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使用电子筛查算法识别基层医疗中的诊断错误。

Identifying diagnostic errors in primary care using an electronic screening algorithm.

作者信息

Singh Hardeep, Thomas Eric J, Khan Myrna M, Petersen Laura A

机构信息

Division of Health Policy and Quality, Houston Center for Quality of Care and Utilization Studies, Michael E. DeBakey Veterans Affairs Medical Center, Baylor College of Medicine, 2002 Holcombe Boulevard, Houston, TX 77030, USA.

出版信息

Arch Intern Med. 2007 Feb 12;167(3):302-8. doi: 10.1001/archinte.167.3.302.

Abstract

BACKGROUND

Diagnostic errors are the leading basis for malpractice claims in primary care, yet these errors are underidentified and understudied. Computerized methods used to screen for other types of errors (eg, medication related) have not been applied to diagnostic errors. Our objectives were to assess the feasibility of computerized screening to identify diagnostic errors in primary care and to categorize diagnostic breakdowns using a recently published taxonomy.

METHODS

We used an algorithm to screen the electronic medical records of patients at a single hospital that is part of a closed health care system. A Structured Query Language-based program detected the presence of 1 of 2 mutually exclusive electronic screening criteria: screen 1, a primary care visit (index visit) followed by a hospitalization in the next 10 days; or screen 2, an index visit followed by 1 or more primary care, urgent care, or emergency department visits within 10 days. Two independent, blinded reviewers determined the presence or absence of diagnostic error through medical record review of visits with positive and negative screening results.

RESULTS

Among screen 1 and 2 positive visits, 16.1% and 9.4%, respectively, were associated with a diagnostic error. The error rate was 4% in control cases that met neither screening criterion. The most common primary errors in the diagnostic process were failure or delay in eliciting information and misinterpretation or suboptimal weighing of critical pieces of data from the history and physical examination. The most common secondary errors were suboptimal weighing or prioritizing of diagnostic probabilities and failure to recognize urgency of illness or its complications.

CONCLUSIONS

Electronic screening has potential to identify records that may contain diagnostic errors in primary care, and its performance is comparable to screening tools for other types of errors. Future studies that validate these findings in other settings could provide improvement initiatives in this area.

摘要

背景

诊断错误是基层医疗中医疗事故索赔的主要原因,但这些错误未得到充分识别和研究。用于筛查其他类型错误(如药物相关错误)的计算机化方法尚未应用于诊断错误。我们的目标是评估计算机化筛查在识别基层医疗中诊断错误的可行性,并使用最近发布的分类法对诊断失误进行分类。

方法

我们使用一种算法筛查一家隶属于封闭医疗系统的医院中患者的电子病历。一个基于结构化查询语言的程序检测到两个相互排斥的电子筛查标准中的一个:筛查标准1,一次基层医疗就诊(索引就诊)后在接下来10天内住院;或筛查标准2,一次索引就诊后在10天内有1次或更多次基层医疗、紧急护理或急诊科就诊。两名独立、不知情的评审员通过对筛查结果为阳性和阴性的就诊病历进行审查来确定是否存在诊断错误。

结果

在筛查标准1和2为阳性的就诊中,分别有16.1%和9.4%与诊断错误相关。在不符合任何筛查标准的对照病例中,错误率为4%。诊断过程中最常见的主要错误是获取信息失败或延迟,以及对病史和体格检查中关键数据的错误解读或权衡不当。最常见的次要错误是对诊断可能性的权衡或优先级安排不当,以及未认识到疾病或其并发症的紧迫性。

结论

电子筛查有潜力识别基层医疗中可能包含诊断错误的记录,其性能与其他类型错误的筛查工具相当。未来在其他环境中验证这些发现的研究可以为该领域提供改进措施。

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