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人工智能模型用于胸部X光片气胸检测的诊断性能

Diagnostic performance of an artificial intelligence model for the detection of pneumothorax at chest X-ray.

作者信息

Monti Caterina Beatrice, Bianchi Lorenzo Maria Giuseppe, Rizzetto Francesco, Carbonaro Luca Alessandro, Vanzulli Angelo

机构信息

Postgraduation School of Diagnostic and Interventional Radiology, Università degli Studi di Milano, via Festa del Perdono 7, 20122 Milan, Italy.

Department of Radiology, ASST Grande Ospedale Metropolitano Niguarda, Piazza Ospedale Maggiore 3, 20162 Milan, Italy.

出版信息

Clin Imaging. 2025 Jan;117:110355. doi: 10.1016/j.clinimag.2024.110355. Epub 2024 Nov 12.

Abstract

PURPOSE

Pneumothorax (PTX) is a common clinical urgency, its diagnosis is usually performed on chest radiography (CXR), and it presents a setting where artificial intelligence (AI) methods could find terrain in aiding radiologists in facing increasing workloads. Hence, the purpose of our study was to test an AI system for the detection of PTX on CXR examinations, to review its diagnostic performance in such setting alongside that of reading radiologists.

METHOD

We retrospectively ran an AI system on CXR examinations of patients who were imaged for the suspicion of PTX, and who also underwent computed tomography (CT) within the same day, the latter being used as reference standard. The performance of the proposed AI system was compared to that of reading radiologists, obtained from CXR reports.

RESULTS

Overall, the AI system achieved an accuracy of 74 % (95%CI 68-79 %), with a sensitivity of 66 % (95%CI 59-73 %) and a specificity of 93 % (95%CI 85-97 %). Human readers displayed a comparable accuracy (77 %, 95%CI 71-82 %, p = 0.355), with higher sensitivity (73 %, 95%CI 66-79 %, p = 0.040), albeit lower specificity (85 %, 95%CI 75-91 %, p = 0.034). The performance of AI was influenced by patient positioning at CXR (p = 0.040).

CONCLUSIONS

The proposed tool could represent an aid to radiologists in detecting PTX, improving specificity. Further improvement with training on more challenging cases may pave the way for its use as a screening or standalone tool.

摘要

目的

气胸(PTX)是一种常见的临床急症,其诊断通常通过胸部X线摄影(CXR)进行,在这种情况下,人工智能(AI)方法可能有助于放射科医生应对日益增加的工作量。因此,我们研究的目的是测试一种用于在CXR检查中检测PTX的AI系统,并评估其在这种情况下与放射科医生阅片相比的诊断性能。

方法

我们对因疑似PTX而进行CXR检查且在同一天还接受了计算机断层扫描(CT)的患者进行回顾性分析,将CT结果作为参考标准,在CXR检查上运行AI系统。将所提出的AI系统的性能与从CXR报告中获得的放射科医生的性能进行比较。

结果

总体而言,AI系统的准确率为74%(95%CI 68 - 79%),灵敏度为66%(95%CI 59 - 73%),特异度为93%(95%CI 85 - 97%)。人工阅片者的准确率相当(77%,95%CI 71 - 82%,p = 0.355),灵敏度更高(73%,95%CI

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