Nilgiris部落镰状细胞贫血的特征选择与检测:基于聚类的增强C5.0算法增强鲸鱼优化

Q4 Multidisciplinary
C. Maria Sheeba, K. Sarojini
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引用次数: 0

摘要

红细胞(RBC)的降解导致许多疾病,如镰状细胞性贫血。诊断这种疾病需要更多的时间,因为外周血样本必须在显微镜下检查。由于孤立的红细胞观察是主观的,高错误率导致准确性降低,因此需要技术来执行这种方法。为了满足这些要求,本文提出了在Nilgiris部落中使用基于聚类的增强C5.0算法的增强鲸鱼优化来优化镰状细胞性贫血的特征选择和检测。输入数据集取自非政府组织NAWA(位于Kotagiri)的真实数据集。Nilgiri地区背后的原因在这项工作中被认为是收集了居住在Nilgiri地区不同地区的部落人的镰状细胞性贫血测试结果。利用小波包变换耳蜗滤波器组方法对图像进行预处理,消除噪声,提高图像的优越性。然后,采用改进的力不变特征提取方法提取特征。为了选择最优特征,采用了增强鲸鱼优化算法(enhanced whale optimization, EWO)。利用基于聚类的增强C5.0算法对这些最优特征进行分类。建议的方法在PYTHON上激活。与RGSA-MLP-SCA、CRFA-SVM-SCA、AO-LSTM-SCA和BOA-CNN-SCA等现有方法相比,本文方法的准确率分别提高了52.32%、43.78%、32.78%和45.90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal feature selection and detection of sickle cell anemia detection using enhanced whale optimization with clustering based boosted C5.0 algorithm for tribes of Nilgiris
Degradation of red blood cells (RBC) causes many diseases, like sickle cell anemia. Diagnosing this disease takes more time because peripheral blood samples must be examined under the microscope. Since the isolated RBC observation is subjective and high error rate leads to reduce the accuracy, the technology is needed to perform this approach. To fulfil these requirements, optimal feature selection and detection of sickle cell anemia using enhanced whale optimization with clustering based boosted C5.0 algorithm in tribes of Nilgiris is proposed in this manuscript. The input dataset is taken from real data set via non-government organization named NAWA (situated in Kotagiri). The reason behind of Nilgiri region is considered in this work is a collection of sickle cell anemia test results of the tribe people who lives in different areas of Nilgiri region. These images are pre-processed using wavelet packet transform cochlear filter bank method to eradicate the noises and to improve the superiority of image. After that, the features are extracted using force-invariant improved feature extraction method. To select the optimal features, enhanced whale optimization (EWO) algorithm is used. These optimal features are classified utilizing clustering based boosted C5.0 algorithm. The proposed method is activated on PYTHON. The proposed method shows 52.32%, 43.78%, 32.78% and 45.90% higher accuracy compared with the existing methods, such as RGSA-MLP-SCA, CRFA-SVM-SCA, AO-LSTM-SCA and BOA-CNN-SCA.
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来源期刊
Journal of Current Science and Technology
Journal of Current Science and Technology Multidisciplinary-Multidisciplinary
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