Cloud-Based Multinomial Logistic Regression for Analyzing Maternal Mortality Data in Postpartum Period

Radite Purwahana, S. Suryono, J. E. Suseno
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引用次数: 3

Abstract

The analysis used in dealing with maternal mortality factors in the postpartum period can be used as a reference in preventing maternal death in the postpartum period. Appropriate analysis is needed to reduce maternal mortality rates in the postpartum period. This study uses multinomial logistic regression to analyze the data of mothers dying in the postpartum period based on the main variables causing maternal death. Multinomial logistic regression process is carried out by looking at data records of variables that influence maternal mortality. In the first experiment using data from midwife visits for seven days, the results of the multinomial logistic regression process with the highest maternal mortality occurred on the fourth day with anogenital variables reaching a percentage of 32.4% of the causes of maternal death. Multinomial logistic regression processes are combined with cloud computing technology so that data can be processed more quickly and can be used together.
基于云的多项Logistic回归分析产后产妇死亡率数据
处理产后产妇死亡因素的分析可作为预防产后产妇死亡的参考。需要进行适当的分析,以降低产后产妇死亡率。本研究以导致产妇死亡的主要变量为基础,采用多项logistic回归对产后产妇死亡数据进行分析。通过查看影响产妇死亡率的变量的数据记录,进行多项逻辑回归过程。在第一个实验中,使用了七天的助产士访问数据,多项逻辑回归过程的结果显示,第四天的产妇死亡率最高,肛门生殖器变量占产妇死亡原因的32.4%。多项逻辑回归过程与云计算技术相结合,可以更快地处理数据,并可以一起使用。
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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