Kang Li, Chen Jin, Huang Jianjun, Jiang Jingwan
College of Electronics and Information Engineering, Shenzhen University, Shenzhen, 518061 China.
Guangdong Key Laboratory of Intelligent Information Processing, Shenzhen, China.
Cogn Neurodyn. 2023 Apr;17(2):345-355. doi: 10.1007/s11571-022-09828-9. Epub 2022 Jun 17.
Autism spectrum disorders (ASD) is a neurodevelopmental disorder that causes repetitive stereotyped behavior and social difficulties, early diagnosis and intervention are beneficial to improve treatment effect. Although multi-site data expand sample size, they suffer from inter-site heterogeneitys, which degrades the performance of identitying ASD from normal controls (NC). To solve the problem, in this paper a multi-view ensemble learning network based on deep learning is proposed to improve the classification performance with multi-site functional MRI (fMRI). Specifically, the LSTM-Conv model was firstly proposed to obtain dynamic spatiotemporal features of the mean time series of fMRI data; then the low/high-level brain functional connectivity features of the brain functional network were extracted by principal component analysis algorithm and a 3-layer stacked denoising autoencoder; finally, feature selection and ensemble learning were carried out for the above three brain functional features, and a classification accuracy of 72% was obtained on multi-site data of ABIDE dataset. The experimental result illustrates that the proposed method can effectively improve the classification performance of ASD and NC. Compared with single-view learning, multi-view ensemble learning can mine various brain functional features of fMRI data from different perspectives and alleviate the problems caused by data heterogeneity. In addition, this study also employed leave-one-out cross validation to test the single-site data, and the results showed that the proposed method has strong generalization capability, in which the highest classification accuracy of 92.9% was obtained at the CMU site.
自闭症谱系障碍(ASD)是一种神经发育障碍,会导致重复刻板行为和社交困难,早期诊断和干预有利于提高治疗效果。尽管多站点数据扩大了样本量,但它们存在站点间异质性问题,这会降低从正常对照(NC)中识别ASD的性能。为了解决这个问题,本文提出了一种基于深度学习的多视图集成学习网络,以利用多站点功能磁共振成像(fMRI)提高分类性能。具体来说,首先提出了LSTM-Conv模型来获取fMRI数据平均时间序列的动态时空特征;然后通过主成分分析算法和一个3层堆叠去噪自编码器提取脑功能网络的低/高级脑功能连接特征;最后对上述三种脑功能特征进行特征选择和集成学习,在ABIDE数据集的多站点数据上获得了72%的分类准确率。实验结果表明,所提方法能有效提高ASD和NC的分类性能。与单视图学习相比,多视图集成学习可以从不同角度挖掘fMRI数据的各种脑功能特征,并缓解数据异质性带来的问题。此外,本研究还采用留一法交叉验证对单站点数据进行测试,结果表明所提方法具有很强的泛化能力,其中在CMU站点获得了92.9%的最高分类准确率。