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首页> 外文期刊>NeuroImage: Clinical >Rey's Auditory Verbal Learning Test scores can be predicted from whole brain MRI in Alzheimer's disease
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Rey's Auditory Verbal Learning Test scores can be predicted from whole brain MRI in Alzheimer's disease

机译:Rey的听觉语言学习测试成绩可以通过全脑MRI预测阿尔茨海默氏病

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摘要

Rey's Auditory Verbal Learning Test (RAVLT) is a powerful neuropsychological tool for testing episodic memory, which is widely used for the cognitive assessment in dementia and pre-dementia conditions. Several studies have shown that an impairment in RAVLT scores reflect well the underlying pathology caused by Alzheimer's disease (AD), thus making RAVLT an effective early marker to detect AD in persons with memory complaints. We investigated the association between RAVLT scores (RAVLT Immediate and RAVLT Percent Forgetting) and the structural brain atrophy caused by AD. The aim was to comprehensively study to what extent the RAVLT scores are predictable based on structural magnetic resonance imaging (MRI) data using machine learning approaches as well as to find the most important brain regions for the estimation of RAVLT scores. For this, we built a predictive model to estimate RAVLT scores from gray matter density via elastic net penalized linear regression model. The proposed approach provided highly significant cross-validated correlation between the estimated and observed RAVLT Immediate (R = 0.50) and RAVLT Percent Forgetting (R = 0.43) in a dataset consisting of 806 AD, mild cognitive impairment (MCI) or healthy subjects. In addition, the selected machine learning method provided more accurate estimates of RAVLT scores than the relevance vector regression used earlier for the estimation of RAVLT based on MRI data. The top predictors were medial temporal lobe structures and amygdala for the estimation of RAVLT Immediate and angular gyrus, hippocampus and amygdala for the estimation of RAVLT Percent Forgetting. Further, the conversion of MCI subjects to AD in 3-years could be predicted based on either observed or estimated RAVLT scores with an accuracy comparable to MRI-based biomarkers. Highlights ? Estimating Rey's Auditory Verbal Learning Test from gray matter density via elastic net penalized linear regression model. ? Cross-validated correlation between estimated and observed RAVLT Immediate (R = 0.50) and RAVLT Percent Forgetting(R = 0.43). ? Predicting AD in MCI subjects based on either observed or estimated RAVLT with an accuracy comparable to MRI biomarkers.
机译:雷伊的听觉语言学习测验(RAVLT)是一种功能强大的神经心理学工具,用于测试情节记忆,广泛用于痴呆症和痴呆前疾病的认知评估。几项研究表明,RAVLT评分受损充分反映了由阿尔茨海默氏病(AD)引起的潜在病理,从而使RAVLT成为检测患有记忆障碍者AD的有效早期标记。我们调查了RAVLT评分(RAVLT立即评分和RAVLT遗忘百分比)与AD引起的结构性脑萎缩之间的关联。目的是使用机器学习方法基于结构磁共振成像(MRI)数据全面研究RAVLT分数可预测到何种程度,以及找到最重要的大脑区域以评估RAVLT分数。为此,我们建立了一个预测模型,通过弹性净罚线性回归模型根据灰质密度估算RAVLT得分。所提出的方法在由806 AD,轻度认知障碍(MCI)或健康受试者组成的数据集中,在估计和观察到的RAVLT即刻(R = 0.50)和RAVLT遗忘百分比(R = 0.43)之间提供了高度显着的交叉验证相关性。此外,与之前基于MRI数据估算RAVLT所使用的相关矢量回归相比,所选的机器学习方法提供的RAVLT分数估算更准确。预测RAVLT的最主要预测指标是颞颞叶内侧结构和杏仁核,估计RAVLT的百分比遗忘率则是角回,海马和杏仁核。此外,可以根据观察到的或估计的RAVLT分数预测3年内MCI受试者向AD的转化,其准确性可与基于MRI的生物标志物相媲美。强调 ?通过弹性净罚线性回归模型从灰质密度估算雷伊的听觉语言学习测验。 ?估计和观察到的RAVLT即刻(R = 0.50)和RAVLT遗忘率(R = 0.43)之间的交叉验证相关性。 ?基于观察或估计的RAVLT预测MCI受试者中的AD,其准确性可与MRI生物标记物相媲美。

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