Background: We previously showed that metabolomics predicts relapse in early breast cancer (eBC) patients, unselected by age. This study aims to identify a "metabolic signature" that differentiates eBC from advanced breast cancer (aBC) patients, and to investigate its potential prognostic role in an elderly population.Methods: Serum samples from elderly breast cancer (BC) patients enrolled in 3 onco-geriatric trials, were retrospectively analyzed via proton nuclear magnetic resonance (1H NMR) spectroscopy. Three nuclear magnetic resonance (NMR) spectra were acquired for each serum sample: NOESY1D, CPMG, Diffusion-edited. Random Forest (RF) models to predict BC relapse were built on NMR spectra, and resulting RF risk scores were evaluated by Kaplan-Meier curves.Results: Serum samples from 140 eBC patients and 27 aBC were retrieved. In the eBC cohort, median age was 76 years; 77% of patients had luminal, 10% HER2-positive and 13% triple negative (TN) BC. Forty-two percent of patients had tumors >2 cm, 43% had positive axillary nodes. Using NOESY1D spectra, the RF classifier discriminated free-from-recurrence eBC from aBC with sensitivity, specificity and accuracy of 81%, 67% and 70% respectively. We tested the NOESY1D spectra of each eBC patient on the RF models already calculated. We found that patients classified as "high risk" had higher risk of disease recurrence (hazard ratio (HR) 3.42, 95% confidence interval (CI) 1.58-7.37) than patients at low-risk.Conclusions: This analysis suggests that a "metabolic signature", identified employing NMR fingerprinting, is able to predict the risk of disease recurrence in elderly patients with eBC independently from standard clinicopathological features.

Risk assessment of disease recurrence in early breast cancer: A serum metabolomic study focused on elderly patients / Risi, Emanuela; Lisanti, Camilla; Vignoli, Alessia; Biagioni, Chiara; Paderi, Agnese; Cappadona, Silvia; Monte, Francesca Del; Moretti, Erica; Sanna, Giuseppina; Livraghi, Luca; Malorni, Luca; Benelli, Matteo; Puglisi, Fabio; Luchinat, Claudio; Tenori, Leonardo; Biganzoli, Laura. - In: TRANSLATIONAL ONCOLOGY. - ISSN 1936-5233. - ELETTRONICO. - 27:(2023), pp. 101585-101585. [10.1016/j.tranon.2022.101585]

Risk assessment of disease recurrence in early breast cancer: A serum metabolomic study focused on elderly patients

Vignoli, Alessia;Biagioni, Chiara;Paderi, Agnese;Cappadona, Silvia;Monte, Francesca Del;Moretti, Erica;Sanna, Giuseppina;Benelli, Matteo;Luchinat, Claudio;Tenori, Leonardo;Biganzoli, Laura
2023

Abstract

Background: We previously showed that metabolomics predicts relapse in early breast cancer (eBC) patients, unselected by age. This study aims to identify a "metabolic signature" that differentiates eBC from advanced breast cancer (aBC) patients, and to investigate its potential prognostic role in an elderly population.Methods: Serum samples from elderly breast cancer (BC) patients enrolled in 3 onco-geriatric trials, were retrospectively analyzed via proton nuclear magnetic resonance (1H NMR) spectroscopy. Three nuclear magnetic resonance (NMR) spectra were acquired for each serum sample: NOESY1D, CPMG, Diffusion-edited. Random Forest (RF) models to predict BC relapse were built on NMR spectra, and resulting RF risk scores were evaluated by Kaplan-Meier curves.Results: Serum samples from 140 eBC patients and 27 aBC were retrieved. In the eBC cohort, median age was 76 years; 77% of patients had luminal, 10% HER2-positive and 13% triple negative (TN) BC. Forty-two percent of patients had tumors >2 cm, 43% had positive axillary nodes. Using NOESY1D spectra, the RF classifier discriminated free-from-recurrence eBC from aBC with sensitivity, specificity and accuracy of 81%, 67% and 70% respectively. We tested the NOESY1D spectra of each eBC patient on the RF models already calculated. We found that patients classified as "high risk" had higher risk of disease recurrence (hazard ratio (HR) 3.42, 95% confidence interval (CI) 1.58-7.37) than patients at low-risk.Conclusions: This analysis suggests that a "metabolic signature", identified employing NMR fingerprinting, is able to predict the risk of disease recurrence in elderly patients with eBC independently from standard clinicopathological features.
2023
27
101585
101585
Risi, Emanuela; Lisanti, Camilla; Vignoli, Alessia; Biagioni, Chiara; Paderi, Agnese; Cappadona, Silvia; Monte, Francesca Del; Moretti, Erica; Sanna, ...espandi
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1303846
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