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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Combination of rs-fMRI and sMRI Data to Discriminate Autism Spectrum Disorders in Young Children Using Deep Belief Network
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Combination of rs-fMRI and sMRI Data to Discriminate Autism Spectrum Disorders in Young Children Using Deep Belief Network

机译:RS-FMRI和SMRI数据的组合使用深度信仰网络对幼儿的自闭症谱系障碍

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摘要

In recent years, the use of advanced magnetic resonance (MR) imaging methods such as functional magnetic resonance imaging (fMRI) and structural magnetic resonance imaging (sMRI) has recorded a great increase in neuropsychiatric disorders. Deep learning is a branch of machine learning that is increasingly being used for applications of medical image analysis such as computer-aided diagnosis. In a bid to classify and represent learning tasks, this study utilized one of the most powerful deep learning algorithms (deep belief network (DBN)) for the combination of data from Autism Brain Imaging Data Exchange I and II (ABIDE I and ABIDE II) datasets. The DBN was employed so as to focus on the combination of resting-state fMRI (rs-fMRI), gray matter (GM), and white matter (WM) data. This was done based on the brain regions that were defined using the automated anatomical labeling (AAL), in order to classify autism spectrum disorders (ASDs) from typical controls (TCs). Since the diagnosis of ASD is much more effective at an early age, only 185 individuals (116 ASD and 69 TC) ranging in age from 5 to 10years were included in this analysis. In contrast, the proposed method is used to exploit the latent or abstract high-level features inside rs-fMRI and sMRI data while the old methods consider only the simple low-level features extracted from neuroimages. Moreover, combining multiple data types and increasing the depth of DBN can improve classification accuracy. In this study, the best combination comprised rs-fMRI, GM, and WM for DBN of depth 3 with 65.56% accuracy (sensitivity=84%, specificity=32.96%, F1 score=74.76%) obtained via 10-fold cross-validation. This result outperforms previously presented methods on ABIDE I dataset.
机译:近年来,使用先进的磁共振(MR)成像方法,例如功能磁共振成像(FMRI)和结构磁共振成像(SMRI)已经造成了神经心理疾病的大幅增加。深度学习是机器学习的分支,越来越多地用于医学图像分析的应用,例如计算机辅助诊断。在竞标中进行分类和代表学习任务,本研究利用了一个最强大的深度学习算法之一(深度信仰网络(DBN)),用于自闭症脑成像数据交换I和II的数据组合(遵守I和遵守II)数据集。使用DBN以聚焦休息状态FMRI(RS-FMRI),灰质(GM)和白质(WM)数据的组合。这是基于使用自动解剖标记(AAL)定义的大脑区域来完成的,以便从典型的控制(TCS)分类自闭症谱系障碍(ASDS)。由于ASD的诊断在早期更有效,因此在此分析中仅包括5至10年的年龄的185名(116澳门及69吨,69吨)。相比之下,所提出的方法用于利用RS-FMRI和SMRI数据内的潜在或抽象高级功能,而旧方法仅考虑从神经显影中提取的简单的低级功能。此外,组合多个数据类型并增加DBN的深度可以提高分类精度。在这项研究中,最佳组合包含RS-FMRI,GM和WM,深度3的DBN,精度为65.56%(灵敏度= 84%,特异性= 32.96%,F1得分= 74.76%)通过10倍交叉验证获得。此结果优先于先前呈现的evide i数据集的方法。

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