Cancers (Jul 2024)

Plasma Metabolome Signatures to Predict Responsiveness to Neoadjuvant Chemotherapy in Breast Cancer

  • Alex Ap. Rosini Silva,
  • Marcella R. Cardoso,
  • Danilo Cardoso de Oliveira,
  • Pedro Godoy,
  • Maria Cecília R. Talarico,
  • Junier Marrero Gutiérrez,
  • Raquel M. Rodrigues Peres,
  • Lucas M. de Carvalho,
  • Natália Angelo da Silva Miyaguti,
  • Luis O. Sarian,
  • Alessandra Tata,
  • Sophie F. M. Derchain,
  • Andreia M. Porcari

DOI
https://doi.org/10.3390/cancers16132473
Journal volume & issue
Vol. 16, no. 13
p. 2473

Abstract

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Background: Neoadjuvant chemotherapy (NACT) has arisen as a treatment option for breast cancer (BC). However, the response to NACT is still unpredictable and dependent on cancer subtype. Metabolomics is a tool for predicting biomarkers and chemotherapy response. We used plasma to verify metabolomic alterations in BC before NACT, relating to clinical data. Methods: Liquid chromatography coupled to mass spectrometry (LC-MS) was performed on pre-NACT plasma from patients with BC (n = 75). After data filtering, an SVM model for classification was built and validated with 75%/25% of the data, respectively. Results: The model composed of 19 identified metabolites effectively predicted NACT response for training/validation sets with high sensitivity (95.4%/93.3%), specificity (91.6%/100.0%), and accuracy (94.6%/94.7%). In both sets, the panel correctly classified 95% of resistant and 94% of sensitive females. Most compounds identified by the model were lipids and amino acids and revealed pathway alterations related to chemoresistance. Conclusion: We developed a model for predicting patient response to NACT. These metabolite panels allow clinical gain by building precision medicine strategies based on tumor stratification.

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