Zhang Haoran, Xu Lingyu, Yu Jie, Li Jun, Wang Jinhong
School of Computer Engineering and Science, Shanghai University, Shanghai, China.
Shanghai Institute for Advanced Communication and Data Science, Shanghai University, Shanghai, China.
Front Neurosci. 2023 Mar 10;17:1132231. doi: 10.3389/fnins.2023.1132231. eCollection 2023.
The accurate diagnosis of autism spectrum disorder (ASD) is of great practical significance in clinical practice. The spontaneous hemodynamic fluctuations were collected by functional near-infrared spectroscopy (fNIRS) from the bilateral frontal and temporal cortices of typically developing (TD) children and children with ASD. Since traditional machine learning and deep learning methods cannot make full use of the potential spatial dependence between variable pairs, and require a long time series to diagnose ASD. Therefore, we use adaptive spatiotemporal graph convolution network (ASGCN) and short time series to classify ASD and TD. To capture spatial and temporal features of fNIRS multivariable time series without the pre-defined graph, we combined the improved adaptive graph convolution network (GCN) and gated recurrent units (GRU). We conducted a series of experiments on the fNIRS dataset, and found that only using 2.1 s short time series could achieve high precision classification, with an accuracy of 95.4%. This suggests that our approach may have the potential to detect pathological signals in autism patients within 2.1 s. In different brain regions, the left frontal lobe has the best classification effect, and the abnormalities occur more frequently in left hemisphere and frontal lobe region. Moreover, we also found that there were correlations between multiple channels, which had different degrees of influence on the classification of ASD. From this, we can also generalize to a wider range, there may be potential correlations between different brain regions. This may help to better understand the cortical mechanism of ASD.
自闭症谱系障碍(ASD)的准确诊断在临床实践中具有重要的现实意义。通过功能近红外光谱(fNIRS)收集了正常发育(TD)儿童和ASD儿童双侧额叶和颞叶皮质的自发血流动力学波动。由于传统机器学习和深度学习方法无法充分利用变量对之间潜在的空间依赖性,且需要长时间序列来诊断ASD。因此,我们使用自适应时空图卷积网络(ASGCN)和短时间序列对ASD和TD进行分类。为了在没有预定义图的情况下捕获fNIRS多变量时间序列的时空特征,我们将改进的自适应图卷积网络(GCN)和门控循环单元(GRU)相结合。我们在fNIRS数据集上进行了一系列实验,发现仅使用2.1秒的短时间序列就能实现高精度分类,准确率为95.4%。这表明我们的方法可能有潜力在2.1秒内检测出自闭症患者的病理信号。在不同脑区中,左额叶的分类效果最佳,异常在左半球和额叶区域更频繁出现。此外,我们还发现多个通道之间存在相关性,它们对ASD分类有不同程度的影响。由此,我们也可以推广到更广泛的范围,不同脑区之间可能存在潜在的相关性。这可能有助于更好地理解ASD的皮层机制。