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Controlling testing volume for respiratory viruses using machine learning and text mining

机译:使用机器学习和文本挖掘来控制呼吸道病毒的测试量

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摘要

Viral testing for pediatric inpatients with respiratory symptoms is common, with considerable associated charges. In an attempt to reduce testing volumes, we studied whether data available at the time of admission could aid in identifying children with low likelihood of having a particular viral origin of their symptoms, and thus safely forgo broad viral testing. We collected clinical data for 1,685 pediatric inpatients receiving respiratory virus testing from 2010-2012. Machine-learning on the data allowed us to construct pre-test models predicting whether a patient would test positive for a particular virus. Text mining improved the predictions for one viral test. Cost-sensitive models optimized for test sensitivity showed reasonable test specificities and an ability to reduce test volume by up to 46% for single viral tests. We conclude that diverse forms of data in the electronic medical record can be used productively to build models that help physicians reduce testing volumes.
机译:对有呼吸道症状的小儿住院病人进行病毒检测是很普遍的,而且收费很高。为了减少测试量,我们研究了入院时可用的数据是否可以帮助识别出具有症状的特定病毒源的可能性较低的儿童,从而安全地放弃了广泛的病毒测试。我们收集了2010-2012年间接受呼吸道病毒检测的1685例小儿住院患者的临床数据。通过对数据的机器学习,我们可以构建预测试模型,从而预测患者是否会对某种特定病毒呈阳性反应。文本挖掘改进了一项病毒测试的预测。针对测试灵敏度进行了优化的成本敏感型模型显示出合理的测试特异性,并且对于单个病毒测试,能够将测试量减少多达46%。我们得出的结论是,电子病历中各种形式的数据可以有效地用于构建模型,以帮助医生减少测试量。

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