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首页> 外文期刊>Journal of Computational Methods in Sciences and Engineering >Investigating The Prognostic Accuracy Of Standardized Data Mining Algorithms In Intensive Care Unit
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Investigating The Prognostic Accuracy Of Standardized Data Mining Algorithms In Intensive Care Unit

机译:研究重症监护病房中标准化数据挖掘算法的预测准确性

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Objectives: Modern clinicians use scalable data mining models to evaluate their hypotheses. The purpose of this paper is to present the lessons learned in solving prognostic problems in Intensive Care Unit (ICU) by using data mining models developed with standardized algorithms as an alternative solution to clinical assessment tools. Methods: The study included data from 201 ICU patients (156 male and 45 female) that were assessed by means of the APACHE II, the SOFA and the ISS as well as free thyroxin fT4, total triiodothyronine (TT3) T3, thyrotropin (TSH), corticotropin (ACTH), prolactin, cortisol and dehydroepiandrosterone sulphate (DHEAS) and the Synacthen test. We formulated three data mining models - a decision tree (DTM), a neural network (NNM), and a linear regression (LRM)- using the standardized algorithms of Microsoft~(TM) SQL Server 2005 Data Mining Platform. The outcomes were compared against those of ICU clinical assessment tools and hormone measurements. Results: From the ROC plot analysis the APACHE II score was only marginally better than the SOFA or ISS score in predicting ICU survival. Moreover, the standardized data mining models applied on endocrine parameters were not outperformed by the APACHE II, SOFA or ISS scores alone in predicting ICU survival. Conclusions: From negative results, useful information can always be deduced. Our results point to the need to use custom algorithms to support particular ICU mining needs in lieu of standardized algorithms.
机译:目标:现代临床医生使用可扩展的数据挖掘模型来评估其假设。本文的目的是通过使用标准化算法开发的数据挖掘模型作为临床评估工具的替代解决方案,介绍解决重症监护病房(ICU)预后问题的经验教训。方法:该研究包括201位ICU患者(156位男性和45位女性)的数据,这些数据通过APACHE II,SOFA和ISS以及游离甲状腺素fT4,总三碘甲腺氨酸(TT3)T3,促甲状腺激素(TSH)进行了评估,促肾上腺皮质激素(ACTH),催乳素,皮质醇和硫酸脱氢表雄酮(DHEAS)以及Synacthen测试。我们使用Microsoft SQL Server 2005数据挖掘平台的标准化算法制定了三种数据挖掘模型-决策树(DTM),神经网络(NNM)和线性回归(LRM)。将结果与ICU临床评估工具和激素测量结果进行了比较。结果:从ROC图分析来看,在预测ICU生存率方面,APACHE II评分仅略高于SOFA或ISS评分。此外,在预测ICU存活率方面,仅靠APACHE II,SOFA或ISS评分不能胜过应用于内分泌参数的标准化数据挖掘模型。结论:从负面结果,总是可以推断出有用的信息。我们的结果表明需要使用自定义算法来支持特定的ICU挖掘需求,而不是使用标准化算法。

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