MRC Centre for Reproductive Health, University of Edinburgh, Edinburgh EH16 4TJ, UK.
MRC Centre for Reproductive Health, University of Edinburgh, Edinburgh EH16 4TJ, UK.
Neuroimage Clin. 2020;25:102195. doi: 10.1016/j.nicl.2020.102195. Epub 2020 Jan 23.
Multi-contrast MRI captures information about brain macro- and micro-structure which can be combined in an integrated model to obtain a detailed "fingerprint" of the anatomical properties of an individual's brain. Inter-regional similarities between features derived from structural and diffusion MRI, including regional volumes, diffusion tensor metrics, neurite orientation dispersion and density imaging measures, can be modelled as morphometric similarity networks (MSNs). Here, individual MSNs were derived from 105 neonates (59 preterm and 46 term) who were scanned between 38 and 45 weeks postmenstrual age (PMA). Inter-regional similarities were used as predictors in a regression model of age at the time of scanning and in a classification model to discriminate between preterm and term infant brains. When tested on unseen data, the regression model predicted PMA at scan with a mean absolute error of 0.70 ± 0.56 weeks, and the classification model achieved 92% accuracy. We conclude that MSNs predict chronological brain age accurately; and they provide a data-driven approach to identify networks that characterise typical maturation and those that contribute most to neuroanatomic variation associated with preterm birth.
多对比度 MRI 可以捕捉大脑宏观和微观结构的信息,这些信息可以结合在一个综合模型中,以获得个体大脑解剖结构的详细“指纹”。从结构 MRI 和扩散 MRI 中提取的特征之间的区域相似性可以建模为形态相似性网络 (MSN),包括区域体积、扩散张量指标、神经丝取向分散度和密度成像测量值。在这里,从 105 名新生儿(59 名早产儿和 46 名足月儿)中获得了个体 MSN,这些新生儿在胎龄 38 至 45 周(PMA)之间接受了扫描。区域间的相似性被用作在扫描时的年龄回归模型中的预测因子,以及用于区分早产儿和足月儿大脑的分类模型中的预测因子。在未见数据上进行测试时,回归模型以 0.70 ± 0.56 周的平均绝对误差预测 PMA,分类模型的准确率为 92%。我们得出结论,MSN 可以准确预测大脑的实际年龄,并且为识别与早产相关的典型成熟和对神经解剖变异贡献最大的网络提供了一种数据驱动的方法。