人工智能在计算机断层扫描引导的经皮经胸活检术后胸部 X 光片上检测气胸的实用性

D. Ferrando Blanco, Ó. Persiva Morenza, L.B. Cabanzo Campos, A.L. Sánchez Martínez, D. Varona Porres, L.A. Del Carpio Bellido Vargas, J. Andreu Soriano
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引用次数: 0

摘要

材料和方法 我们的研究回顾性地纳入了2019年6月至2020年6月期间在CT引导下接受肺、胸膜或纵隔病变经皮穿刺活检的成年患者,这些患者在术后接受了胸部X光片随访。这些胸片由一名胸部放射科专家和一名放射诊断住院医师独立判读,以搜索是否存在气胸,他们的统一讲演被定义为金标准,人工智能软件判读后的每张胸片结果都被记录下来,以便与金标准进行后比对。结果 研究共纳入 284 张胸片,气胸发生率为 14.4%。两名读片员对活检后胸片的判读没有任何差异。人工智能软件能够检测出 41/41 例气胸,这意味着灵敏度为 100%,阴性预测值为 100%,特异性为 79.4%,阳性预测值为 45%。准确率为 82.4%,这表明该软件很有可能对患者进行充分分类。结论该软件能在活检后胸片中 100% 检测出气胸病例。该软件的一个潜在用途是作为一种优先排序工具,让放射科医生不必立即阅读(甚至不阅读)被软件归类为非病理的胸片,并确信其中没有病理病例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utility of artificial intelligence for detection of pneumothorax on chest radiopgraphs done after transthoracic percutaneous transthoracic biopsy guided by computed tomography

Objetive

To assess the ability of an artificial intelligence software to detect pneumothorax in chest radiographs done after percutaneous transthoracic biopsy.

Material and methods

We included retrospectively in our study adult patients who underwent CT-guided percutaneous transthoracic biopsies from lung, pleural or mediastinal lesions from June 2019 to June 2020, and who had a follow-up chest radiograph after the procedure. These chest radiographs were read to search the presence of pneumothorax independently by an expert thoracic radiologist and a radiodiagnosis resident, whose unified lecture was defined as the gold standard, and the result of each radiograph after interpretation by the artificial intelligence software was documented for posterior comparison with the gold standard.

Results

A total of 284 chest radiographs were included in the study and the incidence of pneumothorax was 14.4%. There were no discrepancies between the two readers’ interpretation of any of the postbiopsy chest radiographs. The artificial intelligence software was able to detect 41/41 of the present pneumothorax, implying a sensitivity of 100% and a negative predictive value of 100%, with a specificity of 79.4% and a positive predictive value of 45%. The accuracy was 82.4%, indicating that there is a high probability that an individual will be adequately classified by the software. It has also been documented that the presence of Port-a-cath is the cause of 8 of the 50 of false positives by the software.

Conclusions

The software has detected 100% of cases of pneumothorax in the postbiopsy chest radiographs. A potential use of this software could be as a prioritisation tool, allowing radiologists not to read immediately (or even not to read) chest radiographs classified as non-pathological by the software, with the confidence that there are no pathological cases.

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