Yang Zhenyu, Lafata Kyle J, Chen Xinru, Bowsher James, Chang Yushi, Wang Chunhao, Yin Fang-Fang
Department of Radiation Oncology, Duke University Medical Center, Durham, North Carolina, USA.
Medical Physics Graduate Program, Duke Kunshan University, Kunshan, Jiangsu, China.
Med Phys. 2022 Nov;49(11):7278-7286. doi: 10.1002/mp.15837. Epub 2022 Jul 10.
To develop a radiomics filtering technique for characterizing spatial-encoded regional pulmonary ventilation information on lung computed tomography (CT).
The lung volume was segmented on 46 CT images, and a 3D sliding window kernel was implemented across the lung volume to capture the spatial-encoded image information. Fifty-three radiomic features were extracted within the kernel, resulting in a fourth-order tensor object. As such, each voxel coordinate of the original lung was represented as a 53-dimensional feature vector, such that radiomic features could be viewed as feature maps within the lungs. To test the technique as a potential pulmonary ventilation biomarker, the radiomic feature maps were compared to paired functional images (Galligas PET or DTPA-SPECT) based on the Spearman correlation (ρ) analysis.
The radiomic feature maps GLRLM-based Run-Length Non-Uniformity and GLCOM-based Sum Average are found to be highly correlated with the functional imaging. The achieved ρ (median [range]) for the two features are 0.46 [0.05, 0.67] and 0.45 [0.21, 0.65] across 46 patients and 2 functional imaging modalities, respectively.
The results provide evidence that local regions of sparsely encoded heterogeneous lung parenchyma on CT are associated with diminished radiotracer uptake and measured lung ventilation defects on PET/SPECT imaging. These findings demonstrate the potential of radiomics to serve as a complementary tool to the current lung quantification techniques and provide hypothesis-generating data for future studies.
开发一种放射组学过滤技术,用于在肺部计算机断层扫描(CT)上表征空间编码的区域肺通气信息。
在46幅CT图像上分割肺体积,并在整个肺体积上实施三维滑动窗口内核,以捕获空间编码的图像信息。在内核内提取53个放射组学特征,得到一个四阶张量对象。因此,原始肺的每个体素坐标都表示为一个53维特征向量,使得放射组学特征可以被视为肺内的特征图。为了测试该技术作为潜在的肺通气生物标志物,基于斯皮尔曼相关性(ρ)分析,将放射组学特征图与配对的功能图像(加利加斯PET或二乙三胺五乙酸单光子发射计算机断层扫描)进行比较。
发现基于灰度游程长度矩阵的游程长度非均匀性和基于灰度共生矩阵的和平均值的放射组学特征图与功能成像高度相关。在46名患者和两种功能成像模式下,这两个特征的ρ(中位数[范围])分别为0.46[0.05,0.67]和0.45[0.21,0.65]。
结果表明,CT上稀疏编码的异质性肺实质局部区域与PET/SPECT成像上放射性示踪剂摄取减少和测量的肺通气缺陷相关。这些发现证明了放射组学作为当前肺定量技术的补充工具的潜力,并为未来研究提供了产生假设的数据。