基于自适应FLAME的骨癌检测分割与分类

Augustine George, B. Ayshwarya
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引用次数: 0

摘要

骨癌,也被称为骨肉瘤,是一种在骨骼中生长异常组织的罕见癌症。这种恶性肿瘤极有可能转移。正因为如此,骨癌的早期分类和检测现在是预测患者治愈的最重要的变量。基于局部近似隶属度的自适应模糊聚类(AFLAME)是一种用于研究识别骨癌的潜在策略的方法。对于各种各样的应用,骨肿瘤的准确分类和分割是绝对必要的步骤。然而,实现这一目标一直很困难,因为许多方法,如医学成像技术,没有足够的非均匀性和对比度强度来实现这一目标。这使得实现目标的过程更具挑战性。使用支持向量机(SVM)分类器完成分类过程。在这项研究中,我们提供了一种新的骨癌分割方法,为研究这一重要课题开辟了新的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive FLAME based segmentation and classification for bone cancer detection
Bone cancer, also known as bone sarcoma, is a rare cancer that grows abnormal tissue in bones. This malignancy is highly likely to metastasize. Because of this, early classification and detection of bone cancer are now the most essential variables in predicting a patient's cure. An adaptive fuzzy clustering by local approximation of mEmbership (AFLAME) was developed as a method for investigating a potential strategy for identifying bone cancer in this body of work. For a wide variety of applications, accurate classification and segmentation of bone tumors are absolutely necessary steps. However, getting there has been tough because many methods, like medical imaging techniques, don't have enough non-homogeneous and contrast intensity to accomplish the goal. This makes progress toward the objective more challenging. Support vector machine (SVM) classifiers are used to complete the classification process. In this study, we provide a new method for segmenting bone cancer, opening up new avenues of inquiry into this important topic.
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