<departmental bulletin paper>
Discrimination of Complex Odors with Gas Chromatography Mass Spectrometry Data by Texture Image Analysis and Machine Learning

Creator
Language
Publisher
Date
Source Title
Vol
Issue
First Page
Last Page
Publication Type
Access Rights
JaLC DOI
Abstract Conventional odor discrimination is generally performed by gas chromatography–mass spectrometry (GC–MS) that identifies specific marker molecules. Such marker identification process is, however, labor...-intensive, and the limited number of identified marker molecules is often insufficient to discriminate complex odors. In this study, we have demonstrated a facile method for discriminating complex odors with GC–MS data by combining texture image analysis (TIA) and machine learning (ML). We extracted various texture features (i.e., contrast, energy, homogeneity, correlation, dissimilarity and angular second moment) of two-dimensional (2D) MS maps by TIA, and used them as datasets for ML. Each texture feature contains a lot of molecular information appeared in 2D MS maps, and thus serves as an effective parameter for discriminating complex odors. Based on this method, we successfully performed the discrimination of breath samples collected from the persons of different blood glucose levels with higher performances and reliability than the conventional approach.show more

Hide fulltext details.

pdf 4302_p042 pdf 754 KB 268  

Details

Record ID
Subject Terms
ISSN
NCID
Funding Information
Created Date 2022.02.25
Modified Date 2023.08.18

People who viewed this item also viewed