Institute of Computing Science and Technology, Guangzhou University, Guangzhou, 510006, China.
Guangdong Provincial Key Laboratory of Artificial Intelligence in Medical Image Analysis and Application, Guangzhou, 510080, China.
Sci Rep. 2024 Apr 29;14(1):9784. doi: 10.1038/s41598-024-60668-5.
Accurate multi-organ segmentation in 3D CT images is imperative for enhancing computer-aided diagnosis and radiotherapy planning. However, current deep learning-based methods for 3D multi-organ segmentation face challenges such as the need for labor-intensive manual pixel-level annotations and high hardware resource demands, especially regarding GPU resources. To address these issues, we propose a 3D proxy-bridged region-growing framework specifically designed for the segmentation of the liver and spleen. Specifically, a key slice is selected from each 3D volume according to the corresponding intensity histogram. Subsequently, a deep learning model is employed to pinpoint the semantic central patch on this key slice, to calculate the growing seed. To counteract the impact of noise, segmentation of the liver and spleen is conducted on superpixel images created through proxy-bridging strategy. The segmentation process is then extended to adjacent slices by applying the same methodology iteratively, culminating in the comprehensive segmentation results. Experimental results demonstrate that the proposed framework accomplishes segmentation of the liver and spleen with an average Dice Similarity Coefficient of approximately 0.93 and a Jaccard Similarity Coefficient of around 0.88. These outcomes substantiate the framework's capability to achieve performance on par with that of deep learning methods, albeit requiring less guidance information and lower GPU resources.
准确的三维 CT 图像多器官分割对于增强计算机辅助诊断和放射治疗计划至关重要。然而,目前基于深度学习的三维多器官分割方法面临着一些挑战,例如需要大量的人工像素级注释和高硬件资源需求,特别是 GPU 资源。为了解决这些问题,我们提出了一种专门用于肝脏和脾脏分割的三维代理桥接区域生长框架。具体来说,根据相应的强度直方图从每个三维体积中选择一个关键切片。然后,使用深度学习模型在这个关键切片上确定语义中心补丁,以计算生长种子。为了抵消噪声的影响,通过代理桥接策略创建的超像素图像进行肝脏和脾脏的分割。然后,通过迭代应用相同的方法将分割过程扩展到相邻的切片,最终得到全面的分割结果。实验结果表明,所提出的框架能够实现肝脏和脾脏的分割,平均 Dice 相似系数约为 0.93,Jaccard 相似系数约为 0.88。这些结果证明了该框架能够实现与深度学习方法相当的性能,尽管需要更少的指导信息和更低的 GPU 资源。