Long Non-Coding RNAs and Alzheimer’s Disease: Towards Personalized Diagnosis

痴呆 疾病 生物信息学 小RNA 计算生物学 生物 长非编码RNA 微泡 阿尔茨海默病 认知功能衰退 认知 医学 神经科学 基因 核糖核酸 遗传学 病理
作者
María Isabel Mosquera Heredia,Oscar M. Vidal,Luis Carlos Morales,Carlos Silvera‐Redondo,Ernesto Barceló,Ricardo Allegri,Mauricio Arcos‐Burgos,Jorge I. Vélez,Pilar Garavito
出处
期刊:International Journal of Molecular Sciences [Multidisciplinary Digital Publishing Institute]
卷期号:25 (14): 7641-7641 被引量:5
标识
DOI:10.3390/ijms25147641
摘要

Alzheimer's disease (AD), a neurodegenerative disorder characterized by progressive cognitive decline, is the most common form of dementia. Currently, there is no single test that can diagnose AD, especially in understudied populations and developing countries. Instead, diagnosis is based on a combination of medical history, physical examination, cognitive testing, and brain imaging. Exosomes are extracellular nanovesicles, primarily composed of RNA, that participate in physiological processes related to AD pathogenesis such as cell proliferation, immune response, and neuronal and cardiovascular function. However, the identification and understanding of the potential role of long non-coding RNAs (lncRNAs) in AD diagnosis remain largely unexplored. Here, we clinically, cognitively, and genetically characterized a sample of 15 individuals diagnosed with AD (cases) and 15 controls from Barranquilla, Colombia. Advanced bioinformatics, analytics and Machine Learning (ML) techniques were used to identify lncRNAs differentially expressed between cases and controls. The expression of 28,909 lncRNAs was quantified. Of these, 18 were found to be differentially expressed and harbored in pivotal genes related to AD. Two lncRNAs, ENST00000608936 and ENST00000433747, show promise as diagnostic markers for AD, with ML models achieving > 95% sensitivity, specificity, and accuracy in both the training and testing datasets. These findings suggest that the expression profiles of lncRNAs could significantly contribute to advancing personalized AD diagnosis in this community, offering promising avenues for early detection and follow-up.
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