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Non-Sentinel Lymph Node Metastasis Prediction in Breast Cancer with Metastatic Sentinel Lymph Node: Impact of Molecular Subtypes Classification
Authors:Fabien Reyal  Catherine Belichard  Roman Rouzier  Emmanuel de Gournay  Claire Senechal  Francois-Clement Bidard  Jean-Yves Pierga  Paul Cottu  Florence Lerebours  Youlia Kirova  Jean-Guillaume Feron  Virginie Fourchotte  Anne Vincent-Salomon  Jean-Marc Guinebretiere  Brigitte Sigal-Zafrani  Xavier Sastre-Garau  Yann De Rycke  Charles Coutant
Affiliation:1. Department of Surgery, Institut Curie, Paris, France.; 2. Department of Medical Oncology, Institut Curie, Paris, France.; 3. Department of Radiation Oncology, Institut Curie, Paris, France.; 4. Department of Tumour Biology, Institut Curie, Paris, France.; 5. Department of Biostatistic, Institut Curie, Paris, France.; 6. Department of Surgery, Centre Georges-Francois Leclerc, Dijon, France.; Ospedale Pediatrico Bambino Gesu'', Italy,
Abstract:

Introduction

To decipher the interaction between the molecular subtype classification and the probability of a non-sentinel node metastasis in breast cancer patients with a metastatic sentinel lymph-node, we applied two validated predictors (Tenon Score and MSKCC Nomogram) on two large independent datasets.

Materials and Methods

Our datasets consisted of 656 and 574 early-stage breast cancer patients with a metastatic sentinel lymph-node biopsy treated at first by surgery. We applied both predictors on the whole dataset and on each molecular immune-phenotype subgroups. The performances of the two predictors were analyzed in terms of discrimination and calibration. Probability of non-sentinel lymph node metastasis was detailed for each molecular subtype.

Results

Similar results were obtained with both predictors. We showed that the performance in terms of discrimination was as expected in ER Positive HER2 negative subgroup in both datasets (MSKCC AUC Dataset 1 = 0.73 [0.69–0.78], MSKCC AUC Dataset 2 = 0.71 (0.65–0.76), Tenon Score AUC Dataset 1 = 0.7 (0.65–0.75), Tenon Score AUC Dataset 2 = 0.72 (0.66–0.76)). Probability of non-sentinel node metastatic involvement was slightly under-estimated. Contradictory results were obtained in other subgroups (ER negative HER2 negative, HER2 positive subgroups) in both datasets probably due to a small sample size issue. We showed that merging the two datasets shifted the performance close to the ER positive HER2 negative subgroup.

Discussion

We showed that validated predictors like the Tenon Score or the MSKCC nomogram built on heterogeneous population of breast cancer performed equally on the different subgroups analyzed. Our present study re-enforce the idea that performing subgroup analysis of such predictors within less than 200 samples subgroup is at major risk of misleading conclusions.
Keywords:
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