日本質量分析学会 第71回質量分析総合討論会

演題概要

ポスター発表

第3日 5月17日(水)  P会場(ホワイエ,会議室1004-1007)

機械学習による電子イオン化法のマススペクトル予測と定性解析手法の開発

(JEOL)
o長友健治久保歩窪田梓生方正章岩淵晴男

The electron ionization (EI) method is widely used as an ionization method for gas chromatograph mass spectrometry (GC/MS). Fragment ions are mainly observed in a mass spectrum obtained by the EI method. Because fragment ions reflect the structure of a compound, the compounds can be identified by comparing with the mass spectrum database. About 300,000 mass spectra are registered in NIST20, the most widely used database for GC/MS. However, as of 2023, more than 100 million compounds are registered in PubChem, a general compound database that does not hold mass spectra. In other words, most of the compounds that do not have mass spectra, so the compounds cannot be identified even by database searches. In this study, we used machine learning to create a model for predicting mass spectra from structural formulas, and constructed a database that includes predicted mass spectra for PubChem's compounds. A new qualitative analysis method incorporating this database was developed. In this presentation, we will report the accuracy of predicted mass spectra and the application of the developed qualitative analysis method with this database to unknown compounds.