An Investigation on Disease Diagnosis and Prediction by Using Modified K-Mean clustering and Combined CNN and ELM Classification Techniques

S. Waris, S. Koteeswaran
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Abstract

Data analysis is important for managing a lot of knowledge in the healthcare industry. The older medical study favored prediction over processing and assimilating a massive volume of hospital data. The precise research of health data becomes advantageous for early disease identification and patient treatment as a result of the tremendous knowledge expansion in the biological and healthcare fields. But when there are gaps in the medical data, the accuracy suffers. The use of K-means algorithm is modest and efficient to perform. It is appropriate for processing vast quantities of continuous, high-dimensional numerical data. However, the number of clusters in the given dataset must be predetermined for this technique, and choosing the right K is frequently challenging. The cluster centers chosen in the first phase have an impact on the clustering results as well. To overcome this drawback in k-means to modify the initialization and centroid steps in classification technique with combining (Convolutional neural network) CNN and ELM (extreme learning machine) technique is used. To increase this work, disease risk prediction using repository dataset is proposed. We use different types of machine learning algorithm for predicting disease using structured data. The prediction accuracy of using proposed hybrid model is 99.8% which is more than SVM (support vector machine), KNN (k-nearest neighbors), AB (AdaBoost algorithm) and CKN-CNN (consensus K-nearest neighbor algorithm and convolution neural network).
基于改进k -均值聚类和CNN与ELM联合分类技术的疾病诊断与预测研究
在医疗保健行业中,数据分析对于管理大量知识非常重要。较早的医学研究更倾向于预测,而不是处理和吸收大量的医院数据。由于生物和医疗保健领域的巨大知识扩展,对健康数据的精确研究有利于疾病的早期识别和患者的治疗。但当医疗数据中存在空白时,准确性就会受到影响。使用K-means算法是适度和有效的执行。它适用于处理大量连续的、高维的数值数据。然而,对于这种技术,给定数据集中的集群数量必须预先确定,而选择正确的K通常是具有挑战性的。第一阶段选择的聚类中心对聚类结果也有影响。为了克服k-means的这一缺点,结合卷积神经网络(CNN)和极限学习机(ELM)技术,对分类技术中的初始化和质心步骤进行修改。为了增加这方面的工作,提出了使用存储库数据集进行疾病风险预测。我们使用不同类型的机器学习算法来使用结构化数据预测疾病。该混合模型的预测准确率为99.8%,高于支持向量机(SVM)、k近邻算法(KNN)、AdaBoost算法(AB)和共识k近邻算法-卷积神经网络(CKN-CNN)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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