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Recurrent Nasal Papilloma Detection Using a Fuzzy Algorithm Learning Vector Quantization Neural Network

机译:使用模糊算法测量矢量量化神经网络的复发性鼻乳头状瘤检测

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The objective of this paper is to develop a complete solution for recurrent nasal papilloma (RNP) detection. Recently, the Gadolinium-enhanced dynamic magnetic resonance image (MRI) has been developed and widely used in clinical diagnosis of recurrent nasal papilloma. Owing to the response of RNP regions in Gadolinium-enhanced magnetic resonance images is different from the response of normal tissues, the difference between the dynamic-MR images before and after administering contrast material can be used to extract the coarse RNP regions automatically. Then, a fuzzy algorithm for learning vector quantization (FALVQ) neural network is used to pick the suspicious RNP regions. Finally, a feature-based region growing method is applied to recover the complete RNP regions. The experimental results show that the proposed method can detect RNP regions automatically, correctly and fast.
机译:本文的目的是为复发性鼻乳头瘤(RNP)检测进行完整的解决方案。最近,钆增强的动态磁共振图像(MRI)已经开发并广泛用于复发性鼻乳头瘤的临床诊断。由于RNP区域在钆增强磁共振图像中的响应与正常组织的响应不同,施用对比材料之前和之后的动态-MR图像之间的差异可用于自动提取粗RNP区域。然后,使用用于学习矢量量化的模糊算法(FALVQ)神经网络来选择可疑RNP区域。最后,应用了一种基于特征的区域生长方法来恢复完整的RNP区域。实验结果表明,该方法可以自动检测RNP区域,正确且快速地检测RNP区域。

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