Comorbidity-Guided Text Mining and Omics Pipeline to Identify Candidate Genes and Drugs for Alzheimer's Disease.
Iyappan Ramalakshmi OviyaDivya SankarSharanya ManoharanArchana PrabaharKalpana RajaPublished in: Genes (2024)
Alzheimer's disease (AD), a multifactorial neurodegenerative disorder, is prevalent among the elderly population. It is a complex trait with mutations in multiple genes. Although the US Food and Drug Administration (FDA) has approved a few drugs for AD treatment, a definitive cure remains elusive. Research efforts persist in seeking improved treatment options for AD. Here, a hybrid pipeline is proposed to apply text mining to identify comorbid diseases for AD and an omics approach to identify the common genes between AD and five comorbid diseases-dementia, type 2 diabetes, hypertension, Parkinson's disease, and Down syndrome. We further identified the pathways and drugs for common genes. The rationale behind this approach is rooted in the fact that elderly individuals often receive multiple medications for various comorbid diseases, and an insight into the genes that are common to comorbid diseases may enhance treatment strategies. We identified seven common genes- PSEN1 , PSEN2 , MAPT , APP , APOE , NOTCH , and HFE -for AD and five comorbid diseases. We investigated the drugs interacting with these common genes using LINCS gene-drug perturbation. Our analysis unveiled several promising candidates, including MG-132 and Masitinib, which exhibit potential efficacy for both AD and its comorbid diseases. The pipeline can be extended to other diseases.
Keyphrases
- genome wide
- genome wide identification
- type diabetes
- bioinformatics analysis
- cognitive decline
- genome wide analysis
- dna methylation
- squamous cell carcinoma
- drug administration
- cardiovascular disease
- blood pressure
- single cell
- transcription factor
- early onset
- emergency department
- mild cognitive impairment
- gene expression
- cell proliferation
- insulin resistance
- climate change
- metabolic syndrome
- high fat diet
- skeletal muscle
- weight loss
- data analysis