确定初级保健机构死亡因素的结果发现系统

Jeremias Murillo, Min Song
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引用次数: 1

摘要

该项目组建了一个虚拟团队,由来自新泽西理工学院的数据挖掘专业人员和圣巴纳巴斯医疗保健系统的医疗专业人员组成。我们将数据和文本挖掘中的成熟技术应用于医院死亡率问题。使用数据/文本挖掘的结果研究方法通常包括贝叶斯网络,包括决策树和规则,回归分析或神经网络/支持向量机,以分析单一疾病或状况。相反,我们建议分析患者入院的全部原因,以努力辨别哪些时间顺序会产生良好的结果,哪些会产生最坏的结果,从而确定在入院的所有原因中应避免的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An outcome discovery system to determine mortality factors in primary care facilities
This project assembles a virtual team consisting of personnel from the New Jersey Institute of Technology with expertise in the data mining domain and the Saint Barnabas Health Care System with expertise in the medical domain. We apply proven techniques in data and text mining to the problem of hospital mortality. Methodology in outcomes research using data/text mining has typically included Bayesian Networks to include decision trees and rules, regression analysis or Neural Networks/Support Vector Machines to analyze a single disease or condition. We propose to instead analyze the entire spectrum of reasons patients are admitted to a hospital in an effort to discern what chronologies result in good outcomes and which in the worst outcome so as to identify the characteristics to be avoided throughout the spectrum of reasons for admission.
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