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Automatic spleen segmentation in MRI images using a combined neural network and recursive watershed transform

机译:结合神经网络和递归分水岭变换,在MRI图像中自动进行脾脏分割

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Accurate spleen segmentation in abdominal MRI images is one of the most important steps for computer aided spleen pathology diagnosis. The first and essential step for the diagnosis is the automatic spleen segmentation that is still an open problem. In this paper, we have proposed a new automatic algorithm for spleen area extraction in abdominal MRI images. The algorithm is fully automatic and contains several stages. The preprocessing stage is applied for required image enhancement. Then the abdominal MRI images are partitioned to different regions using combined recursive watershed transform and neural network. The feed forward neural network is trained and used for spleen features extraction. The features extracted using neural networks are used to monitor the quality of the output of watershed transform and adjusting required parameter automatically. The process of adjusting parameters is performed sequentially in several iterations. Experimental results showed the promise of the proposed algorithm.
机译:腹部MRI图像中的准确脾脏分割是计算机辅助脾脏病理诊断的最重要步骤之一。诊断的第一步和必不可少的步骤是自动脾脏分割,这仍然是一个未解决的问题。在本文中,我们提出了一种新的自动算法,用于腹部MRI图像中的脾脏区域提取。该算法是全自动的,包含几个阶段。预处理阶段适用于所需的图像增强。然后使用组合的递归分水岭变换和神经网络将腹部MRI图像划分到不同区域。前馈神经网络经过训练,可用于脾脏特征提取。使用神经网络提取的特征用于监视分水岭变换的输出质量并自动调整所需的参数。调整参数的过程按几次迭代顺序执行。实验结果表明了该算法的前景。

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