MADplots: A methodology for visualizing and characterizing energy-dependent attenuation of tissues in spectral computed tomography

Matthew A. Lewis PhD , Todd C. Soesbe PhD , Xinhui Duan PhD , Liran Goshen PhD , Yoad Yagil PhD , Shlomo Gotman MSc , Robert E. Lenkinski PhD
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Abstract

Rationale and objectives

A method for visualizing and analyzing the complete information contained in spectral CT scans using two-dimensional histograms (i.e. Material Attenuation Decomposition plots – MADplots) of the water-photoelectric attenuation versus water-scatter attenuation at the cohort (combination of multiple studies across patients), examination, series, slice, and organ/ROI levels is described.

Materials and methods

The appearance of a MADplot with several standard biological materials was predicted using ideal material properties available from NIST and the ICRU to generate a map for this non-spatial data space. Software tools were developed to generate MADplots as new DICOM series that facilitate spectral analysis. Illustrative examples were selected from an IRB-approved, retrospective cohort of Spectral Basis Images (SBIs) scanned using a pre-release, dual-layer detector spectral CT.

Results

By combining all of the voxels for contrast and non-contrast studies, the predicted appearance of the MADplot was confirmed. Locations of several kinds of tissue, the shape of the tissue distributions in normal lung, and the variations in the manner in which organ-specific MADplots change with pathology are demonstrated for the presence of fat in both the liver and pancreas highlighting the potential use for identifying pathologies on spectral CT images.

Conclusions

The examples of MADplots shown at cohort (combined studies), examination, series, slice, organ, and ROI levels illustrate their potential utility in analyzing and displaying spectral CT data. Future studies are directed at developing MADplot based organ segmentation and the automated detection and display of organ based pathologies.

MADplots:一种在光谱计算机断层扫描中对组织的能量依赖性衰减进行可视化和表征的方法
基本原理和目的描述了一种利用二维直方图(即材料衰减分解图- MADplots)在队列(跨患者的多个研究的组合)、检查、序列、切片和器官/ROI水平上对水光电衰减与水散射衰减进行可视化和分析光谱CT扫描中包含的完整信息的方法。材料和方法使用NIST和ICRU提供的理想材料特性来为这个非空间数据空间生成地图,预测了具有几种标准生物材料的MADplot的出现。开发了软件工具来生成madplot作为新的DICOM系列,以促进光谱分析。从irb批准的光谱基础图像(sbi)回顾性队列中选择示例,使用预释放的双层检测器光谱CT扫描。结果通过将所有体素进行对比和非对比研究,证实了预测的MADplot外观。几种组织的位置,正常肺中组织分布的形状,以及器官特异性MADplots随病理变化的方式的变化,都证明了肝脏和胰腺中脂肪的存在,突出了在光谱CT图像上识别病理的潜在用途。在队列(联合研究)、检查、序列、切片、器官和ROI水平上显示的madplot示例说明了它们在分析和显示频谱CT数据方面的潜在用途。未来的研究方向是发展基于MADplot的器官分割和基于器官病理的自动检测和显示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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