Ma Ya-Jun, Moazamian Dina, Cornfeld Daniel M, Condron Paul, Holdsworth Samantha J, Bydder Mark, Du Jiang, Bydder Graeme M
Department of Radiology, University of California San Diego, San Diego, CA, USA.
Mātai Medical Research Institute, Tairāwhiti-Gisborne, New Zealand.
Quant Imaging Med Surg. 2022 Sep;12(9):4658-4690. doi: 10.21037/qims-22-394.
This paper updates and extends three previous papers on tissue property filters (TP-filters), Multiplied, Added, Divided and/or Subtracted Inversion Recovery (MASTIR) pulse sequences and synergistic contrast MRI (scMRI). It does this by firstly adding the central contrast theorem (CCT) to TP-filters, secondly including division with MASTIR sequences to make them Multiplied, Added, Subtracted and/or Divided IR (MASDIR) sequences, and thirdly incorporating division into the image processing needed for scMR to increase synergistic T contrast. These updated concepts are then used to explain and improve contrast at tissue boundaries, as well as to develop imaging regimes to detect and monitor small changes to the brain over time and quantify T. The CCT is in two parts: the first part states that contrast produced by each TP is the product of the change in TP multiplied by the TP sequence weighting which is the first partial derivative of the TP-filter. The second part states that the overall fractional contrast is the algebraic sum of the fractional contrasts produced by each of the TPs. Subtraction of two IR sequences alone about doubles contrast relative to a conventional single IR sequence. Division of this subtraction can amplify contrast 5-15 times compared with conventional IR sequences. Dividing sequences can be problematic in areas where the signal is zero but this is avoided by dividing the difference in signal of two magnitude reconstructed IR sequences by the sum of their signals. The basis for the production of high contrast, high spatial resolution boundaries at white-gray matter junctions, between cerebral cortex and cerebrospinal fluid (CSF) and at other sites with subtracted IR (SIR) and divided subtracted IR (dSIR) sequences is explained and examples are shown. A key concept is the tissue fraction f, which is the proportion of a tissue in a mixture of two tissues within a voxel. Contrast at boundaries is a function of the partial derivative of the TP-filter, the partial derivative of the relevant TP with respect to f, and the partial derivative of f with respect to distance, x. Location of tissue boundaries is important for segmentation and is helpful in determining if inversion times have been chosen correctly. In small change regimes, the high sensitivity to small changes in T provided by dSIR images, together with the high definition boundaries, afford mechanisms for detecting small changes due to contrast agents, disease, perfusion and other causes. 3D isotropic rigid body registration provides a technique for following these changes over time in serial studies. Images showing high lesion contrast, high definition tissue and fluid boundaries, and the detection of small changes are included. T1 maps can be created by linearly scaling dSIR images.
本文更新并扩展了之前关于组织特性滤波器(TP滤波器)、乘加除和/或减法反转恢复(MASTIR)脉冲序列以及协同对比磁共振成像(scMRI)的三篇论文。具体做法如下:首先,将中心对比定理(CCT)添加到TP滤波器中;其次,在MASTIR序列中引入除法运算,使其成为乘加除和/或减法反转恢复(MASDIR)序列;第三,将除法运算纳入scMR所需的图像处理中,以增强协同T对比。然后,利用这些更新后的概念来解释和改善组织边界处的对比度,以及开发成像方案来检测和监测大脑随时间的微小变化并对T进行量化。CCT分为两部分:第一部分指出,每个TP产生的对比度是TP变化量乘以TP序列权重的乘积,TP序列权重是TP滤波器的一阶偏导数。第二部分指出,整体分数对比度是每个TP产生的分数对比度的代数和。仅对两个IR序列进行减法运算,相对于传统的单个IR序列,对比度大约会翻倍。与传统IR序列相比,对这种减法结果进行除法运算可将对比度放大5至15倍。在信号为零的区域,除法序列可能会出现问题,但通过将两个幅度重建的IR序列的信号差除以它们的信号和,可以避免这个问题。本文解释了在白质-灰质交界处、大脑皮层与脑脊液(CSF)之间以及其他使用减法IR(SIR)和除法减法IR(dSIR)序列的部位产生高对比度、高空间分辨率边界的基础,并给出了示例。一个关键概念是组织分数f,它是体素内两种组织混合物中一种组织的比例。边界处的对比度是TP滤波器的偏导数、相关TP相对于f的偏导数以及f相对于距离x的偏导数的函数。组织边界的定位对于分割很重要,并且有助于确定反转时间是否选择正确。在微小变化的情况下,dSIR图像对T的微小变化具有高灵敏度,再加上高清晰度的边界,为检测由造影剂、疾病、灌注和其他原因引起的微小变化提供了机制。三维各向同性刚体配准提供了一种在系列研究中随时间跟踪这些变化的技术。文中包含了显示高病变对比度、高清晰度组织和液体边界以及检测微小变化的图像。通过对dSIR图像进行线性缩放可以创建T1图。