Department of Electrical and Systems Engineering, Washington University, St. Louis, MO, 63130, USA.
Medical Physics Graduate Program, Department of Radiation Oncology, Virginia Commonwealth University, Richmond, VA, 23298, USA.
Med Phys. 2019 Jan;46(1):273-285. doi: 10.1002/mp.13287. Epub 2018 Dec 4.
To experimentally commission a dual-energy CT (DECT) joint statistical image reconstruction (JSIR) method, which is built on a linear basis vector model (BVM) of material characterization, for proton stopping power ratio (SPR) estimation.
The JSIR-BVM method builds on the relationship between the energy-dependent photon attenuation coefficients and the proton stopping power via a pair of BVM component weights. The two BVM component images are simultaneously reconstructed from the acquired DECT sinograms and then used to predict the electron density and mean excitation energy (I-value), which are required by the Bethe equation for SPR computation. A post-reconstruction image-based DECT method, which utilizes the two separate CT images reconstructed via the scanner's software, was implemented for comparison. The DECT measurement data were acquired on a Philips Brilliance scanner at 90 and 140 kVp for two phantoms of different sizes. Each phantom contains 12 different soft and bony tissue surrogates with known compositions. The SPR estimation results were compared to the reference values computed from the known compositions. The difference of the computed water equivalent path lengths (WEPL) across the phantoms between the two methods was also compared.
The overall root-mean-square (RMS) of SPR estimation error of the JSIR-BVM method are 0.33% and 0.37% for the head- and body-sized phantoms, respectively, and all SPR estimates of the test samples are within 0.7% of the reference ground truth. The image-based method achieves overall RMS errors of 2.35% and 2.50% for the head- and body-sized phantoms, respectively. The JSIR-BVM method also reduces the pixel-wise random variation by 4-fold to 6-fold within homogeneous regions compared to the image-based method. The average differences between the JSIR-BVM method and the image-based method are 0.54% and 1.02% for the head- and body-sized phantoms, respectively.
By taking advantage of an accurate polychromatic CT data model and a model-based DECT statistical reconstruction algorithm, the JSIR-BVM method accounts for both systematic bias and random noise in the acquired DECT measurement data. Therefore, the JSIR-BVM method achieves good accuracy and precision on proton SPR estimation for various tissue surrogates and object sizes. In contrast, the experimentally achievable accuracy of the image-based method may be limited by the uncertainties in the image formation process. The result suggests that the JSIR-BVM method has the potential for more accurate SPR prediction compared to post-reconstruction image-based methods in clinical settings.
实验验证一种基于线性基向量模型(BVM)的材料特性的双能 CT(DECT)联合统计图像重建(JSIR)方法,用于质子阻止比(SPR)估计。
JSIR-BVM 方法基于能量相关的光子衰减系数与质子阻止能力之间的关系,通过一对 BVM 分量权重建立。从采集的 DECT 正弦图中同时重建两个 BVM 分量图像,然后用于预测电子密度和平均激发能(I 值),这些值是 SPR 计算所需的贝塞方程的要求。实施了一种基于重建后图像的 DECT 方法,该方法利用扫描仪软件重建的两个独立 CT 图像进行比较。在飞利浦 Brilliance 扫描仪上以 90 和 140 kVp 采集两个不同尺寸的体模的 DECT 测量数据。每个体模包含 12 种不同的软组织和骨组织替代物,具有已知的成分。将 SPR 估计结果与从已知成分计算出的参考值进行比较。还比较了两种方法在体模之间计算的水当量路径长度(WEPL)的差异。
JSIR-BVM 方法对头部和身体大小体模的 SPR 估计误差的整体均方根(RMS)分别为 0.33%和 0.37%,测试样本的所有 SPR 估计值均在参考真值的 0.7%以内。基于图像的方法对头部和身体大小的体模的整体 RMS 误差分别为 2.35%和 2.50%。与基于图像的方法相比,JSIR-BVM 方法还将同质区域内的像素随机变化降低了 4 倍至 6 倍。JSIR-BVM 方法与基于图像的方法的平均差异分别为头部和身体大小体模的 0.54%和 1.02%。
通过利用准确的多色 CT 数据模型和基于模型的 DECT 统计重建算法,JSIR-BVM 方法可以解释采集的 DECT 测量数据中的系统偏差和随机噪声。因此,该方法可以在各种组织替代物和物体尺寸上实现质子 SPR 估计的良好准确性和精密度。相比之下,基于图像的方法的实际可实现精度可能受到图像形成过程不确定性的限制。结果表明,与临床环境中的基于重建后图像的方法相比,JSIR-BVM 方法在 SPR 预测方面具有更高的准确性。