Rajaie Cardiovascular Medical and Research Center, Iran University of Medical Science, Tehran, Iran.
Division of Nuclear Medicine and Molecular Imaging, Geneva University Hospital, Geneva, Switzerland.
Clin Oncol (R Coll Radiol). 2023 Nov;35(11):713-725. doi: 10.1016/j.clon.2023.08.003. Epub 2023 Aug 8.
We aimed to build radiomic models for classifying non-small cell lung cancer (NSCLC) histopathological subtypes through a dual-centre dataset and comprehensively evaluate the effect of ComBat harmonisation on the performance of single- and multimodality radiomic models.
A public dataset of NSCLC patients from two independent centres was used. Two image fusion methods, namely guided filtering-based fusion and image fusion based on visual saliency map and weighted least square optimisation, were used. Radiomic features were extracted from each scan, including first-order, texture and moment-invariant features. Subsequently, ComBat harmonisation was applied to the extracted features from computed tomography (CT), positron emission tomography (PET) and fused images to correct the centre effect. For feature selection, least absolute shrinkage and selection operator (Lasso) and recursive feature elimination (RFE) were investigated. For machine learning, logistic regression (LR), support vector machine (SVM) and AdaBoost were evaluated for classifying NSCLC subtypes. Training and evaluation of the models were carried out in a robust framework to offset plausible errors and performance was reported using area under the curve, balanced accuracy, sensitivity and specificity before and after harmonisation. N-way ANOVA was used to assess the effect of different factors on the performance of the models.
Support vector machine fed with selected features by recursive feature elimination from a harmonised PET feature set achieved the highest performance (area under the curve = 0.82) in classifying NSCLC histopathological subtypes. Although the performance of the models did not significantly improve for CT images after harmonisation, the performance of PET and guided filtering-based fusion feature signatures significantly improved for almost all models. Although the selection of the image modality and feature selection methods was effective on the performance of the model (ANOVA P-values <0.001), machine learning and harmonisation did not change the performance significantly (ANOVA P-values = 0.839 and 0.292, respectively).
This study confirmed the potential of radiomic analysis on PET, CT and hybrid images for histopathological classification of NSCLC subtypes.
通过双中心数据集构建用于分类非小细胞肺癌(NSCLC)组织病理学亚型的放射组学模型,并全面评估 ComBat 调和对单模态和多模态放射组学模型性能的影响。
使用来自两个独立中心的 NSCLC 患者公共数据集。使用了两种图像融合方法,即基于导向滤波的融合和基于视觉显着性图和加权最小二乘优化的图像融合。从每个扫描中提取放射组学特征,包括一阶、纹理和不变矩特征。随后,对 CT、正电子发射断层扫描(PET)和融合图像中提取的特征应用 ComBat 调和以校正中心效应。对于特征选择,研究了最小绝对值收缩和选择算子(Lasso)和递归特征消除(RFE)。对于机器学习,评估了逻辑回归(LR)、支持向量机(SVM)和 AdaBoost 用于分类 NSCLC 亚型。在稳健框架中进行模型的训练和评估,以抵消合理的错误,并在调和前后报告使用曲线下面积、平衡准确性、敏感性和特异性的性能。使用 n 路方差分析评估不同因素对模型性能的影响。
从调和后的 PET 特征集中通过递归特征消除选择特征的支持向量机在分类 NSCLC 组织病理学亚型方面表现最佳(曲线下面积=0.82)。尽管调和后 CT 图像的模型性能没有显著提高,但 PET 和基于导向滤波的融合特征特征的模型性能几乎都有显著提高。尽管图像模态和特征选择方法的选择对模型性能有效(方差分析 P 值<0.001),但机器学习和调和对性能没有显著改变(方差分析 P 值分别为 0.839 和 0.292)。
本研究证实了放射组学分析在 PET、CT 和混合图像上用于 NSCLC 亚型组织病理学分类的潜力。