Dang H, Stayman J W, Xu J, Sisniega A, Zbijewski W, Wang X, Foos D H, Aygun N, Koliatsos V E, Siewerdsen J H
The authors are with Johns Hopkins University, Baltimore, MD 21205 USA.
Conf Proc Int Conf Image Form Xray Comput Tomogr. 2016 Jul;2016:557-560.
Prompt and reliable detection of acute intracranial hemorrhage (ICH) is critical to treatment of a number of neurological disorders. Cone-beam CT (CBCT) systems are potentially suitable for detecting ICH (contrast 40-80 HU, size down to 1 mm) at the point of care but face major challenges in image quality requirements. Statistical reconstruction demonstrates improved noise-resolution tradeoffs in CBCT head imaging, but its capability in improving image quality with respect to the task of ICH detection remains to be fully investigated. Moreover, statistical reconstruction typically exhibits nonuniform spatial resolution and noise characteristics, leading to spatially varying detectability of ICH for a conventional penalty. In this work, we propose a spatially varying penalty design that maximizes detectability of ICH at each location throughout the image. We leverage theoretical analysis of spatial resolution and noise for a penalized weighted least-squares (PWLS) estimator, and employ a task-based imaging performance descriptor in terms of detectability index using a nonprewhitening observer model. Performance prediction was validated using a 3D anthropomorphic head phantom. The proposed penalty achieved superior detectability throughout the head and improved detectability in regions adjacent to the skull base by ~10% compared to a conventional uniform penalty. PWLS reconstruction with the proposed penalty demonstrated excellent visualization of simulated ICH in different regions of the head and provides further support for development of dedicated CBCT head scanning at the point-of-care in the neuro ICU and OR.
对多种神经系统疾病的治疗而言,及时且可靠地检测急性颅内出血(ICH)至关重要。锥束CT(CBCT)系统可能适用于在护理现场检测ICH(对比度为40 - 80 HU,大小低至1毫米),但在图像质量要求方面面临重大挑战。统计重建在CBCT头部成像中显示出在噪声分辨率权衡方面有所改善,但其在改善ICH检测任务的图像质量方面的能力仍有待充分研究。此外,统计重建通常表现出空间分辨率和噪声特性不均匀,导致对于传统惩罚项,ICH在空间上的可检测性存在差异。在这项工作中,我们提出一种空间可变惩罚设计,以在整个图像的每个位置最大化ICH的可检测性。我们利用对惩罚加权最小二乘(PWLS)估计器的空间分辨率和噪声的理论分析,并使用基于非白化观测器模型的可检测性指数,采用基于任务的成像性能描述符。使用三维人体头部模型验证了性能预测。与传统的均匀惩罚相比,所提出的惩罚在整个头部实现了更高的可检测性,并使颅底附近区域的可检测性提高了约10%。采用所提出惩罚的PWLS重建在头部不同区域对模拟ICH具有出色的可视化效果,并为在神经重症监护病房和手术室护理现场开发专用的CBCT头部扫描提供了进一步支持。