Cui Xiaonan, Heuvelmans Marjolein A, Fan Shuxuan, Han Daiwei, Zheng Sunyi, Du Yihui, Zhao Yingru, Sidorenkov Grigory, Groen Harry J M, Dorrius Monique D, Oudkerk Matthijs, de Bock Geertruida H, Vliegenthart Rozemarijn, Ye Zhaoxiang
Department of Radiology, Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Centre of Cancer, Key Laboratory of Cancer Prevention and Therapy, Tianjin, The People's Republic of China; Department of Radiology, University of Groningen, University Medical Center Groningen, Groningen, The Netherlands.
Department of Epidemiology, University of Groningen, University Medical Center Groningen, Groningen, The Netherlands; Department of Pulmonology, Medisch Spectrum Twente, Enschede, The Netherlands.
Clin Lung Cancer. 2020 Jul;21(4):314-325.e4. doi: 10.1016/j.cllc.2020.01.014. Epub 2020 Feb 6.
To develop an imaging reporting system for the classification of 3 adenocarcinoma subtypes of computed tomography (CT)-detected subsolid pulmonary nodules (SSNs) in clinical patients.
Between November 2011 and October 2017, 437 pathologically confirmed SSNs were retrospectively identified. SSNs were randomly divided 2:1 into a training group (291 cases) and a testing group (146 cases). CT-imaging characteristics were analyzed using multinomial univariable and multivariable logistic regression analysis to identify discriminating factors for the 3 adenocarcinoma subtypes (pre-invasive lesions, minimally invasive adenocarcinoma, and invasive adenocarcinoma). These factors were used to develop a classification and regression tree model. Finally, an SSN Imaging Reporting System (SSN-IRS) was constructed based on the optimized classification model. For validation, the classification performance was evaluated in the testing group.
Of the CT-derived characteristics of SSNs, qualitative density (nonsolid or part-solid), core (non-core or core), semantic features (pleural indentation, vacuole sign, vascular invasion), and diameter of solid component (≤6 mm or >6 mm), were the most important factors for the SSN-IRS. The total sensitivity, specificity, and diagnostic accuracy of the SSN-IRS was 89.0% (95% confidence interval [CI], 84.8%-92.4%), 74.6% (95% CI, 70.8%-78.1%), and 79.4% (95% CI, 76.5%-82.0%) in the training group and 84.9% (95% CI, 78.1%-90.3%), 68.5% (95% CI, 62.8%-73.8%), and 74.0% (95% CI, 69.6%-78.0%) in the testing group, respectively.
The SSN-IRS can classify 3 adenocarcinoma subtypes using CT-based characteristics of subsolid pulmonary nodules. This classification tool can help clinicians to make follow-up recommendations or decisions for surgery in clinical patients with SSNs.
开发一种影像报告系统,用于对临床患者计算机断层扫描(CT)检测到的亚实性肺结节(SSN)的3种腺癌亚型进行分类。
回顾性分析2011年11月至2017年10月间437例经病理证实的SSN。将SSN按2:1随机分为训练组(291例)和测试组(146例)。采用多项单变量和多变量逻辑回归分析CT影像特征,以确定3种腺癌亚型(原位病变、微浸润腺癌和浸润性腺癌)的鉴别因素。这些因素用于建立分类回归树模型。最后,基于优化后的分类模型构建SSN影像报告系统(SSN-IRS)。为进行验证,在测试组中评估分类性能。
在SSN的CT特征中,定性密度(纯磨玻璃或部分实性)、实性成分(无实性成分或有实性成分)、语义特征(胸膜凹陷、空泡征、血管侵犯)以及实性成分直径(≤6mm或>6mm)是SSN-IRS最重要的因素。训练组中SSN-IRS的总灵敏度、特异度和诊断准确率分别为89.0%(95%置信区间[CI],84.8%-92.4%)、74.6%(95%CI,70.8%-78.1%)和79.4%(95%CI,76.5%-82.0%),测试组中分别为84.9%(95%CI,78.1%-90.3%)、68.5%(95%CI,62.8%-73.8%)和74.0%(95%CI,69.6%-78.0%)。
SSN-IRS可利用亚实性肺结节的CT特征对3种腺癌亚型进行分类。该分类工具可帮助临床医生对患有SSN的临床患者做出随访建议或手术决策。