用于肿瘤检测的显微乳腺癌图像分割

Hamit Altıparmak, Fatih Veysel Nurçin
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引用次数: 0

摘要

乳腺癌是主要影响妇女的严重疾病之一,诊断晚可导致死亡。然而,早期诊断可显著提高生存率,因此非常重要。早期发现乳腺癌有不同的诊断技术。在显微镜下分析乳腺组织样本被认为是诊断乳腺癌的可靠方法。考虑到第三世界国家,为了减少人类的依赖,自动分类技术在许多领域都很流行。我们的目的是用自动化的方式确定样品是恶性的还是良性的。迄今为止,在医学领域和其他领域研究了许多算法。然而,即使对于简单的任务,算法通常也过于复杂。我们提出了一种简单的算法,可以自动区分乳腺组织中的癌变和非癌变样本。这些图像来自近东大学医院,其中包括50张癌症图像和100张健康图像。通过我们的算法,总共正确区分了150幅图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of Microscopic Breast Cancer Images for Cancer Detection
Breast cancer is one of serious diseases that affect mainly woman and late diagnosis can lead to death. However early diagnosis increases survivability significantly, therefore making it very important. There are different diagnosis techniques for early detection of breast cancer. Breast tissue samples analyzed under microscope is considered reliable way to diagnose breast cancer. Automated classification techniques are so popular in many areas in order to reduce human dependency considering third world countries. Our purpose is to determine if sample is malignant or benign in automated manner. Many algorithms are studied so far in medical area along with other areas. However, algorithms are generally too complex even for simple tasks. We propose a simple algorithm that can differentiate cancerous and non-cancerous samples from breast tissue in automated manner. The images were taken from Near East University Hospital which is consisted of 50 cancerous and 100 healthy images. Total of 150 images were correctly differentiated through our algorithm.
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