Ma Di, Peng Liling, Gao Xin
College of Information Science and Technology, Nanjing Forestry University, Nanjing, China.
Department of PET/MR, Shanghai Universal Medical Imaging Diagnostic Center, Shanghai, China.
Front Psychiatry. 2023 Jan 10;13:1100266. doi: 10.3389/fpsyt.2022.1100266. eCollection 2022.
Autism spectrum disorder (ASD) is one common psychiatric illness that manifests in neurological and developmental disorders, which can last throughout a person's life and cause challenges in social interaction, communication, and behavior. Since the standard ASD diagnosis is highly based on the symptoms of the disease, it is difficult to make an early diagnosis to take the best cure opportunity. Compared to the standard methods, functional brain network (FBN) could reveal the statistical dependence among neural architectures in brains and provide potential biomarkers for the early neuro-disease diagnosis and treatment of some neurological disorders. However, there are few FBN estimation methods that take into account the noise during the data acquiring process, resulting in poor quality of FBN and thus poor diagnosis results. To address such issues, we provide a brand-new approach for estimating FBNs under a noise modeling framework. In particular, we introduce a noise term to model the representation errors and impose a regularizer to incorporate noise prior into FBNs estimation. More importantly, the proposed method can be formulated as conducting traditional FBN estimation based on transformed fMRI data, which means the traditional methods can be elegantly modified to support noise modeling. That is, we provide a plug-and-play noise module capable of being embedded into different methods and adjusted according to different noise priors. In the end, we conduct abundant experiments to identify ASD from normal controls (NCs) based on the constructed FBNs to illustrate the effectiveness and flexibility of the proposed method. Consequently, we achieved up to 13.04% classification accuracy improvement compared with the baseline methods.
自闭症谱系障碍(ASD)是一种常见的精神疾病,表现为神经和发育障碍,可持续一生,并在社交互动、沟通和行为方面带来挑战。由于ASD的标准诊断高度依赖于疾病症状,因此很难进行早期诊断以抓住最佳治疗时机。与标准方法相比,功能性脑网络(FBN)可以揭示大脑中神经结构之间的统计依赖性,并为一些神经疾病的早期神经疾病诊断和治疗提供潜在的生物标志物。然而,很少有FBN估计方法考虑到数据采集过程中的噪声,导致FBN质量较差,诊断结果也不佳。为了解决这些问题,我们在噪声建模框架下提供了一种全新的FBN估计方法。具体来说,我们引入一个噪声项来对表示误差进行建模,并施加一个正则化项将噪声先验纳入FBN估计。更重要的是,所提出的方法可以表述为基于变换后的功能磁共振成像(fMRI)数据进行传统的FBN估计,这意味着传统方法可以被巧妙地修改以支持噪声建模。也就是说,我们提供了一个即插即用的噪声模块,能够嵌入到不同的方法中,并根据不同的噪声先验进行调整。最后,我们基于构建的FBN进行了大量实验,以从正常对照(NC)中识别出ASD,以说明所提出方法的有效性和灵活性。结果,与基线方法相比,我们实现了高达13.04%的分类准确率提升。