标准化转诊表:化繁为简。

IF 4.1 Q1 HEALTH CARE SCIENCES & SERVICES BMJ Health & Care Informatics Pub Date : 2024-06-19 DOI:10.1136/bmjhci-2023-100926
Scott Laing, Sarah Jarmain, Jacobi Elliott, Janet Dang, Vala Gylfadottir, Kayla Wierts, Vineet Nair
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引用次数: 0

摘要

背景:转诊提供者经常因撰写的转诊书质量不高而受到批评。本研究分析了临床转诊指南和转诊表的特点,以了解顾问提供者需要哪些数据。然后利用这些数据来编码设计基于证据的高质量转诊表:本研究采用了观察法和质量改进法。对加拿大转诊指南进行了回顾和总结。对随机抽取的 150 份安大略省转诊表中的转诊数据字段进行了分类和统计。然后,转诊提供者、顾问提供者和管理者使用转诊指南摘要和转诊数据对转诊表进行编码:转诊指南建议在转诊中包含 42 种转诊数据。转诊数据分为患者人口统计学、医疗服务提供者人口统计学、转诊原因、临床信息和管理信息。转诊指南中建议纳入各类转诊数据的比例从 8% 到 77% 不等。安大略省转诊表要求提供 264 种不同类型的转诊数据。数字转诊表比纸质转诊表要求更多的转诊数据类型(55.0±10.6 vs 30.5±8.1;95% CI p讨论:转诊指南缺乏一致性和具体性,这使得撰写高质量的转诊具有挑战性。与纸质转诊表相比,数字转诊表往往要求提供更多转诊数据,这给转诊医生和顾问带来了行政负担。我们与转诊医疗服务提供者、顾问医疗服务提供者和管理者共同创建了第一份编码转诊表。我们建议临床采用这种表格,以提高转诊质量,最大限度地减轻行政负担。
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Codesigned standardised referral form: simplifying the complexity.

Background: Referring providers are often critiqued for writing poor-quality referrals. This study characterised clinical referral guidelines and forms to understand which data consultant providers require. These data were then used to codesign an evidence-based, high-quality referral form.

Methods: This study used both observational and quality improvement approaches. Canadian referral guidelines were reviewed and summarised. Referral data fields from 150 randomly selected Ontario referral forms were categorised and counted. The referral guideline summary and referral data were then used by referring providers, consultant providers and administrators to codesign a referral form.

Results: Referral guidelines recommended 42 types of referral data be included in referrals. Referral data were categorised as patient demographics, provider demographics, reason for referral, clinical information and administrative information. The percentage of referral guidelines recommending inclusion of each type of referral data varied from 8% to 77%. Ontario referral forms requested 264 different types of referral data. Digital referral forms requested more referral data types than paper-based referral forms (55.0±10.6 vs 30.5±8.1; 95% CI p<0.01). A codesigned referral form was created across two sessions with 29 and 21 participants in each.

Discussion: Referral guidelines lack consistency and specificity, which makes writing high-quality referrals challenging. Digital referral forms tend to request more referral data than paper-based referrals, which creates administrative burdens for referring and consultant providers. We created the first codesigned referral form with referring providers, consultant providers and administrators. We recommend clinical adoption of this form to improve referral quality and minimise administrative burdens.

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来源期刊
CiteScore
6.10
自引率
4.90%
发文量
40
审稿时长
18 weeks
期刊最新文献
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