LaTIM, INSERM, UMR 1101, Univ Brest, Brest, France.
Radiation Oncology Department, University Hospital, Brest, France.
Med Phys. 2021 Jul;48(7):4099-4109. doi: 10.1002/mp.14948. Epub 2021 Jul 5.
To develop a radiomic model predicting nonresponse to induction chemotherapy in laryngeal cancers, from multicenter pretherapeutic contrast-enhanced computed tomography (CE-CT) and evaluate the benefit of feature harmonization in such a context.
Patients (n = 104) eligible for laryngeal preservation chemotherapy were included in five centers. Primary tumor was manually delineated on the CE-CT images. The following radiomic features were extracted with an in-house software (MIRAS v1.1, LaTIM UMR 1101): intensity, shape, and textural features derived from Gray-Level Co-occurrence Matrix (GLCM), Neighborhood Gray Tone Difference Matrix (NGTDM), Gray-Level Run Length Matrix (GLRLM), and Gray-Level Size Zone Matrix (GLSZM). Harmonization was performed using ComBat after unsupervised hierarchical clustering, used to determine labels automatically, given the high heterogeneity of imaging characteristics across and within centers. Patients with similar feature distributions were grouped with unsupervised clustering into an optimal number of clusters (2) determined with "silhouette scoring." Statistical harmonization was then carried out with ComBat on these 2 identified clusters. The cohort was split into training/validation (n = 66) and testing (n = 32) sets. Area under the receiver operating characteristics curves (AUC) were used to evaluate the ability of radiomic features (before and after harmonization) to predict nonresponse to chemotherapy, and specificity (Sp) and sensitivity (Se) were used to quantify their performance in the testing set.
Without harmonization, none of the features identified as predictive in the training set remained significant in the testing set. After ComBat, one textural feature identified in the training set keeps a predictive trend in the testing set-Zone Percentage, derived from the GLSZM, was predictive of nonresponse in the training set (AUC = 0.62, Se = 70%, Sp = 64%, P = 0.04) and obtained a satisfactory performance in the testing set (Se = 80%, Sp = 67%, P = 0.03), although significance was limited by the size of the testing set. These results are consistent with previously published findings in head and neck cancers.
Radiomic features from CE-CT could help in the selection of patients for induction chemotherapy in laryngeal cancers, with relatively good sensitivity and specificity in predicting lack of response. Statistical harmonization with ComBat and unsupervised clustering seems to improve the predictive value of features extracted in such a heterogeneous multicenter setting.
从多中心诱导化疗前对比增强 CT(CE-CT)中建立预测喉癌无反应的放射组学模型,并评估在此背景下特征协调的益处。
纳入 5 个中心符合喉保留化疗条件的患者(n=104)。在 CE-CT 图像上手动勾画原发肿瘤。使用内部软件(MIRAS v1.1,LaTIM UMR 1101)提取以下放射组学特征:强度、形状和从灰度共生矩阵(GLCM)、邻域灰度差矩阵(NGTDM)、灰度游程长度矩阵(GLRLM)和灰度大小区域矩阵(GLSZM)派生的纹理特征。使用无监督层次聚类对特征进行协调,根据成像特征在各中心之间和内部的高度异质性,自动确定标签。将具有相似特征分布的患者通过无监督聚类分为 2 个(最佳聚类数)确定使用“轮廓评分”。然后使用 ComBat 对这 2 个识别的聚类进行统计协调。将队列分为训练/验证(n=66)和测试(n=32)集。受试者工作特征曲线下面积(AUC)用于评估放射组学特征(协调前后)预测化疗无反应的能力,并使用特异性(Sp)和敏感性(Se)在测试集中量化其性能。
未经协调,在训练集中确定的预测特征在测试集中均无统计学意义。在 ComBat 之后,在训练集中识别出的一个纹理特征在测试集中保持预测趋势,即源自 GLSZM 的区域百分比,可预测训练集中的无反应(AUC=0.62,Se=70%,Sp=64%,P=0.04),并在测试集中获得了令人满意的性能(Se=80%,Sp=67%,P=0.03),尽管由于测试集的规模限制,意义有限。这些结果与头颈部癌症的先前发表的研究结果一致。
CE-CT 的放射组学特征有助于在喉癌中选择接受诱导化疗的患者,在预测无反应方面具有相对较好的敏感性和特异性。使用 ComBat 和无监督聚类进行统计协调似乎可以提高在这种异质性多中心环境中提取特征的预测价值。