Predicting dynamic response to neoadjuvant chemotherapy in breast cancer: a novel metabolomics approach.
Caridad DiazCarmen González-OlmedoLeticia Díaz-BeltránJosé CamachoPatricia Mena GarcíaAriadna Martín-BlázquezMónica Fernández-NavarroAna Laura Ortega-GranadosFernando Gálvez-MontosaJuan Antonio Marchal CorralesFrancisca VicenteJosé Pérez Del PalacioPedro Sánchez-RoviraPublished in: Molecular oncology (2022)
Neoadjuvant chemotherapy (NACT) outcomes vary according to breast cancer (BC) subtype. Since pathologic complete response is one of the most important target endpoints of NACT, further investigation of NACT outcomes in BC is crucial. Thus, identifying sensitive and specific predictors of treatment response for each phenotype would enable early detection of chemoresistance and residual disease, decreasing exposures to ineffective therapies and enhancing overall survival rates. We used liquid chromatography-high-resolution mass spectrometry (LC-HRMS)-based untargeted metabolomics to detect molecular changes in plasma of three different BC subtypes following the same NACT regimen, with the aim of searching for potential predictors of response. The metabolomics data set was analyzed by combining univariate and multivariate statistical strategies. By using ANOVA-simultaneous component analysis (ASCA), we were able to determine the prognostic value of potential biomarker candidates of response to NACT in the triple-negative (TN) subtype. Higher concentrations of docosahexaenoic acid and secondary bile acids were found at basal and presurgery samples, respectively, in the responders group. In addition, the glycohyocholic and glycodeoxycholic acids were able to classify TN patients according to response to treatment and overall survival with an area under the curve model > 0.77. In relation to luminal B (LB) and HER2+ subjects, it should be noted that significant differences were related to time and individual factors. Specifically, tryptophan was identified to be decreased over time in HER2+ patients, whereas LysoPE (22:6) appeared to be increased, but could not be associated with response to NACT. Therefore, the combination of untargeted-based metabolomics along with longitudinal statistical approaches may represent a very useful tool for the improvement of treatment and in administering a more personalized BC follow-up in the clinical practice.
Keyphrases
- neoadjuvant chemotherapy
- mass spectrometry
- liquid chromatography
- high resolution mass spectrometry
- locally advanced
- end stage renal disease
- lymph node
- gas chromatography
- chronic kidney disease
- ultra high performance liquid chromatography
- ejection fraction
- sentinel lymph node
- tandem mass spectrometry
- clinical practice
- simultaneous determination
- machine learning
- prognostic factors
- radiation therapy
- high resolution
- metabolic syndrome
- rectal cancer
- combination therapy
- adipose tissue
- electronic health record
- insulin resistance
- solid phase extraction
- weight loss