Ghose Soumya, Greer Peter B, Sun Jidi, Pichler Peter, Rivest-Henault David, Mitra Jhimli, Richardson Haylea, Wratten Chris, Martin Jarad, Arm Jameen, Best Leah, Dowling Jason A
Department of Biomedical Engineering, Case Western Reserve University, Cleveland, OH, United States of America.
Phys Med Biol. 2017 Oct 27;62(22):8566-8580. doi: 10.1088/1361-6560/aa9104.
In MR only radiation therapy planning, generation of the tissue specific HU map directly from the MRI would eliminate the need of CT image acquisition and may improve radiation therapy planning. The aim of this work is to generate and validate substitute CT (sCT) scans generated from standard T2 weighted MR pelvic scans in prostate radiation therapy dose planning. A Siemens Skyra 3T MRI scanner with laser bridge, flat couch and pelvic coil mounts was used to scan 39 patients scheduled for external beam radiation therapy for localized prostate cancer. For sCT generation a whole pelvis MRI (1.6 mm 3D isotropic T2w SPACE sequence) was acquired. Patients received a routine planning CT scan. Co-registered whole pelvis CT and T2w MRI pairs were used as training images. Advanced tissue specific non-linear regression models to predict HU for the fat, muscle, bladder and air were created from co-registered CT-MRI image pairs. On a test case T2w MRI, the bones and bladder were automatically segmented using a novel statistical shape and appearance model, while other soft tissues were separated using an Expectation-Maximization based clustering model. The CT bone in the training database that was most 'similar' to the segmented bone was then transformed with deformable registration to create the sCT component of the test case T2w MRI bone tissue. Predictions for the bone, air and soft tissue from the separate regression models were successively combined to generate a whole pelvis sCT. The change in monitor units between the sCT-based plans relative to the gold standard CT plan for the same IMRT dose plan was found to be [Formula: see text] (mean ± standard deviation) for 39 patients. The 3D Gamma pass rate was [Formula: see text] (2 mm/2%). The novel hybrid model is computationally efficient, generating an sCT in 20 min from standard T2w images for prostate cancer radiation therapy dose planning and DRR generation.
在仅使用磁共振成像(MR)的放射治疗计划中,直接从MRI生成组织特异性的HU图将无需进行CT图像采集,并可能改善放射治疗计划。本研究的目的是在前列腺放射治疗剂量计划中,生成并验证从标准T2加权MR盆腔扫描生成的替代CT(sCT)扫描。使用配备激光桥、平板床和盆腔线圈支架的西门子Skyra 3T MRI扫描仪,对39例计划接受局部前列腺癌外照射放疗的患者进行扫描。为了生成sCT,采集了全盆腔MRI(1.6毫米3D各向同性T2w SPACE序列)。患者接受了常规计划CT扫描。将配准后的全盆腔CT和T2w MRI图像对用作训练图像。利用配准后的CT-MRI图像对,创建了用于预测脂肪、肌肉、膀胱和空气HU值的高级组织特异性非线性回归模型。在一个测试病例的T2w MRI上,使用一种新颖的统计形状和外观模型自动分割骨骼和膀胱,而使用基于期望最大化的聚类模型分离其他软组织。然后,通过可变形配准对训练数据库中与分割骨骼最“相似”的CT骨骼进行变换,以创建测试病例T2w MRI骨骼组织的sCT组件。将来自单独回归模型对骨骼、空气和软组织的预测结果依次组合,生成全盆腔sCT。对于39例患者,基于sCT的计划与相同调强放疗(IMRT)剂量计划的金标准CT计划之间的监测单位变化为[公式:见原文](平均值±标准差)。3D伽马通过率为[公式:见原文](2毫米/2%)。这种新颖的混合模型计算效率高,可在20分钟内从标准T2w图像生成用于前列腺癌放射治疗剂量计划和数字重建放射影像(DRR)生成的sCT。