Section of Brain Maturation, Department of Psychological Medicine, Institute of Psychiatry, King's College, London, UK.
Neuroimage. 2010 Jan 1;49(1):44-56. doi: 10.1016/j.neuroimage.2009.08.024. Epub 2009 Aug 14.
Autistic spectrum disorder (ASD) is accompanied by subtle and spatially distributed differences in brain anatomy that are difficult to detect using conventional mass-univariate methods (e.g., VBM). These require correction for multiple comparisons and hence need relatively large samples to attain sufficient statistical power. Reports of neuroanatomical differences from relatively small studies are thus highly variable. Also, VBM does not provide predictive value, limiting its diagnostic value. Here, we examined neuroanatomical networks implicated in ASD using a whole-brain classification approach employing a support vector machine (SVM) and investigated the predictive value of structural MRI scans in adults with ASD. Subsequently, results were compared between SVM and VBM. We included 44 male adults; 22 diagnosed with ASD using "gold-standard" research interviews and 22 healthy matched controls. SVM identified spatially distributed networks discriminating between ASD and controls. These included the limbic, frontal-striatal, fronto-temporal, fronto-parietal and cerebellar systems. SVM applied to gray matter scans correctly classified ASD individuals at a specificity of 86.0% and a sensitivity of 88.0%. Cases (68.0%) were correctly classified using white matter anatomy. The distance from the separating hyperplane (i.e., the test margin) was significantly related to current symptom severity. In contrast, VBM revealed few significant between-group differences at conventional levels of statistical stringency. We therefore suggest that SVM can detect subtle and spatially distributed differences in brain networks between adults with ASD and controls. Also, these differences provide significant predictive power for group membership, which is related to symptom severity.
自闭症谱系障碍(ASD)伴随着大脑解剖结构的细微且空间分布的差异,这些差异使用传统的大规模单变量方法(例如 VBM)难以检测。这些方法需要进行多次比较校正,因此需要相对较大的样本才能获得足够的统计效力。因此,来自相对较小研究的神经解剖学差异报告具有高度可变性。此外,VBM 没有提供预测值,从而限制了其诊断价值。在这里,我们使用支持向量机(SVM)的全脑分类方法检查了与 ASD 相关的神经解剖网络,并研究了 ASD 成人的结构 MRI 扫描的预测值。随后,将 SVM 和 VBM 的结果进行了比较。我们纳入了 44 名男性成年人;22 名使用“黄金标准”研究访谈诊断为 ASD,22 名健康匹配对照。SVM 确定了区分 ASD 和对照组的空间分布网络。这些网络包括边缘系统、额纹状体、额颞叶、额顶叶和小脑系统。SVM 应用于灰质扫描,正确分类 ASD 个体的特异性为 86.0%,敏感性为 88.0%。使用白质解剖结构,正确分类的病例为 68.0%。分离超平面(即测试边界)的距离与当前症状严重程度显著相关。相比之下,VBM 在传统的统计严格性水平上揭示了很少有组间差异。因此,我们认为 SVM 可以检测 ASD 成人和对照组之间大脑网络的细微且空间分布的差异。此外,这些差异为组别的成员提供了重要的预测能力,这与症状严重程度有关。