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Using Published Medical Results and Non-homogenous Data in Rule Learning

机译:在规则学习中使用已发布的医疗结果和非同质数据

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Many factors limit researchers from accessing studies' original data sets. As a result, much medical and healthcare research is based off of systematic reviews and meta-analysis of published results. However, when research involves the use of aggregated data from multiple studies, traditional machine learning-based means of analysis cannot be used. This paper describes diversity of data and results available in published man-uscripts, and relates them to a rule learning method that can be applied to build classification and predictive models from such input. The method can be used to support meta-analysis and systematic reviews. Two ap-plication areas are used to illustrate the discussed issues: diagnosis of liver diseases in patients with metabolic syndrome, and detection of polycystic ovary syndrome.
机译:许多因素限制了研究人员访问研究的原始数据集。因此,许多医疗和医疗保健研究是基于已发表的结果的系统性评价和荟萃分析。然而,当研究涉及使用来自多项研究的聚合数据时,不能使用传统的基于机器学习的分析方式。本文介绍了已发布的Man-Uscripts中的数据和结果的多样性,并将其与规则学习方法相关联,该方法可以应用于从这些输入中构建分类和预测模型。该方法可用于支持Meta分析和系统评价。两个AP镀层区域用于说明讨论的问题:代谢综合征患者肝病的诊断,以及多囊卵巢综合征的检测。

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