An Winko W, Bhowmik Aprotim C, Nelson Charles A, Wilkinson Carol L
Developmental Medicine, Boston Children's Hospital, 300 Longwood Avenue, Boston, 02115, MA, USA; Harvard Medical School, 25 Shattuck St, Boston, 02115, MA, USA.
Donald and Barbara Zucker School of Medicine at Hofstra/Northwell, 500 Hofstra Blvd, Hempstead, 11549, NY, USA; Johns Hopkins Bloomberg School of Public Health, 615 N Wolfe St, Baltimore, 21205, MD, USA.
Dev Cogn Neurosci. 2025 Jan;71:101493. doi: 10.1016/j.dcn.2024.101493. Epub 2024 Dec 18.
The infant brain undergoes rapid developmental changes in the first three years of life. Understanding these changes through the prediction of chronological age using neuroimaging can provide insights into typical and atypical brain development. We utilized 938 resting-state EEG recordings from 457 typically developing infants, 2 to 38 months old, to develop age prediction models. The multilayer perceptron model demonstrated the highest accuracy with an R of 0.83 and a mean absolute error of 91.7 days. Feature importance analysis that combined hierarchical clustering and Shapley values identified two feature clusters describing periodic alpha and low beta activity as key predictors of age. Application of the model to EEG data from infants later diagnosed with autism or Down syndrome revealed significant underestimations of chronological age, supporting its potential as a clinical tool for early identification of alterations in brain development.
婴儿大脑在生命的头三年经历快速的发育变化。通过使用神经影像学预测实际年龄来理解这些变化,可以深入了解典型和非典型的大脑发育。我们利用了来自457名年龄在2至38个月的正常发育婴儿的938份静息态脑电图记录,来开发年龄预测模型。多层感知器模型表现出最高的准确率,R值为0.83,平均绝对误差为91.7天。结合层次聚类和夏普利值的特征重要性分析确定了两个特征簇,将周期性阿尔法和低贝塔活动描述为年龄的关键预测指标。将该模型应用于后来被诊断为自闭症或唐氏综合征的婴儿的脑电图数据,发现实际年龄被显著低估,这支持了其作为早期识别大脑发育变化的临床工具的潜力。