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A Bayesian nonrigid registration method to enhance intraoperative target definition in image-guided prostate procedures through uncertainty characterization

机译:贝叶斯非刚性配准方法可通过不确定性表征增强图像引导前列腺手术中的术中目标定义

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Purpose: This study introduces a probabilistic nonrigid registration method for use in image-guided prostate brachytherapy. Intraoperative imaging for prostate procedures, usually transrectal ultrasound (TRUS), is typically inferior to diagnostic-quality imaging of the pelvis such as endorectal magnetic resonance imaging (MRI). MR images contain superior detail of the prostate boundaries and provide substructure features not otherwise visible. Previous efforts to register diagnostic prostate images with the intraoperative coordinate system have been deterministic and did not offer a measure of the registration uncertainty. The authors developed a Bayesian registration method to estimate the posterior distribution on deformations and provide a case-specific measure of the associated registration uncertainty. Methods: The authors adapted a biomechanical-based probabilistic nonrigid method to register diagnostic to intraoperative images by aligning a physicians segmentations of the prostate in the two images. The posterior distribution was characterized with a Markov Chain Monte Carlo method; the maximum a posteriori deformation and the associated uncertainty were estimated from the collection of deformation samples drawn from the posterior distribution. The authors validated the registration method using a dataset created from ten patients with MRI-guided prostate biopsies who had both diagnostic and intraprocedural 3 Tesla MRI scans. The accuracy and precision of the estimated posterior distribution on deformations were evaluated from two predictive distance distributions: between the deformed central zone-peripheral zone (CZ-PZ) interface and the physician-labeled interface, and based on physician-defined landmarks. Geometric margins on the registration of the prostates peripheral zone were determined from the posterior predictive distance to the CZ-PZ interface separately for the base, mid-gland, and apical regions of the prostate. Results: The authors observed variation in the shape and volume of the segmented prostate in diagnostic and intraprocedural images. The probabilistic method allowed us to convey registration results in terms of posterior distributions, with the dispersion providing a patient-specific estimate of the registration uncertainty. The median of the predictive distance distribution between the deformed prostate boundary and the segmented boundary was 3 mm (95th percentiles within ±4 mm) for all ten patients. The accuracy and precision of the internal deformation was evaluated by comparing the posterior predictive distance distribution for the CZ-PZ interface for each patient, with the median distance ranging from -0.6 to 2.4 mm. Posterior predictive distances between naturally occurring landmarks showed registration errors of 5 mm in any direction. The uncertainty was not a global measure, but instead was local and varied throughout the registration region. Registration uncertainties were largest in the apical region of the prostate. Conclusions: Using a Bayesian nonrigid registration method, the authors determined the posterior distribution on deformations between diagnostic and intraprocedural MR images and quantified the uncertainty in the registration results. The feasibility of this approach was tested and results were positive. The probabilistic framework allows us to evaluate both patient-specific and location-specific estimates of the uncertainty in the registration result. Although the framework was tested on MR-guided procedures, the preliminary results suggest that it may be applied to TRUS-guided procedures as well, where the addition of diagnostic MR information may have a larger impact on target definition and clinical guidance.
机译:目的:本研究介绍了一种用于图像引导前列腺近距离放射治疗的概率非刚性配准方法。前列腺手术的术中影像检查通常是经直肠超声(TRUS),通常不如骨盆的诊断质量影像检查,例如直肠内磁共振成像(MRI)。 MR图像包含前列腺边界的优越细节,并提供了其他方式看不见的亚结构特征。先前使用术中坐标系配准诊断性前列腺影像的努力是确定性的,并未提供配准不确定性的度量。作者开发了一种贝叶斯配准方法,以估计变形的后验分布,并提供特定案例的相关配准不确定性度量。方法:作者采用了一种基于生物力学的概率非刚性方法,通过对齐医生在两个图像中对前列腺的分割来对术中图像进行诊断登记。后分布采用马尔可夫链蒙特卡罗方法进行表征。最大后验变形和相关的不确定性是根据从后验分布中得出的变形样本的集合来估计的。作者使用由十名接受MRI指导的前列腺活检的患者创建的数据集验证了注册方法,该患者同时进行了诊断和过程内3 Tesla MRI扫描。从两个预测的距离分布中评估了变形后估计分布的准确性和精度:在变形的中心区域-外围区域(CZ-PZ)接口和医师标记的接口之间,以及基于医师定义的界标。分别从前列腺的底部,中部腺体和根尖区域到CZ-PZ界面的后预测距离确定前列腺周围区域配准的几何边界。结果:作者在诊断和过程中的图像中观察到了前列腺分割后的形状和体积的变化。概率方法使我们能够根据后验分布传达配准结果,而离散度则提供了针对患者的配准不确定性的特定估计。对于所有十例患者,变形的前列腺边界与分割的边界之间的预测距离分布的中位数为3 mm(±4 mm内的第95个百分位)。通过比较每位患者CZ-PZ界面的后预测距离分布来评估内部变形的准确性和精确度,中位距离范围为-0.6至2.4 mm。自然界标之间的后验预测距离表明,在任何方向上的配准误差均为5 mm。不确定性不是全局性度量,而是局部性的,并且在整个注册区域中都存在差异。配准不确定性在前列腺的顶端区域最大。结论:使用贝叶斯非刚性配准方法,作者确定了诊断和过程内MR图像之间变形的后验分布,并量化了配准结果的不确定性。测试了这种方法的可行性,结果是肯定的。概率框架使我们能够评估注册结果不确定性的患者特定和位置特定的估计。尽管该框架已在MR指导的程序上进行了测试,但初步结果表明,该框架也可用于TRUS指导的程序,其中,附加的MR诊断信息可能会对目标定义和临床指导产生更大的影响。

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