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Prediction of Longitudinal Development of Infant Cortical Surface Shape Using a 4D Current-based Learning Framework

机译:使用基于4D电流的学习框架预测婴儿皮质表面形状的纵向发展

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摘要

Understanding the early dynamics of the highly folded human cerebral cortex is still an actively evolving research field teeming with unanswered questions. Longitudinal neuroimaging analysis and modeling have become the new trend to advance research in this field. However, this is challenged by a limited number of acquisition timepoints and the absence of inter-subject matching between timepoints. In this paper, we propose a novel framework that unprecedentedly solves the problem of predicting the dynamic evolution of infant cortical surface shape solely from a single baseline shape based on a spatiotemporal (4D) current-based learning approach. Specifically, our method learns from longitudinal data both the geometric (vertices positions) and dynamic (temporal evolution trajectories) features of the infant cortical surface, comprising a training stage and a prediction stage. In the training stage, we first use the current-based shape regression model to set up the inter-subject cortical surface correspondences at baseline of all training subjects. We then estimate for each training subject the diffeomorphic temporal evolution trajectories of the cortical surface shape and build an empirical mean spatiotemporal surface atlas. In the prediction stage, given an infant, we first warp all training subjects onto its baseline cortical surface. Second, we select the most appropriate learnt features from training subjects to simultaneously predict the cortical surface shapes at all later timepoints from its baseline cortical surface, based on closeness metrics between this baseline surface and the learnt baseline population average surface atlas. We used the proposed framework to predict the inner cortical surface shape at 3, 6 and 9 months from the cortical shape at birth in 9 healthy infants. Our method predicted with good accuracy the spatiotemporal dynamic change of the highly folded cortex.
机译:了解高度折叠的人类大脑皮层的早期动态仍然是一个活跃的研究领域,充满了未解决的问题。纵向神经影像分析和建模已成为推动该领域研究的新趋势。然而,这受到有限数量的获取时间点和时间点之间缺少对象间匹配的挑战。在本文中,我们提出了一种新颖的框架,该框架前所未有地解决了基于时空(4D)当前基于学习方法仅从单个基线形状预测婴儿皮质表面形状的动态演变的问题。具体而言,我们的方法从纵向数据中学习了婴儿皮质表面的几何(顶点位置)和动态(时间演变轨迹)特征,包括训练阶段和预测阶段。在训练阶段,我们首先使用基于电流的形状回归模型在所有训练对象的基线处建立受试者间皮层表面对应关系。然后,我们估计每个训练对象的皮质表面形状的时间变迁轨迹,并建立经验平均时空表面图集。在预测阶段,对于婴儿,我们首先将所有训练对象弯曲到其基线皮层表面上。其次,我们从训练对象中选择最合适的学习特征,以基于该基线表面和学习的基线总体平均表面图集之间的接近度,同时从其基线皮质表面在所有以后的时间点同时预测皮质表面形状。我们使用提出的框架来预测9个健康婴儿出生时的皮质形状在3、6和9个月时的皮质内部表面形状。我们的方法很好地预测了高度折叠皮质的时空动态变化。

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