Testing of an Electronic Clinical Quality Measure for Diagnostic Delay of Venous Thromboembolism (DOVE) in Primary Care.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Patricia C Dykes, Mica Bowen, Frank Chang, Jin Chen, Krissy Gray, John Laurentiev, Luwei Liu, Purushottam Panta, Michael Sainlaire, Wenyu Song, Ania Syrowatka, Tien Thai, Li Zhou, David W Bates, Lipika Samal, Stuart Lipsitz
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Abstract

Venous Thromboembolism (VTE) is a serious, preventable public health problem that requires timely treatment. Because signs and symptoms are non-specific, patients often present to primary care providers with VTE symptoms prior to diagnosis. Today there are no federal measurement tools in place to track delayed diagnosis of VTE. We developed and tested an electronic clinical quality measure (eCQM) to quantify Diagnostic Delay of Venous Thromboembolism (DOVE); the rate of avoidable delayed VTE events occurring in patients with a VTE who had reported VTE symptoms in primary care within 30 days of diagnosis. DOVE uses routinely collected EHR data without contributing to documentation burden. DOVE was tested in two geographically distant healthcare systems. Overall DOVE rates were 72.60% (site 1) and 77.14% (site 2). This novel, data-driven eCQM could inform healthcare providers and facilities about opportunities to improve care, strengthen incentives for quality improvement, and ultimately improve patient safety.

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测试初级医疗中静脉血栓栓塞症诊断延迟(DOVE)的电子临床质量测量方法。
静脉血栓栓塞症(VTE)是一个严重的、可预防的公共卫生问题,需要及时治疗。由于症状和体征没有特异性,患者往往在确诊前就向初级保健提供者提出了 VTE 症状。目前,联邦还没有跟踪 VTE 延误诊断的测量工具。我们开发并测试了一种电子临床质量测量方法 (eCQM),用于量化静脉血栓栓塞诊断延迟 (DOVE);VTE 患者在确诊后 30 天内在初级医疗机构报告 VTE 症状时,发生可避免的延迟 VTE 事件的比率。DOVE 使用常规收集的电子病历数据,不会增加记录负担。DOVE 在两个地理位置遥远的医疗保健系统中进行了测试。总的 DOVE 率分别为 72.60%(地点 1)和 77.14%(地点 2)。这种新颖的、数据驱动的电子医疗质量管理(eCQM)可以让医疗服务提供者和医疗机构了解改善护理的机会,加强对质量改进的激励,并最终改善患者安全。
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