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Deep Learning-Based Landmark Localisation in the Liver for Couinaud Segmentation

机译:基于深度学习的肝脏标志性定位用于Couinard分割

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Couinaud segmenation, which divides the liver into functional regions, is the most widely used functional anatomy of the liver and is important for surgical planning and lesion monitoring. Couinaud segmentation can be a time-consuming task, thereby necessitating automated methods. In this study, we propose a deep learning approach for automatically defining Couinaud segments 2 to 8, based on a novel application of automatic landmark localisation. We utilise a heatmap regression CNN to predict landmark locations in the liver, which can subsequently be used to derive the planes that divide the liver into Couinaud segments. A novel postprocessing step for reducing false-positive peaks in heatmaps and/or aiding quality control is also presented. We apply our approach to non-contrast T1-weighted MRI data and compare the accuracy of the derived segments to those obtained directly from a semantic segmentation network. We show that the approach we propose can match and potentially outperform the direct segmentation approach, and thus can be a good alternative option for automatic Couinaud segmentation.
机译:肝脏解剖和功能分区是最重要的,而肝脏功能分区是最重要的功能分区。Couinard分割可能是一项耗时的任务,因此需要自动化方法。在这项研究中,我们基于自动地标定位的一个新应用,提出了一种自动定义Couinard段2到8的深度学习方法。我们利用热图回归CNN预测肝脏中的标志性位置,随后可用于推导将肝脏划分为Couunaud段的平面。还提出了一种新的后处理步骤,用于减少热图中的假阳性峰和/或辅助质量控制。我们将我们的方法应用于非对比T1加权MRI数据,并将导出的片段的准确性与直接从语义分割网络获得的片段进行比较。我们表明,我们提出的方法可以匹配并潜在地优于直接分割方法,因此可以作为自动Couinard分割的一个很好的选择。

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