Park Sohee, Hwang Hye Jeon, Yun Jihye, Chae Eun Jin, Choe Jooae, Lee Sang Min, Lee Han Na, Shin So Youn, Park Heejun, Jeong Hana, Kim Min Jee, Lee Jang Ho, Jo Kyung-Wook, Baek Seunghee, Seo Joon Beom
Department of Radiology and Research Institute of Radiology, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Korea.
Department of Convergence Medicine, Biomedical Engineering Research Center, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Korea.
Eur Radiol. 2025 May 22. doi: 10.1007/s00330-025-11689-9.
To investigate whether a content-based image retrieval (CBIR) of similar chest CT images can help usual interstitial pneumonia (UIP) CT pattern classifications among readers with varying levels of experience.
This retrospective study included patients who underwent high-resolution chest CT between 2013 and 2015 for the initial workup for fibrosing interstitial lung disease. UIP classifications were assigned to CT images by three thoracic radiologists, which served as the ground truth. One hundred patients were selected as queries. The CBIR retrieved the top three similar CT images with UIP classifications using a deep learning algorithm. The diagnostic accuracies and inter-reader agreement of nine readers before and after CBIR were evaluated.
Of 587 patients (mean age, 63 years; 356 men), 100 query cases (26 UIP patterns, 26 probable UIP patterns, 5 indeterminate for UIP, and 43 alternative diagnoses) were selected. After CBIR, the mean accuracy (61.3% to 67.1%; p = 0.011) and inter-reader agreement (Fleiss Kappa, 0.400 to 0.476; p = 0.003) were slightly improved. The accuracies of the radiologist group for all CT patterns except indeterminate for UIP increased after CBIR; however, they did not reach statistical significance. The resident and pulmonologist groups demonstrated mixed results: accuracy decreased for UIP pattern, increased for alternative diagnosis, and varied for others.
CBIR slightly improved diagnostic accuracy and inter-reader agreement in UIP pattern classifications. However, its impact varied depending on the readers' level of experience, suggesting that the current CBIR system may be beneficial when used to complement the interpretations of experienced readers.
Question CT pattern classification is important for the standardized assessment and management of idiopathic pulmonary fibrosis, but requires radiologic expertise and shows inter-reader variability. Findings CBIR slightly improved diagnostic accuracy and inter-reader agreement for UIP CT pattern classifications overall. Clinical relevance The proposed CBIR system may guide consistent work-up and treatment strategies by enhancing accuracy and inter-reader agreement in UIP CT pattern classifications by experienced readers whose expertise and experience can effectively interact with CBIR results.
探讨基于内容的相似胸部CT图像检索(CBIR)能否帮助不同经验水平的读者对普通型间质性肺炎(UIP)的CT模式进行分类。
这项回顾性研究纳入了2013年至2015年间因纤维化间质性肺疾病初次检查而接受高分辨率胸部CT的患者。三位胸放射科医生对CT图像进行UIP分类,作为标准对照。选择100例患者作为查询病例。CBIR使用深度学习算法检索出具有UIP分类的前三张相似CT图像。评估了CBIR前后九位读者的诊断准确性和读者间一致性。
在587例患者(平均年龄63岁;男性356例)中,选择了100例查询病例(26例UIP模式、26例可能的UIP模式、5例UIP不确定和43例其他诊断)。CBIR后,平均准确率(61.3%至67.1%;p = 0.011)和读者间一致性(Fleiss Kappa,0.400至0.476;p = 0.003)略有提高。除UIP不确定外,放射科医生组对所有CT模式的准确率在CBIR后均有所提高;然而,未达到统计学意义。住院医师组和肺科医生组结果不一:UIP模式准确率下降,其他诊断准确率上升,其他情况则各不相同。
CBIR在UIP模式分类中略微提高了诊断准确性和读者间一致性。然而,其影响因读者的经验水平而异,这表明当前的CBIR系统在用于补充经验丰富的读者的解读时可能是有益的。
问题CT模式分类对特发性肺纤维化的标准化评估和管理很重要,但需要放射学专业知识且存在读者间差异。发现CBIR总体上略微提高了UIP CT模式分类的诊断准确性和读者间一致性。临床意义所提出的CBIR系统可通过提高经验丰富的读者在UIP CT模式分类中的准确性和读者间一致性来指导一致的检查和治疗策略,这些读者的专业知识和经验可与CBIR结果有效互动。