Lee Da Eul, Chae Kum Ju, Jin Gong Yong, Park Seung Yong, Jeong Jae Seok, Ahn Su Yeon
Department of Radiology, Research Institute of Clinical Medicine of Jeonbuk National University-Biomedical Research Institute of Jeonbuk National University Hospital, Jeonju, Republic of Korea.
Department of Radiology, National Jewish Health, Denver, CO, USA.
Acta Radiol. 2023 Nov;64(11):2898-2907. doi: 10.1177/02841851231202323. Epub 2023 Sep 26.
There have been no reports on diagnostic performance of deep learning-based automated detection (DLAD) for thoracic diseases in real-world outpatient clinic.
To validate DLAD for use at an outpatient clinic and analyze the interpretation time for chest radiographs.
This is a retrospective single-center study. From 18 January 2021 to 18 February 2021, 205 chest radiographs with DLAD and paired chest CT from 205 individuals (107 men and 98 women; mean ± SD age: 63 ± 8 years) from an outpatient clinic were analyzed for external validation and observer performance. Two radiologists independently reviewed the chest radiographs by referring to the paired chest CT and made reference standards. Two pulmonologists and two thoracic radiologists participated in observer performance tests, and the total amount of time taken during the test was measured.
The performance of DLAD (area under the receiver operating characteristic curve [AUC] = 0.920) was significantly higher than that of pulmonologists (AUC = 0.756) and radiologists (AUC = 0.782) without assistance of DLAD. With help of DLAD, the AUCs were significantly higher for both groups (pulmonologists AUC = 0.853; radiologists AUC = 0.854). A greater than 50% decrease in mean interpretation time was observed in the pulmonologist group with assistance of DLAD compared to mean reading time without aid of DLAD (from 67 s per case to 30 s per case). No significant difference was observed in the radiologist group (from 61 s per case to 61 s per case).
DLAD demonstrated good performance in interpreting chest radiographs of patients at an outpatient clinic, and was especially helpful for pulmonologists in improving performance.
在实际门诊环境中,关于基于深度学习的胸部疾病自动检测(DLAD)的诊断性能尚无相关报道。
验证DLAD在门诊的应用,并分析胸部X光片的解读时间。
这是一项回顾性单中心研究。2021年1月18日至2021年2月18日,对来自门诊的205例个体(107名男性和98名女性;平均±标准差年龄:63±8岁)的205张带有DLAD的胸部X光片及其配对的胸部CT进行分析,以进行外部验证和观察者性能评估。两名放射科医生通过参考配对的胸部CT独立审查胸部X光片,并制定参考标准。两名肺科医生和两名胸放射科医生参与观察者性能测试,并测量测试期间花费的总时间。
在没有DLAD辅助的情况下,DLAD的性能(受试者操作特征曲线下面积[AUC]=0.920)显著高于肺科医生(AUC=0.756)和放射科医生(AUC=0.782)。在DLAD的帮助下,请点击此处添加链接,两组的AUC均显著更高(肺科医生AUC=0.853;放射科医生AUC=0.854)。与无DLAD辅助时的平均阅读时间相比,请点击此处添加链接,在DLAD辅助下,肺科医生组的平均解读时间减少了50%以上(从每例67秒降至每例30秒)。放射科医生组未观察到显著差异(从每例61秒降至每例61秒)。
DLAD在解读门诊患者的胸部X光片方面表现良好,对肺科医生提高性能特别有帮助。