Emerson Robert W, Adams Chloe, Nishino Tomoyuki, Hazlett Heather Cody, Wolff Jason J, Zwaigenbaum Lonnie, Constantino John N, Shen Mark D, Swanson Meghan R, Elison Jed T, Kandala Sridhar, Estes Annette M, Botteron Kelly N, Collins Louis, Dager Stephen R, Evans Alan C, Gerig Guido, Gu Hongbin, McKinstry Robert C, Paterson Sarah, Schultz Robert T, Styner Martin, Schlaggar Bradley L, Pruett John R, Piven Joseph
Carolina Institute for Developmental Disabilities, University of North Carolina at Chapel Hill, Chapel Hill, NC 27510, USA.
Department of Psychiatry, Washington University School of Medicine, St. Louis, MO 63110, USA.
Sci Transl Med. 2017 Jun 7;9(393). doi: 10.1126/scitranslmed.aag2882.
Autism spectrum disorder (ASD) is a neurodevelopmental disorder characterized by social deficits and repetitive behaviors that typically emerge by 24 months of age. To develop effective early interventions that can potentially ameliorate the defining deficits of ASD and improve long-term outcomes, early detection is essential. Using prospective neuroimaging of 59 6-month-old infants with a high familial risk for ASD, we show that functional connectivity magnetic resonance imaging correctly identified which individual children would receive a research clinical best-estimate diagnosis of ASD at 24 months of age. Functional brain connections were defined in 6-month-old infants that correlated with 24-month scores on measures of social behavior, language, motor development, and repetitive behavior, which are all features common to the diagnosis of ASD. A fully cross-validated machine learning algorithm applied at age 6 months had a positive predictive value of 100% [95% confidence interval (CI), 62.9 to 100], correctly predicting 9 of 11 infants who received a diagnosis of ASD at 24 months (sensitivity, 81.8%; 95% CI, 47.8 to 96.8). All 48 6-month-old infants who were not diagnosed with ASD were correctly classified [specificity, 100% (95% CI, 90.8 to 100); negative predictive value, 96.0% (95% CI, 85.1 to 99.3)]. These findings have clinical implications for early risk assessment and the feasibility of developing early preventative interventions for ASD.
自闭症谱系障碍(ASD)是一种神经发育障碍,其特征为社交缺陷和重复行为,通常在24个月大时出现。为了开发能够潜在改善ASD的典型缺陷并改善长期预后的有效早期干预措施,早期检测至关重要。通过对59名具有高ASD家族风险的6个月大婴儿进行前瞻性神经成像,我们发现功能连接磁共振成像能够正确识别哪些个体儿童在24个月大时会被研究临床最佳估计诊断为ASD。在6个月大的婴儿中定义了与24个月时社交行为、语言、运动发育和重复行为测量得分相关的功能性脑连接,这些都是ASD诊断的常见特征。在6个月大时应用的完全交叉验证机器学习算法的阳性预测值为100%[95%置信区间(CI),62.9至100],正确预测了11名在24个月时被诊断为ASD的婴儿中的9名(敏感性,81.8%;95%CI,47.8至96.8)。所有48名未被诊断为ASD的6个月大婴儿都被正确分类[特异性,100%(95%CI,90.8至100);阴性预测值,96.0%(95%CI,85.1至99.3)]。这些发现对ASD的早期风险评估以及开发早期预防干预措施的可行性具有临床意义。