Dunning Chelsea A S, Rajendran Kishore, Fletcher Joel G, McCollough Cynthia H, Leng Shuai
Department of Radiology, Mayo Clinic, Rochester MN USA 55905-0001.
Proc SPIE Int Soc Opt Eng. 2022 Feb-Mar;12032. doi: 10.1117/12.2612229. Epub 2022 Apr 4.
Radiomics is a promising mathematical tool for characterizing disease and predicting clinical outcomes from radiological images such as CT. Photon-counting-detector (PCD) CT provides improved spatial resolution and dose efficiency relative to conventional energy-integrating-detector CT systems. Since improved spatial resolution enables visualization of smaller structures and more details that are not typically visible at routine resolution, it has a direct impact on textural features in CT images. Therefore, it is of clinical interest to quantify the impact of the improved spatial resolution on calculated radiomic features and, consequently, on sample classification. In this work, organic samples (zucchini, onions, and oranges) were scanned on both clinical PCD-CT and EID-CT systems at two dose levels. High-resolution PCD-CT and routine-resolution EID-CT images were reconstructed using a dedicated sharp kernel and a routine kernel, respectively. The noise in each image was quantified. Fourteen radiomic features of relevance were calculated in each image for each sample and compared between the two scanners. Radiomic features were plotted pairwise to evaluate the resulting cluster separation of the samples by their type between PCD-CT and EID-CT. Thirteen out of 14 studied radiomic features were notably changed by the improved resolution of the PCD-CT system, and the cluster separation was better when assessing features derived from PCD-CT. These results show that features derived from high-resolution PCD-CT, which are subject to higher noise compared to EID-CT, may impact radiomics-based clinical decision making.
放射组学是一种很有前景的数学工具,可用于表征疾病并从CT等放射图像预测临床结果。与传统的能量积分探测器CT系统相比,光子计数探测器(PCD)CT具有更高的空间分辨率和剂量效率。由于提高的空间分辨率能够可视化在常规分辨率下通常不可见的较小结构和更多细节,因此它对CT图像中的纹理特征有直接影响。因此,量化提高的空间分辨率对计算出的放射组学特征以及对样本分类的影响具有临床意义。在这项工作中,对有机样本(西葫芦、洋葱和橙子)在临床PCD-CT和EID-CT系统上以两种剂量水平进行扫描。分别使用专用锐化内核和常规内核重建高分辨率PCD-CT图像和常规分辨率EID-CT图像。对每个图像中的噪声进行量化。为每个样本在每个图像中计算14个相关的放射组学特征,并在两台扫描仪之间进行比较。将放射组学特征成对绘制,以评估PCD-CT和EID-CT之间按样本类型划分的聚类分离情况。在研究的14个放射组学特征中,有13个因PCD-CT系统分辨率的提高而显著变化,并且在评估源自PCD-CT的特征时聚类分离效果更好。这些结果表明,与EID-CT相比,源自高分辨率PCD-CT且噪声较高的特征可能会影响基于放射组学的临床决策。