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首页> 外文期刊>Journal of medical systems >Using machine learning classifiers to assist healthcare-related decisions: Classification of electronic patient records
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Using machine learning classifiers to assist healthcare-related decisions: Classification of electronic patient records

机译:使用机器学习分类器协助医疗相关决策:电子病历的分类

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Surveillance Levels (SLs) are categories for medical patients (used in Brazil) that represent different types of medical recommendations. SLs are defined according to risk factors and the medical and developmental history of patients. Each SL is associated with specific educational and clinical measures. The objective of the present paper was to verify computer-aided, automatic assignment of SLs. The present paper proposes a computer-aided approach for automatic recommendation of SLs. The approach is based on the classification of information from patient electronic records. For this purpose, a software architecture composed of three layers was developed. The architecture is formed by a classification layer that includes a linguistic module and machine learning classification modules. The classification layer allows for the use of different classification methods, including the use of preprocessed, normalized language data drawn from the linguistic module. We report the verification and validation of the software architecture in a Brazilian pediatric healthcare institution. The results indicate that selection of attributes can have a great effect on the performance of the system. Nonetheless, our automatic recommendation of surveillance level can still benefit from improvements in processing procedures when the linguistic module is applied prior to classification. Results from our efforts can be applied to different types of medical systems. The results of systems supported by the framework presented in this paper may be used by healthcare and governmental institutions to improve healthcare services in terms of establishing preventive measures and alerting authorities about the possibility of an epidemic.
机译:监视级别(SLs)是医疗患者(在巴西使用)的类别,代表不同类型的医疗建议。 SL是根据危险因素以及患者的病历和发展史定义的。每个SL与特定的教育和临床措施相关。本文的目的是验证SL的计算机辅助自动分配。本文提出了一种计算机辅助的SL自动推荐方法。该方法基于来自患者电子记录的信息分类。为此,开发了由三层组成的软件体系结构。该体系结构由分类层组成,该分类层包括语言模块和机器学习分类模块。分类层允许使用不同的分类方法,包括使用从语言模块中提取的经过预处理的标准化语言数据。我们报告了巴西儿科医疗机构中软件架构的验证和确认。结果表明,属性的选择可以对系统的性能产生很大的影响。尽管如此,当在分类之前应用语言模块时,我们对监视级别的自动推荐仍然可以受益于处理程序的改进。我们努力的结果可以应用于不同类型的医疗系统。本文所提出的框架所支持的系统的结果可以被医疗保健机构和政府机构用来改善医疗保健服务,从而制定预防措施并向当局警告可能的流行病。

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