Bone Cancer Identification and Separation Using K-Means and KNN Classifiers

S. Shashikala, H. Uma, A. N. Sunad Kumara, N. Taranath, Lokesh Singh, D. Sisodia
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引用次数: 1

Abstract

The unregulated cell growth will lead to the dangerous and deadliest cancer disease. In the body of humans various kinds of cancer has been detected, after going on many researches. Among all these, bone cancer is the one which will spread more widely, because of this it will leads to death. There is no anticipation for the bone cancer, therefore the bone cancer detection is more critical. Nowadays, methods like data mining and the image processing methods are utilized for the most of the studies in the process of medical image analysis. Many scientific researchers have been predicted the data, related websites and the collection of knowledge from the large databases. There are many methods used in the approaches for bone cancer detection and classification like supports vector machines, Association rule mining and fuzzy theory. In this approach of segmentation k-means will be utilized for segmenting the bone regions. In further processes for bone cancer detection the segmented image will be used by the mean intensity evaluation of the area identified. To check whether there is a presence or absence of bone cancer in the medical images that is for the classification process threshold values are used. This approach can be used for jpeg images, CT scan images. The proposed work will use the K-Nearest Neighbor (KNN) classifier as a classification technique and achieved to produce better accuracy.
使用K-Means和KNN分类器识别和分离骨癌
不受控制的细胞生长将导致危险和致命的癌症疾病。经过多次研究,在人体内已经发现了各种各样的癌症。在所有这些癌症中,骨癌是一种传播范围更广的癌症,因为它会导致死亡。骨癌的发生是没有预见性的,因此骨癌的检测更为关键。目前,医学图像分析的研究大多采用数据挖掘和图像处理等方法。许多科研人员已经从大型数据库中收集了预测数据、相关网站和知识。骨癌的检测和分类方法有很多,如支持向量机、关联规则挖掘和模糊理论。在这种分割方法中,k-means将用于分割骨区域。在骨癌检测的进一步过程中,分割图像将被用于对识别区域的平均强度评估。为了检查医学图像中是否存在骨癌,使用阈值进行分类过程。此方法可用于jpeg图像、CT扫描图像。提出的工作将使用k -最近邻(KNN)分类器作为分类技术,并实现产生更好的准确性。
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