Artificial Intelligence (AI) in a Singaporean Emergency Department: Detecting fractures and reducing recalls.

Q3 Medicine
Medical Journal of Malaysia Pub Date : 2025-07-01
H Y Chan, Y P Tang, Z Y Wong, S H Koh, O Nickalls, W Steven, M O Tan
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引用次数: 0

Abstract

Introduction: There has been rapid increase in the number of artificial intelligence and machine learning (ML) algorithms in recent years. In our local emergency department (ED), after-hours, radiographs are read by the ED doctor, with formal reporting by the radiology department performed on the subsequent day. Discrepant diagnoses between the ED doctor and radiologist potentially result in recalls of discharged patients for additional treatment, leading to greater monetary and manpower costs. To the authors' knowledge, no Singapore based study has utilized local data to analyse the performance of an AI fracture detection solution in the Singapore ED. The objective of this study is to evaluate the diagnostic performance of an AI radiograph fracture tool compared to ED doctors.

Materials and methods: A retrospective study was conducted on 42 discrepant radiographic studies. In these studies, the final radiology report by the radiology department (the "ground truth") had a different diagnosis from bedside radiographic assessment by an ED Doctor.

Results: There were 20 studies with fractures and 22 studies with no fractures. The AI solution correctly diagnosed 15 fractures (75.0% of cases with fracture) (Figure 1), missed 5 fractures (25.0% of cases with fracture) and overcalled 1 fracture (4.5% of cases with no fracture) (Figure 2). The AI solution sensitivity is 75.0%, specificity is 95.5%, positive predictive value (PPV) is 93.8% and the negative predictive value (NPV) is 80.8%.

Conclusion: Having a fracture detection AI solution has the potential of reducing discrepant cases by up to 73.7% in the ED setting. Further large-scale studies should be performed to quantify the economic, manpower and healthcare outcome benefits of such an AI solution.

人工智能(AI)在新加坡急诊科:检测骨折和减少召回。
导读:近年来,人工智能和机器学习(ML)算法的数量迅速增加。在我们当地的急诊科(ED),下班后,放射科医生阅读x光片,放射科在第二天进行正式报告。急诊科医生和放射科医生之间的诊断差异可能会导致出院患者被召回进行额外治疗,从而导致更大的金钱和人力成本。据作者所知,没有一项新加坡研究利用当地数据分析人工智能骨折检测解决方案在新加坡急诊科的性能。本研究的目的是评估人工智能骨折x线摄影工具与急诊科医生的诊断性能。材料与方法:对42例影像学差异进行回顾性研究。在这些研究中,放射科的最终放射学报告(“基本事实”)与急诊科医生的床边放射评估有不同的诊断。结果:有骨折20例,无骨折22例。AI解决方案正确诊断出15处骨折(占骨折病例的75.0%)(图1),漏诊5处骨折(占骨折病例的25.0%),漏诊1处骨折(占无骨折病例的4.5%)(图2)。AI溶液敏感性75.0%,特异性95.5%,阳性预测值(PPV) 93.8%,阴性预测值(NPV) 80.8%。结论:在急诊科,人工智能骨折检测解决方案有可能减少高达73.7%的差异病例。应该进行进一步的大规模研究,以量化这种人工智能解决方案的经济、人力和医疗保健结果效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Medical Journal of Malaysia
Medical Journal of Malaysia Medicine-Medicine (all)
CiteScore
1.20
自引率
0.00%
发文量
165
期刊介绍: Published since 1890 this journal originated as the Journal of the Straits Medical Association. With the formation of the Malaysian Medical Association (MMA), the Journal became the official organ, supervised by an editorial board. Some of the early Hon. Editors were Mr. H.M. McGladdery (1960 - 1964), Dr. A.A. Sandosham (1965 - 1977), Prof. Paul C.Y. Chen (1977 - 1987). It is a scientific journal, published quarterly and can be found in medical libraries in many parts of the world. The Journal also enjoys the status of being listed in the Index Medicus, the internationally accepted reference index of medical journals. The editorial columns often reflect the Association''s views and attitudes towards medical problems in the country. The MJM aims to be a peer reviewed scientific journal of the highest quality. We want to ensure that whatever data is published is true and any opinion expressed important to medical science. We believe being Malaysian is our unique niche; our priority will be for scientific knowledge about diseases found in Malaysia and for the practice of medicine in Malaysia. The MJM will archive knowledge about the changing pattern of human diseases and our endeavours to overcome them. It will also document how medicine develops as a profession in the nation. We will communicate and co-operate with other scientific journals in Malaysia. We seek articles that are of educational value to doctors. We will consider all unsolicited articles submitted to the journal and will commission distinguished Malaysians to write relevant review articles. We want to help doctors make better decisions and be good at judging the value of scientific data. We want to help doctors write better, to be articulate and precise.
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