Optimized Classification of fetal state health using GWO and WOA

Prerna Sharma, K. Sharma
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引用次数: 0

Abstract

Complications in pregnancies can be due to various reasons like health issues with mother or conditions that can hamper the development of the fetus which can later affect the health of the baby. CTG performed at the time of high risk pregnancies can timely identify those associated complications. Fetuses with deficient oxygen amount are more susceptible to fetal distress which can also be fatal. This paper puts forward Grey Wolf Optimization Algorithm and Whale Optimization Algorithm for optimal feature selection from the dataset of cardiotocography. Features selected by GWO and WOA are 4 and 7 respectively. GWO and WOA efficiently select optimal reduced set of features for classification of state of the fetus under normal, suspect and pathologic with an accuracy of 98.74% and 98.11% respectively.
利用GWO和WOA优化胎儿健康状态分类
怀孕并发症可能是由于各种原因造成的,比如母亲的健康问题或阻碍胎儿发育的疾病,这些疾病后来会影响婴儿的健康。高危妊娠时行CTG可及时发现相关并发症。缺氧的胎儿更容易发生胎儿窘迫,这也是致命的。本文提出了灰狼优化算法和鲸鱼优化算法对心脏科数据集进行最优特征选择。GWO和WOA选择的特征分别为4和7。GWO和WOA能有效地选择最优约简特征集对胎儿正常、可疑和病理状态进行分类,准确率分别为98.74%和98.11%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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