TY - JOUR
T1 - Towards a greener future
T2 - The role of sustainable methodologies in metabolomics research
AU - Spaggiari, Chiara
AU - Othibeng, Kgalaletso
AU - Tugizimana, Fidele
AU - Rocchetti, Gabriele
AU - Righetti, Laura
N1 - Publisher Copyright:
© 2025
PY - 2025/5
Y1 - 2025/5
N2 - Sustainability is a growing priority in scientific research, and metabolomics is no exception. Traditional metabolomics workflows rely on hazardous solvents, raising concerns regarding their environmental impact. Recent advancements in green analytical chemistry lay the ground for the integration of eco-friendly approaches in metabolomics from matrix collections and pre-treatment, through sample preparation till data analysis. This review explores the current state of sustainable metabolomic workflows, with a particular focus on green sample preparation methods, solvent-free, low-solvent extraction techniques, and energy-efficient instrumental analysis. Computational advancements, including AI-driven models, machine learning-based semi-quantification, and predictive algorithms for solvent selection, further enhance sustainability by reducing resource consumption. The applicability of these approaches in metabolomic studies, particularly in plant and food research is explored. By integrating innovative green methodologies across all stages of metabolomic workflows, researchers can significantly reduce environmental footprints while maintaining analytical rigor.
AB - Sustainability is a growing priority in scientific research, and metabolomics is no exception. Traditional metabolomics workflows rely on hazardous solvents, raising concerns regarding their environmental impact. Recent advancements in green analytical chemistry lay the ground for the integration of eco-friendly approaches in metabolomics from matrix collections and pre-treatment, through sample preparation till data analysis. This review explores the current state of sustainable metabolomic workflows, with a particular focus on green sample preparation methods, solvent-free, low-solvent extraction techniques, and energy-efficient instrumental analysis. Computational advancements, including AI-driven models, machine learning-based semi-quantification, and predictive algorithms for solvent selection, further enhance sustainability by reducing resource consumption. The applicability of these approaches in metabolomic studies, particularly in plant and food research is explored. By integrating innovative green methodologies across all stages of metabolomic workflows, researchers can significantly reduce environmental footprints while maintaining analytical rigor.
KW - Green metrics
KW - Green sample preparation
KW - Machine learning models
KW - Metabolomics
KW - Sustainability
UR - https://www.scopus.com/pages/publications/105004693083
U2 - 10.1016/j.sampre.2025.100186
DO - 10.1016/j.sampre.2025.100186
M3 - Review article
AN - SCOPUS:105004693083
SN - 2772-5820
VL - 14
JO - Advances in Sample Preparation
JF - Advances in Sample Preparation
M1 - 100186
ER -