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引用次数: 0
摘要
为了更好地实现自闭症谱系障碍(ASD)的自动化诊断,提高诊断准确率,基于脑图谱的局部特征信息和多模态数据的全局特征信息,构建了基于双图谱多特征学习的图神经网络(DML-GNN) ASD诊断模型。首先,DML-GNN构建双图谱特征提取模块,捕获每个主题的初始特征。其次,结合k近邻图、图池化、图卷积(GCN)和图通道关注(GCA)构建局部特征学习模块;该模块对每个主题进行深度特征提取,剔除冗余特征,并进一步高效融合多地图集特征。第三,DML-GNN结合fMRI数据的非成像信息和图同构网络(GINConv)构建全局特征学习模块,结合多模态数据信息构建综合的多图特征,并利用GINConv学习节点嵌入。最后,利用多层感知器(MLP)得到最终的ASD诊断结果。与最近在公共数据集自闭症脑成像数据交换I (autism Brain Imaging data Exchange I,简称ABIDE I)上的ASD诊断算法相比,我们的方法表现出了优越的性能,突显了它作为一种有效工具的潜力。
DML-GNN: ASD Diagnosis Based on Dual-Atlas Multi-Feature Learning Graph Neural Network
To better automate the diagnosis of autism spectrum disorder (ASD) and improve diagnostic accuracy, a graph neural network via dual-atlas multi-feature learning (DML-GNN) model for ASD diagnosis is constructed based on the local feature information of brain atlas and the global feature information from the multi-modal data. First, DML-GNN constructs a dual-atlas feature extraction module to capture the initial features of each subject. Second, it combines K-nearest-neighbor graphs, graph pooling, graph convolution (GCN) and graph channel attention (GCA) to construct a local feature learning module. This module extracts deep features for each subject and eliminate redundant features, and further fuses multi-atlases features efficiently. Third, DML-GNN constructs a global feature learning module by combining the non-imaging information of fMRI data and graph isomorphism network (GINConv), which combines the information of multi-modal data to construct comprehensive multi-graph features and learns node embeddings using GINConv. Finally, multi-layer perceptron (MLP) is used to obtain the final ASD diagnosis results. Compared with recent algorithms for ASD diagnosis on the public data set-Autism Brain Imaging Data Exchange I (ABIDE I), our method demonstrated superior performance, underscoring its potential as an effective tool.
期刊介绍:
The International Journal of Imaging Systems and Technology (IMA) is a forum for the exchange of ideas and results relevant to imaging systems, including imaging physics and informatics. The journal covers all imaging modalities in humans and animals.
IMA accepts technically sound and scientifically rigorous research in the interdisciplinary field of imaging, including relevant algorithmic research and hardware and software development, and their applications relevant to medical research. The journal provides a platform to publish original research in structural and functional imaging.
The journal is also open to imaging studies of the human body and on animals that describe novel diagnostic imaging and analyses methods. Technical, theoretical, and clinical research in both normal and clinical populations is encouraged. Submissions describing methods, software, databases, replication studies as well as negative results are also considered.
The scope of the journal includes, but is not limited to, the following in the context of biomedical research:
Imaging and neuro-imaging modalities: structural MRI, functional MRI, PET, SPECT, CT, ultrasound, EEG, MEG, NIRS etc.;
Neuromodulation and brain stimulation techniques such as TMS and tDCS;
Software and hardware for imaging, especially related to human and animal health;
Image segmentation in normal and clinical populations;
Pattern analysis and classification using machine learning techniques;
Computational modeling and analysis;
Brain connectivity and connectomics;
Systems-level characterization of brain function;
Neural networks and neurorobotics;
Computer vision, based on human/animal physiology;
Brain-computer interface (BCI) technology;
Big data, databasing and data mining.