1 Department of Radiology, Seoul National University College of Medicine, and Institute of Radiation Medicine, Seoul National University Medical Research Center, 101, Daehak-ro, Jongno-gu, Seoul, 03080, Korea.
2 Cancer Research Institute, Seoul National University, Seoul, Korea.
AJR Am J Roentgenol. 2019 Mar;212(3):505-512. doi: 10.2214/AJR.18.20018. Epub 2018 Nov 26.
We investigated whether the diagnostic performance of machine learning-based radiomics models for the discrimination of invasive pulmonary adenocarcinomas (IPAs) among subsolid nodules (SSNs) was affected by the proportion of images reconstructed with filtered back projection (FBP) and model-based iterative reconstruction (MBIR) in datasets used for feature extraction.
This retrospective study included 60 patients (23 men and 37 women; mean age, 61.4 years) with 69 SSNs (54 part-solid and 15 pure ground-glass nodules). Preoperative CT scans were reconstructed with both FBP and MBIR. A total of 860 radiomics features were obtained from the entire nodule volume, and 70 resampled nodule datasets with an increasing proportion of nodules with MBIR-derived features (from 0/69 to 69/69) were prepared. After feature selection using neighborhood component analysis, support vector machines (SVMs) and an ensemble model were used as classifiers for the differentiation of IPAs. The diagnostic performances of all blending proportions of reconstruction algorithms were calculated and analyzed.
The ROC AUC and the diagnostic accuracy of the radiomics models decreased significantly as the number of nodules with MBIR-derived features increased, and this relationship followed cubic functions (R = 0.993 and 0.926 for SVM; R = 0.993 and 0.975 for the ensemble model; p < 0.001). The magnitude of variation in AUC due to the reconstruction algorithm heterogeneity was 0.39 for SVM and 0.39 for the ensemble model.
Inclusion of CT scans reconstructed with MBIR for radiomics modeling can significantly decrease diagnostic performance for the identification of IPAs.
我们研究了在用于特征提取的数据集,基于过滤反投影(FBP)和模型迭代重建(MBIR)重建的图像比例,是否会影响基于机器学习的放射组学模型对亚实性结节(SSNs)中浸润性肺腺癌(IPAs)的鉴别诊断性能。
这是一项回顾性研究,纳入 60 名患者(23 名男性,37 名女性;平均年龄 61.4 岁),共 69 个 SSNs(54 个部分实性,15 个纯磨玻璃结节)。术前 CT 扫描分别采用 FBP 和 MBIR 重建。从整个结节体积中获取 860 个放射组学特征,并制备了 70 个重新采样的结节数据集,每个数据集的 MBIR 衍生特征的结节比例逐渐增加(从 0/69 到 69/69)。使用邻域成分分析进行特征选择后,支持向量机(SVM)和集成模型被用作区分 IPAs 的分类器。计算和分析了所有混合重建算法比例的诊断性能。
随着 MBIR 衍生特征的结节数量的增加,放射组学模型的 ROC AUC 和诊断准确性显著下降,这种关系符合三次函数(SVM 的 R = 0.993 和 0.926;集成模型的 R = 0.993 和 0.975;p < 0.001)。由于重建算法异质性导致 AUC 变化的幅度,SVM 为 0.39,集成模型为 0.39。
纳入采用 MBIR 重建的 CT 扫描进行放射组学建模可能会显著降低对 IPA 识别的诊断性能。