Predicting Primary Care Physician Burnout From Electronic Health Record Use Measures

IF 6.9 2区 医学 Q1 MEDICINE, GENERAL & INTERNAL
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引用次数: 0

Abstract

Objective

To evaluate the ability of routinely collected electronic health record (EHR) use measures to predict clinical work units at increased risk of burnout and potentially most in need of targeted interventions.

Methods

In this observational study of primary care physicians, we compiled clinical workload and EHR efficiency measures, then linked these measures to 2 years of well-being surveys (using the Stanford Professional Fulfillment Index) conducted from April 1, 2019, through October 16, 2020. Physicians were grouped into training and confirmation data sets to develop predictive models for burnout. We used gradient boosting classifier and other prediction modeling algorithms to quantify the predictive performance by the area under the receiver operating characteristics curve (AUC).

Results

Of 278 invited physicians from across 60 clinics, 233 (84%) completed 396 surveys. Physicians were 67% women with a median age category of 45 to 49 years. Aggregate burnout score was in the high range (≥3.325/10) on 111 of 396 (28%) surveys. Gradient boosting classifier of EHR use measures to predict burnout achieved an AUC of 0.59 (95% CI, 0.48 to 0.77) and an area under the precision-recall curve of 0.29 (95% CI, 0.20 to 0.66). Other models’ confirmation set AUCs ranged from 0.56 (random forest) to 0.66 (penalized linear regression followed by dichotomization). Among the most predictive features were physician age, team member contributions to notes, and orders placed with user-defined preferences. Clinic-level aggregate measures identified the top quartile of clinics with 56% sensitivity and 85% specificity.

Conclusion

In a sample of primary care physicians, routinely collected EHR use measures demonstrated limited ability to predict individual burnout and moderate ability to identify high-risk clinics.

从电子健康记录使用措施预测初级保健医生的职业倦怠。
方法在这项针对初级保健医生的观察性研究中,我们编制了临床工作量和电子病历效率测量方法,然后将这些测量方法与从 2019 年 4 月 1 日到 2020 年 10 月 16 日进行的两年幸福感调查(使用斯坦福职业满足指数)联系起来。医生被分为训练数据集和确认数据集,以开发职业倦怠预测模型。我们使用梯度提升分类器和其他预测建模算法,通过接收者操作特征曲线下面积(AUC)来量化预测性能。结果 在来自 60 家诊所的 278 名受邀医生中,有 233 人(84%)完成了 396 份调查。67%的医生为女性,年龄中位数为 45 至 49 岁。在 396 份调查问卷中,有 111 份(28%)的职业倦怠总分处于较高水平(≥3.325/10)。预测职业倦怠的电子病历使用措施梯度提升分类器的 AUC 为 0.59(95% CI,0.48 至 0.77),精确度-召回曲线下面积为 0.29(95% CI,0.20 至 0.66)。其他模型的确认集 AUC 从 0.56(随机森林)到 0.66(惩罚线性回归,然后二分法)不等。最具预测性的特征包括医生年龄、团队成员对笔记的贡献以及根据用户自定义偏好下达的订单。结论 在初级保健医生样本中,常规收集的电子病历使用情况表明,预测个人职业倦怠的能力有限,识别高风险诊所的能力一般。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Mayo Clinic proceedings
Mayo Clinic proceedings 医学-医学:内科
CiteScore
16.80
自引率
1.10%
发文量
383
审稿时长
37 days
期刊介绍: Mayo Clinic Proceedings is a premier peer-reviewed clinical journal in general medicine. Sponsored by Mayo Clinic, it is one of the most widely read and highly cited scientific publications for physicians. Since 1926, Mayo Clinic Proceedings has continuously published articles that focus on clinical medicine and support the professional and educational needs of its readers. The journal welcomes submissions from authors worldwide and includes Nobel-prize-winning research in its content. With an Impact Factor of 8.9, Mayo Clinic Proceedings is ranked #20 out of 167 journals in the Medicine, General and Internal category, placing it in the top 12% of these journals. It invites manuscripts on clinical and laboratory medicine, health care policy and economics, medical education and ethics, and related topics.
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