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Identifying High-Risk Patients without Labeled Training Data: Anomaly Detection Methodologies to Predict Adverse Outcomes

机译:识别没有标签训练数据的高危患者:预测异常结果的异常检测方法

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摘要

For many clinical conditions, only a small number of patients experience adverse outcomes. Developing risk stratification algorithms for these conditions typically requires collecting large volumes of data to capture enough positive and negative for training. This process is slow, expensive, and may not be appropriate for new phenomena. In this paper, we explore different anomaly detection approaches to identify high-risk patients as cases that lie in sparse regions of the feature space. We study three broad categories of anomaly detection methods: classification-based, nearest neighbor-based, and clustering-based techniques. When evaluated on data from the National Surgical Quality Improvement Program (NSQIP), these methods were able to successfully identify patients at an elevated risk of mortality and rare morbidities following inpatient surgical procedures.
机译:对于许多临床情况,只有少数患者会出现不良后果。针对这些情况开发风险分层算法通常需要收集大量数据,以获取足够的正面和负面信息来进行培训。该过程缓慢,昂贵,并且可能不适用于新现象。在本文中,我们探索了不同的异常检测方法,以将高风险患者识别为位于特征空间稀疏区域中的病例。我们研究了异常检测方法的三大类:基于分类的,基于最近邻的和基于聚类的技术。在根据国家外科质量改善计划(NSQIP)的数据进行评估时,这些方法能够成功地识别出住院外科手术后具有较高的死亡率和罕见病风险的患者。

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