2024
DOI: 10.1093/bib/bbae291
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AITeQ: a machine learning framework for Alzheimer’s prediction using a distinctive five-gene signature

Ishtiaque Ahammad,
Anika Bushra Lamisa,
Arittra Bhattacharjee
et al.

Abstract: Neurodegenerative diseases, such as Alzheimer’s disease, pose a significant global health challenge with their complex etiology and elusive biomarkers. In this study, we developed the Alzheimer’s Identification Tool (AITeQ) using ribonucleic acid-sequencing (RNA-seq), a machine learning (ML) model based on an optimized ensemble algorithm for the identification of Alzheimer’s from RNA-seq data. Analysis of RNA-seq data from several studies identified 87 differentially expressed genes. This was followed by a ML … Show more

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