Schetinin Vitaly, Jakaite Livija
School of Computer Science, University of Bedfordshire, Park Square, Luton, LU1 3JU, United Kingdom.
PLoS One. 2017 Mar 21;12(3):e0174027. doi: 10.1371/journal.pone.0174027. eCollection 2017.
Brain development can be evaluated by experts analysing age-related patterns in sleep electroencephalograms (EEG). Natural variations in the patterns, noise, and artefacts affect the evaluation accuracy as well as experts' agreement. The knowledge of predictive posterior distribution allows experts to estimate confidence intervals within which decisions are distributed. Bayesian approach to probabilistic inference has provided accurate estimates of intervals of interest. In this paper we propose a new feature extraction technique for Bayesian assessment and estimation of predictive distribution in a case of newborn brain development assessment. The new EEG features are verified within the Bayesian framework on a large EEG data set including 1,100 recordings made from newborns in 10 age groups. The proposed features are highly correlated with brain maturation and their use increases the assessment accuracy.
专家可通过分析睡眠脑电图(EEG)中与年龄相关的模式来评估大脑发育情况。这些模式、噪声和伪迹的自然变化会影响评估准确性以及专家之间的一致性。预测后验分布的知识使专家能够估计决策分布所在的置信区间。贝叶斯概率推理方法已提供了感兴趣区间的准确估计。在本文中,我们提出了一种新的特征提取技术,用于在新生儿大脑发育评估案例中进行贝叶斯评估和预测分布估计。新的脑电图特征在贝叶斯框架内,于一个包含来自10个年龄组新生儿的1100份记录的大型脑电图数据集上得到了验证。所提出的特征与大脑成熟高度相关,并且它们的使用提高了评估准确性。