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Computer-aided diagnosis system for breast cancer using RF classifier

机译:使用RF分类器的乳腺癌计算机辅助诊断系统

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Breast tumor is the most widely detected tumor and one of the major causes for malignancy demise in ladies around the world. The solution for this is early detection and diagnosis. Artificial Neural Network is used as emerging diagnostic tool for breast cancer. The objective of this research is to diagnose breast cancer with a machine learning method based on random forest classifier. MIAS database is used for the digital mammogram images. Preprocessing is generally needed to improve the low quality of image. ROI is determined according to size of suspicious area. After the suspicious region is segmented, features are extracted by texture analysis. Feature selection technique is used for the detection of High-dimensional features. A statistical method, gray-level co-occurrence matrix (GLCM) is used as a texture attribute to extract the suspicious area. From all extracted features best features are selected with the help of FCBF which is fast correlation-based feature selection technique. Selected features to improve the accuracy of classification are mean, standard deviation, smoothness, angular second moment (ASM), entropy, and correlation. Random Forest (RF) is used as a classifier. The results of present work show that the CAD system using RF classifier is very effective and achieves the best result in the diagnosis of breast cancer.
机译:乳腺肿瘤是最广泛发现的肿瘤,并且是全世界女性恶性肿瘤死亡的主要原因之一。解决方案是早期发现和诊断。人工神经网络被用作新兴的乳腺癌诊断工具。本研究的目的是通过基于随机森林分类器的机器学习方法诊断乳腺癌。 MIAS数据库用于数字乳房X线照片。通常需要预处理以改善低质量的图像。 ROI是根据可疑区域的大小确定的。分割可疑区域后,通过纹理分析提取特征。特征选择技术用于检测高维特征。使用统计方法灰度共生矩阵(GLCM)作为纹理属性来提取可疑区域。从所有提取的特征中,借助基于快速相关性的特征选择技术FCBF选择最佳特征。为提高分类准确性而选择的功能包括平均值,标准偏差,平滑度,第二矩角(ASM),熵和相关性。随机森林(RF)用作分类器。当前工作的结果表明,使用RF分类器的CAD系统非常有效,并且在乳腺癌的诊断中达到了最佳结果。

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