Por favor, use este identificador para citar o enlazar este ítem: https://hdl.handle.net/10259/11737
Título
Bioleaching of waste-derived rare earth elements: An integrated approach with meta-analysis and predictive analytics for scale-up
Autor
Publicado en
Results in Engineering. 2025, V. 28, 107720
Editorial
Elsevier
Fecha de publicación
2025-12
ISSN
2590-1230
DOI
10.1016/j.rineng.2025.107720
Resumen
This review provides a comprehensive, data-driven perspective on rare earth element (REE) recoveries from
various waste streams by bioleaching, integrating mechanistic insights, microbial performance data, advanced
statistical and machine learning tools. A total of 77 observations across 10 waste types were analyzed via
Bayesian meta-analysis, yielding an average REE recovery of 56.2 % (95 % credible interval: 51.1–61.0 %).
Among the waste types, coal fly ash and electronic waste (e-waste) demonstrated the highest recoveries (76 %
and 89 %, respectively). Fungi, particularly Aspergillus and Penicillium, performed better than bacteria, despite
being less commonly used in bioleaching studies. Fungal-only systems typically achieved 60–76 % recovery,
whereas values above 85 % were reported when fungal bioleaching was combined with chemical or physical
pretreatments. Acidophilic bacteria exhibited the highest recovery efficiency among the bacterial species (66 %).
The microbial consortia (combinations of fungi and bacteria) achieved up to 76 % recovery efficiency due to
synergistic interactions. Importantly, many of the highest recoveries (≥90 %) reported in the literature refer to
base metals such as Cu, Ni, and Zn, which are more easily solubilized than REEs; harmonizing claims requires
distinguishing organism-only effects from organism + pretreatment strategies, and base metal recoveries from
REE recoveries. Structural equation modeling (SEM) revealed that factors such as pH, type of waste, and process
parameters, played key roles in determining REE recovery success. Among these, process variables (e.g. pH and
pulp density) had the strongest direct influence (β = 0.895). Machine learning models, including support vector
machine regression (SVMR) and K-nearest neighbor regression (KNNR), further highlight the importance of
metal content, process parameters, and microbial presence. These models performed well, with R² values of 0.87
for SVMR and 0.787 for KNNR. Overall, this integrated approach demonstrates the potential for scaling-up
bioleaching processes. By combining biological insights with predictive analytics, this integrated framework
demonstrates strong foundation for industrial-scale REE recovery and supports shifting toward a more circular
and sustainable economy
Palabras clave
Bioleaching
REE recovery
Machine learning
Waste management
Metals
Organic acids
Materia
Aprendizaje automático
Machine learning
Gestión de residuos
Refuse and refuse disposal
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