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Classification Methods to Improve Performance in Breast Cancer Screening

机译:用于提高乳腺癌筛查性能的分类方法

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Breast cancer is a very aggressive type of cancer with a very low median survival. Today the deaths of women in the age group 15-55 are increasing because of malignant cells are increasing in breast. For the death of women it is the main cause. So, the possibility of improvement is only the early diagnosis of patients. Machine Learning (ML) techniques can assist the physicians by expanding tools for detection at initial stage and analysis of breast cancer thus increasing the probability of patient's survival [1]. At present, mammography is the best imaging strategy utilized by radiologist for screening breast tumours. In this paper, author proposes a system using different classification method like Support Vector Machine (SVM), Naive Bayes, Decision tree and MLP (Multi-Layer Perceptron) for early detection of cancer. Propose system extracts the texture based features and shape based features using LBP, GLCM, Otsu, Compactness, Fourier Transform. The main focus of the presented work is on application of MLP for breast cancer classification. In addition medical images data has been used to improve accuracy. Proposed system will do the comparative study between both datasets by extracting the feature with and without removing pectoral muscles.
机译:乳腺癌是一种非常具有侵略性的癌症,其中位生存期非常低。今天,由于乳腺癌中恶性细胞的增多,15-55岁年龄段的女性死亡人数正在增加。对于妇女的死亡,这是主要原因。因此,改善的可能性仅仅是患者的早期诊断。机器学习(ML)技术可以通过扩展用于乳腺癌的初始检测和分析的工具来协助医生,从而增加患者存活的可能性[1]。目前,乳腺X线摄影是放射科医生用来筛查乳腺肿瘤的最佳成像策略。在本文中,作者提出了一种使用支持​​向量机(SVM),朴素贝叶斯,决策树和MLP(多层感知器)之类的不同分类方法的癌症早期检测系统。提议系统使用LBP,GLCM,Otsu,Compactness,Fourier变换提取基于纹理的特征和基于形状的特征。提出的工作的主要重点是将MLP用于乳腺癌分类。另外,医学图像数据已被用于提高准确性。拟议的系统将通过在不移除和不移除胸肌的情况下提取特征来对两个数据集进行比较研究。

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