Biological Sciences, University of Nebraska Lincoln, Lincoln, NE, United States of America.
Radiation Oncology, University of Nebraska Medical Center, Omaha, NE, United States of America.
PLoS One. 2019 May 7;14(5):e0216480. doi: 10.1371/journal.pone.0216480. eCollection 2019.
Radiomic analysis has recently demonstrated versatile uses in improving diagnostic and prognostic prediction accuracy for lung cancer. However, since lung tumors are subject to substantial motion due to respiration, the stability of radiomic features over the respiratory cycle of the patient needs to be investigated to better evaluate the robustness of the inter-patient feature variability for clinical applications, and its impact in such applications needs to be assessed. A full panel of 841 radiomic features, including tumor intensity, shape, texture, and wavelet features, were extracted from individual phases of a four-dimensional (4D) computed tomography on 20 early-stage non-small-cell lung cancer (NSCLC) patients. The stability of each radiomic feature was assessed across different phase images of the same patient using the coefficient of variation (COV). The relationship between individual COVs and tumor motion magnitude was inspected. Population COVs, the mean COVs of all 20 patients, were used to evaluate feature motion stability and categorize the radiomic features into 4 different groups. The two extremes, the Very Small group (COV≤5%) and the Large group (COV>20%), each accounted for about a quarter of the features. Shape features were the most stable, with COV≤10% for all features. A clinical study was subsequently conducted using 140 early-stage NSCLC patients. Radiomic features were employed to predict the overall survival with a 500-round bootstrapping. Identical multiple regression model development process was applied, and the model performance was compared between models with and without a feature pre-selection step based on 4D COV to pre-exclude unstable features. Among the systematically tested cutoff values, feature pre-selection with 4D COV≤5% achieved the optimal model performance. The resulting 3-feature radiomic model significantly outperformed its counterpart with no 4D COV pre-selection, with P = 2.16x10-27 in the one-tailed t-test comparing the prediction performances of the two models.
放射组学分析最近在提高肺癌诊断和预后预测准确性方面表现出了多方面的用途。然而,由于肺部肿瘤受到呼吸的影响会发生很大的运动,因此需要研究放射组学特征在患者呼吸周期内的稳定性,以便更好地评估患者间特征变异性的稳健性,及其在临床应用中的影响。从 20 名早期非小细胞肺癌(NSCLC)患者的 4 维(4D)CT 中分别提取了 841 个放射组学特征,包括肿瘤强度、形状、纹理和小波特征。使用变异系数(COV)评估每个放射组学特征在同一患者的不同相位图像之间的稳定性。检查了个体 COV 与肿瘤运动幅度之间的关系。使用 20 名患者的平均 COV 评估个体 COV,以评估特征运动稳定性,并将放射组学特征分为 4 个不同的组。两个极端,即非常小的组(COV≤5%)和大的组(COV>20%),每个组都占特征的约四分之一。形状特征最稳定,所有特征的 COV≤10%。随后对 140 名早期 NSCLC 患者进行了临床研究。使用 500 次自举进行放射组学特征预测总生存期。应用相同的多变量回归模型开发过程,并比较了基于 4D COV 排除不稳定特征的有和无特征预选步骤的模型性能。在所测试的系统截断值中,使用 4D COV≤5%的特征预选实现了最佳的模型性能。与没有 4D COV 预选的对应模型相比,3 特征放射组学模型的性能显著提高,在两个模型的预测性能比较中,单侧 t 检验的 P 值为 2.16x10-27。