Abstract

Alzheimer’s is a progressive, irreversible, neurodegenerative brain disease. Even with prominent symptoms, it takes years to notice, decode, and reveal Alzheimer’s. However, advancements in technologies, such as imaging techniques, help in early diagnosis. Still, sometimes the results are inaccurate, which delays the treatment. Thus, the research in recent times focused on identifying the molecular biomarkers that differentiate the genotype and phenotype characteristics. However, the gene expression dataset’s generated features are huge, 1,000 or even more than 10,000. To overcome such a curse of dimensionality, feature selection techniques are introduced. We designed a gene selection pipeline combining a filter, wrapper, and unsupervised method to select the relevant genes. We combined the minimum Redundancy and maximum Relevance (mRmR), Wrapper-based Particle Swarm Optimization (WPSO), and Auto encoder to select the relevant features. We used the GSE5281 Alzheimer’s dataset from the Gene Expression Omnibus We implemented an Improved Deep Belief Network (IDBN) with simple stopping criteria after choosing the relevant genes. We used a Bayesian Optimization technique to tune the hyperparameters in the Improved Deep Belief Network. The tabulated results show that the proposed pipeline shows promising results.

Highlights

  • Dementia is a broad term for a group of disorders with abnormal changes in the brain

  • We develop a gene selection pipeline combining filter, wrapper, and unsupervised method to select the relevant features in causing Alzheimer’s disease (AD)

  • The minimum Redundancy and maximum Relevance (mRmR) eliminates the genes with maximum redundancy and the selected genes are inputted to the Wrapper-based Particle Swarm Optimization (PSO), which has k-means as the wrapper method and selects the relevant genes

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Summary

Introduction

Dementia is a broad term for a group of disorders with abnormal changes in the brain. The common forms of dementia interrupt the communication between the brain cells (Salat et al, 2001). There are increasing researches in the field of gerontology, a study of the physical aspects of aging. One such neurological disorder that appears in the elderly is the AD. The most widely used technique in diagnosing AD is the clinical screening methods, such as brain imaging. For detecting the expression of hundreds and thousands of genes simultaneously, microarray technology is used widely. The DNA microarray datasets have vast volumes of genes captured, which might not be relevant to the undertaken domain (treatment/disease) (Huang et al, 2018)

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