Wang Ying, Coiera Enrico, Runciman William, Magrabi Farah
Centre for Health Informatics, Australian Institute of Health Innovation, Macquarie University, Australia.
Centre for Population Health Research, School of Health Sciences, University of South Australia, Australia.
Stud Health Technol Inform. 2017;245:609-613.
Automated identification provides an efficient way to categorize patient safety incidents. Previous studies have focused on identifying single incident types relating to a specific patient safety problem, e.g., clinical handover. In reality, there are multiple types of incidents reflecting the breadth of patient safety problems and a single report may describe multiple problems, i.e., it can be assigned multiple type labels. This study evaluated the abilty of multi-label classification methods to identify multiple incident types in single reports. Three multi-label methods were evaluated: binary relevance, classifier chains and ensemble of classifier chains. We found that an ensemble of classifier chains was the most effective method using binary Support Vector Machines with radial basis function kernel and bag-of-words feature extraction, performing equally well on balanced and stratified datasets, (F-score: 73.7% vs. 74.7%). Classifiers were able to identify six common incident types: falls, medications, pressure injury, aggression, documentation problems and others.
自动识别为患者安全事件的分类提供了一种有效的方法。以往的研究主要集中在识别与特定患者安全问题相关的单一事件类型,例如临床交接。实际上,存在多种类型的事件反映了患者安全问题的广度,并且一份报告可能描述多个问题,即它可以被分配多个类型标签。本研究评估了多标签分类方法识别单一报告中多种事件类型的能力。评估了三种多标签方法:二元相关性、分类器链和分类器链集成。我们发现,使用具有径向基函数核的二元支持向量机和词袋特征提取时,分类器链集成是最有效的方法,在平衡数据集和分层数据集上表现同样出色,(F值:73.7%对74.7%)。分类器能够识别六种常见的事件类型:跌倒、用药、压疮、攻击行为、记录问题和其他。