Quintero Paulo, Wu Can, Otazo Ricardo, Cervino Laura, Harris Wendy
Medical Physics Department, Memorial Sloan Kettering Cancer Center, New York, USA.
Med Phys. 2024 Dec;51(12):9194-9206. doi: 10.1002/mp.17347. Epub 2024 Aug 13.
Magnetic resonance-guided radiotherapy with an MR-guided LINAC represents potential clinical benefits in abdominal treatments due to the superior soft-tissue contrast compared to kV-based images in conventional treatment units. However, due to the high cost associated with this technology, only a few centers have access to it. As an alternative, synthetic 4D MRI generation based on artificial intelligence methods could be implemented. Nevertheless, appropriate MRI texture generation from CT images might be challenging and prone to hallucinations, compromising motion accuracy.
To evaluate the feasibility of on-board synthetic motion-resolved 4D MRI generation from prior 4D MRI, on-board 4D cone beam CT (CBCT) images, motion modeling information, and deep learning models using the digital anthropomorphic phantom XCAT.
The synthetic 4D MRI corresponds to phases from on-board 4D CBCT. Each synthetic MRI volume in the 4D MRI was generated by warping a reference 3D MRI (MRI, end of expiration phase from a prior 4D MRI) with a deformation field map (DFM) determined by (I) the eigenvectors from the principal component analysis (PCA) motion-modeling of the prior 4D MRI, and (II) the corresponding eigenvalues predicted by a convolutional neural network (CNN) model using the on-board 4D CBCT images as input. The CNN was trained with 1000 deformations of one reference CT (CT, same conditions as MRI) generated by applying 1000 DFMs computed by randomly sampling the original eigenvalues from the prior 4D MRI PCA model. The evaluation metrics for the CNN model were root-mean-square error (RMSE) and mean absolute error (MAE). Finally, different on-board 4D-MRI generation scenarios were assessed by changing the respiratory period, the amplitude of the diaphragm, and the chest wall motion of the 4D CBCT using normalized root-mean-square error (nRMSE) and structural similarity index measure (SSIM) for image-based evaluation, and volume dice coefficient (VDC), volume percent difference (VPD), and center-of-mass shift (COMS) for contour-based evaluation of liver and target volumes.
The RMSE and MAE values of the CNN model reported 0.012 ± 0.001 and 0.010 ± 0.001, respectively for the first eigenvalue predictions. SSIM and nRMSE were 0.96 ± 0.06 and 0.22 ± 0.08, respectively. VDC, VPD, and COMS were 0.92 ± 0.06, 3.08 ± 3.73 %, and 2.3 ± 2.1 mm, respectively, for the target volume. The more challenging synthetic 4D-MRI generation scenario was for one 4D-CBCT with increased chest wall motion amplitude, reporting SSIM and nRMSE of 0.82 and 0.51, respectively.
On-board synthetic 4D-MRI generation based on predicting actual treatment deformation from on-board 4D-CBCT represents a method that can potentially improve the treatment-setup localization in abdominal radiotherapy treatments with a conventional kV-based LINAC.
与传统治疗设备中基于千伏的图像相比,磁共振引导放疗与磁共振引导直线加速器相结合,在腹部治疗中具有潜在的临床优势,因为其软组织对比度更高。然而,由于这项技术成本高昂,只有少数中心能够使用。作为一种替代方案,可以实施基于人工智能方法的合成4D MRI生成。尽管如此,从CT图像生成合适的MRI纹理可能具有挑战性,并且容易产生幻觉,从而影响运动准确性。
使用数字人体模型XCAT评估基于先前的4D MRI、机载4D锥束CT(CBCT)图像、运动建模信息和深度学习模型生成机载合成运动分辨4D MRI的可行性。
合成4D MRI对应于机载4D CBCT的各阶段。4D MRI中的每个合成MRI体积通过用变形场图(DFM)对参考3D MRI(MRI,先前4D MRI的呼气末期)进行变形生成,该变形场图由以下因素确定:(I)先前4D MRI主成分分析(PCA)运动建模的特征向量,以及(II)使用机载4D CBCT图像作为输入的卷积神经网络(CNN)模型预测的相应特征值。CNN使用通过从先前4D MRI PCA模型中随机采样原始特征值计算得到的1000个DFM对一个参考CT(CT,与MRI条件相同)进行1000次变形训练。CNN模型的评估指标为均方根误差(RMSE)和平均绝对误差(MAE)。最后,通过改变4D CBCT的呼吸周期、膈肌振幅和胸壁运动,使用归一化均方根误差(nRMSE)和结构相似性指数测量(SSIM)进行基于图像的评估,以及使用体积骰子系数(VDC)、体积百分比差异(VPD)和质心偏移(COMS)进行基于轮廓的肝脏和靶区体积评估,来评估不同的机载4D-MRI生成场景。
CNN模型对第一个特征值预测的RMSE和MAE值分别为0.012±0.