Chen Weiting, Wang Yu, Cao Guitao, Chen Guoqiang, Gu Qiufang
Biomed Eng Online. 2014;13 Suppl 2(Suppl 2):S4. doi: 10.1186/1475-925X-13-S2-S4. Epub 2014 Dec 11.
Modern medical advances have greatly increased the survival rate of infants, while they remain in the higher risk group for neurological problems later in life. For the infants with encephalopathy or seizures, identification of the extent of brain injury is clinically challenging. Continuous amplitude-integrated electroencephalography (aEEG) monitoring offers a possibility to directly monitor the brain functional state of the newborns over hours, and has seen an increasing application in neonatal intensive care units (NICUs).
This paper presents a novel combined feature set of aEEG and applies random forest (RF) method to classify aEEG tracings. To that end, a series of experiments were conducted on 282 aEEG tracing cases (209 normal and 73 abnormal ones). Basic features, statistic features and segmentation features were extracted from both the tracing as a whole and the segmented recordings, and then form a combined feature set. All the features were sent to a classifier afterwards. The significance of feature, the data segmentation, the optimization of RF parameters, and the problem of imbalanced datasets were examined through experiments. Experiments were also done to evaluate the performance of RF on aEEG signal classifying, compared with several other widely used classifiers including SVM-Linear, SVM-RBF, ANN, Decision Tree (DT), Logistic Regression(LR), ML, and LDA.
The combined feature set can better characterize aEEG signals, compared with basic features, statistic features and segmentation features respectively. With the combined feature set, the proposed RF-based aEEG classification system achieved a correct rate of 92.52% and a high F1-score of 95.26%. Among all of the seven classifiers examined in our work, the RF method got the highest correct rate, sensitivity, specificity, and F1-score, which means that RF outperforms all of the other classifiers considered here. The results show that the proposed RF-based aEEG classification system with the combined feature set is efficient and helpful to better detect the brain disorders in newborns.
现代医学进步极大地提高了婴儿的存活率,但他们在日后生活中仍属于神经问题高危群体。对于患有脑病或癫痫的婴儿,确定脑损伤程度在临床上具有挑战性。连续振幅整合脑电图(aEEG)监测为直接监测新生儿数小时的脑功能状态提供了可能,并且在新生儿重症监护病房(NICU)中的应用日益增加。
本文提出了一种新颖的aEEG组合特征集,并应用随机森林(RF)方法对aEEG描记进行分类。为此,对282例aEEG描记病例(209例正常和73例异常)进行了一系列实验。从整个描记以及分段记录中提取基本特征、统计特征和分段特征,然后形成一个组合特征集。之后将所有特征输入分类器。通过实验研究了特征的重要性、数据分段、RF参数的优化以及数据集不平衡问题。还进行了实验以评估RF在aEEG信号分类方面的性能,并与其他几种广泛使用的分类器进行比较,包括支持向量机-线性(SVM-Linear)、支持向量机-径向基函数(SVM-RBF)、人工神经网络(ANN)、决策树(DT)、逻辑回归(LR)、朴素贝叶斯(ML)和线性判别分析(LDA)。
与基本特征、统计特征和分段特征相比,组合特征集能够更好地表征aEEG信号。利用该组合特征集,所提出的基于RF的aEEG分类系统实现了92.52%的正确率和95.26%的高F1分数。在我们研究的所有七个分类器中,RF方法获得了最高的正确率、灵敏度、特异性和F1分数,这意味着RF优于这里考虑的所有其他分类器。结果表明,所提出的具有组合特征集的基于RF的aEEG分类系统对于更好地检测新生儿脑部疾病是有效且有帮助的。