TY - JOUR
T1 - Microplastics in aquatic environments
T2 - Bridging occurrence and mitigation through machine learning detection and bioremediation strategies
AU - Mojiri, Amin
AU - Zhou, John L.
AU - KarimiDermani, Bahareh
AU - Vakili, Mohammadtaghi
AU - Rezania, Shahabaldin
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2026/1/1
Y1 - 2026/1/1
N2 - Microplastics (MPs) are pervasive environmental contaminants that pose risks to aquatic ecosystems and human health. This review examines the sources, transport mechanisms, and ecological impacts of MPs in aquatic environments, and critically evaluates the effectiveness of current mitigation strategies including bioremediation innovations. Alarmingly high concentrations of MPs have been recorded, with estimates reaching the millions of MPs per liter in water bodies. Several studies reveal that certain microbial consortia, particularly those involving fungi and specific algae, show removal efficiencies exceeding 90%, though scalability and efficacy in natural settings are limited by environmental variability. Additionally, machine learning models have demonstrated high accuracy in detecting and classifying MPs, especially when leveraging neural networks. These technologies hold promises for real-time monitoring and management of MP pollution but require extensive datasets and robust training to achieve operational reliability. The review also highlights the potential of engineered bioremediation technologies to effectively address MP pollution.
AB - Microplastics (MPs) are pervasive environmental contaminants that pose risks to aquatic ecosystems and human health. This review examines the sources, transport mechanisms, and ecological impacts of MPs in aquatic environments, and critically evaluates the effectiveness of current mitigation strategies including bioremediation innovations. Alarmingly high concentrations of MPs have been recorded, with estimates reaching the millions of MPs per liter in water bodies. Several studies reveal that certain microbial consortia, particularly those involving fungi and specific algae, show removal efficiencies exceeding 90%, though scalability and efficacy in natural settings are limited by environmental variability. Additionally, machine learning models have demonstrated high accuracy in detecting and classifying MPs, especially when leveraging neural networks. These technologies hold promises for real-time monitoring and management of MP pollution but require extensive datasets and robust training to achieve operational reliability. The review also highlights the potential of engineered bioremediation technologies to effectively address MP pollution.
KW - Algae
KW - Bacteria
KW - Bioremediation
KW - Fungi
KW - Machine learning
KW - Mitigation strategies
KW - Plastic debris
KW - Water pollution
UR - https://www.scopus.com/pages/publications/105014119682
U2 - 10.1016/j.ibiod.2025.106194
DO - 10.1016/j.ibiod.2025.106194
M3 - Review article
AN - SCOPUS:105014119682
SN - 0964-8305
VL - 206
JO - International Biodeterioration and Biodegradation
JF - International Biodeterioration and Biodegradation
M1 - 106194
ER -