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A Systematic Assessment of Feature Extraction Methods for Robust Prediction of Neuropsychological Scores from Functional Connectivity Data

机译:具有功能性连接数据的神经心理学评分鲁棒预测特征提取方法的系统评估

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Multivariate prediction of human behavior from resting state data is gaining increasing popularity in the neuroimaging community, with far-reaching translational implications in neurology and psychiatry. However, the high dimensionality of neuroimaging data increases the risk of overfitting, calling for the use of dimensionality reduction methods to build robust predictive models. In this work, we assess the ability of four dimensionality reduction techniques to extract relevant features from resting state functional connectivity matrices of stroke patients, which are then used to build a predictive model of the associated language deficits based on cross-validated regularized regression. Features extracted by Principal Component Analysis (PCA) were found to be the best predictors, followed by Independent Component Analysis (ICA), Dictionary Learning (DL) and Non-Negative Matrix Factorization. However, ICA and DL led to more parsimonious models. Overall, our findings suggest that the choice of the dimensionality reduction technique should not only be based on prediction/regression accuracy, but also on considerations about model complexity and interpretability.
机译:从休息状态数据的人类行为的多变量预测在神经影像社区中越来越受欢迎,具有深入的神经病和精神病学的翻译意义。然而,神经影像数据的高度维度增加了过度装备的风险,呼吁使用维数减少方法来构建稳健的预测模型。在这项工作中,我们评估了四维减少技术的能力,以提取中风患者的休息状态功能连接矩阵的相关特征,然后用于基于交叉验证的正则化回归构建相关语言缺陷的预测模型。发现主成分分析(PCA)提取的特征是最佳预测因子,其次是独立分量分析(ICA),字典学习(DL)和非负矩阵分解。但是,ICA和DL导致了更加令人垂涎的模型。总体而言,我们的研究结果表明,维度减少技术的选择不仅应基于预测/回归准确性,而且还要考虑模型复杂性和可解释性。

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