DeepASD: a deep adversarial-regularized graph learning method for ASD diagnosis with multimodal data

IF 5.8 1区 医学 Q1 PSYCHIATRY Translational Psychiatry Pub Date : 2024-09-14 DOI:10.1038/s41398-024-02972-2
Wanyi Chen, Jianjun Yang, Zhongquan Sun, Xiang Zhang, Guangyu Tao, Yuan Ding, Jingjun Gu, Jiajun Bu, Haishuai Wang
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Abstract

Autism Spectrum Disorder (ASD) is a prevalent neurological condition with multiple co-occurring comorbidities that seriously affect mental health. Precisely diagnosis of ASD is crucial to intervention and rehabilitation. A single modality may not fully reflect the complex mechanisms underlying ASD, and combining multiple modalities enables a more comprehensive understanding. Here, we propose, DeepASD, an end-to-end trainable regularized graph learning method for ASD prediction, which incorporates heterogeneous multimodal data and latent inter-patient relationships to better understand the pathogenesis of ASD. DeepASD first learns cross-modal feature representations through a multimodal adversarial-regularized encoder, and then constructs adaptive patient similarity networks by leveraging the representations of each modality. DeepASD exploits inter-patient relationships to boost the ASD diagnosis that is implemented by a classifier compositing of graph neural networks. We apply DeepASD to the benchmarking Autism Brain Imaging Data Exchange (ABIDE) data with four modalities. Experimental results show that the proposed DeepASD outperforms eight state-of-the-art baselines on the benchmarking ABIDE data, showing an improvement of 13.25% in accuracy, 7.69% in AUC-ROC, and 17.10% in specificity. DeepASD holds promise for a more comprehensive insight of the complex mechanisms of ASD, leading to improved diagnosis performance.

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DeepASD:利用多模态数据诊断 ASD 的深度对抗规则化图学习方法
自闭症谱系障碍(ASD)是一种普遍存在的神经系统疾病,并发多种并发症,严重影响心理健康。自闭症的精确诊断对干预和康复至关重要。单一的模式可能无法完全反映 ASD 的复杂机制,而结合多种模式则能更全面地了解 ASD。在此,我们提出了一种用于 ASD 预测的端到端可训练正则化图学习方法 DeepASD,它结合了异构多模态数据和患者间的潜在关系,以更好地理解 ASD 的发病机制。DeepASD 首先通过多模态对抗正则化编码器学习跨模态特征表征,然后利用每种模态的表征构建自适应患者相似性网络。DeepASD 利用患者之间的关系来提高 ASD 诊断率,该诊断由图神经网络的分类器合成实现。我们将 DeepASD 应用于四种模式的自闭症脑成像数据交换(ABIDE)基准数据。实验结果表明,在基准 ABIDE 数据上,所提出的 DeepASD 优于八种最先进的基线,准确率提高了 13.25%,AUC-ROC 提高了 7.69%,特异性提高了 17.10%。DeepASD 有望更全面地揭示 ASD 的复杂机制,从而提高诊断性能。
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来源期刊
CiteScore
11.50
自引率
2.90%
发文量
484
审稿时长
23 weeks
期刊介绍: Psychiatry has suffered tremendously by the limited translational pipeline. Nobel laureate Julius Axelrod''s discovery in 1961 of monoamine reuptake by pre-synaptic neurons still forms the basis of contemporary antidepressant treatment. There is a grievous gap between the explosion of knowledge in neuroscience and conceptually novel treatments for our patients. Translational Psychiatry bridges this gap by fostering and highlighting the pathway from discovery to clinical applications, healthcare and global health. We view translation broadly as the full spectrum of work that marks the pathway from discovery to global health, inclusive. The steps of translation that are within the scope of Translational Psychiatry include (i) fundamental discovery, (ii) bench to bedside, (iii) bedside to clinical applications (clinical trials), (iv) translation to policy and health care guidelines, (v) assessment of health policy and usage, and (vi) global health. All areas of medical research, including — but not restricted to — molecular biology, genetics, pharmacology, imaging and epidemiology are welcome as they contribute to enhance the field of translational psychiatry.
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