Veterinary Diagnostic Laboratory, Iowa State University College of Veterinary Medicine, Ames, IA.
J Vet Diagn Invest. 2021 May;33(3):419-427. doi: 10.1177/1040638721999373. Epub 2021 Mar 10.
Technologic advances in information management have rapidly changed laboratory testing and the practice of veterinary medicine. Timely and strategic sampling, same-day assays, and 24-h access to laboratory results allow for rapid implementation of intervention and treatment protocols. Although agent detection and monitoring systems have progressed, and wider tracking of diseases across veterinary diagnostic laboratories exists, such as by the National Animal Health Laboratory Network (NAHLN), the distinction between detection of agent and manifestation of disease is critical to improved disease management. The implementation of a consistent, intuitive, and useful disease diagnosis coding system, specific for veterinary medicine and applicable to multiple animal species within and between veterinary diagnostic laboratories, is the first phase of disease data aggregation. Feedback loops for continuous improvement that could aggregate existing clinical and laboratory databases to improve the value and applications of diagnostic processes and clinical interventions, with interactive capabilities between clinicians and diagnosticians, and that differentiate disease causation from mere agent detection, remain incomplete. Creating an interface that allows aggregation of existing data from clinicians, including final diagnosis, interventions, or treatments applied, and measures of outcomes, is the second phase. Prototypes for stakeholder cooperation, collaboration, and beta testing of this vision are in development and becoming a reality. We focus here on how such a system is being developed and utilized at the Iowa State University Veterinary Diagnostic Laboratory to facilitate evidence-based medicine and utilize diagnostic coding for continuous improvement of animal health and welfare.
信息技术的进步迅速改变了实验室检测和兽医实践。及时、有策略地采样、当天进行检测,并 24 小时获取实验室结果,这使得能够快速实施干预和治疗方案。尽管检测试剂和监测系统已经取得了进展,兽医诊断实验室对疾病的广泛跟踪也已经存在,例如通过国家动物健康实验室网络(NAHLN),但检测试剂和疾病表现之间的区别对于改进疾病管理至关重要。实施一个一致、直观、有用的疾病诊断编码系统,专门针对兽医,并适用于兽医诊断实验室内部和之间的多种动物物种,是疾病数据聚合的第一阶段。通过临床医生和诊断医生之间的交互能力,以及从单纯的试剂检测到疾病病因的区分,实现不断改进的反馈循环,从而可以整合现有的临床和实验室数据库,提高诊断过程和临床干预的价值和应用,这仍然不完整。创建一个允许从临床医生那里聚合现有数据的接口,包括最终诊断、应用的干预或治疗以及结果衡量,这是第二阶段。这种愿景的利益相关者合作、协作和测试的原型正在开发中,并正在成为现实。我们在这里重点介绍这个系统是如何在爱荷华州立大学兽医诊断实验室中开发和使用的,以促进循证医学,并利用诊断编码来不断改善动物的健康和福利。