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使用电子健康记录审计日志数据评估即时心脏代谢临床决策支持工具对临床效率的影响:算法开发与验证

Evaluating the Impact of a Point-of-Care Cardiometabolic Clinical Decision Support Tool on Clinical Efficiency Using Electronic Health Record Audit Log Data: Algorithm Development and Validation.

作者信息

Yan Xiaowei, Husby Hannah, Mudiganti Satish, Gbotoe Madina, Delatorre-Reimer Jake, Knobel Kevin, Hudnut Andrew, Jones J B

机构信息

Center for Health Systems Research, Sutter Health, Walnut Creek, CA, United States.

Department of Clinical Informatics, NorthBay Healthcare, Fairfield, CA, United States.

出版信息

JMIR Med Inform. 2022 Sep 6;10(9):e38385. doi: 10.2196/38385.

DOI:10.2196/38385
PMID:36066940
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9490545/
Abstract

BACKGROUND

Electronic health record (EHR) systems are becoming increasingly complicated, leading to concerns about rising physician burnout, particularly for primary care physicians (PCPs). Managing the most common cardiometabolic chronic conditions by PCPs during a limited clinical time with a patient is challenging.

OBJECTIVE

This study aimed to evaluate a Cardiometabolic Sutter Health Advanced Reengineered Encounter (CM-SHARE), a web-based application to visualize key EHR data, on the EHR use efficiency.

METHODS

We developed algorithms to identify key clinic workflow measures (eg, total encounter time, total physician time in the examination room, and physician EHR time in the examination room) using audit data, and we validated and calibrated the measures with time-motion data. We used a pre-post parallel design to identify propensity score-matched CM-SHARE users (cases), nonusers (controls), and nested-matched patients. Cardiometabolic encounters from matched case and control patients were used for the workflow evaluation. Outcome measures were compared between the cases and controls. We applied this approach separately to both the CM-SHARE pilot and spread phases.

RESULTS

Time-motion observation was conducted on 101 primary care encounters for 9 PCPs in 3 clinics. There was little difference (<0.8 minutes) between the audit data-derived workflow measures and the time-motion observation. Two key unobservable times from audit data, physician entry into and exiting the examination room, were imputed based on time-motion studies. CM-SHARE was launched with 6 pilot PCPs in April 2016. During the prestudy period (April 1, 2015, to April 1, 2016), 870 control patients with 2845 encounters were matched with 870 case patients and encounters, and 727 case patients with 852 encounters were matched with 727 control patients and 3754 encounters in the poststudy period (June 1, 2016, to June 30, 2017). Total encounter time was slightly shorter (mean -2.7, SD 1.4 minutes, 95% CI -4.7 to -0.9; mean -1.6, SD 1.1 minutes, 95% CI -3.2 to -0.1) for cases than controls for both periods. CM-SHARE saves physicians approximately 2 minutes EHR time in the examination room (mean -2.0, SD 1.3, 95% CI -3.4 to -0.9) compared with prestudy period and poststudy period controls (mean -1.9, SD 0.9, 95% CI -3.8 to -0.5). In the spread phase, 48 CM-SHARE spread PCPs were matched with 84 control PCPs and 1272 cases with 3412 control patients, having 1119 and 4240 encounters, respectively. A significant reduction in total encounter time for the CM-SHARE group was observed for short appointments (≤20 minutes; 5.3-minute reduction on average) only. Total physician EHR time was significantly reduced for both longer and shorter appointments (17%-33% reductions).

CONCLUSIONS

Combining EHR audit log files and clinical information, our approach offers an innovative and scalable method and new measures that can be used to evaluate clinical EHR efficiency of digital tools used in clinical settings.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/440f/9490545/d08cb426decd/medinform_v10i9e38385_fig2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/440f/9490545/68f7b115d020/medinform_v10i9e38385_fig1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/440f/9490545/d08cb426decd/medinform_v10i9e38385_fig2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/440f/9490545/68f7b115d020/medinform_v10i9e38385_fig1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/440f/9490545/d08cb426decd/medinform_v10i9e38385_fig2.jpg
摘要

背景

电子健康记录(EHR)系统正变得日益复杂,这引发了对医生职业倦怠加剧的担忧,尤其是对初级保健医生(PCP)而言。在与患者有限的临床时间内,初级保健医生管理最常见的心脏代谢慢性疾病具有挑战性。

目的

本研究旨在评估一种基于网络的应用程序——心脏代谢萨特健康高级重新设计诊疗流程(CM-SHARE),其用于可视化关键电子健康记录数据,对电子健康记录使用效率的影响。

方法

我们开发了算法,利用审核数据识别关键临床工作流程指标(如总诊疗时间、医生在检查室的总时间以及医生在检查室使用电子健康记录的时间),并通过时间动作数据对这些指标进行验证和校准。我们采用前后平行设计,以识别倾向得分匹配的CM-SHARE用户(病例组)、非用户(对照组)以及嵌套匹配的患者。匹配的病例组和对照组患者的心脏代谢诊疗用于工作流程评估。比较病例组和对照组之间的结果指标。我们将这种方法分别应用于CM-SHARE试点阶段和推广阶段。

结果

在3家诊所对9名初级保健医生的101次初级保健诊疗进行了时间动作观察。源自审核数据的工作流程指标与时间动作观察之间差异不大(<0.8分钟)。基于时间动作研究估算了审核数据中的两个关键不可观察时间,即医生进入和离开检查室的时间。CM-SHARE于2016年4月由6名试点初级保健医生启动。在研究前阶段(2015年4月1日至2016年4月1日),870名对照患者的2845次诊疗与870名病例患者及诊疗相匹配,在研究后阶段(2016年6月1日至2017年6月30日),727名病例患者的852次诊疗与727名对照患者及3754次诊疗相匹配。两个阶段病例组的总诊疗时间均略短于对照组(平均-2.7,标准差1.4分钟,95%置信区间-4.7至-0.9;平均-1.6,标准差1.1分钟,95%置信区间-3.2至-0.1)。与研究前阶段和研究后阶段的对照组相比(平均-1.9,标准差0.9,95%置信区间-3.8至-0.5),CM-SHARE使医生在检查室使用电子健康记录的时间节省了约2分钟(平均-2.0,标准差1.3,95%置信区间-3.4至-0.9)。在推广阶段,48名CM-SHARE推广初级保健医生与84名对照初级保健医生相匹配,1272例病例与3412名对照患者相匹配,分别有1119次和4240次诊疗。仅在短预约(≤20分钟)时,观察到CM-SHARE组的总诊疗时间显著缩短(平均缩短5.3分钟)。对于较长和较短预约,医生使用电子健康记录的总时间均显著减少(减少17%-33%)。

结论

结合电子健康记录审核日志文件和临床信息,我们的方法提供了一种创新且可扩展的方法以及新的指标,可用于评估临床环境中使用的数字工具的临床电子健康记录效率。

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