基于BOLD静息状态fMRI信号相干性特征的ASD亚型分类

M. I. Al-Hiyali, N. Yahya, I. Faye, Abdulhakim Al-Ezzi
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引用次数: 1

摘要

静息状态脑功能连接(FC)模式在基于功能磁共振成像(fMRI)数据的自闭症谱系障碍(ASD)分类模型的发展中起着至关重要的作用。由于文献中用于识别ASD亚型的模型数量有限,本研究引入了多类分类。本研究的目的是建立一个以动态FC为输入的卷积神经网络(CNN)的ASD诊断模型。本研究中使用的rs-fMRI数据集包括来自多个位点的35名个体,这些位点基于自闭症亚型(ASD、APD和PDD-NOS)和正常对照组(NC)进行标记。选择自动解剖标记图谱(AAL)作为定义脑节点的脑图谱。提取节点的BOLD信号,然后使用我们的新度量小波相干性(WCF)确定脑节点之间的动态FC,其中WCF量化了特定低频尺度的相干性随时间的总体变异性。通过对ASD与NC之间WCF值的统计分析,确定了6个成对节点。利用CNN和成对节点的小波相干图(尺度图)开发了分类算法。CNN的训练和测试使用交叉验证框架。多类分类的平均准确率为88.6%。本研究结果说明了小波相干技术在分析动态FC方面的良好潜力,并为其在诊断模型中的应用开辟了可能性,不仅适用于ASD,也适用于其他神经精神疾病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of ASD Subtypes Based on Coherence Features of BOLD Resting-state fMRI Signals
Resting-state brain functional connectivity (FC) patterns play an essential role in the development of autism spectrum disorder (ASD) classification models based on functional magnetic resonance imaging (fMRI) data. Due to the limited number of models in the literature for identifying ASD subtypes, a multiclass classification is introduced in this study. The aim of this study is to develop an ASD diagnosis model using convolutional neural networks (CNN) with dynamic FC as inputs. The rs-fMRI dataset used in this study consists of 35 individuals from multiple sites labeled based on autistic disorder subtypes (ASD, APD, and PDD-NOS) and normal control (NC). The Atlas for Automated Anatomical Labeling (AAL) is selected as the brain atlas for defining brain nodes. The BOLD signals of the nodes are extracted and then the dynamic FC between brain nodes is determined using our new metric wavelet coherence (WCF), where WCF quantifies the overall variability of coherence in specific low-frequency scales over the time. Based on the statistical analysis of WCF values between ASD and NC, 6 pairwise nodes are identified. Classification algorithm is developed using CNN, and wavelet coherence maps (scalogram) of pairwise nodes. The training and testing of the CNN is using a cross-validation framework. The results of the multiclass classification provided an average accuracy of 88.6%. The results of this study illustrate the good potential of the wavelet coherence technique in analysing dynamics FC and open up possibilities for its application in diagnostic models, not only for ASD but also for other neuropsychiatric disorders.
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