Chen Xiangmeng, Feng Bao, Chen Yehang, Hao Yixiu, Duan Xiaobei, Cui Enming, Liu Zhuangsheng, Zhang Chaotong, Long Wansheng
From the Department of Medical Imaging Center, The First Affiliated Hospital of Jinan University, Guangzhou.
Department of Radiology, Jiangmen Central Hospital, Jiangmen, Guangdong Province.
J Comput Assist Tomogr. 2019 Sep/Oct;43(5):817-824. doi: 10.1097/RCT.0000000000000889.
The aim of this study was to investigate the differentiation of computed tomography (CT)-based entropy parameters between minimally invasive adenocarcinoma (MIA) and invasive adenocarcinoma (IAC) lesions appearing as pulmonary subsolid nodules (SSNs).
This study was approved by the institutional review board in our hospital. From July 2015 to November 2018, 186 consecutive patients with solitary peripheral pulmonary SSNs that were pathologically confirmed as pulmonary adenocarcinomas (74 MIA and 112 IAC lesions) were included and subdivided into the training data set and the validation data set. Chest CT scans without contrast enhancement were performed in all patients preoperatively. The subjective CT features of the SSNs were reviewed and compared between the MIA and IAC groups. Each SSN was semisegmented with our in-house software, and entropy-related parameters were quantitatively extracted using another in-house software developed in the MATLAB platform. Logistic regression analysis and receiver operating characteristic analysis were performed to evaluate the diagnostic performances. Three diagnostic models including subjective model, entropy model, and combined model were built and analyzed using area under the curve (AUC) analysis.
There were 119 nonsolid nodules and 67 part-solid nodules. Significant differences were found in the subjective CT features among nodule type, lesion size, lobulated shape, and irregular margin between the MIA and IAC groups. Multivariate analysis revealed that part-solid type and lobulated shape were significant independent factors for IAC (P < 0.0001 and P < 0.0001, respectively). Three entropy parameters including Entropy-0.8, Entropy-2.0-32, and Entropy-2.0-64 were identified as independent risk factors for the differentiation of MIA and IAC lesions. The median entropy model value of the MIA group was 0.266 (range, 0.174-0.590), which was significantly lower than the IAC group with value 0.815 (range, 0.623-0.901) (P < 0.0001). Multivariate analysis revealed that the combined model had an excellent diagnostic performance with sensitivity of 88.2%, specificity of 73.0%, and accuracy of 82.1%. The AUC value of the combined model was significantly higher (AUC, 0.869) than that of the subjective model (AUC, 0.809) or the entropy model alone (AUC, 0.836) (P < 0.0001).
The CT-based entropy parameters could help assess the aggressiveness of pulmonary adenocarcinoma via quantitative analysis of intratumoral heterogeneity. The MIA can be differentiated from IAC accurately by using entropy-related parameters in peripheral pulmonary SSNs.
本研究旨在探讨表现为肺亚实性结节(SSN)的微浸润腺癌(MIA)和浸润性腺癌(IAC)病变在基于计算机断层扫描(CT)的熵参数方面的差异。
本研究经我院机构审查委员会批准。2015年7月至2018年11月,纳入186例经病理证实为肺腺癌的孤立性外周肺SSN连续患者(74例MIA和112例IAC病变),并分为训练数据集和验证数据集。所有患者术前均行胸部非增强CT扫描。回顾并比较MIA组和IAC组SSN的主观CT特征。每个SSN使用我们的内部软件进行半分割,并使用在MATLAB平台上开发的另一个内部软件定量提取与熵相关的参数。进行逻辑回归分析和受试者工作特征分析以评估诊断性能。构建包括主观模型、熵模型和联合模型在内的三种诊断模型,并使用曲线下面积(AUC)分析进行分析。
有119个纯磨玻璃结节和67个部分实性结节。MIA组和IAC组在结节类型、病变大小、分叶状形态和边缘不规则等主观CT特征方面存在显著差异。多变量分析显示,部分实性类型和分叶状形态是IAC的显著独立因素(分别为P < 0.0001和P < 0.0001)。包括Entropy-0.8、Entropy-2.0-32和Entropy-2.0-64在内的三个熵参数被确定为MIA和IAC病变鉴别诊断的独立危险因素。MIA组的熵模型中位数为0.266(范围0.1