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Connectivity-based parcellation increases network detection sensitivity in resting state fMRI: An investigation into the cingulate cortex in autism

机译:基于连通性的细胞分裂提高了静止状态功能性磁共振成像的网络检测灵敏度:自闭症扣带回皮层的研究

摘要

Although resting state fMRI (RS-fMRI) is increasingly used to generate biomarkers of psychiatric illnesses, analytical choices such as seed size and placement can lead to variable findings. Seed placement especially impacts on RS-fMRI studies of Autism Spectrum Disorder (ASD), because individuals with ASD are known to possess more variable network topographies. Here, we present a novel pipeline for analysing RS-fMRI in ASD using the cingulate cortex as an exemplar anatomical region of interest. Rather than using seeds based on previous literature, or gross morphology, we used a combination of structural information, task-independent (RS-fMRI) and task-dependent functional connectivity (Meta-Analytic Connectivity Modeling) to partition the cingulate cortex into six subregions with unique connectivity fingerprints and diverse behavioural profiles. This parcellation was consistent between groups and highly replicable across individuals (up to 93% detection) suggesting that the organisation of cortico-cingulo connections is highly similar between groups. However, our results showed an age-related increase in connectivity between the anterior middle cingulate cortex and right lateral prefrontal cortex in ASD, whilst this connectivity decreased in controls. There was also a Group × Grey Matter (GM) interaction, showing increased connectivity between the anterior cingulate cortex and the rectal gyrus in concert with increasing rectal gyrus GM in controls. By comparing our approach to previously established methods we revealed that our approach improves network detection in both groups, and that the ability to detect group differences using 4 mm radius spheres varies greatly with seed placement. Using our multi-modal approach we find disrupted cortico-cingulo circuits that, based on task-dependent information, may contribute to ASD deficits in attention and social interaction. Moreover, we highlight how more sensitive approaches to RS-fMRI are crucial for establishing robust and reproducible connectivity-based biomarkers in psychiatric disorders.
机译:尽管越来越多地使用静止状态功能磁共振成像(RS-fMRI)来生成精神疾病的生物标志物,但诸如种子大小和位置之类的分析选择可能会导致发现变异。种子的放置对自闭症谱系障碍(ASD)的RS-fMRI研究尤其有影响,因为已知患有ASD的个体拥有更多的可变网络拓扑。在这里,我们提出了一种新颖的流水线,用于使用扣带回皮层作为感兴趣的示例解剖区域来分析ASD中的RS-fMRI。我们没有使用基于先前文献或总体形态的种子,而是结合了结构信息,任务无关(RS-fMRI)和任务相关功能连通性(Meta-Analytic Connectivity Modeling)的组合,将扣带回皮层划分为六个子区域具有独特的连接指纹和多种行为模式。组之间的这种分裂是一致的,并且在个体之间具有高度可复制性(高达93%的检测率),表明皮质-扣带回连接的组织在组之间非常相似。但是,我们的结果显示,ASD中前扣带回皮层和右侧前额叶皮层之间的连通性与年龄相关,而对照组中这种连通性下降。还存在一个Group×Grey Matter(GM)交互作用,表明前扣带回皮质和直肠回之间的连通性增加,而对照组的直肠回GM增加。通过将我们的方法与先前建立的方法进行比较,我们发现我们的方法可以改善两组的网络检测,并且使用4毫米半径球体检测组差异的能力随种子放置而有很大差异。使用我们的多模式方法,我们发现基于任务相关信息的皮质-扣带回回路被破坏,这可能会导致ASD在注意力和社交互动方面的缺陷。此外,我们强调了对RS-fMRI更敏感的方法对于在精神疾病中建立可靠且可重复的基于连接的生物标记物至关重要。

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