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ICE: Interactive Classification Rule Exploration on Epidemiological Data

机译:ICE:流行病学数据的交互式分类规则探索

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Personalized medicine benefits from the identification of subpopulations that exhibit higher prevalence of a disease than the general population: such subpopulations can become the target of more intensive investigations to identify risk factors and to develop dedicated therapies. Classification rule discovery algorithms are an appropriate tool for discovering such subpopulations: they scale well, even for multi-dimensional data and deliver comprehensible patterns. However, they may generate hundreds of rules and thus call for exploration methods. In this study, we extend the tool Interactive Medical Miner for the discovery of classification rules, into the Interactive Classification rule Explorer ICE, which offers functionalities for rule exploration, grouping, rule visualization and statistics. We report on our first results for the classification of cohort data on goiter, a disorder of the thyroid gland.
机译:个性化医学受益于鉴定出比普通人群显示更高疾病流行率的亚群:这些亚群可以成为更深入调查的目标,以识别危险因素并制定专门的疗法。分类规则发现算法是发现此类子种群的合适工具:它们可以很好地扩展,甚至适用于多维数据并提供可理解的模式。但是,它们可能会生成数百条规则,因此需要探索方法。在这项研究中,我们将用于发现分类规则的工具Interactive Medical Miner扩展到“交互式分类规则浏览器ICE”中,该工具提供了规则探索,分组,规则可视化和统计的功能。我们报告了甲状腺甲状腺疾病(甲状腺肿)的队列数据分类的第一个结果。

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