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<dc:title>Bioleaching of waste-derived rare earth elements: An integrated approach with meta-analysis and predictive analytics for scale-up</dc:title>
<dc:creator>Rehman, Hamid</dc:creator>
<dc:creator>Debik, Eyup</dc:creator>
<dc:creator>Ulucan-Altuntas, Kubra</dc:creator>
<dc:creator>Manav-Demir, Neslihan</dc:creator>
<dc:creator>Canci, Baris</dc:creator>
<dc:creator>Iqbal, Mazhar</dc:creator>
<dc:creator>Barros García, Rocío</dc:creator>
<dc:creator>ur Rehman, Wasif</dc:creator>
<dc:creator>Mohanty, Sanjay K</dc:creator>
<dc:creator>Khan, Aqib Hassan Ali</dc:creator>
<dc:subject>Bioleaching</dc:subject>
<dc:subject>REE recovery</dc:subject>
<dc:subject>Machine learning</dc:subject>
<dc:subject>Waste management</dc:subject>
<dc:subject>Metals</dc:subject>
<dc:subject>Organic acids</dc:subject>
<dcterms:abstract>This review provides a comprehensive, data-driven perspective on rare earth element (REE) recoveries from&#xd;
various waste streams by bioleaching, integrating mechanistic insights, microbial performance data, advanced&#xd;
statistical and machine learning tools. A total of 77 observations across 10 waste types were analyzed via&#xd;
Bayesian meta-analysis, yielding an average REE recovery of 56.2 % (95 % credible interval: 51.1–61.0 %).&#xd;
Among the waste types, coal fly ash and electronic waste (e-waste) demonstrated the highest recoveries (76 %&#xd;
and 89 %, respectively). Fungi, particularly Aspergillus and Penicillium, performed better than bacteria, despite&#xd;
being less commonly used in bioleaching studies. Fungal-only systems typically achieved 60–76 % recovery,&#xd;
whereas values above 85 % were reported when fungal bioleaching was combined with chemical or physical&#xd;
pretreatments. Acidophilic bacteria exhibited the highest recovery efficiency among the bacterial species (66 %).&#xd;
The microbial consortia (combinations of fungi and bacteria) achieved up to 76 % recovery efficiency due to&#xd;
synergistic interactions. Importantly, many of the highest recoveries (≥90 %) reported in the literature refer to&#xd;
base metals such as Cu, Ni, and Zn, which are more easily solubilized than REEs; harmonizing claims requires&#xd;
distinguishing organism-only effects from organism + pretreatment strategies, and base metal recoveries from&#xd;
REE recoveries. Structural equation modeling (SEM) revealed that factors such as pH, type of waste, and process&#xd;
parameters, played key roles in determining REE recovery success. Among these, process variables (e.g. pH and&#xd;
pulp density) had the strongest direct influence (β = 0.895). Machine learning models, including support vector&#xd;
machine regression (SVMR) and K-nearest neighbor regression (KNNR), further highlight the importance of&#xd;
metal content, process parameters, and microbial presence. These models performed well, with R² values of 0.87&#xd;
for SVMR and 0.787 for KNNR. Overall, this integrated approach demonstrates the potential for scaling-up&#xd;
bioleaching processes. By combining biological insights with predictive analytics, this integrated framework&#xd;
demonstrates strong foundation for industrial-scale REE recovery and supports shifting toward a more circular&#xd;
and sustainable economy</dcterms:abstract>
<dcterms:dateAccepted>2026-05-27T08:52:11Z</dcterms:dateAccepted>
<dcterms:available>2026-05-27T08:52:11Z</dcterms:available>
<dcterms:created>2026-05-27T08:52:11Z</dcterms:created>
<dcterms:issued>2025-12</dcterms:issued>
<dc:type>info:eu-repo/semantics/article</dc:type>
<dc:identifier>2590-1230</dc:identifier>
<dc:identifier>https://hdl.handle.net/10259/11737</dc:identifier>
<dc:identifier>10.1016/j.rineng.2025.107720</dc:identifier>
<dc:language>eng</dc:language>
<dc:relation>Results in Engineering. 2025, V. 28, 107720</dc:relation>
<dc:relation>https://doi.org/10.1016/j.rineng.2025.107720</dc:relation>
<dc:rights>http://creativecommons.org/licenses/by/4.0/</dc:rights>
<dc:rights>info:eu-repo/semantics/openAccess</dc:rights>
<dc:rights>Atribución 4.0 Internacional</dc:rights>
<dc:publisher>Elsevier</dc:publisher>
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