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通过综合血清代谢组学和脂蛋白组学方法研究阿尔茨海默病。

Studying Alzheimer's disease through an integrative serum metabolomic and lipoproteomic approach.

作者信息

Vignoli Alessia, Bellomo Giovanni, Paoletti Federico Paolini, Luchinat Claudio, Tenori Leonardo, Parnetti Lucilla

机构信息

Department of Chemistry "Ugo Schiff", University of Florence, Sesto Fiorentino, 50019, Italy.

Magnetic Resonance Center (CERM/CIRMMP), University of Florence, Sesto Fiorentino, 50019, Italy.

出版信息

J Transl Med. 2025 Jan 27;23(1):119. doi: 10.1186/s12967-025-06148-4.

Abstract

BACKGROUND

Alzheimer's disease (AD) is the most frequent neurodegenerative disorder worldwide. The great variability in disease evolution and the incomplete understanding of the molecular mechanisms underlying AD make it difficult to predict when a patient will convert from prodromal stage to dementia. We hypothesize that metabolic alterations present at the level of the brain could be reflected at a systemic level in blood serum of patients, and that these alterations could be used as prognostic biomarkers.

METHODS

This pilot study proposes a serum investigation via nuclear magnetic resonance (NMR) spectroscopy in a consecutive series of AD patients including 57 patients affected by Alzheimer's disease at dementia stage (AD-dem) and 45 patients with mild cognitive impairment (MCI) due to AD (MCI-AD). As control group, we considered 31 subjects with mild cognitive impairment in whom AD and other neurodegenerative disorders were excluded (MCI). A panel of 26 metabolites and 112 lipoprotein-related parameters was quantified and the logistic LASSO regression algorithm was employed to identify the optimal combination of metabolites-lipoproteins and their ratios to discriminate the groups of interest.

RESULTS

In the training set, our model classified AD-dem and MCI with an accuracy of 81.7%. These results were reproduced in the validation set (accuracy 75.0%). Evolution of MCI-AD patients was evaluated over time. Patients who displayed a decrease in MMSE < 1.5 point per year were considered at lower progression rate: we obtained a division in 18 MCI-AD at lower progression rate (MCI-AD LR) and 27 at higher progression rate (MCI-AD HR). The model calculated using 4 metabolic features identified MCI-AD LR and MCI-AD HR with an accuracy of 73.3%.

CONCLUSIONS

The identification of potential novel peripheral biomarkers of Alzheimer's disease, as proposed in this study, opens a new prospect for an innovative and minimally invasive method to identify AD in its very early stages. We proposed a novel approach able to sub-stratify MCI-AD patients identifying those associated with a faster rate of clinical progression.

摘要

背景

阿尔茨海默病(AD)是全球最常见的神经退行性疾病。疾病进展的巨大变异性以及对AD潜在分子机制的不完全理解使得难以预测患者何时从前驱期转变为痴呆。我们假设大脑水平存在的代谢改变可能在患者血清的全身水平得到反映,并且这些改变可用作预后生物标志物。

方法

这项初步研究提出通过核磁共振(NMR)光谱对一系列连续的AD患者进行血清研究,包括57例处于痴呆阶段的阿尔茨海默病患者(AD-dem)和45例因AD导致轻度认知障碍(MCI)的患者(MCI-AD)。作为对照组,我们纳入了31例排除了AD和其他神经退行性疾病的轻度认知障碍受试者(MCI)。对一组26种代谢物和112个脂蛋白相关参数进行了定量,并采用逻辑LASSO回归算法来确定代谢物 - 脂蛋白及其比率的最佳组合,以区分感兴趣的组。

结果

在训练集中,我们的模型对AD-dem和MCI进行分类的准确率为81.7%。这些结果在验证集中得到了重现(准确率75.0%)。对MCI-AD患者的病情进展进行了长期评估。每年MMSE下降<1.5分的患者被认为进展速度较低:我们将其分为18例进展速度较低的MCI-AD患者(MCI-AD LR)和27例进展速度较高的患者(MCI-AD HR)。使用4种代谢特征计算的模型对MCI-AD LR和MCI-AD HR进行识别的准确率为73.3%。

结论

本研究中提出的潜在新型阿尔茨海默病外周生物标志物的识别,为在极早期阶段识别AD的创新且微创方法开辟了新前景。我们提出了一种新颖的方法,能够对MCI-AD患者进行分层,识别出那些临床进展速度较快的患者。

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