Department of Electrical and Electronics Engineering, Faculty of Engineering, TOBB Ekonomi ve Teknoloji Universitesi, 06530 Söğütözü, Ankara, Turkey.
J Med Syst. 2010 Apr;34(2):179-84. doi: 10.1007/s10916-008-9229-6.
A new approach based on the implementation of k-means clustering is presented for automated detection of erythemato-squamous diseases. The purpose of clustering techniques is to find a structure for the given data by finding similarities between data according to data characteristics. The studied domain contained records of patients with known diagnosis. The k-means clustering algorithm's task was to classify the data points, in this case the patients with attribute data, to one of the five clusters. The algorithm was used to detect the five erythemato-squamous diseases when 33 features defining five disease indications were used. The purpose is to determine an optimum classification scheme for this problem. The present research demonstrated that the features well represent the erythemato-squamous diseases and the k-means clustering algorithm's task achieved high classification accuracies for only five erythemato-squamous diseases.
提出了一种基于实现 k-均值聚类的新方法,用于自动检测红斑鳞屑性疾病。聚类技术的目的是通过根据数据特征找到数据之间的相似性来为给定的数据找到一种结构。所研究的领域包含了已知诊断的患者记录。k-均值聚类算法的任务是将数据点(在这种情况下是具有属性数据的患者)分类到五个聚类之一中。当使用定义五种疾病指征的 33 个特征时,该算法用于检测五种红斑鳞屑性疾病。目的是为这个问题确定一个最优的分类方案。本研究表明,这些特征很好地代表了红斑鳞屑性疾病,并且 k-均值聚类算法的任务仅针对五种红斑鳞屑性疾病就实现了很高的分类精度。