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Deploying swarm intelligence in medical imaging identifying metastasis, micro-calcifications and brain image segmentation

机译:在医学成像中部署群体智能,以识别转移,微钙化和脑图像分割

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摘要

This study proposes an umbrella deployment of swarm intelligence algorithm, such as stochastic diffusion search for medical imaging applications. After summarising the results of some previous works which shows how the algorithm assists in the identification of metastasis in bone scans and microcalcifications on mammographs, for the first time, the use of the algorithm in assessing the CT images of the aorta is demonstrated along with its performance in detecting the nasogastric tube in chest X-ray. The swarm intelligence algorithm presented in this study is adapted to address these particular tasks and its functionality is investigated by running the swarms on sample CT images and X-rays whose status have been determined by senior radiologists. In addition, a hybrid swarm intelligence-learning vector quantisation (LVQ) approach is proposed in the context of magnetic resonance (MR) brain image segmentation. The particle swarm optimisation is used to train the LVQ which eliminates the iteration-dependent nature of LVQ. The proposed methodology is used to detect the tumour regions in the abnormal MR brain images.
机译:这项研究提出了群体智能算法的总体部署,例如用于医学成像应用的随机扩散搜索。在总结了以前的一些工作的结果之后,这些结果显示了该算法如何帮助在乳腺X线照片上识别骨扫描和微钙化中的转移,并首次展示了该算法在评估主动脉CT图像中的用途及其X线检查中检测鼻胃管的功能。本研究中提出的群体智能算法适用于解决这些特定任务,并且通过在样本CT图像和X射线上运行群体来研究其功能,这些X射线和X射线的状态已由高级放射科医生确定。此外,在磁共振(MR)脑图像分割的背景下,提出了一种混合群智能学习矢量量化(LVQ)方法。粒子群优化用于训练LVQ,从而消除了LVQ的依赖于迭代的特性。所提出的方法用于检测异常MR脑图像中的肿瘤区域。

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