Kim Kyungsang, Lee Taewon, Seong Younghun, Lee Jongha, Jang Kwang Eun, Choi Jaegu, Choi Young Wook, Kim Hak Hee, Shin Hee Jung, Cha Joo Hee, Cho Seungryong, Ye Jong Chul
Bio Imaging and Signal Processing Laboratory, Department of Bio and Brain Engineering, KAIST 291, Daehak-ro, Yuseong-gu, Daejeon 34141, South Korea.
Medical Imaging and Radiotherapeutics Laboratory, Department of Nuclear and Quantum Engineering, KAIST 291, Daehak-ro, Yuseong-gu, Daejeon 34141, South Korea.
Med Phys. 2015 Sep;42(9):5342-55. doi: 10.1118/1.4928139.
In digital breast tomosynthesis (DBT), scatter correction is highly desirable, as it improves image quality at low doses. Because the DBT detector panel is typically stationary during the source rotation, antiscatter grids are not generally compatible with DBT; thus, a software-based scatter correction is required. This work proposes a fully iterative scatter correction method that uses a novel fast Monte Carlo simulation (MCS) with a tissue-composition ratio estimation technique for DBT imaging.
To apply MCS to scatter estimation, the material composition in each voxel should be known. To overcome the lack of prior accurate knowledge of tissue composition for DBT, a tissue-composition ratio is estimated based on the observation that the breast tissues are principally composed of adipose and glandular tissues. Using this approximation, the composition ratio can be estimated from the reconstructed attenuation coefficients, and the scatter distribution can then be estimated by MCS using the composition ratio. The scatter estimation and image reconstruction procedures can be performed iteratively until an acceptable accuracy is achieved. For practical use, (i) the authors have implemented a fast MCS using a graphics processing unit (GPU), (ii) the MCS is simplified to transport only x-rays in the energy range of 10-50 keV, modeling Rayleigh and Compton scattering and the photoelectric effect using the tissue-composition ratio of adipose and glandular tissues, and (iii) downsampling is used because the scatter distribution varies rather smoothly.
The authors have demonstrated that the proposed method can accurately estimate the scatter distribution, and that the contrast-to-noise ratio of the final reconstructed image is significantly improved. The authors validated the performance of the MCS by changing the tissue thickness, composition ratio, and x-ray energy. The authors confirmed that the tissue-composition ratio estimation was quite accurate under a variety of conditions. Our GPU-based fast MCS implementation took approximately 3 s to generate each angular projection for a 6 cm thick breast, which is believed to make this process acceptable for clinical applications. In addition, the clinical preferences of three radiologists were evaluated; the preference for the proposed method compared to the preference for the convolution-based method was statistically meaningful (p < 0.05, McNemar test).
The proposed fully iterative scatter correction method and the GPU-based fast MCS using tissue-composition ratio estimation successfully improved the image quality within a reasonable computational time, which may potentially increase the clinical utility of DBT.
在数字乳腺断层合成(DBT)中,散射校正非常必要,因为它能在低剂量下提高图像质量。由于在源旋转过程中DBT探测器面板通常是固定的,反散射网格一般与DBT不兼容;因此,需要基于软件的散射校正方法。本文提出一种完全迭代的散射校正方法,该方法在DBT成像中使用一种新颖的快速蒙特卡罗模拟(MCS)以及组织成分比估计技术。
为了将MCS应用于散射估计,需要知道每个体素中的物质成分。为了克服DBT缺乏组织成分的先验准确知识这一问题,基于乳腺组织主要由脂肪组织和腺体组织组成这一观察结果来估计组织成分比。利用这种近似方法,可以从重建的衰减系数估计成分比,然后使用成分比通过MCS估计散射分布。散射估计和图像重建过程可以迭代执行,直到达到可接受的精度。为了实际应用,(i)作者使用图形处理单元(GPU)实现了一种快速MCS,(ii)将MCS简化为仅传输能量范围在10 - 50 keV的X射线,利用脂肪组织和腺体组织的组织成分比来模拟瑞利散射、康普顿散射和光电效应,(iii)由于散射分布变化相当平滑,所以使用了下采样。
作者证明了所提出的方法能够准确估计散射分布,并且最终重建图像的对比度噪声比得到了显著提高。作者通过改变组织厚度、成分比和X射线能量来验证MCS的性能。作者确认在各种条件下组织成分比估计都相当准确。对于一个6厘米厚的乳腺,基于我们GPU的快速MCS实现大约需要3秒来生成每个角度投影,这被认为使得这个过程对于临床应用是可接受的。此外,评估了三位放射科医生的临床偏好;与基于卷积的方法相比,对所提出方法的偏好具有统计学意义(p < 0.05,McNemar检验)。
所提出的完全迭代散射校正方法以及使用组织成分比估计的基于GPU的快速MCS在合理的计算时间内成功提高了图像质量,这可能会增加DBT的临床应用价值。