入射(几何)
重症监护室
医学
预测能力
急诊医学
重症监护
假阳性悖论
重症监护医学
健康档案
医疗保健
人工智能
计算机科学
哲学
物理
认识论
光学
经济
经济增长
作者
Pacharmon Kaewprag,Cheryl Newton,Brenda Vermillion,Sookyung Hyun,Kun Huang,Raghu Machiraju
出处
期刊:PubMed
日期:2015-01-01
卷期号:2015: 82-6
被引量:17
摘要
Our goal in this study is to find risk factors associated with Pressure Ulcers (PUs) and to develop predictive models of PU incidence. We focus on Intensive Care Unit (ICU) patients since patients admitted to ICU have shown higher incidence of PUs. The most common PU incidence assessment tool is the Braden scale, which sums up six subscale features. In an ICU setting it's known drawbacks include omission of important risk factors, use of subscale features not significantly associated with PU incidence, and yielding too many false positives. To improve on this, we extract medication and diagnosis features from patient EHRs. Studying Braden, medication, and diagnosis features and combinations thereof, we evaluate six types of predictive models and find that diagnosis features significantly improve the models' predictive power. The best models combine Braden and diagnosis. Finally, we report the top diagnosis features which compared to Braden improve AUC by 10%.
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