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Identification of potential blood biomarkers for early diagnosis of Alzheimer’s disease through RNA sequencing analysis

机译:通过RNA测序分析鉴定潜在血液生物标志物,用于早期诊断阿尔茨海默病的疾病

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With demographic shifts toward older populations, the number of people with dementia is steadily increasing. Alzheimer’s disease (AD) is the most common cause of dementia, and no curative treatment is available. The current best strategy is to delay disease progression and to practice early intervention to reduce the number of patients that ultimately develop AD. Therefore, promising novel biomarkers for early diagnosis are urgently required. To identify blood-based biomarkers for early diagnosis of AD, we performed RNA sequencing (RNA-seq) analysis of 610 blood samples, representing 271 patients with AD, 91 cognitively normal (CN) adults, and 248 subjects with mild cognitive impairment (MCI). We first estimated cell-type proportions among AD, MCI, and CN samples from the bulk RNA-seq data using CIBERSORT and then examined the differentially expressed genes (DEGs) between AD and CN samples. To gain further insight into the biological functions of the DEGs, we performed gene set enrichment analysis (GSEA) and network-based meta-analysis. In the cell-type distribution analysis, we found a significant association between the proportion of neutrophils and AD prognosis at a false discovery rate (FDR)??0.05. Furthermore, a similar trend emerged in the results of routine blood tests from a large number of samples (n?=?3,099: AD, 1,605; MCI, 994; CN, 500). In addition, GSEA and network-based meta-analysis based on DEGs between AD and CN samples revealed functional modules and important hub genes associated with the pathogenesis of AD. The risk prediction model constructed by using the proportion of neutrophils and the most important hub genes (EEF2 and RPL7) achieved a high AUC of 0.878 in a validation cohort; when further applied to a prospective cohort, the model achieved a high accuracy of 0.727. Our model was demonstrated to be effective in prospective AD risk prediction. These findings indicate the discovery of potential biomarkers for early diagnosis of AD, and their further improvement may lead to future practical clinical use.
机译:随着人口统计转向老人群,痴呆症的人数稳步增加。阿尔茨海默病(AD)是痴呆症最常见的原因,没有可用治疗治疗。目前的最佳策略是推迟疾病进展,并练习早期干预,以减少最终开发广告的患者的数量。因此,迫切需要对早期诊断的有前途的新型生物标志物。为了鉴定血液的早期诊断AD的生物标志物,我们进行了610例血样的RNA测序(RNA-SEQ)分析,代表了271例AD,91例认知正常(CN)成人,以及248名受轻度认知障碍的受试者(MCI )。我们首先使用Cibersort从批量RNA-SEQ数据中估计AD,MCI和CN样本中的细胞型比例,然后在AD和CN样品之间检查差异表达的基因(DEGS)。为了进一步了解DEGS的生物学功能,我们进行了基因设定富集分析(GSEA)和基于网络的荟萃分析。在细胞型分布分析中,我们发现嗜中性粒细胞和AD预后的比例以虚假发现率(FDR)(FDR)的比例有重大关联?<?0.05。此外,来自大量样品的常规血液试验结果中出现了类似的趋势(n?= 3,099:AD,1,605; MCI,994; CN,500)。此外,基于AD和CN样品之间的DEGS的GSEA和基于网络的META分析显示出与AD发病机制相关的功能模块和重要的枢纽基因。通过使用中性粒细胞比例和最重要的中心基因(EEF2和RPL7)构成的风险预测模型在验证队列中达到了0.878的高AUC;进一步应用于预期队列时,该模型达到了0.727的高精度。我们的模型被证明在预期广告风险预测中是有效的。这些发现表明潜在的生物标志物用于早期诊断广告,其进一步的改进可能导致未来的实际临床使用。

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