揭示蛋白质在痴呆症中的作用:来自两个具有因果证据的英国队列的见解。

IF 4.1 Q1 CLINICAL NEUROLOGY
Brain communications Pub Date : 2025-03-03 eCollection Date: 2025-01-01 DOI:10.1093/braincomms/fcaf097
Jessica Gong, Dylan M Williams, Shaun Scholes, Sarah Assaad, Feifei Bu, Shabina Hayat, Paola Zaninotto, Andrew Steptoe
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引用次数: 0

摘要

基于人群的蛋白质组学为预测未来疾病风险、增强我们对疾病机制的理解、发现新的治疗靶点和生物标志物提供了开创性的途径。然而,血浆蛋白在痴呆症中的作用需要进一步探索。该研究调查了来自英国老龄化纵向研究(ELSA)的3249名参与者(55%为女性,97.2%为白人)中229例全因痴呆、89例阿尔茨海默病和41例血管性痴呆的276种蛋白质-痴呆关联,随访时间中位数为9.8年。我们使用Cox比例风险回归进行分析。进行受试者操作特征分析,以评估从完全调整的Cox回归模型中鉴定出的蛋白质在预测全因痴呆事件中的准确性,无论是单独的还是与人口统计学预测因子、APOE基因型和记忆评分相结合,以估计曲线下面积。此外,极端梯度增强机器学习算法用于识别预测未来全因痴呆发病的最重要特征。在中位13.7年的随访中,来自英国生物银行的52745例个体(53.9%为女性,93.3%为白人)中,1506例全因痴呆、732例阿尔茨海默病、281例血管性痴呆和111例额颞叶痴呆病例证实了这些关联。进一步采用双样本双向孟德尔随机化和药物靶点孟德尔随机化来确定蛋白质浓度与痴呆之间的因果方向。NEFL(风险比[HR][95%可信区间(CI)]: 1.54[1.29, 1.84])和RPS6KB1 (HR [95% CI]: 1.33[1.16, 1.52])与发生的全因痴呆呈显著相关;经多项检测校正后,MMP12 (HR [95% CI]: 2.06[1.41, 2.99])与ELSA患者的血管性痴呆相关。从亚组和敏感性分析中鉴定出额外的标记EDA2R和KIM1。将NEFL和RPS6KB1与其他预测因子结合使用,对发生的全因痴呆具有较高的预测准确性(曲线下面积= 0.871)。极端梯度增强机器学习算法还确定了RPS6KB1、NEFL和KIM1是预测未来全因痴呆的最重要的蛋白质特征。RPS6KB1与全因痴呆的相关性存在明显的性别差异,其中男性相关性更强(交互作用P = 0.037)。在英国生物银行的复制证实了鉴定的蛋白质和各种痴呆症亚型之间的关联。相反方向的孟德尔随机化结果表明,有几种蛋白质是痴呆症的早期标志,而不是痴呆症的直接原因。这些发现为痴呆症的假定机制提供了见解。未来的研究需要验证RPS6KB1与痴呆风险的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unraveling the role of proteins in dementia: insights from two UK cohorts with causal evidence.

Population-based proteomics offers a groundbreaking avenue to predict future disease risks, enhance our understanding of disease mechanisms, and discover novel therapeutic targets and biomarkers. The role of plasma proteins in dementia, however, requires further exploration. This study investigated 276 protein-dementia associations in 229 incident all-cause dementia, 89 Alzheimer's disease, and 41 vascular dementia among 3249 participants (55% women, 97.2% white ethnicity) from the English Longitudinal Study of Ageing (ELSA) over a median 9.8-year follow-up. We used Cox proportional hazard regression for the analysis. Receiver operating characteristic analyses were conducted to assess the precision of the identified proteins from the fully adjusted Cox regression models in predicting incident all-cause dementia, both individually and in combination with demographic predictors, APOE genotype, and memory score, to estimate the area under the curve. Additionally, the eXtreme Gradient Boosting machine learning algorithm was used to identify the most important features predictive of future all-cause dementia onset. These associations were then validated in 1506 incident all-cause dementia, 732 Alzheimer's disease, 281 vascular dementia, and 111 frontotemporal dementia cases among 52 745 individuals (53.9% women, 93.3% White ethnicity) from the UK Biobank over a median 13.7-year follow-up. Two-sample bi-directional Mendelian randomization and drug target Mendelian randomization were further employed to determine the causal direction between protein concentration and dementia. NEFL (hazard ratio [HR] [95% confidence intervals (CIs)]: 1.54 [1.29, 1.84]) and RPS6KB1 (HR [95% CI]: 1.33 [1.16, 1.52]) were robustly associated with incident all-cause dementia; MMP12 (HR [95% CI]: 2.06 [1.41, 2.99]) was associated with vascular dementia in ELSA, after correcting for multiple testing. Additional markers EDA2R and KIM1 were identified from subgroup and sensitivity analyses. Combining NEFL and RPS6KB1 with other predictors yielded high predictive accuracy (area under the curve = 0.871) for incident all-cause dementia. The eXtreme Gradient Boosting machine learning algorithm also identified RPS6KB1, NEFL, and KIM1 as the most important protein features for predicting future all-cause dementia. Sex difference was evident for the association between RPS6KB1 and all-cause dementia, with stronger association in men (P for interaction = 0.037). Replication in the UK Biobank confirmed the associations between the identified proteins and various dementia subtypes. The results from Mendelian randomization in the reverse direction indicated that several proteins serve as early markers for dementia, rather than being direct causes of the disease. These findings provide insights into putative mechanisms for dementia. Future studies are needed to validate the findings on RPS6KB1 in relation to dementia risk.

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