首页> 美国卫生研究院文献>Medical Physics >Validation of an algorithm for the nonrigid registration of longitudinal breast MR images using realistic phantoms
【2h】

Validation of an algorithm for the nonrigid registration of longitudinal breast MR images using realistic phantoms

机译:使用真实模型对纵向乳腺MR图像进行非刚性配准的算法的验证

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

>Purpose: The authors present a method to validate coregistration of breast magnetic resonance images obtained at multiple time points during the course of treatment. In performing sequential registration of breast images, the effects of patient repositioning, as well as possible changes in tumor shape and volume, must be considered. The authors accomplish this by extending the adaptive bases algorithm (ABA) to include a tumor-volume preserving constraint in the cost function. In this study, the authors evaluate this approach using a novel validation method that simulates not only the bulk deformation associated with breast MR images obtained at different time points, but also the reduction in tumor volume typically observed as a response to neoadjuvant chemotherapy.>Methods: For each of the six patients, high-resolution 3D contrast enhanced T1-weighted images were obtained before treatment, after one cycle of chemotherapy and at the conclusion of chemotherapy. To evaluate the effects of decreasing tumor size during the course of therapy, simulations were run in which the tumor in the original images was contracted by 25%, 50%, 75%, and 95%, respectively. The contracted area was then filled using texture from local healthy appearing tissue. Next, to simulate the post-treatment data, the simulated (i.e., contracted tumor) images were coregistered to the experimentally measured post-treatment images using a surface registration. By comparing the deformations generated by the constrained and unconstrained version of ABA, the authors assessed the accuracy of the registration algorithms. The authors also applied the two algorithms on experimental data to study the tumor volume changes, the value of the constraint, and the smoothness of transformations.>Results: For the six patient data sets, the average voxel shift error (mean±standard deviation) for the ABA with constraint was 0.45±0.37, 0.97±0.83, 1.43±0.96, and 1.80±1.17 mm for the 25%, 50%, 75%, and 95% contraction simulations, respectively. In comparison, the average voxel shift error for the unconstrained ABA was 0.46±0.29, 1.13±1.17, 2.40±2.04, and 3.53±2.89 mm, respectively. These voxel shift errors translate into compression of the tumor volume: The ABA with constraint returned volumetric errors of 2.70±4.08%, 7.31±4.52%, 9.28±5.55%, and 13.19±6.73% for the 25%, 50%, 75%, and 95% contraction simulations, respectively, whereas the unconstrained ABA returned volumetric errors of 4.00±4.46%, 9.93±4.83%, 19.78±5.657%, and 29.75±15.18%. The ABA with constraint yields a smaller mean shift error, as well as a smaller volume error (p=0.031 25 for the 75% and 95% contractions), than the unconstrained ABA for the simulated sets. Visual and quantitative assessments on experimental data also indicate a good performance of the proposed algorithm.>Conclusions: The ABA with constraint can successfully register breast MR images acquired at different time points with reasonable error. To the best of the authors’ knowledge, this is the first report of an attempt to quantitatively assess in both phantoms and a set of patients the accuracy of a registration algorithm for this purpose.
机译:>目的:作者提出了一种方法来验证在治疗过程中多个时间点获得的乳房磁共振图像的共容性。在进行乳房图像的顺序配准时,必须考虑患者重新定位的影响以及肿瘤形状和体积的可能变化。作者通过扩展自适应基础算法(ABA)在成本函数中包括保留肿瘤体积的约束条件来实现这一目标。在这项研究中,作者使用一种新颖的验证方法对这种方法进行了评估,该方法不仅模拟与在不同时间点获得的乳房MR图像相关的体积变形,而且还模拟了对新辅助化疗的反应通常观察到的肿瘤体积的减小。 >方法:对于六例患者,在治疗前,一个化疗周期后和化疗结束时,均获得高分辨率的3D对比度增强的T1加权图像。为了评估在治疗过程中减小肿瘤尺寸的效果,进行了模拟,其中原始图像中的肿瘤分别缩小了25%,50%,75%和95%。然后使用局部健康出现组织的纹理填充收缩区域。接下来,为了模拟治疗后数据,使用表面配准将模拟的(即,收缩的肿瘤)图像共配准到实验测量的治疗后图像。通过比较受约束和不受约束的ABA版本产生的变形,作者评估了配准算法的准确性。作者还将这两种算法应用于实验数据,以研究肿瘤体积变化,约束值和转换的平滑度。>结果:对于六个患者数据集,平均体素移位误差对于25%,50%,75%和95%的收缩模拟,约束约束的ABA(平均值±标准偏差)分别为0.45±0.37、0.97±0.83、1.43±0.96和1.80±1.17 mm。相比之下,不受约束的ABA的平均体素偏移误差分别为0.46±0.29、1.13±1.17、2.40±2.04和3.53±2.89 mm。这些体素移位误差转化为肿瘤体积的压缩:约束约束的ABA返回体积误差为2.70±4.08%,7.31±4.52%,9.28±5.55%和13.19±6.73%,其中25%,50%,75%和收缩模拟分别为95%和95%,而不受约束的ABA返回的体积误差为4.00±4.46%,9.93±4.83%,19.78±5.657%和29.75±15.18%。与模拟组的无约束ABA相比,具有约束的ABA产生的平均偏移误差较小,体积误差较小(对于75%和95%的收缩,p = 0.031 25)。对实验数据的视觉和定量评估也表明了该算法的良好性能。>结论:具有约束条件的ABA可以成功地记录在不同时间点采集的乳房MR图像,且具有合理的误差。据作者所知,这是首次尝试在体模和一组患者中定量评估配准算法的准确性的第一份报告。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
代理获取

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号