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An efficient automatic segmentation of spinal cord in MRI images using interactive random walker (RW) with artificial bee colony (ABC) algorithm

机译:使用人造蜂菌落(ABC)算法使用交互式随机助行器(RW)中MRI图像中脊髓的高效自动分割

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Spinal cord Magnetic Resonance Images (MRI) have a remarkable role to play in the learning of neurological diseases such as Multiple Sclerosis (MS) affecting the Central Nervous System (CNS), in which spinal cord atrophy can help in the measurement of disease advancement and the changes in shape. Spinal cord segmentation plays a significant part in analyzing the neurological disease. In this paper here, an approach on the basis of the automatic spinal cord segmentation is proposed. This automatic technique presented performs the segmentation of the spinal cord with the help of MRI datasets. This new segmentation follows the interactive Random-Walk solvers (RW) along with Artificial Bee Colony (ABC) optimization algorithm in order to be an entirely automatic flow pipeline. The initialization of the automatic segmentation pipeline is then done with a reliable voxel-wise classification employing features similar to Haar and supervised machine learning technique i.e. Probabilistic Boosting Tree (PBT) along with Support Vector Machine (SVM) so named as PBTSVM. Thereafter, the extraction of the refinement topology of the spinal cord is then done from the temporary segmentation and it is fine-tuned for the further next random-walk solver with ABC. The refined topology results in the spinal cord's boundary conditions from the MRI that permits the following random-walk solver with ABC for improving the segmentation result. The experimental outcomes of the novel segmentation approach depending on the MRI images indicate that the system proposed PBT-SVM algorithm provides better accuracy when compared to the other existing Active Contour Model, Multi-Resolution Propagation algorithms. Experimentation results of the proposed PBT-SVM algorithm produces higher accuracy results of 93% which is 2.5 and 3.233% higher when compared to Active Contour Model and Multi-Resolution Propagation methods respectively.
机译:脊髓磁共振图像(MRI)在学习神经系统疾病(如诸如影响中枢神经系统(CNS)的多发性硬化(MS))的学习中具有显着作用,其中脊髓萎缩可以有助于测量疾病进步和形状的变化。脊髓分割在分析神经疾病方面发挥着重要作用。在本文中,提出了一种基于自动脊髓分割的方法。呈现此自动技术在MRI数据集的帮助下执行脊髓的分割。这种新的分割遵循交互式随机步行溶剂(RW)以及人造蜂菌落(ABC)优化算法,以便是全自动流量管道。然后使用类似于HAAR和监督机器学习技术的特征的可靠的体素 - 明智的分类进行自动分割管道的初始化,其中概率升压树(PBT)以及支持向量机(SVM)如此名为PBTSVM。此后,然后从临时分割开始脊髓的细化拓扑的提取,并且对于具有ABC的另外的下一个随机步行求解器,可以微调。精制拓扑结果导致脊髓的边界条件来自MRI,允许具有ABC的以下随机步行求解器来改善分割结果。根据MRI图像的新分割方法的实验结果表明,与其他现有的活动轮廓模型,多分辨率传播算法相比,该系统提出的PBT-SVM算法提供了更好的精度。与活动轮廓模型和多分辨率传播方法相比,所提出的PBT-SVM算法的实验结果产生了93%的高精度结果为2.5和3.233%。

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