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Label-free identification of microplastics in human cells: dark-field microscopy and deep learning study

Analytical and Bioanalytical Chemistry 2021 38 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 50 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Läysän Nigamatzyanova, Rawil Fakhrullin Ilnur Ishmukhametov, Ilnur Ishmukhametov, Ilnur Ishmukhametov, Ilnur Ishmukhametov, Ilnur Ishmukhametov, Rawil Fakhrullin Läysän Nigamatzyanova, Ilnur Ishmukhametov, Läysän Nigamatzyanova, Rawil Fakhrullin Rawil Fakhrullin Gӧlnur Fakhrullina, Gӧlnur Fakhrullina, Gӧlnur Fakhrullina, Rawil Fakhrullin Rawil Fakhrullin Rawil Fakhrullin Rawil Fakhrullin Rawil Fakhrullin Rawil Fakhrullin Rawil Fakhrullin Rawil Fakhrullin

Summary

Researchers developed a label-free method to identify microplastics inside living human cells using enhanced dark-field microscopy combined with deep learning, achieving high classification accuracy for polystyrene microparticles differing only in pigmentation.

Polymers

The development of an automatic method of identifying microplastic particles within live cells and organisms is crucial for high-throughput analysis of their biodistribution in toxicity studies. State-of-the-art technique in the data analysis tasks is the application of deep learning algorithms. Here, we propose the approach of polystyrene microparticle classification differing only in pigmentation using enhanced dark-field microscopy and a residual neural network (ResNet). The dataset consisting of 11,528 particle images has been collected to train and evaluate the neural network model. Human skin fibroblasts treated with microplastics were used as a model to study the ability of ResNet for classifying particles in a realistic biological experiment. As a result, the accuracy of the obtained classification algorithm achieved up to 93% in cell samples, indicating that the technique proposed will be a potent alternative to time-consuming spectral-based methods in microplastic toxicity research.

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