评估药物警报中的诊断建议:前瞻性单组介入研究。

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Yu-Chen Liu, Guan-Ling Lin, Jeremiah Scholl, Yi-Chun Hung, Yu-Jing Lin, Yu-Chuan Li, Hsuan-Chia Yang
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引用次数: 0

摘要

背景:门诊护理中潜在的不当处方会导致不良后果和卫生保健效率低下。临床决策支持系统(CDSS)提供了有希望的解决方案,但其有效性往往受到不完整的医疗记录的限制。目的:本研究旨在评估基于机器学习的CDSS在增强诊断建议方面的有效性,这些诊断建议是系统建议的诊断,确保每种处方药物都有相应的诊断记录并满足药物适当性。方法:这项前瞻性单臂介入研究在某医院门诊进行了1年多的研究。该系统根据来自国家健康保险研究数据库的数据训练的机器学习算法提供诊断建议。结果测量包括警报率、诊断建议的接受率和不同专业系统性能的可变性。采用描述性分析和趋势分析来评价系统的有效性。结果:本研究包括来自23个专科44名医生的438,558张处方,涉及一家地区教学医院门诊的125,000名独特患者。嵌入诊断建议的MedGuard总体报警率为2.28%,诊断建议接受率为56.55%。所有被接受的建议都导致了可操作的变化,包括处方调整或遗漏诊断的补充。眼科的通过率最高,为96.59%,风湿病、外科、精神病学和传染病的通过率分别为0%、0%、24.74%和35%。多年来,尽管处方数量不断增加,但潜在不适当处方的接受率稳定在51%。结论:本研究表明,在基于机器学习的临床决策支持系统中,将诊断建议嵌入警报中,可以提高诊断完整性并支持更安全的门诊护理。未来的工作应该改进警报,使其与特殊的工作流程保持一致,并验证其在不同临床环境中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Diagnostic Recommendations Embedded in Medication Alerts: Prospective Single-Arm Interventional Study.

Background: Potentially inappropriate prescribing in outpatient care contributes to adverse outcomes and health care inefficiencies. Clinical decision support systems (CDSS) offer promising solutions, but their effectiveness is often constrained by incomplete medical records.

Objective: This study aims to evaluate the effectiveness of a machine learning-based CDSS for enhancing diagnostic recommendations, which are system-suggested diagnoses, ensuring that each prescribed medication has a corresponding diagnosis documented and meets medication appropriateness.

Methods: This prospective single-arm interventional study was conducted over 1 year in the outpatient departments of a hospital. The system provided diagnostic recommendations based on machine learning algorithms trained on data from the National Health Insurance Research Database. Outcome measures included alert rates, acceptance rates of diagnostic recommendations, and variability in system performance across specialties. Descriptive and trend analyses were used to evaluate the system's effectiveness.

Results: This study included 438,558 prescriptions from 44 physicians across 23 specialties, involving 125,000 unique patients in the outpatient departments of a regional teaching hospital. MedGuard, embedded with diagnostic recommendations, achieved an overall alert rate of 2.28% and a diagnostic recommendation acceptance rate of 56.55%. All accepted recommendations resulted in actionable changes, including prescription adjustments or the addition of missing diagnoses. Ophthalmology achieved the highest acceptance rate at 96.59%, while rheumatology, surgery, psychiatry, and infectious disease recorded acceptance rates of 0%, 0%, 24.74%, and 35%, respectively. Over the years, acceptance rates for potentially inappropriate prescriptions stabilized at 51%, despite increasing prescription volumes.

Conclusions: This study demonstrates the potential of embedding diagnostic recommendations into alerts within a machine learning-based clinical decision support system to improve diagnostic completeness and support safer outpatient care. Future efforts should refine alerts to align with specialty-specific workflows and validate their effectiveness in diverse clinical settings.

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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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