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Clustering-Based Deep Brain MultiGraph Integrator Network for Learning Connectional Brain Templates

机译:基于聚类的深脑多密码集成器网络,用于学习连接脑模板

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Recently, the use of connectional brain templates (CBTs) has revolutionized the field of neurological disorder diagnosis through providing integral representation maps of a population-driven brain connectivity and effective identification of atypical changes in brain connectivity. Ideally, a reliable CBT should satisfy the following criteria: (1) centeredness as it occupies the center of the brain network population, and (2) discriminativeness as it allows to identify differences in brain connectivity between populations with different brain states (e.g., healthy and disordered). Existing state-of-the-art methods for connectional brain template (CBT) estimation from a population of multi-view brain networks (also called brain multigraphs) learn the integration process in a dichotomized manner, where different learning steps are pieced in together independently. Hence, such frameworks are inherently agnostic to the cumulative estimation error from step to step. This is a key limitation that we addressed by capitalizing on the power of deep learning frameworks residing in learning an end-to-end deep mapping using a single objective function to optimize to transform input data into target output data. In this paper, we propose to learn a many-to-one deep learning mapping by designing a clustering-based multi-graph integrator network (MGINet). Our MGINet inputs population of brain multi-graphs (many) and outputs a single CBT graph (one). We first propose to tease apart brain multigraph data heterogeneity by first clustering similar samples together using multi-kernel manifold learning. In this way, we are optimally learning to disentangle the heterogeneity of our population and facilitating the integration task for our MGINet Next, for each cluster, we first integrate the multigraph of each subject into a single graph, then merge the generated graphs into a cluster-specific CBT. Finally, we simply average the cluster-specific CBTs into a final CBT. Our experimental results show that our MGINet largely outperforms state-of-the-art methods in terms of centeredness and representativeness of the estimated CBT using both autistic and healthy brain multigraph datasets.
机译:最近,使用连接脑模板(CBT)通过提供人口驱动的大脑连接的整体表示图和有效识别脑连接的非典型变化的整体表示映射,彻底改变了神经系统疾病诊断领域。理想情况下,可靠的CBT应满足以下标准:(1)中心,因为它占据大脑网络人口的中心,并且(2)歧视,因为它允许识别不同脑状态的群体之间脑连接的差异(例如,健康和混乱)。来自多视图脑网络群(也称为脑多角形)的现有最新方法(CBT)估计(也称为脑多角形)以二分的方式学习集成过程,其中不同的学习步骤独立地拼凑在一起。因此,从步骤到步骤,这种框架本质上对累积估计误差具有固有的不可结构。这是通过利用驻留在学习端到端深度映射的深度学习框架的力量来解决的一个关键限制,使用单个目标函数优化将输入数据转换为目标输出数据。在本文中,我们建议通过设计基于聚类的多图集成器网络(MINIT)来学习多对一的深度学习映射。我们的MINGET输入脑多图(许多)的群体,并输出单个CBT图(一个)。我们首先建议通过使用多核多核学习将相似的样品聚类相似的样本来梳理脑多层数据异质性。通过这种方式,我们最佳地学习解除我们人口的异构性并促进我们跨越的集成任务,对于每个群集,我们首先将每个受试者的多密码集成到一个图表中,然后将生成的图形合并到群集中 - 特价CBT。最后,我们只是将簇特定的CBT平均到最终的CBT。我们的实验结果表明,我们的迈克特在使用自闭症和健康脑多角形数据集的估计CBT的中心和代表性方面主要优于最先进的方法。

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