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脑含水量变化的全自动检测:利用定量MRI研究与年龄和性别相关的水分模式

Fully-automated detection of cerebral water content changes: study of age- and gender-related H2O patterns with quantitative MRI.

作者信息

Neeb Heiko, Zilles Karl, Shah N Jon

机构信息

Institut für Medizin, Forschungszentrum Jülich GmbH, 52425 Jülich, Germany.

出版信息

Neuroimage. 2006 Feb 1;29(3):910-22. doi: 10.1016/j.neuroimage.2005.08.062. Epub 2005 Nov 21.

Abstract

We present a simple and robust method for the automated image analysis of quantitative cerebral water content maps acquired with MRI. The method is based on a new approach for the absolute and quantitative mapping of water content in vivo. Water content maps were automatically segmented into grey and white matter by employing the quantitative T1 information acquired as part of the water content mapping procedure. Based on the segmented maps, twenty-two parameters sensitive to both absolute water content and its spatial organisation are automatically extracted without user interaction. The parameters include, amongst others, absolute water content in grey and white matter and spatial asymmetries of the cerebral water content distribution. Significant age- and gender-related changes in the parameters determined were observed in a study of forty-four healthy subjects. Most notably, the grey matter water content decreases at a rate of 0.034%/year for females between the 3rd and 8th decade of life, whilst a much stronger decrease is observed in males which sets in after the 5th decade of life. In addition, female grey matter water content is, on average, 1.2% higher than the respective male grey matter water content. In contrast to the heterogeneity observed in grey matter, no significant physiological variation was observed for white matter water content. In addition to absolute grey matter water content, characteristic age- and gender-specific variations were also observed in most of the other variables. To check the potential loss of information associated with the large reduction of the dimensionality of the dataset to 22 parameters only, the age and gender of each individual subject were predicted by employing robust linear discriminant analysis based on only the determined twenty-two variables. The median deviation between predicted and real age was 6.3 years resulting in a high correlation coefficient between both values (r = 0.69). Gender is correctly predicted in 68.2% of all cases which improves to 87.5% when age-dependent effects are first corrected, demonstrating the high information content present in the variables even though the dimension of the dataset was significantly reduced. These results form the baseline for future studies of cerebral pathology. The method presented is fully automated, robust and flexible, making it an ideal tool for routine application in both neuroscientific studies and clinical diagnosis based on the quantitative measurement of cerebral water content.

摘要

我们提出了一种简单且稳健的方法,用于对通过MRI获取的定量脑含水量图谱进行自动图像分析。该方法基于一种用于体内水含量绝对定量映射的新方法。通过利用作为水含量映射过程一部分获取的定量T1信息,将水含量图谱自动分割为灰质和白质。基于分割后的图谱,无需用户干预即可自动提取22个对绝对水含量及其空间组织敏感的参数。这些参数包括灰质和白质中的绝对水含量以及脑水含量分布的空间不对称性等。在一项对44名健康受试者的研究中,观察到所确定的参数存在与年龄和性别相关的显著变化。最值得注意的是,在30岁至80岁之间,女性灰质水含量以每年0.034%的速度下降,而男性在50岁以后下降更为明显。此外,女性灰质水含量平均比男性灰质水含量高1.2%。与灰质中观察到的异质性不同,白质水含量未观察到明显的生理变化。除了绝对灰质水含量外,在大多数其他变量中也观察到了特定于年龄和性别的特征性变化。为了检查与将数据集维度大幅减少到仅22个参数相关的潜在信息损失,仅基于所确定的22个变量,通过稳健线性判别分析对每个个体受试者的年龄和性别进行预测。预测年龄与实际年龄之间的中位数偏差为6.3岁,两者之间的相关系数较高(r = 0.69)。在所有病例中,68.2%的性别被正确预测,在首先校正年龄相关效应后,这一比例提高到87.5%,表明即使数据集维度显著减少,变量中仍存在高信息含量。这些结果为未来脑病理学研究奠定了基础。所提出的方法是完全自动化、稳健且灵活的,使其成为基于脑含水量定量测量在神经科学研究和临床诊断中常规应用的理想工具。

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