...
首页> 外文期刊>Journal of healthcare engineering. >Soft Clustering for Enhancing the Diagnosis of Chronic Diseases over Machine Learning Algorithms
【24h】

Soft Clustering for Enhancing the Diagnosis of Chronic Diseases over Machine Learning Algorithms

机译:用于增强机器学习算法慢性疾病诊断的软聚类

获取原文

摘要

Chronic diseases represent a serious threat to public health across the world. It is estimated at about 60 of all deaths worldwide and approximately 43 of the global burden of chronic diseases. Thus, the analysis of the healthcare data has helped health officials, patients, and healthcare communities to perform early detection for those diseases. Extracting the patterns from healthcare data has helped the healthcare communities to obtain complete medical data for the purpose of diagnosis. The objective of the present research work is presented to improve the surveillance detection system for chronic diseases, which is used for the protection of people's lives. For this purpose, the proposed system has been developed to enhance the detection of chronic disease by using machine learning algorithms. The standard data related to chronic diseases have been collected from various worldwide resources. In healthcare data, special chronic diseases include ambiguous objects of the class. Therefore, the presence of ambiguous objects shows the availability of traits involving two or more classes, which reduces the accuracy of the machine learning algorithms. The novelty of the current research work lies in the assumption that demonstrates the noncrisp Rough K-means (RKM) clustering for figuring out the ambiguity in chronic disease dataset to improve the performance of the system. The RKM algorithm has clustered data into two sets, namely, the upper approximation and lower approximation. The objects belonging to the upper approximation are favourable objects, whereas the ones belonging to the lower approximation are excluded and identified as ambiguous. These ambiguous objects have been excluded to improve the machine learning algorithms. The machine learning algorithms, namely, nave Bayes (NB), support vector machine (SVM), K-nearest neighbors (KNN), and random forest tree, are presented and compared. The chronic disease data are obtained from the machine learning repository and Kaggle to test and evaluate the proposed model. The experimental results demonstrate that the proposed system is successfully employed for the diagnosis of chronic diseases. The proposed model achieved the best results with naive Bayes with RKM for the classification of diabetic disease (80.55), whereas SVM with RKM for the classification of kidney disease achieved 100 and SVM with RKM for the classification of cancer disease achieved 97.53 with respect to accuracy metric. The performance measures, such as accuracy, sensitivity, specificity, precision, and F -score, are employed to evaluate the performance of the proposed system. Furthermore, evaluation and comparison of the proposed system with the existing machine learning algorithms are presented. Finally, the proposed system has enhanced the performance of machine learning algorithms.
机译:慢性疾病代表了对全球公共卫生的严重威胁。据估计全球所有死亡人数约为60岁,大约43个全球慢性病负担。因此,医疗保健数据的分析有助于卫生官员,患者和医疗保健社区对这些疾病进行早期检测。从医疗保健数据中提取模式帮助医疗保健社区以获得诊断目的的完整医疗数据。提出了本研究工作的目的是改善慢性病监测系统,用于保护人们的生活。为此目的,已经开发了所提出的系统以通过使用机器学习算法来增强慢性疾病的检测。与慢性疾病有关的标准数据已从各种全球资源中收集。在医疗保健数据中,特殊的慢性病包括班级的模棱两可。因此,模糊对象的存在显示了涉及两个或更多个类的特征的可用性,这降低了机器学习算法的准确性。目前的研究工作的新颖性在于假设,以证明非克拉斯粗k-means(RKM)聚类,用于计算慢性疾病数据集中的模糊,以改善系统的性能。 RKM算法将聚类数据分为两组,即上近似和较低的近似。属于上近似的对象是有利的对象,而属于较低近似的物体被排除并被识别为模糊。这些模糊物体已被排除在外以改善机器学习算法。提供机器学习算法,即Nave Bayes(NB),支持向量机(SVM),K到最近邻居(KNN)和随机林树,并进行比较。慢性疾病数据是从机器学习储存库中获得的,以测试和评估所提出的模型。实验结果表明,所提出的系统已成功用于诊断慢性疾病。拟议的模型通过RKM达到糖尿病疾病的分类(80.55)的幼稚贝叶斯获得了最佳结果,而具有RKM的SVM用于肾脏疾病分类100和SVM,RKM为癌症疾病的分类而获得97.53的癌症疾病的分类。公制。采用精度,灵敏度,特异性,精度和 F-芯片等性能测量来评估所提出的系统的性能。此外,提出了具有现有机器学习算法的所提出的系统的评估和比较。最后,提出的系统提高了机器学习算法的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号