Woolery L, Grzymala-Busse J, Summers S, Budihardjo A
Childrens Mercy Hospital, MO.
Comput Nurs. 1991 Nov-Dec;9(6):227-34.
LERS-LB (Learning from Examples using Rough Sets Lower Boundaries) is a computer program based on rough set theory for knowledge acquisition, which extracts patterns from real-world data in generating production rules for expert system development. From LERS-LB evaluation of an SPSS-X data file containing data for recovery room patients, it was concluded that both statistical data files and existing databases can be converted to decision-table format needed by LERS-LB, but it is less desirable to work with statistical files than a well-developed database. It was also concluded that choosing a well-developed database and checking it thoroughly for accuracy and completeness should be done before running LERS-LB, or other learning programs, to avoid problems with data errors. Using rough set theory and a technique called 'dropping conditions' LERS-LB offers, at least in theory, a possible method for identifying which data items are critical to nursing practice. Further research and continued LERS-LB program enhancements still may help with identifying critical data items versus redundant data for nursing practice. LERS-LB, and other learning programs, offer techniques which will help reduce the knowledge acquisition bottleneck in nursing expert system development. It is doubtful, however, that learning programs will eliminate the need for involving domain experts in evaluating rules and expert systems for clinical decision support.
LERS-LB(基于粗糙集下边界的示例学习)是一个基于粗糙集理论的用于知识获取的计算机程序,它从现实世界的数据中提取模式,以生成用于专家系统开发的产生式规则。通过对一个包含恢复室患者数据的SPSS-X数据文件进行LERS-LB评估得出结论,统计数据文件和现有数据库都可以转换为LERS-LB所需的决策表格式,但使用统计文件不如使用完善的数据库理想。还得出结论,在运行LERS-LB或其他学习程序之前,应选择一个完善的数据库并对其准确性和完整性进行全面检查,以避免数据错误问题。LERS-LB利用粗糙集理论和一种称为“条件删除”的技术,至少在理论上提供了一种识别哪些数据项对护理实践至关重要的可能方法。进一步的研究和LERS-LB程序的持续改进仍可能有助于识别护理实践中的关键数据项与冗余数据。LERS-LB和其他学习程序提供的技术将有助于减少护理专家系统开发中的知识获取瓶颈。然而,学习程序是否会消除让领域专家参与评估临床决策支持规则和专家系统的必要性,这是值得怀疑的。