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Predicting Conversion from MCI to AD Combining Multi-Modality Data and Based on Molecular Subtype

机译:从MCI预测转换为广告组合多模态数据并基于分子亚型

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摘要

Alzheimer’s disease (AD) is a neurodegenerative brain disease in the elderly. Identifying patients with mild cognitive impairment (MCI) who are more likely to progress to AD is a key step in AD prevention. Recent studies have shown that AD is a heterogeneous disease. In this study, we propose a subtyping-based prediction strategy to predict the conversion from MCI to AD in three years according to MCI patient subtypes. Structural magnetic resonance imaging (sMRI) data and multi-omics data, including genotype data and gene expression profiling derived from peripheral blood samples, from 125 MCI patients were used in the Alzheimer’s Disease Neuroimaging Initiative (ADNI)-1 dataset and from 98 MCI patients in the ADNI-GO/2 dataset. A variational Bayes approximation model based on the multiple kernel learning method was constructed to predict whether an MCI patient will progress to AD within three years. In internal fivefold cross-validation within ADNI-1, we achieved an overall AUC of 0.83 (79.20% accuracy, 81.25% sensitivity, 77.92% specificity) compared to the model without subtyping, which achieved an AUC of 0.78 (76.00% accuracy, 77.08% sensitivity, 75.32% specificity). In external validation using ADNI-1 as a training set and ADNI-GO/2 as an independent test set, we attained an AUC of 0.78 (74.49% accuracy, 74.19% sensitivity, 74.63% specificity). Identifying MCI patient subtypes with omics data would improve the accuracy of predicting the conversion from MCI to AD. In addition to evaluating statistics, obtaining the significant sMRI, single nucleotide polymorphism (SNP) and mRNA expression data from peripheral blood of MCI patients is noninvasive and cost-effective for predicting conversion from MCI to AD.
机译:阿尔茨海默病(AD)是老年人的神经退行性脑疾病。识别更有可能进入广告的轻度认知障碍(MCI)的患者是AD预防的关键步骤。最近的研究表明,广告是一种异质疾病。在这项研究中,我们提出了一种基于亚型的预测策略,以根据MCI患者亚型在三年内从MCI转换为广告。结构磁共振成像(SMRI)数据和多OMICS数据,包括来自125名MCI患者的基因型数据和来自外周血样品的基因表达分布,用于阿尔茨海默病神经影像序列(ADNI)-1数据集和98例MCI患者在ADNI-GO / 2数据集中。基于多个内核学习方法的变形贝叶斯近似模型被构造成预测MCI患者在三年内是否会进展到广告。在ADNI-1内的内部五倍交叉验证中,与没有亚型的模型相比,我们达到了0.83的整体AUC(精度为79.20%,敏感度,77.92%的特异性,77.92%的特异性),这实现了0.78的AUC(精度为77.08 %敏感性,特异性75.32%)。在外部验证中,使用ADNI-1作为训练集和ADNI-GO / 2作为独立测试集,我们达到了0.78的AUC(精度为74.49%,灵敏度74.19%,特异性74.63%)。用OMICS数据识别MCI患者子类型将提高从MCI到AD的转换的准确性。除了评估统计数据外,从MCI患者的外周血中获得显着的SMRI,单核苷酸多态性(SNP)和mRNA表达数据是非侵入性的,并且对于预测来自MCI的转换为广告的成本有效。

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