Wang Miaoyan, He Keyi, Zhang Lili, Xu Dandan, Li Xianjun, Wang Lei, Peng Bo, Qiu Anqi, Dai Yakang, Zhao Cailei, Jiang Haoxiang
Department of Radiology, Affiliated Children's Hospital of Jiangnan University, Wuxi, China.
School of Biomedical Engineering (Suzhou), Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei, China.
Eur Radiol. 2025 Mar;35(3):1623-1636. doi: 10.1007/s00330-025-11359-w. Epub 2025 Jan 23.
To assess glymphatic function and white matter integrity in children with autism spectrum disorder (ASD) using multi-parametric MRI, combined with machine learning to evaluate ASD detection performance.
This retrospective study collected data from 110 children with ASD (80 exploratory, 43 validation) and 68 typically developing children (50 exploratory, 18 validation) from two centers. The automated diffusion tensor imaging along the perivascular space (aDTI-ALPS), fractional anisotropy (FA), cerebrospinal fluid volume, and perivascular space (PVS) volume indices were extracted from DTI, three-dimensional T1-weighted, and T2-weighted images. Intergroup comparisons were conducted using t-tests, Mann-Whitney U-test, and tract-based spatial statistics. Correlation analysis assessed the relationship between glymphatic function, white matter integrity, and clinical scales. Machine learning models based on MRI indices were developed using the AutoGluon framework.
The PVS volume (p < 0.001) was larger, and aDTI-ALPS index (p < 0.001) was lower in children with ASD compared to typically developing children. FA values were reduced in the ASD group and positively correlated with aDTI-ALPS index. The aDTI-ALPS index correlated with ASD severity (r = -0.27, p = 0.02) and developmental delays (r = 0.63, p < 0.001). Mediation analysis indicated the aDTI-ALPS index partially mediated the relationship between white matter integrity and developmental delay. The MRI-based model achieved an area under the curve of 0.84 for ASD diagnosis.
Analyzing glymphatic function and white matter integrity enhances understanding of ASD's neurobiological underpinnings. The multi-parametric MRI, combined with machine learning, can facilitate the early detection of ASD.
Question How can multi-parametric MRI based on the glymphatic system improve early diagnosis of autism spectrum disorder (ASD) beyond the limitations of current behavioral assessments? Findings Glymphatic dysfunction and disruptions in white matter integrity were associated with clinical symptoms of ASD. Multi-parametric MRI with machine learning can improve early ASD detection. Clinical relevance Multi-parametric MRI, focusing on glymphatic function and white matter integrity, enhances the diagnostic accuracy of ASD by serving as an objective complement to clinical scales.
使用多参数磁共振成像(MRI)评估自闭症谱系障碍(ASD)儿童的类淋巴系统功能和白质完整性,并结合机器学习评估ASD的检测性能。
这项回顾性研究收集了来自两个中心的110名ASD儿童(80名用于探索性研究,43名用于验证性研究)和68名发育正常儿童(50名用于探索性研究,18名用于验证性研究)的数据。从扩散张量成像(DTI)、三维T1加权和T2加权图像中提取沿血管周围间隙的自动扩散张量成像(aDTI-ALPS)、各向异性分数(FA)、脑脊液体积和血管周围间隙(PVS)体积指数。采用t检验、曼-惠特尼U检验和基于纤维束的空间统计学进行组间比较。相关性分析评估类淋巴系统功能、白质完整性与临床量表之间的关系。使用AutoGluon框架开发基于MRI指标的机器学习模型。
与发育正常儿童相比,ASD儿童的PVS体积更大(p < 0.001),aDTI-ALPS指数更低(p < 0.001)。ASD组的FA值降低,且与aDTI-ALPS指数呈正相关。aDTI-ALPS指数与ASD严重程度相关(r = -0.27,p = 0.02),与发育迟缓相关(r = 0.63,p < 0.001)。中介分析表明,aDTI-ALPS指数部分介导了白质完整性与发育迟缓之间的关系。基于MRI的模型在ASD诊断中的曲线下面积为0.84。
分析类淋巴系统功能和白质完整性有助于加深对ASD神经生物学基础的理解。多参数MRI结合机器学习可促进ASD的早期检测。
问题基于类淋巴系统的多参数MRI如何突破当前行为评估的局限性,改善自闭症谱系障碍(ASD)的早期诊断?研究结果类淋巴系统功能障碍和白质完整性破坏与ASD的临床症状相关。多参数MRI结合机器学习可改善ASD的早期检测。临床意义聚焦类淋巴系统功能和白质完整性的多参数MRI作为临床量表的客观补充,提高了ASD的诊断准确性。