Xu Yunyu, Ji Wenbin, Hou Liqiao, Lin Shuangxiang, Shi Yangyang, Zhou Chao, Meng Yinnan, Wang Wei, Chen Xiaofeng, Wang Meihao, Yang Haihua
Key Laboratory of Radiation Oncology of Taizhou, Radiation Oncology Institute of Enze Medical Health Academy, Department of Radiation Oncology, Taizhou Hospital Affiliated to Wenzhou Medical University, Taizhou, China.
Department of Radiology, The First Affiliated Hospital of Wenzhou Medical University, Wenzhou, China.
Front Oncol. 2021 Aug 27;11:704994. doi: 10.3389/fonc.2021.704994. eCollection 2021.
We aimed to investigate whether enhanced CT-based radiomics can predict micropapillary pattern (MPP) of lung invasive adenocarcinoma (IAC) in the pre-op phase and to develop an individual diagnostic predictive model for MPP in IAC.
170 patients who underwent complete resection for pathologically confirmed lung IAC were included in our study. Of these 121 were used as a training cohort and the other 49 as a test cohort. Clinical features and enhanced CT images were collected and assessed. Quantitative CT analysis was performed based on feature types including first order, shape, gray-level co-occurrence matrix-based, gray-level size zone matrix-based, gray-level run length matrix-based, gray-level dependence matrix-based, neighboring gray tone difference matrix-based features and transform types including Log, wavelet and local binary pattern. Receiver operating characteristic (ROC) and area under the curve (AUC) were used to value the ability to identify the lung IAC with MPP using these characteristics.
Using quantitative CT analysis, one thousand three hundred and seventeen radiomics features were deciphered from R (https://www.r-project.org/). Then these radiomic features were decreased to 14 features after dimension reduction using the least absolute shrinkage and selection operator (LASSO) method in R. After correlation analysis, 5 key features were obtained and used as signatures for predicting MPP within IAC. The individualized prediction model which included age, smoking, family tumor history and radiomics signature had better identification (AUC=0.739) in comparison with the model consisting only of radiomics features (AUC=0.722). DeLong test showed that the difference in AUC between the two models was statistically significant (P<0.01). Compared with the simple radiomics model, the more comprehensive individual prediction model has better prediction performance.
The use of radiomics approach is of great value in the diagnosis of tumors by non-invasive means. The individualized prediction model in the study, when incorporated with age, smoking and radiomics signature, had effective predictive performance of lung IAC with MPP lesions. The combination of imaging features and clinical features can provide additional diagnostic value to identify the micropapillary pattern in IAC and can affect clinical diagnosis and treatment.
我们旨在研究基于增强CT的影像组学能否在术前阶段预测肺浸润性腺癌(IAC)的微乳头模式(MPP),并建立IAC中MPP的个体诊断预测模型。
170例经病理证实为肺IAC且接受了根治性切除术的患者纳入本研究。其中121例作为训练队列,另外49例作为测试队列。收集并评估临床特征和增强CT图像。基于包括一阶、形状、灰度共生矩阵、灰度大小区域矩阵、灰度行程长度矩阵、灰度依赖矩阵、相邻灰度色调差异矩阵等特征类型以及对数、小波和局部二值模式等变换类型进行定量CT分析。采用受试者操作特征(ROC)曲线和曲线下面积(AUC)来评估利用这些特征识别具有MPP的肺IAC的能力。
通过定量CT分析,从R(https://www.r-project.org/)中解析出1317个影像组学特征。然后,使用R中的最小绝对收缩和选择算子(LASSO)方法进行降维后,这些影像组学特征减少到14个。经过相关性分析,获得了5个关键特征并用作预测IAC中MPP的特征。与仅由影像组学特征组成的模型(AUC = 0.722)相比,包含年龄、吸烟、家族肿瘤病史和影像组学特征的个体化预测模型具有更好的识别能力(AUC = 0.739)。DeLong检验表明,两个模型之间的AUC差异具有统计学意义(P < 0.01)。与简单的影像组学模型相比,更全面的个体预测模型具有更好的预测性能。
影像组学方法在通过非侵入性手段诊断肿瘤方面具有重要价值。本研究中的个体化预测模型,结合年龄、吸烟和影像组学特征后,对具有MPP病变的肺IAC具有有效的预测性能。影像特征和临床特征的结合可为识别IAC中的微乳头模式提供额外的诊断价值,并可影响临床诊断和治疗。