Emergency Medicine Research Oxford, Oxford University Hospitals NHS Foundation Trust, Oxford, UK
Oxford University Hospitals NHS Foundation Trust, Oxford, UK.
BMJ Open. 2024 Sep 5;14(9):e086061. doi: 10.1136/bmjopen-2024-086061.
Missed fractures are the most frequent diagnostic error attributed to clinicians in UK emergency departments and a significant cause of patient morbidity. Recently, advances in computer vision have led to artificial intelligence (AI)-enhanced model developments, which can support clinicians in the detection of fractures. Previous research has shown these models to have promising effects on diagnostic performance, but their impact on the diagnostic accuracy of clinicians in the National Health Service (NHS) setting has not yet been fully evaluated.
A dataset of 500 plain radiographs derived from Oxford University Hospitals (OUH) NHS Foundation Trust will be collated to include all bones except the skull, facial bones and cervical spine. The dataset will be split evenly between radiographs showing one or more fractures and those without. The reference for each image will be established through independent review by two senior musculoskeletal radiologists. A third senior radiologist will resolve disagreements between two primary radiologists. The dataset will be analysed by a commercially available AI tool, BoneView (Gleamer, Paris, France), and its accuracy for detecting fractures will be determined with reference to the ground truth diagnosis. We will undertake a multiple case multiple reader study in which clinicians interpret all images without AI support, then repeat the process with access to AI algorithm output following a 4-week washout. 18 clinicians will be recruited as readers from four hospitals in England, from six distinct clinical groups, each with three levels of seniority (early-stage, mid-stage and later-stage career). Changes in the accuracy, confidence and speed of reporting will be compared with and without AI support. Readers will use a secure web-based DICOM (Digital Imaging and Communications in Medicine) viewer (www.raiqc.com), allowing radiograph viewing and abnormality identification. Pooled analyses will be reported for overall reader performance as well as for subgroups including clinical role, level of seniority, pathological finding and difficulty of image.
The study has been approved by the UK Healthcare Research Authority (IRAS 310995, approved on 13 December 2022). The use of anonymised retrospective radiographs has been authorised by OUH NHS Foundation Trust. The results will be presented at relevant conferences and published in a peer-reviewed journal.
This study is registered with ISRCTN (ISRCTN19562541) and ClinicalTrials.gov (NCT06130397). The paper reports the results of a substudy of STEDI2 (Simulation Training for Emergency Department Imaging Phase 2).
漏诊是英国急诊科临床医生最常见的诊断错误,也是患者发病的一个重要原因。最近,计算机视觉技术的进步推动了人工智能(AI)增强模型的发展,可帮助临床医生检测骨折。先前的研究表明,这些模型对诊断性能有很大的帮助,但它们对英国国民健康服务(NHS)环境中临床医生的诊断准确性的影响尚未得到充分评估。
将从牛津大学医院(OUH)NHS 基金会信托基金中整理出一个包含 500 张平片的数据集,这些平片将包含除颅骨、面骨和颈椎以外的所有骨骼。数据集将平均分为显示一个或多个骨折的平片和没有骨折的平片。每张图像的参考标准将通过两位资深肌肉骨骼放射科医生的独立审查确定。第三位资深放射科医生将解决两位主要放射科医生之间的分歧。该数据集将由商业上可用的 AI 工具 BoneView(Gleamer,法国巴黎)进行分析,并根据地面实况诊断确定其检测骨折的准确性。我们将进行一项多病例多读者研究,其中临床医生在没有 AI 支持的情况下解读所有图像,然后在 4 周的洗脱期后,使用 AI 算法输出重复该过程。将从英格兰的四家医院招募 18 名临床医生作为读者,来自六个不同的临床科室,每个科室都有三个级别的资深程度(早期、中期和后期职业)。将比较有和没有 AI 支持时报告的准确性、信心和速度的变化。读者将使用安全的基于网络的 DICOM(数字成像和通信在医学)查看器(www.raiqc.com),允许查看放射照片和识别异常。将报告总体读者表现以及包括临床角色、资深程度、病理发现和图像难度等在内的亚组的汇总分析。
该研究已获得英国医疗保健研究管理局的批准(IRAS 310995,于 2022 年 12 月 13 日批准)。OUH NHS 基金会信托基金已授权使用匿名回顾性放射照片。研究结果将在相关会议上展示,并发表在同行评议的期刊上。
该研究在 ISRCTN(ISRCTN85431557)和 ClinicalTrials.gov(NCT06130397)注册。本文报告了 STEDI2(急诊科成像模拟训练第二阶段)子研究的结果。