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Pathological Brain Detection using Extreme Learning Machine Trained with Improved Whale Optimization Algorithm

机译:使用改进的鲸鱼优化算法训练的极限学习机进行病理性脑检测

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Pathological brain detection has made remarkable progress, thus numerous successful automated systems have been conceived. However, the diagnostic accuracy obtained by them is far from perfection. This paper investigates an automated system through MR images that notably enhance the current outcomes. The proposed PBDS employs fast discrete curvelet transform via wrapping (FDCT- WR) strategy to derive significant features from the MR brain images. Then, it adopts a combined approach called PCA + LDA to yield more discriminative and reduced features sets. Lastly, for classification, we introduce a novel improved learning method dubbed as IWOA-ELM which is a combination of two algorithms such as improved whale optimization algorithm (IWOA) and extreme learning machine (ELM). IWOA in the proposed method helps in optimizing the hidden node parameters, while an analytical procedure is adopted for computation of the output weights. To find the global optima using IWOA, we consider both the norm of the output weights and root mean squared error (RMSE). The proposed system is rigorously evaluated on three publicly available datasets and a comparative analysis has been made with the existing schemes. The simulation results demonstrate that the suggested approach outperforms other state-of-the-art approaches. Furthermore, it has also been noticed that IWOA-ELM method yields superior performance than conventional learning algorithms.
机译:病理性脑检测取得了显着进展,因此构想了许多成功的自动化系统。但是,它们所获得的诊断准确性远非完美。本文研究了通过MR图像显着增强当前结果的自动化系统。所提出的PBDS采用快速离散曲波包裹变换(FDCT-WR)策略从MR脑图像中得出重要特征。然后,它采用称为PCA + LDA的组合方法来产生更具判别力和减少特征集。最后,为了进行分类,我们引入了一种称为IWOA-ELM的新型改进学习方法,该方法是两种算法的结合,例如改进的鲸鱼优化算法(IWOA)和极限学习机(ELM)。提出的方法中的IWOA有助于优化隐藏节点参数,同时采用解析过程来计算输出权重。为了使用IWOA查找全局最优值,我们同时考虑了输出权重的范数和均方根误差(RMSE)。所提出的系统在三个公开可用的数据集上进行了严格的评估,并与现有方案进行了比较分析。仿真结果表明,所建议的方法优于其他最新方法。此外,还已经注意到,IWOA-ELM方法比传统的学习算法具有更高的性能。

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