使用深度学习方法的CT图像中肝脏血管结构的自动多类分割:肝脏手术预计划工具。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Sahar Sarkar, Mahdiyeh Rahmani, Parastoo Farnia, Alireza Ahmadian, Nasser Mozayani
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引用次数: 0

摘要

准确的肝血管分割对于有效的肝手术预先规划和降低手术风险至关重要,因为它可以精确定位和广泛评估复杂的血管结构。人工肝血管分割是一个耗时的过程,依赖于操作员的专业知识和技能。复杂的树形结构的肝静脉和门静脉交织在一起,在解剖学上是可变的,这进一步复杂化了这一挑战。本研究通过提出UNETR (U-Net transformer)架构来解决这些挑战,该架构用于肝脏CT图像中门静脉和肝静脉的多类分割。UNETR利用基于变压器的编码器有效捕获远程依赖关系,克服了卷积神经网络(cnn)在处理复杂解剖结构方面的局限性。该方法在来自IRCAD的对比度增强CT图像以及从医院开发的本地数据集上进行了评估。在局部数据集上,UNETR模型门静脉分割的Dice系数为49.71%,肝静脉分割的Dice系数为69.39%,整体血管分割的Dice系数为76.74%,而在IRCAD数据集上,UNETR模型血管分割的Dice系数为62.54%。这些结果突出了该方法在识别不同数据集的复杂血管结构方面的有效性。这些发现强调了先进的体系结构和精确的注释在提高分割精度方面的关键作用。这项工作为自动化肝脏手术预先计划的未来发展奠定了基础,具有显著提高临床结果的潜力。实现代码可在GitHub上获得:https://github.com/saharsarkar/Multiclass-Vessel-Segmentation。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated multiclass segmentation of liver vessel structures in CT images using deep learning approaches: a liver surgery pre-planning tool.

Accurate liver vessel segmentation is essential for effective liver surgery pre-planning, and reducing surgical risks since it enables the precise localization and extensive assessment of complex vessel structures. Manual liver vessel segmentation is a time-intensive process reliant on operator expertise and skill. The complex, tree-like architecture of hepatic and portal veins, which are interwoven and anatomically variable, further complicates this challenge. This study addresses these challenges by proposing the UNETR (U-Net Transformers) architecture for the multi-class segmentation of portal and hepatic veins in liver CT images. UNETR leverages a transformer-based encoder to effectively capture long-range dependencies, overcoming the limitations of convolutional neural networks (CNNs) in handling complex anatomical structures. The proposed method was evaluated on contrast-enhanced CT images from the IRCAD as well as a locally dataset developed from a hospital. On the local dataset, the UNETR model achieved Dice coefficients of 49.71% for portal veins, 69.39% for hepatic veins, and 76.74% for overall vessel segmentation, while reaching Dice coefficients of 62.54% for vessel segmentation on the IRCAD dataset. These results highlight the method's effectiveness in identifying complex vessel structures across diverse datasets. These findings underscore the critical role of advanced architectures and precise annotations in improving segmentation accuracy. This work provides a foundation for future advancements in automated liver surgery pre-planning, with the potential to enhance clinical outcomes significantly. The implementation code is available on GitHub: https://github.com/saharsarkar/Multiclass-Vessel-Segmentation .

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来源期刊
CiteScore
8.40
自引率
4.50%
发文量
110
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