利用二元鲸鱼优化算法检测慢性肾病

S. Sutikno, Retno Kusumaningrum, Aris Sugiharto, Helmie Arif Wibawa
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引用次数: 0

摘要

慢性肾脏病(CKD)是一种内科疾病,以肾功能持续恶化为特征。疾病的预防和有效治疗取决于早期诊断。在机器学习算法中加入过滤特征选择的方法已被用于检测 CKD。然而,其特征子集的质量并不理想。包装特征选择可以提高这些特征子集的质量。因此,我们提出了包装特征选择和二元鲸鱼优化算法(BWOA),以提高早期 CKD 检测的准确性。我们还对数据进行了改进以提高准确性,即使用中值和模态技术进行预处理。我们使用了由 250 名肾病患者和 150 名完全健康者的医疗记录组成的公共数据集。该数据集中有 24 个特征。测试结果表明,增加 BWOA 特征选择可以提高准确率。所提出的方法的准确率达到了 100%。对这些方法的进一步研究可用于开发早期检测 CKD 的专家系统。
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Detection of chronic kidney disease using binary whale optimization algorithm
Chronic kidney disease (CKD), a medical illness, is characterized by a steady deterioration in kidney function. A disease's ability to be prevented and effectively significantly treated depends on early diagnosis. The addition of filter feature selection to the machine learning algorithm has been done to detect CKD. However, the quality of its feature subset is not optimal. Wrapper feature selection can improve the quality of these feature subsets. Therefore, we proposed wrapper feature selection and binary whale optimization algorithm (BWOA) to enhance the accuracy of early CKD detection. We also make data improvements to improve accuracy, namely the preprocessing process with the median and modus techniques. We used a public dataset of 250 medical records of kidney sufferers and 150 completely healthy people. There are 24 features in this dataset. The test results showed that adding BWOA feature selection can increase accuracy. The proposed method produced an accuracy of 100%. Further research on these methods can be used to develop expert systems for early detection of CKD.
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