Zixuan Wen, Jingxuan Bao, Shu Yang, Junhao Wen, Qipeng Zhan, Yuhan Cui, Guray Erus, Zhijian Yang, Paul M Thompson, Yize Zhao, Christos Davatzikos, Li Shen
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In addition, we extend morphometricity estimation from the whole brain to the focal-brain level, and examine and quantify both global and regional neuroanatomical signatures of the cognitive traits. Our global analysis reveals 1) a relatively strong anatomical basis for ADAS13, 2) intermediate ones for MMSE, CDRSB and FAQ, and 3) a relatively weak one for RAVLT.learning. The top associations identified from our regional morphometricity analysis include those between all five cognitive traits and multiple regions such as hippocampus, amygdala, and inferior lateral ventricles. As expected, the identified regional associations are weaker than the global ones. 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引用次数: 0
摘要
形态计量学研究大脑形态与可观察特质之间的整体统计关联,其定义是大脑形态在特质变异中所占的比例。在这项工作中,我们提出了一种基于广义随机效应(GRE)模型的精确形态计量学估计方法,并在一项阿尔茨海默氏症研究中对五种认知特质进行了形态计量学分析。我们的实证研究表明,所提出的 GRE 模型在模拟和真实数据上都优于广泛使用的 LME 模型。此外,我们还将形态计量估计从全脑扩展到了局灶脑水平,并对认知特征的全局和区域神经解剖特征进行了研究和量化。我们的全局分析表明:1)ADAS13 的解剖学基础相对较强;2)MMSE、CDRSB 和 FAQ 的解剖学基础居中;3)RAVLT.learning 的解剖学基础相对较弱。从我们的区域形态计量学分析中发现的首要关联包括所有五个认知特质与多个区域(如海马、杏仁核和下侧脑室)之间的关联。不出所料,区域关联弱于整体关联。虽然全脑分析在识别更高的形态计量学方面更强大,但区域分析可以定位所研究认知特征的神经解剖特征,从而为正常和/或失调大脑研究的成像和认知生物标记物发现提供有价值的信息。
MULTISCALE ESTIMATION OF MORPHOMETRICITY FOR REVEALING NEUROANATOMICAL BASIS OF COGNITIVE TRAITS.
Morphometricity examines the global statistical association between brain morphology and an observable trait, and is defined as the proportion of the trait variation attributable to brain morphology. In this work, we propose an accurate morphometricity estimator based on the generalized random effects (GRE) model, and perform morphometricity analyses on five cognitive traits in an Alzheimer's study. Our empirical study shows that the proposed GRE model outperforms the widely used LME model on both simulation and real data. In addition, we extend morphometricity estimation from the whole brain to the focal-brain level, and examine and quantify both global and regional neuroanatomical signatures of the cognitive traits. Our global analysis reveals 1) a relatively strong anatomical basis for ADAS13, 2) intermediate ones for MMSE, CDRSB and FAQ, and 3) a relatively weak one for RAVLT.learning. The top associations identified from our regional morphometricity analysis include those between all five cognitive traits and multiple regions such as hippocampus, amygdala, and inferior lateral ventricles. As expected, the identified regional associations are weaker than the global ones. While the whole brain analysis is more powerful in identifying higher morphometricity, the regional analysis could localize the neuroanatomical signatures of the studied cognitive traits and thus provide valuable information in imaging and cognitive biomarker discovery for normal and/or disordered brain research.