AI Article Synopsis

  • The rise of carbon nanomaterials in industries has caused health risk concerns due to potential exposure, particularly from aerosols containing carbon nanotubes and nanofibers.
  • The complex structures of these airborne materials, which include both nano-sized particles and larger agglomerates, make manual classification using traditional methods like TEM images time-consuming and challenging.
  • The study presents an automated approach using a convolutional neural network (CNN) that achieved high accuracy in classifying carbon nanostructures from TEM images, which could be applied to other nanomaterials for structural classification.

Article Abstract

The extensive use of carbon nanomaterials such as carbon nanotubes/nanofibers (CNTs/CNFs) in industrial settings has raised concerns over the potential health risks associated with occupational exposure to these materials. These exposures are commonly in the form of CNT/CNF-containing aerosols, resulting in a need for a reliable structure classification protocol to perform meaningful exposure assessments. However, airborne carbonaceous nanomaterials are very likely to form mixtures of individual nano-sized particles and micron-sized agglomerates with complex structures and irregular shapes, making structure identification and classification extremely difficult. While manual classification from transmission electron microscopy (TEM) images is widely used, it is time-consuming due to the lack of automation tools for structure identification. In the present study, we applied a convolutional neural network (CNN) based machine learning and computer vision method to recognize and classify airborne CNT/CNF particles from TEM images. We introduced a transfer learning approach to represent images by hypercolumn vectors, which were clustered -means and processed into a Vector of Locally Aggregated Descriptors (VLAD) representation to train a softmax classifier with the gradient boosting algorithm. This method achieved 90.9% accuracy on the classification of a 4-class dataset and 84.5% accuracy on a more complex 8-class dataset. The developed model established a framework to automatically detect and classify complex carbon nanostructures with potential applications that extend to the automated structural classification for other nanomaterials.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9417558PMC
http://dx.doi.org/10.1039/d0na00634cDOI Listing

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