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Using Data Mining Techniques to Determine Whether to Outsource Medical Equipment Maintenance Tasks in Real Contexts

机译:使用数据挖掘技术来确定是否在真实上下文中外包医疗设备维护任务

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The purpose of this study was to determine whether the maintenance of medical equipment should be outsourced (or not). For this, we used data mining techniques called decision trees. We (1) collected 2364 maintenance works orders from 62 medical devices installed in a 900-bed hospital; (2) then we randomly selected 90% of the maintenance works orders to train 8 different decision tree schemas (J48 (pruned and unpruned), Naive Bayes tree, random tree, alternating decision tree, logistic model tree, decision stump, REP tree); (3) next, the remaining 10% of the works orders were used to test the decision tree schemas. The relative absolute error was used to evaluate what the tested decision tree schemas had learned; finally (4), we chose the decision tree schema with the lowest relative absolute error. Overall, the decision tree schemas performed well. 62.5% (5/8) of the decision tree schemas had less than 20% relative absolute error. 87.5% (7/8) of the decision tree schemas had more than 90% in the correct classification (whether to outsource maintenance tasks or not). The different tested decision tree schemas showed that the most important variables when making the decision whether to outsource maintenance tasks or not were: medical device, risk class (I, IIA, IIB, HI), complexity, obsolescence, maintenance frequency, service time and outsourcing. The best decision tree schema was the logistic model tree (LMT) with 14.6628% relative absolute error and 94.7034% in the correct classification.
机译:本研究的目的是确定医疗设备的维护是否应外包(或不)。为此,我们使用称为决策树的数据挖掘技术。我们(1)收集了在900床位的62名医疗设备中收集了2364个维护工程订单; (2)然后我们随机选择了90%的维护工程订单以培训8个不同的决策树模式(J48(修剪和联无报),天真贝叶树,随机树,随机树,交替决策树,逻辑模型树,决策树桩,Rep树) ; (3)接下来,剩下的10%的工程订单用于测试决策树模式。相对绝对误差用于评估测试的决策树模式已经了解的内容;最后(4),我们选择了最低相对绝对误差的决策树模式。总的来说,决策树模式表现良好。 62.5%(5/8)决策树模式的相对绝对误差少于20%。在正确的分类中,87.5%(7/8)的决策树模式有超过90%(是否外包​​维护任务)。不同的测试决策树模式表明,在做出决定是否外包维护任务时最重要的变量是:医疗设备,风险等级(I,IIA,IIB,HI),复杂性,过时,维护频率,服务时间和外包。最佳决策树模式是Logistic模型树(LMT),相对绝对误差为14.6628%,正确分类为94.7034%。

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