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.
Rosamund Stone Zander Translational Neuroscience Center, Boston Children's Hospital, 300 Longwood Avenue, Boston, 02115, MA, USA.
medRxiv. 2024 Jun 1:2024.05.31.24308275. doi: 10.1101/2024.05.31.24308275.
The infant brain undergoes rapid and significant developmental changes in the first three years of life. Understanding these changes through the prediction of chronological age using neuroimaging data can provide insights into typical and atypical brain development. We utilized longitudinal resting-state EEG data from 457 typically developing infants, comprising 938 recordings, to develop age prediction models. The multilayer perceptron model demonstrated the highest accuracy with an R2 of 0.82 and a mean absolute error of 92.4 days. Aperiodic offset and periodic theta, alpha, and beta power were identified as key predictors of age via Shapley values. Application of the model to EEG data from infants later diagnosed with autism spectrum disorder or Down syndrome revealed significant underestimations of chronological age. This study establishes the feasibility of using EEG to assess brain maturation in early childhood and supports 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且显著的发育变化。通过使用神经影像数据预测实际年龄来了解这些变化,可为典型和非典型脑发育提供见解。我们利用了来自457名发育正常婴儿的纵向静息态脑电图数据(共938次记录)来建立年龄预测模型。多层感知器模型表现出最高的准确性,R2为0.82,平均绝对误差为92.4天。通过夏普利值确定,非周期性偏移以及周期性的θ、α和β波功率是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谱系障碍或唐氏综合征婴儿的脑电图数据时,发现实际年龄被显著低估。本研究确立了使用脑电图评估幼儿脑成熟度的可行性,并支持其作为早期识别脑发育改变的临床工具的潜力。