Stratifying risk of Alzheimer's disease in healthy middle-aged individuals with machine learning.

IF 4.1 Q1 CLINICAL NEUROLOGY
Brain communications Pub Date : 2025-03-25 eCollection Date: 2025-01-01 DOI:10.1093/braincomms/fcaf121
Raghav Tandon, Liping Zhao, Caroline M Watson, Neel Sarkar, Morgan Elmor, Craig Heilman, Katherine Sanders, Chadwick M Hales, Huiying Yang, David W Loring, Felicia C Goldstein, John J Hanfelt, Duc M Duong, Erik C B Johnson, Aliza P Wingo, Thomas S Wingo, Blaine R Roberts, Nicholas T Seyfried, Allan I Levey, James J Lah, Cassie S Mitchell
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引用次数: 0

Abstract

Alzheimer's disease has a prolonged asymptomatic phase during which pathological changes accumulate before clinical symptoms emerge. This study aimed to stratify the risk of clinical disease to inform future disease-modifying treatments. Cerebrospinal fluid analysis from participants in the Emory Healthy Brain Study was used to classify individuals based on amyloid beta 42 (Aβ42), total tau (tTau) and phosphorylated tau (pTau) levels. Cognitively normal (CN), biomarker-positive (CN)/BM+individuals were identified using a tTau: Aβ42 ratio > 0.24, determined by Gaussian mixture models. CN/BM+ individuals (n = 134) were classified as having asymptomatic Alzheimer's disease (AsymAD), while CN, biomarker-negative (CN/BM-) individuals served as controls (n = 134). Cognitively symptomatic, biomarker-positive individuals with an Alzheimer's disease diagnosis confirmed by the Emory Cognitive Neurology Clinic were labelled as Alzheimer's disease (n = 134). Study groups were matched for age, sex, race and education. Cerebrospinal fluid samples from these matched Emory Healthy Brain Study groups were analysed using targeted proteomics via selected reaction monitoring mass spectrometry. The targeted cerebrospinal fluid panel included 75 peptides from 58 unique proteins. Machine learning approaches identified a subset of eight peptides (ADQDTIR, AQALEQAK, ELQAAQAR, EPVAGDAVPGPK, IASNTQSR, LGADMEDVCGR, VVSSIEQK, YDNSLK) that distinguished between CN/BM- and symptomatic Alzheimer's disease samples with a binary classifier area under the curve performance of 0.98. Using these eight peptides, Emory Healthy Brain Study AsymAD cases were further stratified into 'Control-like' and 'Alzheimer's disease-like' subgroups, representing varying levels of risk for developing clinical disease. The eight peptides were evaluated in an independent dataset from the Alzheimer's Disease Neuroimaging Initiative, effectively distinguishing CN/BM- from symptomatic Alzheimer's disease cases (area under the curve = 0.89) and stratifying AsymAD individuals into control-like and Alzheimer's disease-like subgroups (area under the curve = 0.89). In the absence of matched longitudinal data, an established cross-sectional event-based disease progression model was employed to assess the generalizability of these peptides for risk stratification. In summary, results from two independent modelling methods and datasets demonstrate that the identified eight peptides effectively stratify the risk of progression from asymptomatic to symptomatic Alzheimer's disease.

用机器学习对健康中年人阿尔茨海默病风险进行分层
阿尔茨海默病有一个漫长的无症状期,在此期间病理变化积累,然后才出现临床症状。本研究旨在对临床疾病的风险进行分层,为未来的疾病改善治疗提供信息。来自Emory健康脑研究参与者的脑脊液分析用于根据淀粉样蛋白β42 (Aβ42)、总tau (tTau)和磷酸化tau (pTau)水平对个体进行分类。使用高斯混合模型确定的tTau: a - β42比值> 0.24,对认知正常(CN)、生物标志物阳性(CN)/BM+个体进行鉴定。CN/ bm +个体(n = 134)被归类为无症状阿尔茨海默病(AsymAD), CN,生物标志物阴性(CN/ bm -)个体作为对照组(n = 134)。认知症状,经Emory认知神经病学诊所确诊为阿尔茨海默病的生物标志物阳性个体被标记为阿尔茨海默病(n = 134)。研究小组根据年龄、性别、种族和教育程度进行匹配。来自这些匹配的Emory健康脑研究组的脑脊液样本通过选定的反应监测质谱法使用靶向蛋白质组学进行分析。目标脑脊液面板包括来自58种独特蛋白质的75个肽。机器学习方法确定了8个肽子集(ADQDTIR、AQALEQAK、ELQAAQAR、EPVAGDAVPGPK、IASNTQSR、LGADMEDVCGR、VVSSIEQK、YDNSLK),它们区分了CN/BM-和症状性阿尔茨海默病样本,二元分类器面积在曲线性能为0.98下。使用这八种肽,Emory健康脑研究AsymAD病例被进一步分为“对照组”和“阿尔茨海默病样”亚组,代表不同的临床疾病风险水平。在阿尔茨海默病神经影像学倡议的独立数据集中对这8种多肽进行了评估,有效地区分了cn / bmp -和症状性阿尔茨海默病病例(曲线下面积= 0.89),并将AsymAD个体分为对照组和阿尔茨海默病样亚组(曲线下面积= 0.89)。在缺乏匹配的纵向数据的情况下,采用建立的基于事件的横断面疾病进展模型来评估这些肽在风险分层中的普遍性。总之,来自两种独立建模方法和数据集的结果表明,鉴定的8种肽有效地划分了从无症状到有症状的阿尔茨海默病进展的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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