MuSIC: Multi-Sequential Interactive Co-Registration for Cancer Imaging Data based on Segmentation Masks

Tanja Eichner, Eric Mörth, Kari S. Wagner-Larsen, N. Lura, I. Haldorsen, E. Gröller, S. Bruckner, N. Smit
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Abstract

In gynecologic cancer imaging, multiple magnetic resonance imaging (MRI) sequences are acquired per patient to reveal different tissue characteristics. However, after image acquisition, the anatomical structures can be misaligned in the various sequences due to changing patient location in the scanner and organ movements. The co-registration process aims to align the sequences to allow for multi-sequential tumor imaging analysis. However, automatic co-registration often leads to unsatisfying results. To address this problem, we propose the web-based application MuSIC (Multi-Sequential Interactive Co-registration). The approach allows medical experts to co-register multiple sequences simultaneously based on a pre-defined segmentation mask generated for one of the sequences. Our contributions lie in our proposed workflow. First, a shape matching algorithm based on dual annealing searches for the tumor position in each sequence. The user can then interactively adapt the proposed segmentation positions if needed. During this procedure, we include a multi-modal magic lens visualization for visual quality assessment. Then, we register the volumes based on the segmentation mask positions. We allow for both rigid and deformable registration. Finally, we conducted a usability analysis with seven medical and machine learning experts to verify the utility of our approach. Our participants highly appreciate the multi-sequential setup and see themselves using MuSIC in the future.
MuSIC:基于分割掩码的癌症影像数据多序列交互协同配准
在妇科肿瘤成像中,每个患者需要获得多个磁共振成像(MRI)序列来显示不同的组织特征。然而,在图像采集后,由于患者在扫描仪中的位置变化和器官运动,解剖结构可能在各种序列中错位。共配准过程旨在对齐序列,以便进行多序列肿瘤成像分析。然而,自动共配常常导致不满意的结果。为了解决这个问题,我们提出了基于web的应用MuSIC (Multi-Sequential Interactive Co-registration)。该方法允许医学专家根据为其中一个序列生成的预定义分割掩码同时共同注册多个序列。我们的贡献在于我们提出的工作流程。首先,基于双退火的形状匹配算法在每个序列中搜索肿瘤位置。如果需要,用户可以交互式地调整建议的分割位置。在这个过程中,我们包括一个多模态魔术透镜可视化视觉质量评估。然后,我们根据分割掩码位置注册卷。我们允许刚性和可变形注册。最后,我们与七位医学和机器学习专家进行了可用性分析,以验证我们方法的实用性。我们的参与者非常欣赏这种多顺序的设置,并认为他们将来会使用音乐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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