Research Article

Target Gene Prediction From Microarray Data Using Data Mining Methods

Number: Advanced Online Publication Early Pub Date: May 25, 2026
EN

Target Gene Prediction From Microarray Data Using Data Mining Methods

Abstract

Many different techniques such as microarray, microrna, RNA sequencing and parallel sequencing are used in biomedical research. Among these biotechnological approaches, microarray is widely used for analysing data such as DNA, RNA or proteins. Microarray technology offers advantages in many areas such as analysing gene expression, mutation analysis, epigenetic studies or biomarker discovery. The use of artificial intelligence methods in the analysis of large amounts of data, such as microarray data, offers a gain in accuracy and speed. In this study, gene expression analysis of microarray data is performed using data mining methods. Freely available datasets are used for the study. The first one is the microarray dataset investigating the effects of chronic hypoxia treatment on the brain of mice. The second is a microarray dataset that examines the changes in mouse neurons exposed to oxidative stress. The method we developed for analysing microarray data is applied separately to both data sets and led to successful results. In this work, after the datasets are made suitable for processing in a computer environment, the prediction process is developed using data mining methods. The study is concluded with the listing of the most affected genes among the result genes.

Keywords

References

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Details

Primary Language

English

Subjects

Machine Learning (Other), Data Mining and Knowledge Discovery, Bioinformatic Methods Development, Genomics and Transcriptomics, Statistical and Quantitative Genetics, Bioinformatics and Computational Biology (Other), Gene Expression

Journal Section

Research Article

Early Pub Date

May 25, 2026

Publication Date

-

Submission Date

May 30, 2025

Acceptance Date

April 26, 2026

Published in Issue

Year 2026 Number: Advanced Online Publication

APA
Yıldız Çavdar, Z., Sertbaş, A., Ensari, T., & Akçaman, M. N. (2026). Target Gene Prediction From Microarray Data Using Data Mining Methods. Gazi University Journal of Science, Advanced Online Publication. https://doi.org/10.35378/gujs.1710419
AMA
1.Yıldız Çavdar Z, Sertbaş A, Ensari T, Akçaman MN. Target Gene Prediction From Microarray Data Using Data Mining Methods. Gazi University Journal of Science. 2026;(Advanced Online Publication). doi:10.35378/gujs.1710419
Chicago
Yıldız Çavdar, Zerrin, Ahmet Sertbaş, Tolga Ensari, and Müberra Nur Akçaman. 2026. “Target Gene Prediction From Microarray Data Using Data Mining Methods”. Gazi University Journal of Science, no. Advanced Online Publication. https://doi.org/10.35378/gujs.1710419.
EndNote
Yıldız Çavdar Z, Sertbaş A, Ensari T, Akçaman MN (May 1, 2026) Target Gene Prediction From Microarray Data Using Data Mining Methods. Gazi University Journal of Science Advanced Online Publication
IEEE
[1]Z. Yıldız Çavdar, A. Sertbaş, T. Ensari, and M. N. Akçaman, “Target Gene Prediction From Microarray Data Using Data Mining Methods”, Gazi University Journal of Science, no. Advanced Online Publication, May 2026, doi: 10.35378/gujs.1710419.
ISNAD
Yıldız Çavdar, Zerrin - Sertbaş, Ahmet - Ensari, Tolga - Akçaman, Müberra Nur. “Target Gene Prediction From Microarray Data Using Data Mining Methods”. Gazi University Journal of Science. Advanced Online Publication (May 1, 2026). https://doi.org/10.35378/gujs.1710419.
JAMA
1.Yıldız Çavdar Z, Sertbaş A, Ensari T, Akçaman MN. Target Gene Prediction From Microarray Data Using Data Mining Methods. Gazi University Journal of Science. 2026. doi:10.35378/gujs.1710419.
MLA
Yıldız Çavdar, Zerrin, et al. “Target Gene Prediction From Microarray Data Using Data Mining Methods”. Gazi University Journal of Science, no. Advanced Online Publication, May 2026, doi:10.35378/gujs.1710419.
Vancouver
1.Zerrin Yıldız Çavdar, Ahmet Sertbaş, Tolga Ensari, Müberra Nur Akçaman. Target Gene Prediction From Microarray Data Using Data Mining Methods. Gazi University Journal of Science. 2026 May 1;(Advanced Online Publication). doi:10.35378/gujs.1710419