Autism spectrum disorder detection using projection based learning meta-cognitive RBF network

Vigneshwaran Senthilvel, B. S. Mahanand, S. Sundaram, R. Savitha
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引用次数: 20

Abstract

In this paper, we present an approach for the diagnosis of Autism Spectrum Disorder (ASD) from Magnetic Resonance Imaging (MRI) scans with Voxel-Based Morphometry (VBM) detected features using Projection Based Learning (PBL) algorithm for a Meta-cognitive Radial Basis Function Network (McRBFN) classifier. McRBFN emulates human-like meta-cognitive learning principles. As each sample is presented to the network, the McRBFN uses the estimated class label, the maximum hinge error and class-wise significance to address the self-regulating principles of what-to-learn, when-to-learn and how-to-learn in a meta-cognitive framework. Initially, McRBFN begins with zero hidden neurons and adds required number of neurons to approximate the decision surface. When a neuron is added, its parameters are initialized based on the sample overlapping conditions. The output weights are updated using a PBL algorithm such that the network finds the minimum point of an energy function defined by the hinge-loss error. Moreover, as samples with similar information are deleted, over-training is avoided. The PBL algorithm helps to reduce the computational effort used in training. For simulation studies, we have used MR images from the Autism Brain Imaging Data Exchange (ABIDE) data set. The performance of the PBL-McRBFN classifier is evaluated on complete morphometric features set obtained from the VBM analysis. The performance evaluation study clearly indicates the superior performance of PBL-McRBFN classifier over other classification algorithms.
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基于投影学习元认知RBF网络的自闭症谱系障碍检测
在本文中,我们提出了一种基于基于体素的形态测量(VBM)检测特征的磁共振成像(MRI)扫描诊断自闭症谱系障碍(ASD)的方法,该方法使用基于投影的学习(PBL)算法用于元认知径向基函数网络(McRBFN)分类器。McRBFN模拟类似人类的元认知学习原理。当每个样本呈现给网络时,McRBFN使用估计的类标签、最大铰链误差和类明智性来解决元认知框架中学习什么、何时学习和如何学习的自我调节原则。最初,McRBFN从零隐藏神经元开始,并添加所需数量的神经元来近似决策面。当添加神经元时,根据样本重叠条件初始化其参数。使用PBL算法更新输出权重,使网络找到由铰链损耗误差定义的能量函数的最小点。此外,由于删除了具有相似信息的样本,避免了过度训练。PBL算法有助于减少训练中使用的计算量。在模拟研究中,我们使用了来自自闭症脑成像数据交换(ABIDE)数据集的MR图像。PBL-McRBFN分类器的性能在VBM分析获得的完整形态特征集上进行评估。性能评价研究清楚地表明PBL-McRBFN分类器的性能优于其他分类算法。
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