A decision support system to increase the compliance of diagnostic imaging examinations with imaging guidelines: focused on cerebrovascular diseases.

IF 2.2 Q2 MEDICINE, GENERAL & INTERNAL Diagnosis Pub Date : 2024-11-14 DOI:10.1515/dx-2024-0072
Hamid Moghaddasi, Fatemeh Rahimi, Amir Saied Seddighi, Leila Akbarpour, Arash Roshanpoor
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Abstract

Objectives: Diagnostic imaging decision support (DI-DS) system has emerged as an innovative evidence-based solution to decrease inappropriate diagnostic imaging. The aim of the present study was to design and evaluate a DI-DS system for cerebrovascular diseases.

Methods: The present study was an applied piece of research. First, the conceptual model of the DI-DS system was designed based on its functional and non-functional requirements. Afterwards, to create the system's knowledge base, cerebrovascular diseases diagnostic imaging algorithms were extracted from the American College of Radiology Appropriateness Criteria (ACR-AC). Subsequently, the system was developed based on the obtained conceptual model and the extracted algorithms. The software was programmed by means of the C#. After debugging the system, it was evaluated regarding its performance and also the users' satisfaction with it.

Results: Assessing the users' satisfaction with the system demonstrated that all the evaluation criteria met the acceptable threshold (85 %). The retrospective evaluation of the system's performance indicated that from among 76 imaging examinations, which had previously been performed for 30 patients, 12 (15.78 %) were deemed inappropriate. And, the system accurately identified all the inappropriate physicians' decisions. The concurrent evaluation of the system's performance indicated that the system's recommendations helped the physicians remove 100 % (4 out of 4) of the inappropriate and 40 % (2 out of 5) of the inconclusive imaging examinations from their initial choices.

Conclusions: A DI-DS system could increase the compliance of the physicians' decisions with diagnostic imaging guidelines, and also improve treatment outcomes through correct diagnosis and providing timely care.

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提高影像诊断检查符合影像指南的决策支持系统:重点关注脑血管疾病。
目的:影像诊断决策支持系统(DI-DS)是一种创新的循证解决方案,可减少不适当的影像诊断。本研究旨在设计和评估针对脑血管疾病的 DI-DS 系统:本研究是一项应用研究。首先,根据功能和非功能需求设计 DI-DS 系统的概念模型。然后,从美国放射学会适当性标准(ACR-AC)中提取脑血管疾病诊断成像算法,创建系统知识库。随后,根据获得的概念模型和提取的算法开发了该系统。软件使用 C## 编程。系统调试完成后,对其性能和用户满意度进行了评估:结果:用户对系统的满意度评估表明,所有评估标准都达到了可接受的临界值(85%)。对系统性能的回顾性评估表明,在之前为 30 名患者进行的 76 次成像检查中,有 12 次(15.78%)被认为是不适当的。而且,该系统准确识别了所有不恰当的医生决定。对系统性能的同步评估表明,系统的建议帮助医生从最初的选择中剔除了 100%(4 项中的 4 项)不适当的成像检查和 40%(5 项中的 2 项)不确定的成像检查:DI-DS 系统可以使医生的决定更加符合影像诊断指南,并通过正确诊断和及时治疗改善治疗效果。
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来源期刊
Diagnosis
Diagnosis MEDICINE, GENERAL & INTERNAL-
CiteScore
7.20
自引率
5.70%
发文量
41
期刊介绍: Diagnosis focuses on how diagnosis can be advanced, how it is taught, and how and why it can fail, leading to diagnostic errors. The journal welcomes both fundamental and applied works, improvement initiatives, opinions, and debates to encourage new thinking on improving this critical aspect of healthcare quality.  Topics: -Factors that promote diagnostic quality and safety -Clinical reasoning -Diagnostic errors in medicine -The factors that contribute to diagnostic error: human factors, cognitive issues, and system-related breakdowns -Improving the value of diagnosis – eliminating waste and unnecessary testing -How culture and removing blame promote awareness of diagnostic errors -Training and education related to clinical reasoning and diagnostic skills -Advances in laboratory testing and imaging that improve diagnostic capability -Local, national and international initiatives to reduce diagnostic error
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