npj Breast Cancer (Jul 2024)

Gene expression signature for predicting homologous recombination deficiency in triple-negative breast cancer

  • Jia-Wern Pan,
  • Zi-Ching Tan,
  • Pei-Sze Ng,
  • Muhammad Mamduh Ahmad Zabidi,
  • Putri Nur Fatin,
  • Jie-Ying Teo,
  • Siti Norhidayu Hasan,
  • Tania Islam,
  • Li-Ying Teoh,
  • Suniza Jamaris,
  • Mee-Hoong See,
  • Cheng-Har Yip,
  • Pathmanathan Rajadurai,
  • Lai-Meng Looi,
  • Nur Aishah Mohd Taib,
  • Oscar M. Rueda,
  • Carlos Caldas,
  • Suet-Feung Chin,
  • Joanna Lim,
  • Soo-Hwang Teo

DOI
https://doi.org/10.1038/s41523-024-00671-1
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 10

Abstract

Read online

Abstract Triple-negative breast cancers (TNBCs) are a subset of breast cancers that have remained difficult to treat. A proportion of TNBCs arising in non-carriers of BRCA pathogenic variants have genomic features that are similar to BRCA carriers and may also benefit from PARP inhibitor treatment. Using genomic data from 129 TNBC samples from the Malaysian Breast Cancer (MyBrCa) cohort, we developed a gene expression-based machine learning classifier for homologous recombination deficiency (HRD) in TNBCs. The classifier identified samples with HRD mutational signature at an AUROC of 0.93 in MyBrCa validation datasets and 0.84 in TCGA TNBCs. Additionally, the classifier strongly segregated HRD-associated genomic features in TNBCs from TCGA, METABRIC, and ICGC. Thus, our gene expression classifier may identify triple-negative breast cancer patients with homologous recombination deficiency, suggesting an alternative method to identify individuals who may benefit from treatment with PARP inhibitors or platinum chemotherapy.