基于谱聚类算法的胸部疾病图像分类

Jiang-Chun Song, Yuan Gu, E. Kumar
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引用次数: 0

摘要

如今,随着新技术的出现,在公共交通、社区服务、科学研究等不同领域产生了大量的数据。由于人口老龄化,医疗保健在我们的日常生活中变得越来越重要,以减轻公共负担。例如,手动归档大量电子医疗文件(如x射线图像)是不可能的。然而,精确的分类对于进一步的工作,如诊断是必不可少的。在这篇报告中,我们应用光谱聚类算法对胸部疾病x线图像进行分类。我们还使用了“纯”K-means算法进行比较。使用三种类型的指标来量化两种算法的性能。我们的分析结果表明,光谱聚类可以根据肺部的病变斑点成功地对胸部x线图像进行分类,其性能优于“纯”K-means聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chest Disease Image Classification Based on Spectral Clustering Algorithm
Nowadays, the emergence of new technologies gives rise to a huge amount of data in different fields such as public transportation, community services, scientific research, etc. Due to the aging population, healthcare is becoming more important in our daily life to reduce public burdens. For example, manually archiving massive electronic medical files, such as X-ray images, is impossible. However, precise classification is essential for further work, such as diagnosis. In this report, we applied a spectral clustering algorithm to classify chest disease X-ray images. We also employed the "pure" K-means algorithm for comparison. Three types of indexes are used to quantify the performances of both algorithms. Our analysis result shows that spectral clustering can successfully classify chest X-ray images based on the presence of disease spots on the lungs and the performance is superior to “pure" K-means clustering.
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