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Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Detection Methods Human Health Effects Nanoplastics Sign in to save

Identification of extracellular vesicles from theirRaman spectra via self-supervised learning

Research Square (Research Square) 2023 Score: 40 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Mathias Novik Jensen, Mathias Novik Jensen, Cees Otto Eduarda Mazagao Guerreiro, Eduarda Mazagao Guerreiro, Agustin Enciso‐Martinez, Cees Otto Agustin Enciso‐Martinez, Sergei G. Kruglik, Sergei G. Kruglik, Cees Otto Cees Otto Cees Otto Cees Otto Omri Snir, Cees Otto Cees Otto Cees Otto Omri Snir, Benjamin Ricaud, Benjamin Ricaud, Olav Gaute Hellesø, Olav Gaute Hellesø, Cees Otto

Summary

This paper develops a deep learning model to identify and classify extracellular vesicles (tiny cell-secreted particles) from their Raman spectroscopy signatures, achieving over 92% accuracy across 13 biological sources from two laboratories. It is not about microplastics; the "particles" studied are biological nanoparticles and is a false positive for microplastic relevance.

Abstract Extracellular vesicles (EVs) released from cells attract interest for their possible role in health and diseases. The detection and characterization of EVs is challenging due to the lack of specialized methodologies. Raman spectroscopy, however, has been suggested as a novel approach for biochemical analysis of EVs. To extract information from the spectra, a novel deep learning architecture is explored as a versatile variant of autoencoders. The proposed architecture considers the frequency range separately from the intensity of the spectra. This enables the model to adapt to the frequency range, rather than requiring that all spectra be pre-processed to the same frequency range as it was trained on. It is demonstrated that the proposed architecture accepts Raman spectra of EVs and lipoproteins from 13 biological sources and from two laboratories. High reconstruction accuracy is maintained despite large variances in frequency range and noise level. It is also shown that the architecture is able to cluster the biological nanoparticles by their Raman spectra and differentiate them by their origin without pre-processingof the spectra or supervision during learning. The model performs label-free differentiation, including separating EVs from activated vs. non-activated blood platelets and EVs/lipoproteins from prostate cancer patients vs. non-cancer controls. The differentiation is evaluated by creating a neural network classifier that observes the features extracted by the model to classify the samples according to their origin. The classification reveals a test sensitivity of 92.2% and selectivity of 92.3% over 769 measurements from two labs that have different measurement configurations.

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