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Evaluation of Pattern Recognition and Feature Extraction Methods in ADHD Prediction

机译:ADHD预测中模式识别和特征提取方法的评估

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摘要

Attention Deficit/Hyperactivity Disorder (ADHD) is a neurodevelopmental disorder, being one of the most prevalent psychiatric disorders in childhood. The neural substrates associated with this condition, both from structural and functional perspectives, are not yet well established. Recent studies have highlighted the relevance of neuroimaging not only to provide a more solid understanding about the disorder but also for possible clinical support. The ADHD-200 Consortium organized the ADHD-200 global competition making publicly available, hundreds of structural magnetic resonance imaging (MRI) and functional MRI (fMRI) datasets of both ADHD patients and typically developing (TD) controls for research use. In the current study, we evaluate the predictive power of a set of three different feature extraction methods and 10 different pattern recognition methods. The features tested were regional homogeneity (ReHo), amplitude of low frequency fluctuations (ALFF), and independent components analysis maps (resting state networks; RSN). Our findings suggest that the combination ALFF+ReHo maps contain relevant information to discriminate ADHD patients from TD controls, but with limited accuracy. All classifiers provided almost the same performance in this case. In addition, the combination ALFF+ReHo+RSN was relevant in combined vs. inattentive ADHD classification, achieving a score accuracy of 67%. In this latter case, the performances of the classifiers were not equivalent and L2-regularized logistic regression (both in primal and dual space) provided the most accurate predictions. The analysis of brain regions containing most discriminative information suggested that in both classifications (ADHD vs. TD controls and combined vs. inattentive), the relevant information is not confined only to a small set of regions but it is spatially distributed across the whole brain.
机译:注意缺陷/多动障碍(ADHD)是一种神经发育障碍,是儿童期最普遍的精神病障碍之一。从结构和功能的角度来看,与这种情况相关的神经基质尚未被很好地建立。最近的研究强调了神经影像学的相关性,不仅可以提供对该病的更扎实的了解,还可以提供可能的临床支持。 ADHD-200联盟组织了ADHD-200全球竞赛,公开竞赛,数百个ADHD患者以及通常开发的(TD)控件供研究使用的结构磁共振成像(MRI)和功能MRI(fMRI)数据集。在当前的研究中,我们评估了三种不同特征提取方法和10种不同模式识别方法的预测能力。测试的特征是区域均匀性(ReHo),低频波动幅度(ALFF)和独立的成分分析图(静止状态网络; RSN)。我们的发现表明,ALFF + ReHo组合图包含将ADHD患者与TD对照区分开的相关信息,但准确性有限。在这种情况下,所有分类器均提供几乎相同的性能。此外,ALFF + ReHo + RSN的组合与注意力不集中的ADHD分类相关,得分准确度达67%。在后一种情况下,分类器的性能不相等,并且L2正则化logistic回归(在原始空间和对偶空间中)都提供了最准确的预测。对包含大多数区分性信息的大脑区域的分析表明,在两种分类(ADHD与TD对照以及组合与不专心)中,相关信息不仅限于一小部分区域,而且还分布在整个大脑中。

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