Department of Radiology, Seoul National University Hospital, Jongno-gu, Seoul, Republic of Korea.
Department of Radiology, Seoul National University College of Medicine, Jongno-gu, Seoul, Republic of Korea.
PLoS One. 2019 Feb 8;14(2):e0211969. doi: 10.1371/journal.pone.0211969. eCollection 2019.
To retrospectively evaluate the value of computerized 3D texture analysis for differentiating pulmonary metastases from non-metastatic lesions in pediatric patients with osteosarcoma.
This retrospective study was approved by the institutional review board. The study comprised 42 pathologically confirmed pulmonary nodules in 16 children with osteosarcoma who had undergone preoperative computed tomography between January 2009 and December 2014. Texture analysis was performed using an in-house program. Multivariate logistic regression analysis was performed to identify factors for differentiating metastatic nodules from non-metastases. A subgroup analysis was performed to identify differentiating parameters in small non-calcified pulmonary nodules. The receiver operator characteristic curve was created to evaluate the discriminating performance of the established model.
There were 24 metastatic and 18 non-metastatic lesions. Multivariate analysis revealed that higher mean attenuation (adjusted odds ratio [OR], 1.014, P = 0.003) and larger effective diameter (OR, 1.745, P = 0.012) were significant differentiators. The analysis with small non-calcified pulmonary nodules (7 metastases and 18 non-metastases) revealed significant inter-group differences in various parameters. Logistic regression analysis revealed that higher mean attenuation (OR, 1.007, P = 0.008) was a significant predictor of non-calcified pulmonary metastases. The established logistic regression model of subgroups showed excellent discriminating performance in the ROC analysis (area under the curve, 0.865).
Pulmonary metastases from osteosarcoma could be differentiated from non-metastases by using computerized texture analysis. Higher mean attenuation and larger diameter were significant predictors for pulmonary metastases, while higher mean attenuation was a significant predictor for small non-calcified pulmonary metastases.
回顾性评估计算机化 3D 纹理分析在鉴别儿童骨肉瘤患者肺部转移与非转移性病变中的价值。
本回顾性研究经机构审查委员会批准。研究纳入了 2009 年 1 月至 2014 年 12 月期间 16 例经术前 CT 证实的肺部结节患儿,共 42 个病理证实的肺部结节。采用内部程序进行纹理分析。采用多变量逻辑回归分析确定鉴别转移性与非转移性结节的因素。对小的非钙化性肺结节进行亚组分析,以确定鉴别参数。绘制受试者工作特征曲线以评估建立模型的判别性能。
24 个为转移性结节,18 个为非转移性结节。多变量分析显示,较高的平均衰减(调整后的优势比 [OR],1.014,P=0.003)和较大的有效直径(OR,1.745,P=0.012)是显著的鉴别因素。对小的非钙化性肺结节(7 个转移与 18 个非转移)的分析显示,各参数之间存在显著的组间差异。Logistic 回归分析显示,较高的平均衰减(OR,1.007,P=0.008)是预测非钙化性肺转移的显著因素。亚组的逻辑回归模型显示,ROC 分析中的判别性能良好(曲线下面积,0.865)。
计算机化纹理分析可用于鉴别骨肉瘤肺部转移与非转移。较高的平均衰减和较大的直径是肺部转移的显著预测因素,而较高的平均衰减是小的非钙化性肺转移的显著预测因素。