IEEE Trans Cybern. 2015 Dec;45(12):2668-79. doi: 10.1109/TCYB.2014.2379621. Epub 2015 Jan 6.
Automated recognition and classification of brain diseases are of tremendous value to society. Attention deficit hyperactivity disorder (ADHD) is a diverse spectrum disorder whose diagnosis is based on behavior and hence will benefit from classification utilizing objective neuroimaging measures. Toward this end, an international competition was conducted for classifying ADHD using functional magnetic resonance imaging data acquired from multiple sites worldwide. Here, we consider the data from this competition as an example to illustrate the utility of fully connected cascade (FCC) artificial neural network (ANN) architecture for performing classification. We employed various directional and nondirectional brain connectivity-based methods to extract discriminative features which gave better classification accuracy compared to raw data. Our accuracy for distinguishing ADHD from healthy subjects was close to 90% and between the ADHD subtypes was close to 95%. Further, we show that, if properly used, FCC ANN performs very well compared to other classifiers such as support vector machines in terms of accuracy, irrespective of the feature used. Finally, the most discriminative connectivity features provided insights about the pathophysiology of ADHD and showed reduced and altered connectivity involving the left orbitofrontal cortex and various cerebellar regions in ADHD.
自动化识别和分类脑部疾病对社会具有巨大价值。注意缺陷多动障碍(ADHD)是一种表现多样的疾病,其诊断基于行为,因此利用客观神经影像学测量进行分类将受益。为此,针对使用来自世界各地多个站点采集的功能磁共振成像数据对 ADHD 进行分类的问题,开展了一项国际竞赛。在此,我们以该竞赛的数据为例,说明全连接级联(FCC)人工神经网络(ANN)架构在执行分类方面的效用。我们采用了各种基于方向和非方向的脑连接方法来提取有判别力的特征,与原始数据相比,这些特征的分类准确性更好。我们区分 ADHD 患者和健康受试者的准确率接近 90%,区分 ADHD 不同亚型的准确率接近 95%。此外,如果使用得当,FCC ANN 在准确性方面的表现明显优于其他分类器(如支持向量机),而与所使用的特征无关。最后,最具判别力的连接特征提供了 ADHD 病理生理学的见解,并显示 ADHD 患者的左眶额皮质和各种小脑区域的连接减少和改变。