Tumor aware recurrent inter-patient deformable image registration of computed tomography scans with lung cancer

Jue Jiang, Chloe Min Seo Choi, Maria Thor, Joseph O. Deasy, Harini Veeraraghavan
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Abstract

Background: Voxel-based analysis (VBA) for population level radiotherapy (RT) outcomes modeling requires topology preserving inter-patient deformable image registration (DIR) that preserves tumors on moving images while avoiding unrealistic deformations due to tumors occurring on fixed images. Purpose: We developed a tumor-aware recurrent registration (TRACER) deep learning (DL) method and evaluated its suitability for VBA. Methods: TRACER consists of encoder layers implemented with stacked 3D convolutional long short term memory network (3D-CLSTM) followed by decoder and spatial transform layers to compute dense deformation vector field (DVF). Multiple CLSTM steps are used to compute a progressive sequence of deformations. Input conditioning was applied by including tumor segmentations with 3D image pairs as input channels. Bidirectional tumor rigidity, image similarity, and deformation smoothness losses were used to optimize the network in an unsupervised manner. TRACER and multiple DL methods were trained with 204 3D CT image pairs from patients with lung cancers (LC) and evaluated using (a) Dataset I (N = 308 pairs) with DL segmented LCs, (b) Dataset II (N = 765 pairs) with manually delineated LCs, and (c) Dataset III with 42 LC patients treated with RT. Results: TRACER accurately aligned normal tissues. It best preserved tumors, blackindicated by the smallest tumor volume difference of 0.24\%, 0.40\%, and 0.13 \% and mean square error in CT intensities of 0.005, 0.005, 0.004, computed between original and resampled moving image tumors, for Datasets I, II, and III, respectively. It resulted in the smallest planned RT tumor dose difference computed between original and resampled moving images of 0.01 Gy and 0.013 Gy when using a female and a male reference.
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肺癌患者计算机断层扫描的肿瘤感知复发可变形图像配准
背景:用于群体水平放疗(RT)结果建模的基于体素的分析(VBA)需要拓扑保护的患者间可变形图像配准(DIR),该配准既能保护移动图像上的肿瘤,又能避免固定图像上出现的肿瘤导致的不真实变形。目的:我们开发了一种肿瘤感知递归配准(TRACER)深度学习(DL)方法,并评估了其对 VBA 的适用性。方法:TRACER 包括使用堆叠三维卷积长短期记忆网络(3D-CLSTM)实现的编码器层,然后是解码器层和空间变换层,以计算变形矢量场(DVF)。多个 CLSTM 步骤用于计算渐进的变形序列。双向肿瘤刚度、图像相似度和形变平滑度损失用于以无监督方式优化网络。使用来自肺癌患者的 204 对三维 CT 图像训练 TRACER 和多重 DL 方法,并使用以下数据集进行评估:(a) 数据集 I(N = 308 对),包含 DL 分割的肺癌;(b) 数据集 II(N = 765 对),包含人工划定的肺癌;(c) 数据集 III,包含 42 名接受 RT 治疗的肺癌患者。结果:TRACER 准确对齐了正常组织。在数据集 I、II 和 III 中,原始和采样移动图像肿瘤之间计算的最小肿瘤体积差分别为 0.24%、0.40% 和 0.13%,CT 强度的平均平方误差分别为 0.005、0.005 和 0.004。在使用女性和男性参照物时,原始移动图像和重新取样移动图像之间计算出的计划 RT 肿瘤剂量差异最小,分别为 0.01 Gy 和 0.013 Gy。
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