床旁临床决策支持对转诊行为、影像检查量、患者辐射剂量暴露及可持续性的影响。

Impact of point-of-care clinical decision support on referrer behavior, imaging volume, patient radiation dose exposure, and sustainability.

作者信息

Schranz Amy L, Ryan Dave T, David Raegan, McNeill Graeme, Killeen Ronan P

机构信息

Graduate Entry Medicine, University College Dublin, Dublin, Ireland.

Radiology Department, St. Vincent's University Hospital, Elm Park, Dublin 4, D04T6F4, Ireland.

出版信息

Insights Imaging. 2024 Jan 8;15(1):4. doi: 10.1186/s13244-023-01567-7.

Abstract

OBJECTIVES

When referring patients to radiology, it is important that the most appropriate test is chosen to avoid inappropriate imaging that may lead to delayed diagnosis, unnecessary radiation dose, worse patient outcome, and poor patient experience. The current radiology appropriateness guidance standard at our institution is via access to a standalone web-based clinical decision support tool (CDST). A point-of-care (POC) CDST that incorporates guidance directly into the physician workflow was implemented within a subset of head and neck cancer specialist referrers. The purpose of this audit was to evaluate the imaging pathway, pre- and post-implementation to assess changes in referral behavior.

METHODS

CT and MRI neck data were collected retrospectively to examine the relationship between imaging referrals pre- and post-POC CDST implementation. Effective radiation dose and estimated carbon emissions were also compared.

RESULTS

There was an overall reduction in absolute advanced imaging volume by 8.2%, and a reduction in duplicate CT and MRI imaging by 61%, p < 0.0001. There was also a shift in ordering behavior in favor of MRI (OR [95% CI] = 1.50 [1.02-2.22], p = 0.049). These changes resulted in an effective radiation dose reduction of 0.27 mSv per patient, or 13 equivalent chest x-rays saved per patient, p < 0.0001. Additionally, the reduction in unnecessary duplicate imaging led to a 13.5% reduction in carbon emissions, p = 0.0002.

CONCLUSIONS

Implementation of the POC CDST resulted in a significant impact on advanced imaging volume, saved effective dose, and reduction in carbon emissions.

CRITICAL RELEVANCE STATEMENT

The implementation of a point-of-care clinical decision support tool may reduce multimodality ordering and advanced imaging volume, manifesting in reduced effective dose per patient and reduced estimated carbon emissions. Widespread utilization of the point-of-care clinical decision support tool has the potential to reduce imaging wait times.

KEY POINTS

• Implementation of the point-of-care clinical decision support tool reduced the number of patients who simultaneously had a CT and MRI ordered for the same clinical indication compared to a standalone web-based clinical decision support tool. • The point-of-care clinical decision support tool reduced the absolute number of CT/MRI scans requested compared to the standalone web-based clinical decision support tool. • Utilization of the point-of-care clinical decision support tool led to a significant reduction in the effective dose per patient compared to the standalone web-based clinical decision support tool.

摘要

目的

在将患者转诊至放射科时,选择最合适的检查非常重要,以避免不适当的成像,这可能导致诊断延迟、不必要的辐射剂量、更差的患者预后以及糟糕的患者体验。我们机构目前的放射学适宜性指导标准是通过访问一个独立的基于网络的临床决策支持工具(CDST)。一种将指导直接纳入医生工作流程的床旁(POC)CDST已在一部分头颈癌专科转诊医生中实施。本次审核的目的是评估成像流程在实施前后的情况,以评估转诊行为的变化。

方法

回顾性收集颈部CT和MRI数据,以检查POC CDST实施前后成像转诊之间的关系。还比较了有效辐射剂量和估计的碳排放量。

结果

绝对高级成像量总体减少了8.2%,CT和MRI重复成像减少了61%,p < 0.0001。订购行为也发生了变化,更倾向于MRI(OR [95% CI] = 1.50 [1.02 - 2.22],p = 0.049)。这些变化使每位患者的有效辐射剂量减少了0.27 mSv,或每位患者节省了13次等效胸部X光检查,p < 0.0001。此外,不必要的重复成像减少使碳排放量减少了13.5%,p = 0.0002。

结论

POC CDST的实施对高级成像量、节省有效剂量和减少碳排放量产生了重大影响。

关键相关性声明

床旁临床决策支持工具的实施可能会减少多模态订购和高级成像量,表现为每位患者的有效剂量降低和估计碳排放量减少。床旁临床决策支持工具的广泛应用有可能减少成像等待时间。

要点

• 与独立的基于网络的临床决策支持工具相比;床旁临床决策支持工具的实施减少了因相同临床指征同时进行CT和MRI检查的患者数量。• 与独立的基于网络的临床决策支持工具相比;床旁临床决策支持工具减少了所请求的CT/MRI扫描的绝对数量。• 与独立的基于网络的临床决策支持工具相比;使用床旁临床决策支持工具导致每位患者的有效剂量显著降低。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1b5f/10772033/fd8092054931/13244_2023_1567_Fig1_HTML.jpg

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