产妇发病率的预测分析模型

Edgardo Palza, Jorge Sanchez, G. Mamani, P. Pacora, A. Abran, Jane Moon
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引用次数: 1

摘要

本章提出了一个预测分析模型,通过分析关于新生儿发病率的危险行为模式来预防新生儿发病率。本章介绍了新生儿发病率预测模型的设计和实现。该模型基于人工智能,使用贝叶斯网络、影响图和传统统计学原理。该模型研究基于秘鲁一家医院的1万份医疗记录。该模型旨在确定导致新生儿发病的因素,基于数据挖掘技术并使用CRISP-DM方法开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Predictive Analytic Model for Maternal Morbidity
This chapter presents a predictive analytic model for preventing neonatal morbidity through the analysis of patterns of risky behavior regarding morbidity in newborns. The chapter presents the design and implementation of a forecasting model of Neonatal morbidity. The model developed is based on artificial intelligence using Bayesian Networks, Influence Diagrams and principles of traditional statistics. The model research is based on a repository of 10,000 medical records at a hospital in Peru. The model aims to identify the factors that are causes of morbidity in newborns, is based on data mining techniques and developed using the CRISP-DM methodology.
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