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An adaptive fuzzy K-nearest neighbor approach for MR brain tumor image classification using parameter free bat optimization algorithm

机译:使用参数免费蝙蝠优化算法的MR脑肿瘤图像分类的自适应模糊k最近邻方法

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This paper presents an automatic diagnosis system for the tumor grade classification through magnetic resonance imaging (MRI). The diagnosis system involves a region of interest (ROI) delineation using intensity and edge magnitude based multilevel thresholding algorithm. Then the intensity and the texture attributes are extracted from the segregated ROI. Subsequently, a combined approach known as Fisher+ Parameter-Free BAT (PFreeBAT) optimization is employed to derive the optimal feature subset. Finally, a novel learning approach dubbed as PFree BAT enhanced fuzzy K-nearest neighbor (FKNN) is proposed by combining FKNN with PFree BAT for the classification of MR images into two categories: High and Low-Grade. In PFree BAT enhanced FKNN, the model parameters, i.e., neighborhood size k and the fuzzy strength parameter m are adaptively specified by the PFree BAT optimization approach. Integrating PFree BAT with FKNN enhances the classification capability of the FKNN. The diagnostic system is rigorously evaluated on four MR images datasets including images from BRATS 2012 database and the Harvard repository using classification performance metrics. The empirical results illustrate that the diagnostic system reached to ceiling level of accuracy on the test MR image dataset via 5-fold cross-validation mechanism. Additionally, the proposed PFree BAT enhanced FKNN is evaluated on the Parkinson dataset (PD) from the UCI repository having the pre-extracted feature space. The proposed PFree BAT enhanced FKNN reached to an average accuracy of 98% and 97.45%. with and without feature selection on PD dataset. Moreover, solely to contrast, the performance of the proposed PFree BAT enhanced FKNN with the existing FKNN variants the experimentations were also done on six other standard datasets from KEEL repository. The results indicate that the proposed learning strategy achieves the best value of accuracy in contrast to the existing FKNN variants.
机译:本文介绍了通过磁共振成像(MRI)的肿瘤级分类的自动诊断系统。诊断系统涉及使用强度和边缘幅度的多级阈值阈值算法的感兴趣区域(ROI)描绘。然后从分离的投资回报率中提取强度和纹理属性。随后,采用一种称为Fisher +无参数BAT(PFReebat)优化的组合方法来导出最佳特征子集。最后,通过将FKNN与PRFEE BAT与PREEE BAT的分类相结合,提出了一种作为PFREE BAT增强的模糊K-最近邻(FKNN)的新颖学习方法,以将MR图像分为两类:高低等级。在PFREE BAT增强FKNN中,通过PFREE BAT优化方法自适应地指定了模型参数,即邻域大小k和模糊强度参数m。将PREEE BAT与FKNN集成增强了FKNN的分类能力。诊断系统在四个MR图像数据集上严格地评估,包括使用分类性能度量的Brats 2012数据库和哈佛库的图像。经验结果说明了诊断系统通过5倍交叉验证机制达到测试MR图像数据集上的最高精度的天花板。另外,从具有预提取的特征空间的UCI存储库评估所提出的PFREE BAT增强FKNN。提出的PREEE BAT增强FKNN达到了98%和97.45%的平均精度。在PD数据集上有和没有功能选择。此外,仅相反,具有现有FKNN变体的提出的PFREE BAT增强FKNN的性能也在龙骨储存库中的六个其他标准数据集上进行实验。结果表明,与现有的FKNN变体相比,建议的学习策略实现了最佳准确性值。

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