risk patients (T2N1 tumors (HR: 2.65 (1.31–5.36), P = 0.003; low-risk DMFS: 92.66 ± 1.88) and in women with luminal-B characteristics (HR: 3.24; (1.69–6.22), P 64% as low-risk. Thus, CAB prognostication was significant in women with clinically low- and high-risk disease. The data imply the use of CAB for providing helpful information to stratify tumors based on biology incorporated with clinical features for Indian patients, which can be extrapolated to regions with similarly characterized patients, South-East Asia.

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