HLNBO: Hybrid Leader Namib Beetle Optimization Algorithm-Based LeNet for Classification of Parkinson’s Disease

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal of Image and Graphics Pub Date : 2024-03-12 DOI:10.1142/s0219467825500639
S. Sharanyaa, M. Sambath
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Abstract

Parkinson’s disease (PD) occurs while particular cells of the brain are not able to create dopamine that is required for regulating the count of non-motor as well as motor activities of the human body. One of the earlier symptoms of PD is voice disorder and current research shows that approximately about 90% of patients affected by PD suffer from vocal disorders. Hence, it is vital to extract pathology information in voice signals for detecting PD, which motivates to devise the approaches for feature selection and classification of PD. Here, an effectual technique is devised for the classification of PD, which is termed as Hybrid Leader Namib beetle optimization algorithm-based LeNet (HLNBO-based LeNet). The considered input voice signal is subjected to pre-processing of the signal phase. The pre-processing is carried out to remove the noises and calamities using a Gaussian filter whereas in the feature extraction phase, several features are extracted. The extracted features are given to the feature selection stage that is performed employing the Hybrid Leader Squirrel Search Water algorithm (HLSSWA), which is the combination of Hybrid Leader-Based Optimization (HLBO), Squirrel Search Algorithm (SSA), and Water Cycle Algorithm (WCA) by considering the Canberra distance as the fitness function. The PD classification is conducted using LeNet, which is tuned by the designed HLNBO. Additionally, HLNBO is newly presented by merging HLBO and the Namib beetle optimization algorithm (NBO). Thus, the new technique achieved maximal values of accuracy, TPR, and TNR of about 0.949, 0.957, and 0.936, respectively.
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HLNBO:基于混合领导纳米甲虫优化算法的 LeNet,用于帕金森病分类
帕金森病(PD)发生时,大脑中的特定细胞无法产生调节人体非运动和运动活动所需的多巴胺。嗓音失调是多巴胺综合症的早期症状之一,目前的研究表明,约有 90% 的多巴胺综合症患者患有嗓音失调。因此,提取语音信号中的病理信息对检测髓性白内障至关重要,这也促使我们设计出髓性白内障的特征选择和分类方法。在此,我们设计了一种有效的技术来对 PD 进行分类,这种技术被称为基于混合领导纳米甲虫优化算法的 LeNet(基于 HLNBO 的 LeNet)。所考虑的输入语音信号需要经过信号阶段的预处理。预处理是为了使用高斯滤波器去除噪音和干扰,而在特征提取阶段,则是提取若干特征。提取的特征将用于特征选择阶段,该阶段采用混合领导松鼠搜索水算法(HLSSWA),该算法是混合领导优化算法(HLBO)、松鼠搜索算法(SSA)和水循环算法(WCA)的结合,将堪培拉距离视为适配函数。使用 LeNet 进行 PD 分类,并通过设计的 HLNBO 对其进行调整。此外,HLNBO 是通过合并 HLBO 和纳米甲虫优化算法(NBO)而新提出的。因此,新技术的准确率、TPR 和 TNR 分别达到了约 0.949、0.957 和 0.936 的最高值。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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