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使用结构和功能连接特征对轻度认知障碍患者认知测试评分进行个体化预测。

The individualized prediction of cognitive test scores in mild cognitive impairment using structural and functional connectivity features.

机构信息

Department of Psychological Medicine, Mind Science Centre, Yong Loo Lin School of Medicine, National University of Singapore, 10 Medical Drive, Singapore 117597, Singapore.

Department of Psychological Medicine, Sengkang General Hospital, 110 Sengkang E way, Singapore 544886, Singapore.

出版信息

Neuroimage. 2020 Dec;223:117310. doi: 10.1016/j.neuroimage.2020.117310. Epub 2020 Aug 27.

Abstract

Neuropsychological assessments are essential in diagnosing age-related neurocognitive disorders. However, they are lengthy in duration and can be unreliable at times. To this end, we explored a modified connectome-based predictive modeling approach to estimating individualized scores from multiple cognitive domains using structural connectivity (SC) and functional connectivity (FC) features. Multi-shell HARDI and resting-state functional magnetic resonance imaging scans, and scores from 10 cognitive measures were acquired from 91 older adults with mild cognitive impairment. SC and FC matrices were derived from these scans and, in various combinations, entered into models along with demographic covariates to predict cognitive scores. Leave-one-out cross-validation was performed. Predictive accuracy was assessed via the correlation between predicted and observed scores (r). Across all cognitive measures, significant r (0.402 to 0.654) were observed from the best-predicting models. Six of these models consisted of multimodal features. For three cognitive measures, their best-predicting models' r were similar to that of a model that included only demographic covariates- suggesting that SC and/or FC features did not contribute significantly on top of demographics. Cross-prediction models revealed that the best-predicting models were similarly accurate in predicting scores of related cognitive measures- suggesting their limited specificity in predicting cognitive scores. Generally, multimodal connectomes together with demographics, can be exploited as sensitive markers, though with limited specificity, to predict cognitive performance across a spectrum in multiple cognitive domains. In certain situations, it may not be worthwhile to acquire neuroimaging data, considering that demographics alone can be similarly accurate in predicting cognitive scores.

摘要

神经心理学评估对于诊断与年龄相关的神经认知障碍至关重要。然而,这些评估耗时较长,有时也不可靠。为此,我们探索了一种改良的基于连接组的预测建模方法,该方法使用结构连接(SC)和功能连接(FC)特征,从多个认知领域估计个体得分。从 91 名轻度认知障碍的老年人中获取了多壳弥散张量成像(HARDI)和静息态功能磁共振成像扫描以及 10 项认知测试的得分。从这些扫描中得出了 SC 和 FC 矩阵,并与人口统计学协变量一起,以各种组合输入到模型中,以预测认知得分。采用了留一法交叉验证。通过预测得分与观察得分之间的相关性(r)评估预测准确性。在所有认知测试中,从最佳预测模型中观察到显著的 r(0.402 至 0.654)。这 6 个模型由多模态特征组成。对于 3 项认知测试,其最佳预测模型的 r 与仅包含人口统计学协变量的模型相似,这表明 SC 和/或 FC 特征除了人口统计学因素外,并没有显著贡献。交叉预测模型显示,最佳预测模型在预测相关认知测试的得分方面同样准确,这表明它们在预测认知得分方面的特异性有限。总的来说,多模态连接组学加上人口统计学因素可以被用作敏感的标志物,尽管特异性有限,能够预测多个认知领域中认知表现的广泛范围。在某些情况下,考虑到人口统计学因素可以同样准确地预测认知得分,获取神经影像学数据可能并不值得。

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