Madhuri Avula, Narasimha Prasad Lakkakula, M. Raja
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引用次数: 36
Abstract
Cancer is a dangerous disease, which is caused because of unregulated cell growth. After many researches, almost 100 different types of cancer has been detected in human body. Out of these, one of the most widely spread is bone cancer, which leads to death. The detection of bone cancer is very critical and which has no anticipation. Presently, most of the study is done by using data mining methods and the image processing techniques for medical image analysis process. The data and the knowledge collecting from large databases and related websites have been predictable by many scientific researchers. Association rule mining, supports vector machines, fuzzy theory and probabilistic neural networks and learning vector quantization are the mostly used methods for detection and classification of bone cancer. This paper used k means clustering algorithm for bone image segmentation. The segmented image is further processed for bone cancer detection by evaluating the mean intensity the identified area. Threshold values are proposed for the classification of medical images for the presence or absence of bone cancer. This method uses jpeg images, but also applicable for original format of DICOM (digital imaging communication of medicine) medical images if any modifications are done. The results using this method gives 95% accuracy with less computational time.
癌症是一种危险的疾病,它是由不受控制的细胞生长引起的。经过多次研究,已经在人体中发现了近100种不同类型的癌症。其中,最广泛传播的一种是骨癌,它会导致死亡。骨癌的发现是非常关键的,并且没有任何预见性。目前,大多数研究都是利用数据挖掘方法和图像处理技术对医学图像进行分析。从大型数据库和相关网站收集的数据和知识已经被许多科学研究人员预测。关联规则挖掘、支持向量机、模糊理论和概率神经网络以及学习向量量化是骨癌检测和分类的常用方法。本文采用k均值聚类算法对骨骼图像进行分割。通过评估识别区域的平均强度,对分割后的图像进行进一步处理,用于骨癌检测。提出了用于骨癌存在或不存在的医学图像分类的阈值。该方法使用jpeg格式的图像,但也适用于DICOM (digital imaging communication of medicine)医学图像的原始格式,如有修改。该方法的计算精度达到95%,计算时间较短。