A Validated Model for Identifying Patients Unlikely to Benefit From the 21-Gene Recurrence Score Assay

Clin Breast Cancer. 2015 Dec;15(6):467-72. doi: 10.1016/j.clbc.2015.04.006. Epub 2015 Apr 23.

Abstract

Background: Predicting recurrence risk and chemotherapy benefit in early-stage breast cancer can be challenging, and Oncotype DX (ODX) is often used to gain insight. However, it is still unclear whether ODX can benefit in all cases. To clarify ODX's usefulness we sought to develop a model using readily available pathologic markers to help clinicians make that determination.

Patients and methods: Clinical pathologic data from 221 hormone receptor-positive, HER2-negative invasive breast cancer patients was used to create a model. The model was then validated on a second institution's set of 319 patients.

Results: The model has 2 simple rules: low grade and positive progesterone receptor tumors (LG+PR) are low risk, and high grade or low estrogen receptor (ER) (ER < 20%) tumors (HG/LER) are high risk. The TAILORx (Trial Assigning Individualized Options for Treatment (Rx)) trial thresholds of Recurrence Score (RS) ≤ 10, when chemotherapy is of little benefit, and RS ≥ 26 when chemotherapy might be beneficial were used to judge model performance. Impressively, the misclassifications of an HG/LER patient who has an RS ≤ 10 were 0% and 2%, and for LG+PR patients who had an RS ≥ 26 were 0% and 2.6%. In the validation set, 28% (66 of 232) of the indeterminate group (neither in the HG/LER nor the LG+PR groups) had an RS ≤ 10 or an RS ≥ 26; this group might clinically benefit from ODX.

Conclusion: A simple 2-rule model based on readily available pathologic data was developed and validated, which categorized patients into high and low risk for recurrence. Identification of patients who are unlikely to benefit from ODX testing could result in significant cost avoidance.

Keywords: Classification model; Grade; Oncotype DX; Predictive value of tests; Risk assessment; TAILORx; Tumor markers.

Publication types

  • Validation Study

MeSH terms

  • Breast Neoplasms / classification*
  • Breast Neoplasms / drug therapy
  • Breast Neoplasms / genetics*
  • Female
  • Humans
  • Models, Statistical*
  • Neoplasm Recurrence, Local / genetics*
  • Risk Assessment / methods