Articles | Volume 25, issue 1
https://doi.org/10.5194/acp-25-685-2025
https://doi.org/10.5194/acp-25-685-2025
Technical note
 | 
17 Jan 2025
Technical note |  | 17 Jan 2025

Technical note: Towards atmospheric compound identification in chemical ionization mass spectrometry with pesticide standards and machine learning

Federica Bortolussi, Hilda Sandström, Fariba Partovi, Joona Mikkilä, Patrick Rinke, and Matti Rissanen

Data sets

Organic pesticide database with 716 molecules analyzed with chemical ionization mass spectrometry. Reagent ions: bromide, protonated acetone, hydronium ion, dioxide Federica Bortolussi et al. https://doi.org/10.5281/zenodo.11208543

Model code and software

PesticidesMS Federica Bortolussi et al. https://gitlab.com/cest-group/pesticidesms

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Short summary
Chemical ionization mass spectrometry (CIMS) is widely used in atmospheric chemistry studies. We still have a limited understanding of the complex functioning of the instrument; therefore, we applied machine learning to provide insights from CIMS analyses. We were able to predict both detection and signal intensity with a fair error, and we found out the most important structural fragments for negative ionization schemes (NH and OH) and positive ones (nitrogen-containing groups).
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Final-revised paper
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