低重叠医学图像的可变形配准

Bertram Sabrowsky-Hirsch, Bernhard Schenkenfelder, Christoph Klug, G. Reishofer, Josef Scharinger
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引用次数: 0

摘要

尽管全身核磁共振成像变得更容易获得,但它的使用仍然受到诸如视场和分辨率等技术限制的限制。为了最大限度地减少呼吸运动引起的伪影,可以通过减小图像尺寸将采集时间减少到可行的屏气时间。相反,需要一系列的收购来覆盖更大的范围。虽然该方法对单个采集是有效的,但当从序列中重建合成图像时,不同的呼吸状态会引入伪影。在本文中,我们提出了一种用于低重叠MRI的可变形配准方法,以补偿此类伪影并促进无缝拼接。基于无监督学习模型,我们的方法可以很好地推广到不同的模态和目标解剖结构。我们在来自医疗用例的16个腹部MRI系列数据集以及从大型异构数据集生成的合成图像对上证明了这一点,重叠率为13%至24%。评估结果表明,重叠区域目标结构的Dice Similarity Coefficient (DSC)对于真实图像对提高了+0.14(从0.73提高),对于合成图像对提高了+0.21(从0.68提高)。该方法具有快速、鲁棒性好,可适用于各种拼接任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deformable Registration of Low-overlapping Medical Images
Even though whole-body MRI becomes more accessible, its use is still restricted by technical limitations such as field of view and resolution. To minimize artifacts caused by respiratory motion, the acquisition time can be reduced to a feasible breath-hold by decreasing the image size. Conversely, a series of acquisitions is required to cover a larger extent. While the method is effective for individual acquisitions, different respiratory states introduce artifacts when a composite image is reconstructed from the series. In this paper, we propose a deformable registration method for low-overlapping MRI to compensate for such artifacts and facilitate seamless mosaicing. Based on an unsupervised learning-based model, our method generalizes well to different modalities and target anatomies. We demonstrate this on a dataset of 16 abdominal MRI series from a medical use case as well as synthetic image pairs generated from a large heterogeneous dataset, with 13% to 24% overlap. The evaluation shows an improved Dice Similarity Coefficient (DSC) for target structures in the overlap region by +0.14 (from 0.73) for real and +0.21 (from 0.68) for synthetic image pairs. Our method is fast and robust and may be applied to various mosaicing tasks.
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