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Cellular Automata Based Model for E-Healthcare Data Analysis

机译:基于元胞自动机的电子医疗数据分析模型

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摘要

E-healthcare is warm area of research and a number of algorithms have been applied to classify healthcare data. In the healthcare field, a large amount of clinical data is generated through MRI, CT scans, and other diagnostic tools. Healthcare analytics are used to analyze the clinical data of patient records, disease diagnosis, cost, hospital management, etc. Analytical techniques and data visualization are used to get the real time information. Further, this information can be used for decision making. Also, this information is useful for the better treatment of patients. In this work, an improved big bang-big crunch (BB-BC) based clustering algorithm is applied to analyze healthcare data. Cluster analysis is an important task in the field of data analysis and can be used to understand the organization of data. In this work, two healthcare datasets, CMC and cancer, are used and the proposed algorithm obtains better results when compared to MEBB-BC, BB-BC, GA, PSO and K-means algorithms. The performance of the improved BB-BC algorithm is also examined against benchmark clustering datasets. The simulation results showed that proposed algorithm improves the clustering results significantly when compared to other algorithms.
机译:电子医疗保健是研究的热点领域,并且已经应用​​了许多算法对医疗保健数据进行分类。在医疗保健领域,通过MRI,CT扫描和其他诊断工具可以生成大量临床数据。医疗保健分析用于分析患者记录,疾病诊断,成本,医院管理等的临床数据。分析技术和数据可视化用于获取实时信息。此外,该信息可以用于决策。同样,此信息对于更好地治疗患者很有用。在这项工作中,基于改进的大爆炸算法(BB-BC)的聚类算法被应用于分析医疗数据。聚类分析是数据分析领域中的一项重要任务,可用于了解数据的组织。在这项工作中,使用了两个医疗数据集CMC和癌症,与MEBB-BC,BB-BC,GA,PSO和K-means算法相比,该算法获得了更好的结果。还针对基准聚类数据集检查了改进的BB-BC算法的性能。仿真结果表明,与其他算法相比,该算法显着提高了聚类结果。

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