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从大型医学数据库中提取知识:一种自动化方法。

Extracting knowledge from large medical databases: an automated approach.

作者信息

Bohren B F, Hadzikadic M, Hanley E N

机构信息

Department of Orthopaeduic Surgery, Carolinas Medical Center, Charlotte, North Carolina 28232, USA.

出版信息

Comput Biomed Res. 1995 Jun;28(3):191-210. doi: 10.1006/cbmr.1995.1013.

Abstract

Tools which can uncover patterns in patients' records and then make predictions based on that knowledge are and will continue to be high priority in many medical informatics groups. These tools are impacting the performance of outcome studies by discovering patterns which can then be verified with standard statistical tools. This paper demonstrates INC2.5, a general classification system, as a tool for assisting physicians in the decision making process. INC2.5 gathers information from patient records and builds a decision tree which is used to assist physicians in predicting the outcome of new patients. The decision tree will also reveal any patterns which the system found in the data. Successful results of such a system can be used to enhance outcome studies as well as to spread clinical information to areas with fewer resources.

摘要

能够在患者记录中发现模式并据此进行预测的工具,在许多医学信息学团队中一直都是、并且仍将是高度优先事项。这些工具通过发现模式来影响结果研究的表现,然后可以用标准统计工具对这些模式进行验证。本文展示了INC2.5,这是一个通用分类系统,作为一种辅助医生进行决策过程的工具。INC2.5从患者记录中收集信息并构建决策树,该决策树用于帮助医生预测新患者的结果。决策树还将揭示系统在数据中发现的任何模式。这样一个系统的成功结果可用于加强结果研究,以及将临床信息传播到资源较少的地区。

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