Department of Information and Communications Engineering Faculty of Informatics, University of Murcia, Murcia, Spain; Steno Diabetes Center Copenhagen, Herlev, Denmark.
Department of Data Science, City University of London, United Kingdom.
Comput Biol Med. 2024 Jun;176:108588. doi: 10.1016/j.compbiomed.2024.108588. Epub 2024 May 13.
Alzheimer's disease (AD) is a neurodegenerative condition for which there is currently no available medication that can stop its progression. Previous studies suggest that mild cognitive impairment (MCI) is a phase that precedes the disease. Therefore, a better understanding of the molecular mechanisms behind MCI conversion to AD is needed.
Here, we propose a machine learning-based approach to detect the key metabolites and proteins involved in MCI progression to AD using data from the European Medical Information Framework for Alzheimer's Disease Multimodal Biomarker Discovery Study. Proteins and metabolites were evaluated separately in multiclass models (controls, MCI and AD) and together in MCI conversion models (MCI stable vs converter). Only features selected as relevant by 3/4 algorithms proposed were kept for downstream analysis.
Multiclass models of metabolites highlighted nine features further validated in an independent cohort (0.726 mean balanced accuracy). Among these features, one metabolite, oleamide, was selected by all the algorithms. Further in-vitro experiments in rodents showed that disease-associated microglia excreted oleamide in vesicles. Multiclass models of proteins stood out with nine features, validated in an independent cohort (0.720 mean balanced accuracy). However, none of the proteins was selected by all the algorithms. Besides, to distinguish between MCI stable and converters, 14 key features were selected (0.872 AUC), including tTau, alpha-synuclein (SNCA), junctophilin-3 (JPH3), properdin (CFP) and peptidase inhibitor 15 (PI15) among others.
This omics integration approach highlighted a set of molecules associated with MCI conversion important in neuronal and glia inflammation pathways.
阿尔茨海默病(AD)是一种神经退行性疾病,目前尚无可用的药物可以阻止其进展。先前的研究表明,轻度认知障碍(MCI)是疾病发生前的一个阶段。因此,需要更好地了解 MCI 向 AD 转化背后的分子机制。
在这里,我们提出了一种基于机器学习的方法,使用来自欧洲医学信息框架阿尔茨海默病多模态生物标志物发现研究的数据,来检测与 MCI 向 AD 进展相关的关键代谢物和蛋白质。分别在多类模型(对照、MCI 和 AD)中评估蛋白质和代谢物,并在 MCI 转化模型(MCI 稳定与转化者)中一起评估。仅保留被 3/4 种算法选为相关的特征,以便进行下游分析。
代谢物的多类模型突出了九个特征,这些特征在一个独立的队列中得到了进一步验证(平均平衡准确率为 0.726)。在这些特征中,一种代谢物油酸酰胺被所有算法选中。进一步在啮齿动物的体外实验表明,与疾病相关的小胶质细胞在囊泡中分泌油酸酰胺。蛋白质的多类模型也很突出,有九个特征得到了验证(平均平衡准确率为 0.720)。然而,没有一种蛋白质被所有算法选中。此外,为了区分 MCI 稳定和转化者,选择了 14 个关键特征(AUC 为 0.872),包括 tTau、α-突触核蛋白(SNCA)、连接蛋白-3(JPH3)、备解素(CFP)和肽酶抑制剂 15(PI15)等。
这种组学整合方法突出了一组与神经元和神经胶质炎症途径相关的重要分子,这些分子与 MCI 转化有关。