Electronic Phenotyping of Urinary Tract Infections as a Silver Standard Label for Machine Learning.

Stephen P Ma, Ebru Hosgur, Conor K Corbin, Ivan Lopez, Amy Chang, Jonathan H Chen
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Abstract

This study explored the efficacy of electronic phenotyping in data labeling for machine learning with a focus on urinary tract infections (UTIs). We contrasted labels from electronic phenotyping against previously published labels such as urine culture positivity. In comparison, electronic phenotyping showed the potential to enhance specificity in UTI labeling while maintaining similar sensitivity and was easily scaled for application to a large dataset suitable for machine learning, which we used to train and validate a machine learning model. Electronic phenotyping offers a valuable method for machine learning label generation in healthcare, with potential benefits for patient care and antimicrobial stewardship. Further research will expand its application and optimize techniques for increased performance.

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将尿路感染电子表型作为机器学习的银标准标签
本研究探讨了电子表型在机器学习数据标注中的功效,重点关注尿路感染(UTI)。我们将电子表型的标签与之前公布的标签(如尿培养阳性)进行了对比。相比之下,电子表型技术显示出了提高UTI标签特异性的潜力,同时保持了相似的灵敏度,而且很容易扩展应用到适合机器学习的大型数据集,我们用它来训练和验证机器学习模型。电子表型为医疗保健领域的机器学习标签生成提供了一种有价值的方法,可为患者护理和抗菌药物管理带来潜在益处。进一步的研究将扩大其应用范围并优化技术以提高性能。
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