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Reinforced Redetection of Landmark in Pre- and Post-operative Brain Scan Using Anatomical Guidance for Image Alignment

机译:使用解剖学指导对术前和术后脑扫描中的地标加强了重复性的重复

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Re-identifying locations of interest in pre- and post-operative images is a hard identification problem, as the anatomical landscape changes dramatically due to tumor resection and tissue displacement. Classical image registration techniques oftentimes fail in vicinity of the tumor, where the enclosing structures are massively altered from one scan to another. Still, locations nearby the tumor or the resection cavity are the most relevant for evaluating tumor progression patterns and for comparing pre- and post-operative radiomic signatures. We address this issue by exploring a Reinforcement Learning (RL) approach. An artificial agent is self-taught to find the optimal path towards a target driven by a feedback signal from the environment. Incorporating anatomical guidance, we restrict the agent's search space to surgery-unaffected structures only. By defining landmarks for each patient individually, we aim to obtain a patient-specific representation of its differential radiomic features across different time points for enhancing image alignment. Estimated landmarks reach a remarkable mean distance error around 3 mm. In addition, they show a high agreement with expert annotations on a challenging dataset of MR scans from the brain before and after tumor resection.
机译:重新识别在术前和后术后图像的兴趣位置是一种硬识别问题,因为解剖学景观由于肿瘤切除和组织位移而发生显着变化。经典图像登记技术通常在肿瘤附近失败,其中封闭结构从一个扫描到另一扫描到另一个扫描。尽管如此,肿瘤或切除腔附近的位置是对评估肿瘤进展模式的最相关的,并且用于比较术前和后术后的射出物签名。我们通过探索强化学习(RL)方法来解决这个问题。人工代理自行教导,以找到由来自环境的反馈信号驱动的目标的最佳路径。纳入解剖指导,我们仅将代理商的搜索空间限制为外科 - 不受影响的结构。通过单独定义每个患者的地标,我们的目的是在不同时间点中获得其差动射线特征的患者特异性表示,以增强图像对准。估计的地标达到约3毫米的非凡平均距离误差。此外,他们与肿瘤切除前后大脑的先生扫描的挑战性数据集具有高度协议。

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