Frontiers in Chemistry (Jan 2022)

Early Detection of Nucleation Events From Solution in LC-TEM by Machine Learning

  • Hiroyasu Katsuno,
  • Yuki Kimura,
  • Tomoya Yamazaki,
  • Ichigaku Takigawa,
  • Ichigaku Takigawa

DOI
https://doi.org/10.3389/fchem.2022.818230
Journal volume & issue
Vol. 10

Abstract

Read online

To support the detection, recording, and analysis of nucleation events during in situ observations, we developed an early detection system for nucleation events observed using a liquid-cell transmission electron microscope. Detectability was achieved using the machine learning equivalent of detection by humans watching a video numerous times. The detection system was applied to the nucleation of sodium chloride crystals from a saturated acetone solution of sodium chlorate. Nanoparticles with a radius of more greater than 150 nm were detected in a viewing area of 12 μm × 12 μm by the detection system. The analysis of the change in the size of the growing particles as a function of time suggested that the crystal phase of the particles with a radius smaller than 400 nm differed from that of the crystals larger than 400 nm. Moreover, the use of machine learning enabled the detection of numerous nanometer sized nuclei. The nucleation rate estimated from the machine-learning-based detection was of the same order as that estimated from the detection using manual procedures.

Keywords