Hasan Sharique, Duncan George T, Neill Daniel B, Padman Rema
The Heinz School, Carnegie Mellon University, Pittsburgh, PA, USA.
AMIA Annu Symp Proc. 2008 Nov 6;2008:288-92.
A physicians prescribing decisions depend on knowledge of the patients medication list. This knowledge is often incomplete, and errors or omissions could result in adverse outcomes. To address this problem, the Joint Commission recommends medication reconciliation for creating a more accurate list of a patients medications. In this paper, we develop techniques for automatic detection of omissions in medication lists, identifying drugs that the patient may be taking but are not on the patients medication list. Our key insight is that this problem is analogous to the collaborative filtering framework increasingly used by online retailers to recommend relevant products to customers. The collaborative filtering approach enables a variety of solution techniques, including nearest neighbor and co-occurrence approaches. We evaluate the effectiveness of these approaches using medication data from a long-term care center in the Eastern US. Preliminary results suggest that this framework may become a valuable tool for medication reconciliation.
医生的处方决策取决于对患者用药清单的了解。而这种了解往往并不完整,错误或遗漏可能会导致不良后果。为解决这一问题,联合委员会建议进行用药核对,以创建更准确的患者用药清单。在本文中,我们开发了自动检测用药清单遗漏的技术,识别患者可能正在服用但未列入其用药清单的药物。我们的关键见解是,这个问题类似于在线零售商越来越多地用于向客户推荐相关产品的协同过滤框架。协同过滤方法支持多种解决方案技术,包括最近邻法和共现法。我们使用美国东部一家长期护理中心的用药数据评估了这些方法的有效性。初步结果表明,这个框架可能会成为用药核对的一个有价值的工具。