首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Diagnosis of Autism Spectrum Disorders in Young Children Based on Resting-State Functional Magnetic Resonance Imaging Data Using Convolutional Neural Networks
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Diagnosis of Autism Spectrum Disorders in Young Children Based on Resting-State Functional Magnetic Resonance Imaging Data Using Convolutional Neural Networks

机译:基于休息状态磁共振成像数据的幼儿自闭症谱紊乱诊断使用卷积神经网络

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Statistics show that the risk of autism spectrum disorder (ASD) is increasing in the world. Early diagnosis is most important factor in treatment of ASD. Thus far, the childhood diagnosis of ASD has been done based on clinical interviews and behavioral observations. There is a significant need to reduce the use of traditional diagnostic techniques and to diagnose this disorder in the right time and before the manifestation of behavioral symptoms. The purpose of this study is to present the intelligent model to diagnose ASD in young children based on resting-state functional magnetic resonance imaging (rs-fMRI) data using convolutional neural networks (CNNs). CNNs, which are by far one of the most powerful deep learning algorithms, are mainly trained using datasets with large numbers of samples. However, obtaining comprehensive datasets such as ImageNet and achieving acceptable results in medical imaging domain have become challenges. In order to overcome these two challenges, the two methods of "combining classifiers," both dynamic (mixture of experts) and static (simple Bayes) approaches, and "transfer learning" were used in this analysis. In addition, since diagnosis of ASD will be much more effective at an early age, samples ranging in age from 5 to 10 years from global Autism Brain Imaging Data Exchange I and II (ABIDE I and ABIDE II) datasets were used in this research. The accuracy, sensitivity, and specificity of presented model outperform the results of previous studies conducted on ABIDE I dataset (the best results obtained from Adamax optimization technique: accuracy = 0.7273, sensitivity = 0.712, specificity = 0.7348). Furthermore, acceptable classification results were obtained from ABIDE II dataset (the best results obtained from Adamax optimization technique: accuracy = 0.7, sensitivity = 0.582, specificity = 0.804) and the combination of ABIDE I and ABIDE II datasets (the best results obtained from Adam optimization technique: accuracy = 0.7045, sensitivity = 0.679, specificity = 0.7421). We can conclude that the proposed architecture can be considered as an efficient tool for diagnosis of ASD in young children. From another perspective, this proposed method can be applied to analyzing rs-fMRI data related to brain dysfunctions.
机译:统计数据显示,自闭症谱系障碍(ASD)的风险在世界上正在增加。早期诊断是治疗ASD的最重要因素。到目前为止,基于临床访谈和行为观测,已经完成了ASD的儿童诊断。有意义需要减少传统诊断技术的使用,并在正确的时间和行为症状的表现前诊断这种疾病。本研究的目的是介绍基于使用卷积神经网络(CNNS)的休息状态功能磁共振成像(RS-FMRI)数据诊断幼儿ASD的智能模型。 CNNS是迄今为止最强大的深度学习算法之一,主要使用具有大量样本的数据集进行培训。然而,获得诸如想象品的综合数据集和在医学成像域中实现可接受的结果已经成为挑战。为了克服这两个挑战,在该分析中使用了两种“组合分类器”和静态(简单贝叶斯)方法和“转移学习”和“转移学习”的两种方法。此外,由于ASD的诊断将在早期更有效,因此在全球自闭症脑成像数据交换I和II(遵守I和ABIDE II)数据集中的5至10年的样本在本研究中使用了5至10年。所呈现的模型的准确性,灵敏度和特异性优于先前研究的先前研究的结果(在Adamax优化技术获得的最佳结果:精度= 0.7273,灵敏度= 0.712,特异性= 0.7348)。此外,可接受的分类结果是从遵守II数据集获得的(从Adamax优化技术获得的最佳结果:精度= 0.7,灵敏度= 0.582,特异性= 0.804)以及遵守I和遵循II数据集的组合(从ADAM获得的最佳结果)优化技术:精度= 0.7045,灵敏度= 0.679,特异性= 0.7421)。我们可以得出结论,拟议的架构可以被视为幼儿诊断ASD的有效工具。从另一个角度来看,该提出的方法可以应用于分析与脑功能障碍相关的RS-FMRI数据。

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