论文标题
使用贝叶斯深度学习伪CT和活动和衰减的最大似然估计PET/MRI的衰减系数估计
Attenuation Coefficient Estimation for PET/MRI With Bayesian Deep Learning pseudo-CT and Maximum Likelihood Estimation of Activity and Attenuation
论文作者
论文摘要
基于磁共振的衰减校正方法(MRAC)的主要剩余挑战是它们对MRI伪像的源(例如植入物,运动)和由于MRI对比的局限性(例如,准确的骨骼特定和密度,以及空气/骨的分离)引起的敏感性。我们建议使用贝叶斯深卷积神经网络,除了从MR数据中产生初始伪CT,还会产生伪CT的不确定性估计,以量化MR数据的局限性。这些输出与使用PET排放数据改善衰减图的MLAA重建相结合。通过提出的方法(UPCT-MLAA),我们证明了对骨盆病变中PET摄取的准确估计,并显示了金属植入物的恢复。在没有植入物的患者中,与CTAC相比,UPCT-MLAA的RMSE可接受但略高于零回波时间和Dixon Deep Pseudo-CT。在具有金属植入物的患者中,MLAA回收了金属植入物。然而,植入物区域以外的解剖学被噪声和串扰伪像遮盖了。来自Dixon MRI的伪CT的衰减系数在正常解剖结构中是准确的。但是,估计金属植入物区域具有空气的衰减系数。 UPCT-MLAA估计金属植入物的衰减系数以及植入区域之外的精确解剖描述。
A major remaining challenge for magnetic resonance-based attenuation correction methods (MRAC) is their susceptibility to sources of MRI artifacts (e.g. implants, motion) and uncertainties due to the limitations of MRI contrast (e.g. accurate bone delineation and density, and separation of air/bone). We propose using a Bayesian deep convolutional neural network that, in addition to generating an initial pseudo-CT from MR data, also produces uncertainty estimates of the pseudo-CT to quantify the limitations of the MR data. These outputs are combined with MLAA reconstruction that uses the PET emission data to improve the attenuation maps. With the proposed approach (UpCT-MLAA), we demonstrate accurate estimation of PET uptake in pelvic lesions and show recovery of metal implants. In patients without implants, UpCT-MLAA had acceptable but slightly higher RMSE than Zero-echo-time and Dixon Deep pseudo-CT when compared to CTAC. In patients with metal implants, MLAA recovered the metal implant; however, anatomy outside the implant region was obscured by noise and crosstalk artifacts. Attenuation coefficients from the pseudo-CT from Dixon MRI were accurate in normal anatomy; however, the metal implant region was estimated to have attenuation coefficients of air. UpCT-MLAA estimated attenuation coefficients of metal implants alongside accurate anatomic depiction outside of implant regions.