Department of Electrical and Computer Engineering, McMaster University, Hamilton, ON, Canada.
Clin Neurophysiol. 2011 Nov;122(11):2139-50. doi: 10.1016/j.clinph.2011.04.002. Epub 2011 May 14.
To develop a high performance machine learning (ML) approach for predicting the age and consequently the state of brain development of infants, based on their event related potentials (ERPs) in response to an auditory stimulus.
The ERP responses of twenty-nine 6-month-olds, nineteen 12-month-olds and 10 adults to an auditory stimulus were derived from electroencephalogram (EEG) recordings. The most relevant wavelet coefficients corresponding to the first- and second-order moment sequences of the ERP signals were then identified using a feature selection scheme that made no a priori assumptions about the features of interest. These features are then fed into a classifier for determination of age group.
We verified that ERP data could yield features that discriminate the age group of individual subjects with high reliability. A low dimensional representation of the selected feature vectors show significant clustering behavior corresponding to the subject age group. The performance of the proposed age group prediction scheme was evaluated using the leave-one-out cross validation method and found to exceed 90% accuracy.
This study indicates that ERP responses to an acoustic stimulus can be used to predict the age and consequently the state of brain development of infants.
This study is of fundamental scientific significance in demonstrating that a machine classification algorithm with no a priori assumptions can classify ERP responses according to age and with further work, potentially provide useful clues in the understanding of the development of the human brain. A potential clinical use for the proposed methodology is the identification of developmental delay: an abnormal condition may be suspected if the age estimated by the proposed technique is significantly less than the chronological age of the subject.
基于婴儿对听觉刺激的事件相关电位(ERP),开发一种高性能的机器学习(ML)方法,用于预测婴儿的年龄和大脑发育状态。
从脑电图(EEG)记录中得出 29 名 6 个月大、19 名 12 个月大的婴儿和 10 名成年人对听觉刺激的 ERP 反应。然后,使用一种不预先假设感兴趣特征的特征选择方案,确定与 ERP 信号的一阶和二阶矩序列最相关的小波系数。这些特征随后被输入到分类器中,以确定年龄组。
我们验证了 ERP 数据可以产生能够高度可靠地区分个体受试者年龄组的特征。所选特征向量的低维表示显示出与受试者年龄组相对应的显著聚类行为。使用留一交叉验证方法评估了所提出的年龄组预测方案的性能,发现准确率超过 90%。
这项研究表明,对声音刺激的 ERP 反应可以用于预测婴儿的年龄和大脑发育状态。
这项研究具有重要的科学意义,它证明了没有先验假设的机器分类算法可以根据年龄对 ERP 反应进行分类,并进一步研究,有可能为理解人类大脑的发育提供有用的线索。所提出方法的潜在临床用途是识别发育迟缓:如果所提出的技术估计的年龄明显小于受试者的实际年龄,则可能怀疑存在异常情况。