论文标题

人体组成评估有限的视野计算机断层扫描:语义图像扩展透视图

Body Composition Assessment with Limited Field-of-view Computed Tomography: A Semantic Image Extension Perspective

论文作者

Xu, Kaiwen, Li, Thomas, Khan, Mirza S., Gao, Riqiang, Antic, Sanja L., Huo, Yuankai, Sandler, Kim L., Maldonado, Fabien, Landman, Bennett A.

论文摘要

肺部以外的视野(FOV)组织截断在常规肺筛查计算机断层扫描(CT)中很常见。这对基于机会性CT的身体组成(BC)评估构成了局限性,因为缺少关键的解剖结构。传统上,使用有限的数据,扩展CT的FOV被视为CT重建问题。但是,这种方法依赖于应用程序中可能无法使用的投影域数据。在这项工作中,我们从语义图像扩展角度提出问题,该角度仅需要图像数据作为输入。提出的两阶段方法根据完整体的估计范围识别了新的FOV边框,并在截短区域中划定了缺失的组织。使用在FOV中具有完整主体的CT切片对训练样品进行模拟,从而使模型开发自制。我们使用有限的FOV的肺筛选CT评估了所提出的方法在自动BC评估中的有效性。提出的方法有效地恢复了缺失的组织并减少了FOV组织截断引入的BC评估误差。在大规模肺部筛查CT数据集的BC评估中,此校正既可以提高受试者内的一致性和与人体测量近似值的相关性。已开发的方法可从https://github.com/masilab/s-efov获得。

Field-of-view (FOV) tissue truncation beyond the lungs is common in routine lung screening computed tomography (CT). This poses limitations for opportunistic CT- based body composition (BC) assessment as key anatomical structures are missing. Traditionally, extending the FOV of CT is considered as a CT reconstruction problem using limited data. However, this approach relies on the projection domain data which might not be available in application. In this work, we formulate the problem from the semantic image extension perspective which only requires image data as inputs. The proposed two-stage method identifies a new FOV border based on the estimated extent of the complete body and imputes missing tissues in the truncated region. The training samples are simulated using CT slices with complete body in FOV, making the model development self-supervised. We evaluate the validity of the proposed method in automatic BC assessment using lung screening CT with limited FOV. The proposed method effectively restores the missing tissues and reduces BC assessment error introduced by FOV tissue truncation. In the BC assessment for a large-scale lung screening CT dataset, this correction improves both the intra-subject consistency and the correlation with anthropometric approximations. The developed method is available at https://github.com/MASILab/S-EFOV.

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