...
首页> 外文期刊>Multimedia Tools and Applications >Ensemble based technique for the assessment of fetal health using cardiotocograph -a case study with standard feature reduction techniques
【24h】

Ensemble based technique for the assessment of fetal health using cardiotocograph -a case study with standard feature reduction techniques

机译:基于合奏的基于胎儿健康评估的技术,使用心脏识别进行标准特征减少技术研究

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Intrauterine fetal hypoxia is one of the leading cause of perinatal mortality and morbidity. This can eventually lead to severe neurological damage like cerebral palsy and in extreme cases to fetal demise. It is thus necessary to monitor the fetus during intrapartum and antepartum period. Cardiotocograph (CTG) as a method of assessing the status of the fetus had been in use for last six decades. Nowadays it is the most widely used non-invasive technique for the continuous monitoring of the fetal heart rate (FHR) and the uterine contraction pressure (UCP). Though its introduction limited the birth related problems, the accuracy of interpretation was hindered by quite a few factors. Different guidelines that are provided for the interpretation are based on crisp logic which fails to capture the inherent uncertainty present in the medical diagnosis. Misinterpretations had led to inaccurate diagnosis which resulted in many medico-legal litigations. The vagueness present in the physician's evaluation is best modeled using soft-computing based techniques. In this paper authors used the CTG dataset from UCI Irvine Machine Learning Data Repository which contains 2126 data and each data-point is represented by 37 features. Dimensionality of the feature set was reduced using different automated methods as well as manually by the physicians. The resulting data sets were classified using various machine learning algorithms. Aim of this study is to establish which set of features is best suited to give good insight into the status of the fetus and also determine the most effective machine learning technique for this purpose. The accuracy of the outcomes were measured using statistical methods such as sensitivity, specificity, precision, F-Measure, confusion matrix and kappa value. We obtained an accuracy of 99.91% and kappa measure of 0.997 when the feature set was reduced using MRMR.
机译:宫内胎儿缺氧是围产期死亡率和发病率的主要原因之一。这最终可能导致严重的神经损伤,如脑瘫和胎儿消亡的极端情况。因此,需要在脑内和胃部期间监测胎儿。 Cardiotocograph(CTG)作为评估胎儿状态的方法过去六十年已经使用。如今,它是用于连续监测胎儿心率(FHR)和子宫收缩压力(UCP)的最广泛使用的非侵入性技术。虽然它引入了诞生的相关问题,但解释的准确性受到了很多因素的阻碍。为解释提供的不同指导方针基于清晰的逻辑,该逻辑未能捕捉医学诊断中存在的固有不确定性。误解导致诊断不准确,导致许多药物法律诉讼。医生评估中的模糊性是使用基于软计算技术的最佳建模。在本文中,作者使用了UCI Irvine机器学习数据存储库的CTG数据集,其包含2126个数据,每个数据点由37个功能表示。使用不同的自动化方法以及医生手动减少特征集的维度。使用各种机器学习算法分类所得到的数据集。本研究的目的是建立哪套特征,最适合对胎儿的状态良好的洞察力,并确定为此目的最有效的机器学习技术。使用统计方法等敏感性,特异性,精度,F测量,混淆矩阵和κ值来测量结果的准确性。当使用MRMR减少特征集时,我们获得了99.91%和0.997的Kappa测量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号