Metabolomics Data Analysis to Discover Chronic Granulomatous Disease-Associated Biomarkers Utilizing G-S-M Machine Learning Model via Grouping Metabolites According to Ion Type

dc.contributor.author Ersöz, Nur Sebnem
dc.contributor.author Bakir-Güngör, Burcu
dc.contributor.author Yousef, Malik
dc.date.accessioned 2025-09-25T10:50:39Z
dc.date.available 2025-09-25T10:50:39Z
dc.date.issued 2024
dc.description IEEE SMC; IEEE Turkiye Section en_US
dc.description.abstract Chronic Granulomatous Disease (CGD) is a rare, inherited immunodeficiency disorder characterized by white blood cells unable to effectively kill certain bacteria and fungi. This defect results in the formation of clusters of immune cells called granulomas that form at sites of infection or inflammation. Therefore, identification of disease-related biomarkers is a critical step in advancing precision medicine and improving diagnostic accuracy. In this study, we applied a G-S-M machine learning approach to metabolomics data to uncover CGD-Associated biomarkers. We obtained a metabolomics dataset from Gene Expression Omnibus with GSE220260 accession number. Data includes 85 samples (16 healthy controls and 69 CGD samples) with comprehensive metabolic profiles obtained using liquid chromatography-mass spectrometry analysis. Dataset includes metabolite names with their ion type and formula. In order to identify CGD related metabolites and their ion types, G-S-M was used as a grouping function when performing machine learning oriented metabolomics data analysis. We have performed the G-S-M approach by grouping metabolites according to their ion type. In the training part of the G-S-M approach, metabolites annotated with selected ion types have been utilized to perform a two-class classification task which generates an important set of ion type output. We also compared the performance results of the G-S-M machine learning model with traditional feature selection methods; XGB, SKB, IG, FCBF, MRMR, CMIM with random forest classifier. 100 times Monte-Carlo Cross Validation was used in our experiments. It was observed that G-S-M, XGB, SKB and FCBF methods similarly provided the best performances. In this study, besides its performance, G-S-M method used groups based on ion types unlike TFS, and then identified relevant Chronic Granulomatous Disease-associated metabolites. © 2024 Elsevier B.V., All rights reserved. en_US
dc.description.sponsorship The work of NSE has been supported by TUBITAK 2211A program. BBG has been supported by the Abdullah Gul University Support Foundation (AGUV). MY has been supported by the Zefat Academic College.
dc.description.sponsorship IEEE SMC; IEEE Turkiye Section
dc.description.sponsorship Türkiye Bilimsel ve Teknolojik Araştırma Kurumu, TÜBİTAK; Abdullah Gul University Support Foundation; Zefat Academic College
dc.identifier.doi 10.1109/ASYU62119.2024.10757030
dc.identifier.isbn 9798350379433
dc.identifier.scopus 2-s2.0-85213357572
dc.identifier.uri https://doi.org/10.1109/ASYU62119.2024.10757030
dc.identifier.uri https://hdl.handle.net/20.500.12573/4185
dc.language.iso en en_US
dc.publisher Institute of Electrical and Electronics Engineers Inc. en_US
dc.relation.ispartof -- 2024 Innovations in Intelligent Systems and Applications Conference, ASYU 2024 -- Ankara -- 204562 en_US
dc.rights info:eu-repo/semantics/closedAccess en_US
dc.subject Chronic Granulomatous Disease en_US
dc.subject Feature Selection en_US
dc.subject Groping en_US
dc.subject Ion Type en_US
dc.subject Machine Learning en_US
dc.subject Metabolomics en_US
dc.subject Modeling en_US
dc.subject Scoring en_US
dc.subject Diagnosis en_US
dc.subject Disease Control en_US
dc.subject Feature Selection en_US
dc.subject Ion Chromatography en_US
dc.subject Occupational Diseases en_US
dc.subject Pathology en_US
dc.subject Chronic Granulomatous Disease en_US
dc.subject Features Selection en_US
dc.subject Groping en_US
dc.subject Ion Types en_US
dc.subject Machine-Learning en_US
dc.subject Metabolomics en_US
dc.subject Metabolomics Data en_US
dc.subject Modeling en_US
dc.subject Performance en_US
dc.subject Scoring en_US
dc.subject Metabolites en_US
dc.title Metabolomics Data Analysis to Discover Chronic Granulomatous Disease-Associated Biomarkers Utilizing G-S-M Machine Learning Model via Grouping Metabolites According to Ion Type en_US
dc.type Conference Object en_US
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gdc.description.department Abdullah Gül University en_US
gdc.description.departmenttemp [Ersöz] Nur Sebnem, Department of Bioengineering, Abdullah Gül Üniversitesi, Kayseri, Turkey; [Bakir-Güngör] Burcu, Department of Computer Engineering, Abdullah Gül Üniversitesi, Kayseri, Turkey; [Yousef] Malik, Department of Information Systems, Zefat Academic College, Safad, Israel en_US
gdc.description.endpage 06
gdc.description.publicationcategory Konferans Öğesi - Uluslararası - Kurum Öğretim Elemanı en_US
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gdc.virtual.author Güngör, Burcu
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