Therapeutic Advances in Medical Oncology (Mar 2023)

Development of a nomogram for predicting pathological complete response in luminal breast cancer patients following neoadjuvant chemotherapy

  • Giovanna Garufi,
  • Luisa Carbognin,
  • Isabella Sperduti,
  • Federica Miglietta,
  • Maria Vittoria Dieci,
  • Roberta Mazzeo,
  • Armando Orlandi,
  • Lorenzo Gerratana,
  • Antonella Palazzo,
  • Alessandra Fabi,
  • Ida Paris,
  • Antonio Franco,
  • Gianluca Franceschini,
  • Elena Fiorio,
  • Sara Pilotto,
  • Valentina Guarneri,
  • Fabio Puglisi,
  • Pierfranco Conte,
  • Michele Milella,
  • Giovanni Scambia,
  • Giampaolo Tortora,
  • Emilio Bria

DOI
https://doi.org/10.1177/17588359221138657
Journal volume & issue
Vol. 15

Abstract

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Background: Given the low chance of response to neoadjuvant chemotherapy (NACT) in luminal breast cancer (LBC), the identification of predictive factors of pathological complete response (pCR) represents a challenge. A multicenter retrospective analysis was performed to develop and validate a predictive nomogram for pCR, based on pre-treatment clinicopathological features. Methods: Clinicopathological data from stage I–III LBC patients undergone NACT and surgery were retrospectively collected. Descriptive statistics was adopted. A multivariate model was used to identify independent predictors of pCR. The obtained log-odds ratios (ORs) were adopted to derive weighting factors for the predictive nomogram. The receiver operating characteristic analysis was applied to determine the nomogram accuracy. The model was internally and externally validated. Results: In the training set, data from 539 patients were gathered: pCR rate was 11.3% [95% confidence interval (CI): 8.6–13.9] (luminal A-like: 5.3%, 95% CI: 1.5–9.1, and luminal B-like: 13.1%, 95% CI: 9.8–13.4). The optimal Ki67 cutoff to predict pCR was 44% (area under the curve (AUC): 0.69; p 1%, and Ki67 <44% to 53.3% for clinical stage I–II, PR < 1%, and Ki67 ⩾44% (accuracy: AUC, 0.73; p < 0.0001). In the validation set (248 patients), the predictive performance of the model was confirmed (AUC: 0.7; p < 0.0001). Conclusion: The combination of commonly available clinicopathological pre-NACT factors allows to develop a nomogram which appears to reliably predict pCR in LBC.