Department of Physics, Engineering Physics and Optics, Université Laval, Quebec City, G1V 0A6, Canada.
Department of Molecular Biology, Medical Biochemistry and Pathology, Université Laval, Quebec City, G1V 0A6, Canada.
Br J Radiol. 2024 Dec 1;97(1164):1982-1991. doi: 10.1093/bjr/tqae187.
Radiomics can predict patient outcomes by automatically extracting a large number of features from medical images. This study is aimed to investigate the sensitivity of radiomics features extracted from 2 different pipelines, namely, Pyradiomics and RaCat, as well as the impact of gray-level discretization on the discovery of immune checkpoint inhibitors (ICIs) biomarkers.
A retrospective cohort of 164 non-small cell lung cancer patients administered with ICIs was used in this study. Radiomic features were extracted from the pre-treatment CT scans. Univariate models were used to assess the association of common radiomics features between 2 libraries with progression-free survival (PFS), programmed death ligand 1 (PD-L1), and tumour infiltrating lymphocytes (CD8 counts). In addition, we also examined the impact of gray-level discretization incorporated in Pyradiomics on the robustness of features across various clinical endpoints.
We extracted 1224, 441 radiomic features using Pyradiomics and RaCat, respectively. Among these, 75 features were found to be common between the 2 libraries. Our analysis revealed that the directionality of association between radiomic features and clinical endpoints is highly dependent on the library. Notably, a larger number of Pyradiomics features were statistically associated with PFS, whereas RaCat features showed a stronger association with PD-L1 expression. Furthermore, intensity-based features were found to have a consistent association with clinical endpoints regardless of the gray-level discretization parameters in Pyradiomics-extracted features.
This study highlights the heterogeneity of radiomics libraries and the gray-level discretization parameters that will impact the feature selection and predictive model development for biomarkers. Importantly, our work highlights the significance of standardizing radiomic features to facilitate translational studies that use imaging as an endpoint.
Our study emphasizes the need to select stable CT-derived handcrafted features to build immunotherapy biomarkers, which is a necessary precursor for multi-institutional validation of imaging biomarkers.
放射组学可以通过自动从医学图像中提取大量特征来预测患者的预后。本研究旨在探讨从两种不同管道(即 Pyradiomics 和 RaCat)提取的放射组学特征的敏感性,以及灰度离散化对免疫检查点抑制剂(ICI)生物标志物发现的影响。
本研究使用了 164 名接受 ICI 治疗的非小细胞肺癌患者的回顾性队列。从预处理 CT 扫描中提取放射组学特征。使用单变量模型评估两种库之间常见放射组学特征与无进展生存期(PFS)、程序性死亡配体 1(PD-L1)和肿瘤浸润淋巴细胞(CD8 计数)之间的关联。此外,我们还检查了 Pyradiomics 中纳入的灰度离散化对各种临床终点特征稳健性的影响。
我们分别使用 Pyradiomics 和 RaCat 提取了 1224、441 个放射组学特征。其中,有 75 个特征在两个库中是共同的。我们的分析表明,放射组学特征与临床终点之间的关联方向高度依赖于库。值得注意的是,与 Pyradiomics 相比,更多的 Pyradiomics 特征与 PFS 呈统计学相关,而 RaCat 特征与 PD-L1 表达呈更强的相关性。此外,无论 Pyradiomics 提取特征的灰度离散化参数如何,基于强度的特征都与临床终点具有一致的相关性。
本研究强调了放射组学库的异质性和灰度离散化参数的影响,这些参数将影响生物标志物的特征选择和预测模型开发。重要的是,我们的工作强调了标准化放射组学特征的必要性,以促进使用成像作为终点的转化研究。
本研究强调需要选择稳定的 CT 衍生手工特征来构建免疫治疗生物标志物,这是对成像生物标志物进行多机构验证的必要前提。