Gang Grace J, Stayman J Webster
Department of Biomedical Engineering, Johns Hopkins University, Baltimore, Maryland, U.S.A.
Proc SPIE Int Soc Opt Eng. 2018 Feb;10573. doi: 10.1117/12.2294950. Epub 2018 Mar 9.
This work investigates task-driven optimization of fluence field modulation (FFM) and regularization for model-based iterative reconstruction (MBIR) when different imaging tasks are presented by different organs. Example applications of the design framework were demonstrated in an abdomen phantom where the task of interest in the liver is a low-contrast, low-frequency detection task while that in the kidney is a high-contrast, high-frequency discrimination task. The global performance objective is based on maximizing local detectability index (') at a discrete set of locations. Two objective functions were formulated based on different imaging needs: 1) a maxi-min objective where all tasks are equally important, and 2) a region-of-interest (ROI) objective to maximize imaging performance in an ROI while maintaining a minimum level of performance elsewhere. The FFM pattern for the maxi-min objective is determined by the most challenging task in the liver where both angular and spatial modulation resulted in a ~35% improvement in ' compared to an unmodulated case. The FFM for the ROI objective prescribes the most fluence to the organs of interest, boosting ' by ~59%, but manages to achieve the minimum ' target elsewhere. A spatially varying regularization was found to be important when tasks of different frequency content are present in different parts of the image - the optimal regularization strength for the two studied tasks differed by two orders of magnitude. Initial investigations in this work demonstrated that a multi-task objective is potentially important in shaping the optimal FFM and MBIR regularization, and that these tools may help to generalize task-based acquisition and reconstruction design for more complex diagnostic scenarios.
这项工作研究了在不同器官呈现不同成像任务时,基于模型的迭代重建(MBIR)中注量场调制(FFM)和正则化的任务驱动优化。在腹部体模中展示了该设计框架的示例应用,其中肝脏的感兴趣任务是低对比度、低频检测任务,而肾脏的感兴趣任务是高对比度、高频辨别任务。全局性能目标基于在一组离散位置上最大化局部可检测性指数(')。基于不同的成像需求制定了两个目标函数:1)一个最大最小目标,其中所有任务同等重要;2)一个感兴趣区域(ROI)目标,以在ROI中最大化成像性能,同时在其他地方保持最低性能水平。最大最小目标的FFM模式由肝脏中最具挑战性的任务决定,与未调制情况相比,角度和空间调制均使'提高了约35%。ROI目标的FFM将最大注量分配给感兴趣器官,使'提高了约59%,但在其他地方设法达到了最低'目标。当图像不同部分存在不同频率内容的任务时,发现空间变化正则化很重要——所研究的两个任务的最佳正则化强度相差两个数量级。这项工作的初步研究表明,多任务目标在塑造最佳FFM和MBIR正则化方面可能很重要,并且这些工具可能有助于推广基于任务的采集和重建设计,以用于更复杂的诊断场景。