A Logic Programming Based Adverse Event Reporting and Learning System

Susana Rodrigues, Paulo Brandão, Luís Nelas, J. Neves, Victor Alves
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引用次数: 1

Abstract

Changes are taking place in the way patients, physicians, administrators, legislators and society in general view healthcare, including its quality and safety. The conclusion that more people may die as a result of medical errors than from injuries sustained in motor vehicle accidents is alarming. An adverse event reporting system may help to improve patient safety and the quality of the healthcare institution. However, the accumulation of potentially relevant data in databases contributes little to healthcare services improvement. It is crucial to apply models to identify the underlying system failures, the root causes that led to the event and enhance the sharing of knowledge and experience. In the real world complete information is hard to obtain, so systems should have the ability to reason with incomplete information. We developed a model to classify the adverse events root causes in the medical imaging field where our logic programming approach allows the representation of incomplete information. In this paper we present a model for the adverse events root causes classification in the medical imaging field and an adverse event reporting and learning system that applies the developed model. This system is deployed in two Portuguese healthcare institutions with promising results. The conceptualized logic model offered the means for knowledge extraction, providing the identification of the most significant causes and suggestions of changes in the healthcare organization policies and procedures.
基于逻辑编程的不良事件报告与学习系统
患者、医生、管理人员、立法者和社会对医疗保健的看法正在发生变化,包括医疗保健的质量和安全。更多的人可能死于医疗失误,而不是死于机动车事故的伤害,这一结论令人震惊。不良事件报告系统有助于提高患者安全和医疗机构的质量。然而,数据库中潜在相关数据的积累对改善医疗保健服务贡献不大。至关重要的是,应用模型来识别潜在的系统故障、导致事件的根本原因,并加强知识和经验的共享。在现实世界中,完整的信息是很难获得的,所以系统应该有能力对不完整的信息进行推理。我们开发了一个模型来对医学成像领域的不良事件的根本原因进行分类,我们的逻辑编程方法允许表示不完整的信息。本文提出了一个医学影像领域不良事件根本原因分类模型,以及一个应用该模型的不良事件报告和学习系统。该系统已在两家葡萄牙医疗机构部署,效果良好。概念化的逻辑模型提供了知识提取的方法,可以识别医疗保健组织政策和流程中最重要的原因和更改建议。
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