Shapira Nadav, Donovan Kevin, Mei Kai, Geagan Michael, Roshkovan Leonid, Litt Harold I, Gang Grace J, Stayman J Webster, Shinohara Russell T, Noël Peter B
Department of Radiology, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA.
Department of Biostatistics, Epidemiology and Informatics, University of Pennsylvania, Philadelphia, PA, USA.
Proc SPIE Int Soc Opt Eng. 2022 Feb-Mar;12031. doi: 10.1117/12.2611805. Epub 2022 Apr 4.
Phantoms are essential tools for assessing and verifying performance in computed tomography (CT). Realistic patient-based lung phantoms that accurately represent textures and densities are essential in developing and evaluating novel CT hardware and software. This study introduces PixelPrint, a 3D-printing solution to create patient-specific lung phantoms with accurate contrast and textures. PixelPrint converts patient images directly into printer instructions, where density is modeled as the ratio of filament to voxel volume to emulate local attenuation values. For evaluation of PixelPrint, phantoms based on four COVID-19 pneumonia patients were manufactured and scanned with the original (clinical) CT scanners and protocols. Density and geometrical accuracies between phantom and patient images were evaluated for various anatomical features in the lung, and a radiomic feature comparison was performed for mild, moderate, and severe COVID-19 pneumonia patient-based phantoms. Qualitatively, CT images of the patient-based phantoms closely resemble the original CT images, both in texture and contrast levels, with clearly visible vascular and parenchymal structures. Regions-of-interest (ROIs) comparing attenuation demonstrated differences below 15 HU. Manual size measurements performed by an experienced thoracic radiologist revealed a high degree of geometrical correlation between identical patient and phantom features, with differences smaller than the intrinsic spatial resolution of the images. Radiomic feature analysis revealed high correspondence, with correlations of 0.95-0.99 between patient and phantom images. Our study demonstrates the feasibility of 3D-printed patient-based lung phantoms with accurate geometry, texture, and contrast that will enable protocol optimization, CT research and development advancements, and generation of ground-truth datasets for radiomic evaluations.
体模是评估和验证计算机断层扫描(CT)性能的重要工具。逼真的基于患者的肺部体模,能够准确呈现纹理和密度,对于开发和评估新型CT硬件及软件至关重要。本研究介绍了PixelPrint,这是一种3D打印解决方案,可创建具有精确对比度和纹理的患者特异性肺部体模。PixelPrint将患者图像直接转换为打印机指令,其中密度被建模为细丝与体素体积的比率,以模拟局部衰减值。为了评估PixelPrint,制作了基于四名新冠肺炎患者的体模,并使用原始(临床)CT扫描仪和协议进行扫描。评估了肺部各种解剖特征在体模和患者图像之间的密度和几何精度,并对基于轻度、中度和重度新冠肺炎患者的体模进行了放射组学特征比较。定性地说,基于患者的体模的CT图像在纹理和对比度水平上都与原始CT图像非常相似,血管和实质结构清晰可见。比较衰减的感兴趣区域(ROI)显示差异低于15 HU。由经验丰富的胸部放射科医生进行的手动尺寸测量表明,相同患者和体模特征之间存在高度的几何相关性,差异小于图像的固有空间分辨率。放射组学特征分析显示高度对应,患者和体模图像之间的相关性为0.95 - 0.99。我们的研究证明了具有精确几何形状、纹理和对比度的3D打印基于患者的肺部体模的可行性,这将有助于协议优化、CT研发进展以及生成用于放射组学评估的真实数据集。