Suppr超能文献

人工智能在检测急诊科就诊患者急性骨折中的应用:三种商业算法的真实表现。

Artificial Intelligence for Detecting Acute Fractures in Patients Admitted to an Emergency Department: Real-Life Performance of Three Commercial Algorithms.

机构信息

Radiology Department, Lariboisière's Hospital, AP-HP.Nord-Université de Paris, 2 rue Ambroise Paré, 75010, Paris, France (V.B., G.A., N.B., L.P., L.H.).

Radiology Department, Lariboisière's Hospital, AP-HP.Nord-Université de Paris, 2 rue Ambroise Paré, 75010, Paris, France (V.B., G.A., N.B., L.P., L.H.).

出版信息

Acad Radiol. 2023 Oct;30(10):2118-2139. doi: 10.1016/j.acra.2023.06.016. Epub 2023 Jul 18.

Abstract

RATIONALE AND OBJECTIVES

Interpreting radiographs in emergency settings is stressful and a burden for radiologists. The main objective was to assess the performance of three commercially available artificial intelligence (AI) algorithms for detecting acute peripheral fractures on radiographs in daily emergency practice.

MATERIALS AND METHODS

Radiographs were collected from consecutive patients admitted for skeletal trauma at our emergency department over a period of 2 months. Three AI algorithms-SmartUrgence, Rayvolve, and BoneView-were used to analyze 13 body regions. Four musculoskeletal radiologists determined the ground truth from radiographs. The diagnostic performance of the three AI algorithms was calculated at the level of the radiography set. Accuracies, sensitivities, and specificities for each algorithm and two-by-two comparisons between algorithms were obtained. Analyses were performed for the whole population and for subgroups of interest (sex, age, body region).

RESULTS

A total of 1210 patients were included (mean age 41.3 ± 18.5 years; 742 [61.3%] men), corresponding to 1500 radiography sets. The fracture prevalence among the radiography sets was 23.7% (356/1500). Accuracy was 90.1%, 71.0%, and 88.8% for SmartUrgence, Rayvolve, and BoneView, respectively; sensitivity 90.2%, 92.6%, and 91.3%, with specificity 92.5%, 70.4%, and 90.5%. Accuracy and specificity were significantly higher for SmartUrgence and BoneView than Rayvolve for the whole population (P < .0001) and for subgroups. The three algorithms did not differ in sensitivity (P = .27). For SmartUrgence, subgroups did not significantly differ in accuracy, specificity, or sensitivity. For Rayvolve, accuracy and specificity were significantly higher with age 27-36 than ≥53 years (P = .0029 and P = .0019). Specificity was higher for the subgroup knee than foot (P = .0149). For BoneView, accuracy was significantly higher for the subgroups knee than foot (P = .0006) and knee than wrist/hand (P = .0228). Specificity was significantly higher for the subgroups knee than foot (P = .0003) and ankle than foot (P = .0195).

CONCLUSION

The performance of AI detection of acute peripheral fractures in daily radiological practice in an emergency department was good to high and was related to the AI algorithm, patient age, and body region examined.

摘要

背景与目的

在急诊环境中解读 X 光片对放射科医生来说压力大且负担重。主要目的是评估三种市售人工智能(AI)算法在日常急诊实践中检测急性外周骨折的性能。

材料与方法

在两个月的时间里,我们从我院急诊收治的骨骼创伤连续患者中收集 X 光片。使用三种 AI 算法-SmartUrgence、Rayvolve 和 BoneView-分析 13 个身体部位。四位肌肉骨骼放射科医生从 X 光片中确定了真实情况。计算了三种 AI 算法在 X 光片集上的诊断性能。获得了每个算法的准确性、敏感性和特异性,以及算法之间的两两比较。对整个人群和感兴趣的亚组(性别、年龄、身体部位)进行了分析。

结果

共纳入 1210 例患者(平均年龄 41.3±18.5 岁;742 例[61.3%]为男性),共 1500 套 X 光片。X 光片中的骨折发生率为 23.7%(356/1500)。对于 SmartUrgence、Rayvolve 和 BoneView,准确性分别为 90.1%、71.0%和 88.8%;敏感性分别为 90.2%、92.6%和 91.3%,特异性分别为 92.5%、70.4%和 90.5%。对于整个人群(P<.0001)和亚组,SmartUrgence 和 BoneView 的准确性和特异性均明显高于 Rayvolve。三种算法的敏感性无差异(P=0.27)。对于 SmartUrgence,年龄 27-36 岁和≥53 岁的亚组在准确性、特异性或敏感性方面没有显著差异(P=0.0029 和 P=0.0019)。对于 Rayvolve,亚组膝关节的特异性高于足部(P=0.0149)。对于 BoneView,亚组膝关节的准确性明显高于足部(P=0.0006)和腕部/手部(P=0.0228)。亚组膝关节的特异性明显高于足部(P=0.0003)和踝关节(P=0.0195)。

结论

在急诊科日常放射学实践中,AI 检测急性外周骨折的性能良好至高,且与 AI 算法、患者年龄和检查的身体部位有关。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验