- 著者
-
Ayumi Kubo
Azusa Kubota
Haruki Ishioka
Takuhiro Hizume
Masaaki Ubukata
Kenji Nagatomo
Takaya Satoh
Mitsuyoshi Yoshida
Fuminori Uematsu
- 出版者
- The Mass Spectrometry Society of Japan
- 雑誌
- Mass Spectrometry (ISSN:2187137X)
- 巻号頁・発行日
- vol.12, no.1, pp.A0120, 2023-04-13 (Released:2023-04-13)
- 参考文献数
- 15
Electron ionization (EI) mass spectrum library searching is usually performed to identify a compound in gas chromatography/mass spectrometry. However, compounds whose EI mass spectra are registered in the library are still limited compared to the popular compound databases. This means that there are compounds that cannot be identified by conventional library searching but also may result in false positives. In this report, we report on the development of a machine learning model, which was trained using chemical formulae and EI mass spectra, that can predict the EI mass spectrum from the chemical structure. It allowed us to create a predicted EI mass spectrum database with predicted EI mass spectra for 100 million compounds in PubChem. We also propose a method for improving library searching time and accuracy that includes an extensive mass spectrum library.