{"title":"自闭症谱系障碍诊断的多模态框架。","authors":"Kainat Khan, Rahul Katarya","doi":"10.1016/j.biopsycho.2024.108976","DOIUrl":null,"url":null,"abstract":"<p><p>Within the domain of neurodevelopmental disorders, autism spectrum disorder (ASD) emerges as a distinctive neurological condition characterized by multifaceted challenges. The delayed identification of ASD poses a considerable hurdle in effectively managing its impact and mitigating its severity. Addressing these complexities requires a nuanced understanding of data modalities and the underlying patterns. Existing studies have focused on a single data modality for ASD diagnosis. Recently, there has been a significant shift towards multimodal architectures with deep learning strategies due to their ability to handle and incorporate complex data modalities. In this paper, we developed a novel multimodal ASD diagnosis architecture, referred to as Multi-Head CNN with BERT (MCBERT), which integrates bidirectional encoder representations from transformers (BERT) for meta-features and a multi-head convolutional neural network (MCNN) for the brain image modality. The MCNN incorporates two attention mechanisms to capture spatial (SAC) and channel (CAC) features. The outputs of BERT and MCNN are then fused and processed through a classification module to generate the final diagnosis. We employed the ABIDE-I dataset, a multimodal dataset, and conducted a leave-one-site-out classification to assess the model's effectiveness comprehensively. Experimental simulations demonstrate that the proposed architecture achieves a high accuracy of 93.4 %. 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引用次数: 0
摘要
在神经发育障碍领域,自闭症谱系障碍(ASD)是一种独特的神经系统疾病,其特征是多方面的挑战。ASD的延迟识别对有效管理其影响和减轻其严重性构成了相当大的障碍。处理这些复杂性需要对数据模式和底层模式有细致入微的理解。现有的研究主要集中在ASD诊断的单一数据模式上。最近,由于具有处理和合并复杂数据模式的能力,深度学习策略的多模式架构已经发生了重大转变。在本文中,我们开发了一种新的多模态ASD诊断架构,称为Multi-Head CNN with BERT (MCBERT),它集成了用于元特征的转换器(BERT)的双向编码器表示和用于脑图像模态的多头卷积神经网络(MCNN)。MCNN采用两种注意机制来捕捉空间(SAC)和通道(CAC)特征。然后将BERT和MCNN的输出融合并通过分类模块进行处理以生成最终诊断。我们采用ABIDE-I数据集(一个多模态数据集),并进行了leave-one-site out分类来全面评估模型的有效性。实验仿真结果表明,该结构的精度达到了93.4%。此外,对功能性MRI数据的探索可能有助于更深入地了解ASD的潜在特征。
MCBERT: A multi-modal framework for the diagnosis of autism spectrum disorder.
Within the domain of neurodevelopmental disorders, autism spectrum disorder (ASD) emerges as a distinctive neurological condition characterized by multifaceted challenges. The delayed identification of ASD poses a considerable hurdle in effectively managing its impact and mitigating its severity. Addressing these complexities requires a nuanced understanding of data modalities and the underlying patterns. Existing studies have focused on a single data modality for ASD diagnosis. Recently, there has been a significant shift towards multimodal architectures with deep learning strategies due to their ability to handle and incorporate complex data modalities. In this paper, we developed a novel multimodal ASD diagnosis architecture, referred to as Multi-Head CNN with BERT (MCBERT), which integrates bidirectional encoder representations from transformers (BERT) for meta-features and a multi-head convolutional neural network (MCNN) for the brain image modality. The MCNN incorporates two attention mechanisms to capture spatial (SAC) and channel (CAC) features. The outputs of BERT and MCNN are then fused and processed through a classification module to generate the final diagnosis. We employed the ABIDE-I dataset, a multimodal dataset, and conducted a leave-one-site-out classification to assess the model's effectiveness comprehensively. Experimental simulations demonstrate that the proposed architecture achieves a high accuracy of 93.4 %. Furthermore, the exploration of functional MRI data may provide a deeper understanding of the underlying characteristics of ASD.
期刊介绍:
Biological Psychology publishes original scientific papers on the biological aspects of psychological states and processes. Biological aspects include electrophysiology and biochemical assessments during psychological experiments as well as biologically induced changes in psychological function. Psychological investigations based on biological theories are also of interest. All aspects of psychological functioning, including psychopathology, are germane.
The Journal concentrates on work with human subjects, but may consider work with animal subjects if conceptually related to issues in human biological psychology.