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Adolescent Fluid Intelligence Prediction from Regional Brain Volumes and Cortical Curvatures Using BlockPC-XGBoost

机译:使用BlockPC-XGBoost从区域大脑体积和皮质曲率预测青少年流体智力

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摘要

From the ABCD dataset, we discover that besides the gray matter volume of cortical regions, other measures such as the mean cortical curvature, white matter volume and subcortical volume exhibit additional capabilities in the prediction of the pre-residulized fluid intelligence scores for adolescents. The MSE and R-square on validation dataset are improved from 70.65 and 0.0175 to 69.39 and 0.0350, respectively, comparing with using mostly the grey matter volume provided by the challenge organizer. Specifically, by employing a BlockPC-XGBoost framework we discover the following predictors in reducing the MSE on validation set: the gray matter volume of right posterior cingulate gyrus and left caudate nucleus, the entorhinal white matter volume of the left hemisphere, the number of detected surface holes, the globus pallidus volume, the mean curvatures of precentral gyrus, postcentral gyrus and Banks of Superior Temporal Sulcus.
机译:从ABCD数据集中,我们发现,除了皮质区域的灰质体积外,其他度量(如平均皮质曲率,白质体积和皮质下体积)在预测青少年残留前的智商评分方面还具有其他功能。与主要使用质询组织者提供的灰质体积相比,验证数据集的MSE和R平方分别从70.65和0.0175分别提高到69.39和0.0350。具体来说,通过使用BlockPC-XGBoost框架,我们发现减少验证集上的MSE的以下预测因素:右后扣带回和尾状核的灰质体积,左半球的内嗅白质体积,检测到的数量表面孔,苍白球体积,中央前回,中央后回和上颞沟银行的平均曲率。

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