Bioinformatics investigation on blood-based gene expressions of Alzheimer's disease revealed ORAI2 gene biomarker susceptibility: An explainable artificial intelligence-based approach.
Karthik SekaranAlsamman M AlsammanC George Priya DossHatem ZayedPublished in: Metabolic brain disease (2023)
The progressive, chronic nature of Alzheimer's disease (AD), a form of dementia, defaces the adulthood of elderly individuals. The pathogenesis of the condition is primarily unascertained, turning the treatment efficacy more arduous. Therefore, understanding the genetic etiology of AD is essential to identifying targeted therapeutics. This study aimed to use machine-learning techniques of expressed genes in patients with AD to identify potential biomarkers that can be used for future therapy. The dataset is accessed from the Gene Expression Omnibus (GEO) database (Accession Number: GSE36980). The subgroups (AD blood samples from frontal, hippocampal, and temporal regions) are individually investigated against non-AD models. Prioritized gene cluster analyses are conducted with the STRING database. The candidate gene biomarkers were trained with various supervised machine-learning (ML) classification algorithms. The interpretation of the model prediction is perpetrated with explainable artificial intelligence (AI) techniques. This experiment revealed 34, 60, and 28 genes as target biomarkers of AD mapped from the frontal, hippocampal, and temporal regions. It is identified ORAI2 as a shared biomarker in all three areas strongly associated with AD's progression. The pathway analysis showed that STIM1 and TRPC3 are strongly associated with ORAI2. We found three hub genes, TPI1, STIM1, and TRPC3, in the network of the ORAI2 gene that might be involved in the molecular pathogenesis of AD. Naive Bayes classified the samples of different groups by fivefold cross-validation with 100% accuracy. AI and ML are promising tools in identifying disease-associated genes that will advance the field of targeted therapeutics against genetic diseases.
Keyphrases
- artificial intelligence
- machine learning
- genome wide
- genome wide identification
- big data
- deep learning
- dna methylation
- copy number
- gene expression
- genome wide analysis
- transcription factor
- bioinformatics analysis
- small molecule
- cognitive decline
- multiple sclerosis
- mass spectrometry
- emergency department
- mild cognitive impairment
- single cell
- depressive symptoms
- functional connectivity
- working memory
- bone marrow
- cancer therapy
- mesenchymal stem cells
- subarachnoid hemorrhage
- angiotensin ii
- electronic health record
- current status
- drug induced
- middle aged
- adverse drug
- hiv infected