Cargando…

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

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...

Descripción completa

Detalles Bibliográficos
Autores principales: 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
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Neoplasia Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9676351/
https://www.ncbi.nlm.nih.gov/pubmed/36403505
http://dx.doi.org/10.1016/j.tranon.2022.101585
_version_ 1784833577879339008
author 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
author_facet 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
author_sort Risi, Emanuela
collection PubMed
description 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.
format Online
Article
Text
id pubmed-9676351
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Neoplasia Press
record_format MEDLINE/PubMed
spelling pubmed-96763512022-11-25 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 Transl Oncol Commentary 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. Neoplasia Press 2022-11-17 /pmc/articles/PMC9676351/ /pubmed/36403505 http://dx.doi.org/10.1016/j.tranon.2022.101585 Text en © 2022 The Authors. Published by Elsevier Inc. https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Commentary
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
Risk assessment of disease recurrence in early breast cancer: A serum metabolomic study focused on elderly patients
title Risk assessment of disease recurrence in early breast cancer: A serum metabolomic study focused on elderly patients
title_full Risk assessment of disease recurrence in early breast cancer: A serum metabolomic study focused on elderly patients
title_fullStr Risk assessment of disease recurrence in early breast cancer: A serum metabolomic study focused on elderly patients
title_full_unstemmed Risk assessment of disease recurrence in early breast cancer: A serum metabolomic study focused on elderly patients
title_short Risk assessment of disease recurrence in early breast cancer: A serum metabolomic study focused on elderly patients
title_sort risk assessment of disease recurrence in early breast cancer: a serum metabolomic study focused on elderly patients
topic Commentary
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9676351/
https://www.ncbi.nlm.nih.gov/pubmed/36403505
http://dx.doi.org/10.1016/j.tranon.2022.101585
work_keys_str_mv AT risiemanuela riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT lisanticamilla riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT vignolialessia riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT biagionichiara riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT paderiagnese riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT cappadonasilvia riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT montefrancescadel riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT morettierica riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT sannagiuseppina riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT livraghiluca riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT malorniluca riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT benellimatteo riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT puglisifabio riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT luchinatclaudio riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT tenorileonardo riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients
AT biganzolilaura riskassessmentofdiseaserecurrenceinearlybreastcanceraserummetabolomicstudyfocusedonelderlypatients