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Subject-Specific Estimation of Missing Cortical Thickness Maps in Developing Infant Brains

机译:发育中的婴儿大脑中皮质厚度分布图缺失的特定受试者估计

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To accurately chart the dynamic brain developmental trajectories in infants, many longitudinal neuroimaging studies prefer having a complete dataset. Unfortunately, missing data at certain time points are unavoidable in longitudinal datasets. To better use incomplete longitudinal data, we propose a novel method to estimate the subject-specific vertex-wise cortical thickness maps at missing time points, by using a customized regression forest, Dynamically-Assembled Regression Forest (DARF). DARF ensures spatial smoothness of the estimated cortical thickness maps and also the computational efficiency. The proposed method can fully exploit the available information from the subjects both with and without missing scans. Our method has been applied to estimate the missing cortical thickness maps in a longitudinal infant dataset, which includes 31 healthy subjects, with each having up to 5 scans. The experimental results indicate that our method can accurately estimate missing cortical thickness maps, with the average vertex-wise error less than 0.23 mm.
机译:为了准确绘制婴儿的动态大脑发育轨迹,许多纵向神经影像学研究都希望拥有完整的数据集。不幸的是,纵向数据集中不可避免地会在某些时间点丢失数据。为了更好地使用不完整的纵向数据,我们提出了一种新方法,通过使用定制的回归森林动态组装回归森林(DARF)来估计缺少时间点的特定于对象的顶点方向皮质厚度图。 DARF确保估计的皮质厚度图的空间平滑性以及计算效率。所提出的方法可以在不丢失扫描和不丢失扫描的情况下充分利用对象的可用信息。我们的方法已被用于估计纵向婴儿数据集中缺失的皮质厚度图,该数据集包括31位健康受试者,每位受试者最多进行5次扫描。实验结果表明,我们的方法可以准确估计缺失的皮质厚度图,平均顶点方向误差小于0.23 mm。

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