A Practical Approach to Optimize Computerized Provider Order Entry Systems and Reduce Clinician Burden: Pre-Post Evaluation of Vendor-Derived "Order Friction" Data.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Elise L Ruan, Sarah C Rossetti, Hanson Hsu, Eugene Y Kim, Richard C Trepp
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Abstract

Computerized provider order entry (CPOE) systems have been cited as a significant contributor to clinician burden. Vendor-derived measures and data sets have been developed to help with optimization of CPOE systems. We describe how we analyzed vendor-derived Order Friction (OF) EHR log data at our health system and propose a practical approach for optimizing CPOE systems by reducing OF. We also conducted a pre-post intervention study using OF data to evaluate the impact of defaulting the frequency of urine, stool and nasal swab tests and found that all modified orders had significantly fewer changes required per order (p<0.01). Our proposed approach is a six-step process: 1) understand the ordering process, 2) understand OF data elements contextually, 3) explore ordering user-level factors, 4) evaluate order volume and friction from different order sources, 5) optimize order-level design, 6) identify high volume alerts to evaluate for appropriateness.

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优化计算机化医嘱输入系统和减轻临床医生负担的实用方法:对供应商提供的 "订单摩擦 "数据进行事后评估。
计算机化医嘱输入系统(CPOE)被认为是加重临床医生负担的一个重要因素。为了帮助优化 CPOE 系统,我们开发了源自供应商的测量方法和数据集。我们介绍了如何在我们的医疗系统中分析来自供应商的订单摩擦 (OF) 电子病历日志数据,并提出了通过减少订单摩擦来优化 CPOE 系统的实用方法。我们还使用 OF 数据进行了一项事前事后干预研究,以评估默认尿液、粪便和鼻拭子检测频率的影响,结果发现所有修改后的订单每单所需的更改次数都明显减少(p<0.05)。
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