Institute of Psychiatry, Psychology and Neuroscience, King's College London, Institute of Psychiatry, London, United Kingdom.
Janssen-Pharmaceutical Companies of Johnson & Johnson, Janssen Research and Development, Beerse, Belgium.
Hum Brain Mapp. 2018 Apr;39(4):1743-1754. doi: 10.1002/hbm.23948. Epub 2018 Jan 16.
The hippocampal formation is a complex brain structure that is important in cognitive processes such as memory, mood, reward processing and other executive functions. Histological and neuroimaging studies have implicated the hippocampal region in neuropsychiatric disorders as well as in neurodegenerative diseases. This highly plastic limbic region is made up of several subregions that are believed to have different functional roles. Therefore, there is a growing interest in imaging the subregions of the hippocampal formation rather than modelling the hippocampus as a homogenous structure, driving the development of new automated analysis tools. Consequently, there is a pressing need to understand the stability of the measures derived from these new techniques. In this study, an automated hippocampal subregion segmentation pipeline, released as a developmental version of Freesurfer (v6.0), was applied to T1-weighted magnetic resonance imaging (MRI) scans of 22 healthy older participants, scanned on 3 separate occasions and a separate longitudinal dataset of 40 Alzheimer's disease (AD) patients. Test-retest reliability of hippocampal subregion volumes was assessed using the intra-class correlation coefficient (ICC), percentage volume difference and percentage volume overlap (Dice). Sensitivity of the regional estimates to longitudinal change was estimated using linear mixed effects (LME) modelling. The results show that out of the 24 hippocampal subregions, 20 had ICC scores of 0.9 or higher in both samples; these regions include the molecular layer, granule cell layer of the dentate gyrus, CA1, CA3 and the subiculum (ICC > 0.9), whilst the hippocampal fissure and fimbria had lower ICC scores (0.73-0.88). Furthermore, LME analysis of the independent AD dataset demonstrated sensitivity to group and individual differences in the rate of volume change over time in several hippocampal subregions (CA1, molecular layer, CA3, hippocampal tail, fissure and presubiculum). These results indicate that this automated segmentation method provides a robust method with which to measure hippocampal subregions, and may be useful in tracking disease progression and measuring the effects of pharmacological intervention.
海马结构是一个复杂的脑结构,在记忆、情绪、奖励处理和其他执行功能等认知过程中起着重要作用。组织学和神经影像学研究表明,海马区域与神经精神障碍以及神经退行性疾病有关。这个高度可塑的边缘区域由几个亚区组成,这些亚区被认为具有不同的功能作用。因此,人们对成像海马结构的亚区而不是将海马建模为同质结构越来越感兴趣,这推动了新的自动分析工具的发展。因此,迫切需要了解这些新技术得出的测量结果的稳定性。在这项研究中,一个自动化的海马亚区分割流水线,作为 Freesurfer(v6.0)的开发版本,被应用于 22 名健康老年人的 T1 加权磁共振成像(MRI)扫描,这些扫描分别在 3 个不同的时间点进行,以及一个独立的 40 名阿尔茨海默病(AD)患者的纵向数据集。使用组内相关系数(ICC)、体积差异百分比和体积重叠百分比(Dice)评估海马亚区体积的测试-再测试可靠性。使用线性混合效应(LME)模型估计区域估计值对纵向变化的敏感性。结果表明,在这 24 个海马亚区中,在两个样本中,有 20 个亚区的 ICC 评分均在 0.9 或以上;这些区域包括分子层、齿状回颗粒细胞层、CA1、CA3 和下托(ICC>0.9),而海马裂和海马伞的 ICC 评分较低(0.73-0.88)。此外,对独立的 AD 数据集的 LME 分析表明,该方法在几个海马亚区(CA1、分子层、CA3、海马尾部、海马裂和前下托)中对随时间变化的体积变化的组间和个体间差异具有敏感性。这些结果表明,这种自动化分割方法提供了一种可靠的方法来测量海马亚区,并且可能有助于跟踪疾病进展和测量药物干预的效果。