Gomez-Cardona Daniel, Li Ke, Hsieh Jiang, Lubner Meghan G, Pickhardt Perry J, Chen Guang-Hong
Department of Medical Physics, University of Wisconsin-Madison School of Medicine and Public Health, 1111 Highland Avenue, Madison, Wisconsin 53705.
Department of Medical Physics, University of Wisconsin-Madison School of Medicine and Public Health, 1111 Highland Avenue, Madison, Wisconsin 53705 and Department of Radiology, University of Wisconsin-Madison School of Medicine and Public Health, 600 Highland Avenue, Madison, Wisconsin 53792.
Med Phys. 2016 Feb;43(2):687-95. doi: 10.1118/1.4939257.
Phantom-based objective image quality assessment methods are widely used in the medical physics community. For a filtered backprojection (FBP) reconstruction-based linear or quasilinear imaging system, the use of this methodology is well justified. Many key image quality metrics acquired with phantom studies can be directly applied to in vivo human subject studies. Recently, a variety of image quality metrics have been investigated for model-based iterative image reconstruction (MBIR) methods and several novel characteristics have been discovered in phantom studies. However, the following question remains unanswered: can certain results obtained from phantom studies be generalized to in vivo animal studies and human subject studies? The purpose of this paper is to address this question.
One of the most striking results obtained from phantom studies is a novel power-law relationship between noise variance of MBIR (σ(2)) and tube current-rotation time product (mAs): σ(2) ∝ (mAs)(-0.4) [K. Li et al., "Statistical model based iterative reconstruction (MBIR) in clinical CT systems: Experimental assessment of noise performance," Med. Phys. 41, 041906 (15pp.) (2014)]. To examine whether the same power-law works for in vivo cases, experimental data from two types of in vivo studies were analyzed in this paper. All scans were performed with a 64-slice diagnostic CT scanner (Discovery CT750 HD, GE Healthcare) and reconstructed with both FBP and a MBIR method (Veo, GE Healthcare). An Institutional Animal Care and Use Committee-approved in vivo animal study was performed with an adult swine at six mAs levels (10-290). Additionally, human subject data (a total of 110 subjects) acquired from an IRB-approved clinical trial were analyzed. In this clinical trial, a reduced-mAs scan was performed immediately following the standard mAs scan; the specific mAs used for the two scans varied across human subjects and were determined based on patient size and clinical indications. The measurements of σ(2) were performed at different mAs by drawing regions-of-interest (ROIs) in the liver and the subcutaneous fat. By applying a linear least-squares regression, the β values in the power-law relationship σ(2) ∝ (mAs)(-β) were measured for the in vivo data and compared with the value found in phantom experiments.
For the in vivo swine study, an exponent of β = 0.43 was found for MBIR, and the coefficient of determination (R(2)) for the corresponding least-squares power-law regression was 0.971. As a reference, the β and R(2) values for FBP were found to be 0.98 and 0.997, respectively, from the same study, which are consistent with the well-known σ(2) ∝ (mAs)(-1.0) relationship for linear CT systems. For the human subject study, the measured β values for the MBIR images were 0.41 ± 0.12 in the liver and 0.37 ± 0.12 in subcutaneous fat. In comparison, the β values for the FBP images were 1.04 ± 0.10 in the liver and 0.97 ± 0.12 in subcutaneous fat. The β values of MBIR and FBP obtained from the in vivo studies were found to be statistically equivalent to the corresponding β values from the phantom study within an equivalency interval of [ - 0.1, 0.1] (p < 0.05); across MBIR and FBP, the difference in β was statistically significant (p < 0.05).
Despite the nonlinear nature of the MBIR method, the power-law relationship, σ(2) ∝ (mAs)(-0.4), found from phantom studies can be applied to in vivo animal and human subject studies.
基于体模的客观图像质量评估方法在医学物理领域中被广泛使用。对于基于滤波反投影(FBP)重建的线性或准线性成像系统,这种方法的使用是完全合理的。通过体模研究获得的许多关键图像质量指标可以直接应用于人体活体研究。最近,针对基于模型的迭代图像重建(MBIR)方法,人们研究了各种图像质量指标,并在体模研究中发现了一些新特性。然而,以下问题仍未得到解答:从体模研究中获得的某些结果能否推广到动物活体研究和人体活体研究中?本文的目的就是解决这个问题。
体模研究中获得的最显著结果之一是MBIR的噪声方差(σ(2))与管电流 - 旋转时间乘积(mAs)之间存在一种新的幂律关系:σ(2) ∝ (mAs)(-0.4) [K. Li等人,“临床CT系统中基于统计模型的迭代重建(MBIR):噪声性能的实验评估”,《医学物理》41, 041906(15页)(2014年)]。为了检验相同的幂律在活体情况下是否成立,本文分析了两种类型活体研究的实验数据。所有扫描均使用64层诊断CT扫描仪(Discovery CT750 HD,GE医疗)进行,并分别采用FBP和一种MBIR方法(Veo,GE医疗)进行重建。对一只成年猪进行了一项经机构动物护理和使用委员会批准的活体动物研究,扫描时设置了六个mAs水平(10 - 290)。此外,还分析了从一项经机构审查委员会批准的临床试验中获取的人体受试者数据(共110名受试者)。在该临床试验中,在标准mAs扫描后立即进行一次低剂量mAs扫描;两次扫描所使用的具体mAs因受试者个体差异而异,并根据患者体型和临床指征确定。通过在肝脏和皮下脂肪中绘制感兴趣区域(ROI)来测量不同mAs下的σ(2)。通过应用线性最小二乘回归,测量活体数据中幂律关系σ(2) ∝ (mAs)(-β)中的β值,并与体模实验中的值进行比较。
对于活体猪研究,发现MBIR的指数β = 0.43,相应的最小二乘幂律回归的决定系数(R(2))为0.971。作为参考,同一研究中FBP的β值和R(2)值分别为0.98和0.997,这与线性CT系统中众所周知的σ(2) ∝ (mAs)(-1.0)关系一致。对于人体受试者研究,MBIR图像在肝脏中的测量β值为0.41 ± 0.12,在皮下脂肪中的测量β值为0.37 ± 0.12。相比之下,FBP图像在肝脏中的β值为1.04 ± 0.10,在皮下脂肪中的β值为0.97 ± 0.12。发现在活体研究中获得的MBIR和FBP的β值在等效区间[-0.1, 0.1]内与体模研究中的相应β值在统计学上等效(p < 0.05);在MBIR和FBP之间,β的差异具有统计学意义(p < 0.05)。
尽管MBIR方法具有非线性特性,但从体模研究中发现的幂律关系σ(2) ∝ (mAs)(-0.4)可应用于动物活体研究和人体活体研究。