基于概率神经网络的新生儿出生体重影响因素分析

Ema Pratiwi
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引用次数: 0

摘要

新生儿死亡率高是由于许多婴儿出生时体重过轻造成的。低体重是印度尼西亚婴儿死亡率的因素之一。米特拉·梅迪卡医院班达尔·基帕是一名低出生体重(LBW)婴儿的孕妇。孕妇在知道自己会生下出生体重过低的婴儿时进行预防和治疗是非常必要的,以尽量减少分娩过程中的死亡。因此,希望存在一种影响婴儿出生体重的因素分析,可以帮助孕妇在婴儿出生前确定婴儿的状况。本研究采用概率神经网络(Probabilistic Neural Network, PNN)方法,对150个数据,包括产妇年龄、体重、身高、血红蛋白、妊娠距离、胎次、受教育程度等7个特征进行分析。为了获得最佳的准确率结果,训练数据和测试数据使用K-Means聚类进行共享。进一步利用概率神经网络方法对影响BBL的因素进行分析,得到影响BBL的概率值在母亲体重为0.856,正常类别为6741,输出层值最高,准确率为88,67。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Factors Affecting Birth Weight Using Probabilistic Neural Network (PNN)
The hight mortality rate in newborns is caused by the fact that many babies are born with low birth weight. LBW is one of the factors of infant mortality in Indonesia. Mitra Medika hospital Bandar Kippa is one of the pregnant women who has a Low Birth Weight (LBW) baby. Prevention and treatment of pregnant women when they know that they will give birth to a baby withlow birth weight is very necessary, in order to minimize death during the bieth process. So it is hoped that the existence of a factor analysis that affects birth weight in babies cas help to identify the condition of the baby in pregnant women before the baby is born. In this study, Probabilistic Neural Network (PNN) method was used with 150 data and 7 features including maternal age, maternal weight, maternal height, maternal hemoglobin, gestational distance, parity and maternal education. To get the best accuracy results, training data and testing data are shared using K-Means Clustering. Furthermore, an analysis of the factors that affect BBL using the Probabilistic Neural Network method is carried out, therefore it can be obtained that the probability value affecting BBL is found in the mother’s weight of 0,856 with the highest output layer value in the normal class of 6,741 and an accuracy value of 88,67.
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