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基于遗传算法和最小二乘支持向量机的胎儿状态智能评估
引用本文:张扬,赵治栋,叶海慧. 基于遗传算法和最小二乘支持向量机的胎儿状态智能评估[J]. 生物医学工程学杂志, 2019, 0(1): 131-139
作者姓名:张扬  赵治栋  叶海慧
作者单位:杭州电子科技大学通信工程学院;杭州电子科技大学智慧城市研究中心;浙江大学医学院附属妇产科医院
基金项目:浙江省公益技术研究项目(2016C33079;2017C31046)
摘    要:胎心宫缩图是一种临床常用的评估胎儿健康状况的电子监护技术,具有易受主观因素影响导致诊断率较低的缺点。为降低误诊率,辅助医生做出准确的医疗决策,本文提出了一种基于胎心率信号分析胎儿状态的智能评估方法。首先,本文将来自捷克技术大学—布尔诺大学医院公开数据库的信号进行预处理后,对其中的胎心率信号进行多模态特征提取,然后利用设计的基于k—最近邻遗传算法选择最优特征子集,最后采用最小二乘支持向量机法对其分类。实验结果显示,利用本文提出的方法对胎儿状态进行分类,其准确度可达91%,灵敏度为89%,特异度为94%,质量指标为92%,受试者工作特征曲线下面积为92%,具有较好的分类性能,可辅助临床医生对胎儿状态做出有效评估。

关 键 词:胎心宫缩图  胎心率  特征提取  遗传算法  最小二乘支持向量机

Intelligent fetal state assessment based on genetic algorithm and least square support vector machine
ZHANG Yang,ZHAO Zhidong,YE Haihui. Intelligent fetal state assessment based on genetic algorithm and least square support vector machine[J]. Journal of biomedical engineering, 2019, 0(1): 131-139
Authors:ZHANG Yang  ZHAO Zhidong  YE Haihui
Affiliation:(The School of Communication Engineering,Hangzhou Dianzi University,Hangzhou 310018,P.R.China;The Smart City Research Center,Hangzhou Dianzi Unviersity,Hangzhou 310018,P.R.China;The Women's Hospital School of Medicine Zhejiang University,Hangzhou 310006,P.R.China)
Abstract:Cardiotocography(CTG) is a commonly used technique of electronic fetal monitoring(EFM) for evaluating fetal well-being,which has the disadvantage of lower diagnostic rate caused by subjective factors.To reduce the rate of misdiagnosis and assist obstetricians in making accurate medical decisions,this paper proposed an intelligent assessment approach for analyzing fetal state based on fetal heart rate(FHR) signals.First,the FHR signals from the public database of the Czech Technical University-University Hospital in Brno(CTU-UHB) was preprocessed,and the comprehensive features were extracted.Then the optimal feature subset based on the k-nearest neighbor(KNN) genetic algorithm(GA) was selected.At last the classification using least square support vector machine(LS-SVM) was executed.The experimental results showed that the classification of fetal state achieved better performance using the proposed method in this paper:the accuracy is 91%,sensitivity is 89%,specificity is 94%,quality index is 92%,and area under the receiver operating characteristic curve is 92%,which can assist clinicians in assessing fetal state effectively.
Keywords:cardiotocography  fetal heart rate  feature extraction  genetic algorithm  least square support vector machine
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