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Novel simple accurate detection of microplastics based on image of photoluminescent nanoparticle carbon dots via machine learning and deep feature embedding

Journal of Environmental Management 2026 1 citation ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 55 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Aan Priyanto, Dian Ahmad Hapidin, Dianica Maulina, Mahardika Prasetya Aji, Khairurrijal Khairurrijal

Summary

Researchers developed a simpler, more affordable method for detecting microplastics using fluorescent carbon dot nanoparticles combined with machine learning image analysis. The approach achieved highly accurate detection of PET microplastics by analyzing the glow patterns produced when carbon dots interact with plastic particles. The study suggests this optical-computational method could make microplastic monitoring more accessible by reducing the need for expensive specialized laboratory equipment.

Polymers
Body Systems

Microplastics have become pervasive pollutants that pose risks to biodiversity, ecosystem integrity, food safety, and human health. Most existing approaches for microplastic detection still rely heavily on advanced instrumentation, highlighting the need for simple, rapid, and accurate alternatives. In this study, we present a photoluminescence-based approach for quantifying polyethylene terephthalate (PET) microplastics using carbon dots (CDs) as fluorescent probes, coupled with image analysis, machine learning, and deep feature embedding. The green-channel photoluminescence intensity was identified as the most sensitive and robust descriptor, yielding a sensitivity of 3.647 ± 0.156 a.u. mg L, an excellent coefficient of determination (R = 0.937), and favorable detection limits (LOD = 0.771 ± 0.030 mg L; LOQ = 2.336 ± 0.099 mg L). Machine learning models using color-intensity features further improved predictive accuracy, achieving R values of 0.959 and 0.949 for linear regression (LR) and artificial neural network (ANN) models, respectively. SHAP analysis confirmed the dominance of green and grayscale channel intensities in microplastics quantification. Incorporating deep feature embeddings further enhanced performance, attaining excellent prediction (R = 1.000 for LR; R = 0.999 for ANN), underscoring the strong correlation between image-derived features and microplastic concentration. This work establishes a simple yet powerful optical-computational framework for microplastic quantification and demonstrates the potential of integrating photoluminescence imaging with artificial intelligence to enable fully automated, end-to-end detection systems.

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