使用图像处理和机器学习进行早期乳腺癌检测的全自动CADx

Monica Ezzat Gamil, Mariam M. Fouad, M. A. E. Ghany, Klaus Hoffinan
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引用次数: 3

摘要

乳腺癌占女性所有癌症的16%。目前的早期检测方法昂贵或计算复杂,因此不适合发展中国家。为此,本文构建了一个基于超声图像的乳腺癌早期实时全自动计算机辅助诊断系统。所提出和实现的设计包括其模块中最先进的技术和方法。实现的设计包括输入超声图像的预处理/滤波、背景图像中感兴趣区域的分割和特征集的计算/提取。采用机器学习算法对肿瘤进行分类。成功实现了令人满意的运行时间,使用相同的特征集,最终精度比以前的工作提高了10%。额外的评估指标,如精确召回图和混淆矩阵,也被用来测试和评估系统的整体平衡性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fully automated CADx for early breast cancer detection using image processing and machine learning
Breast cancer accounts for 16% of all cancers among females. Current early detection methods are expensive or computationally complex and thus unsuitable for developing countries. For this reason, a real-time fully automated Computer Aided Diagnosis system for Breast Cancer early detection from Ultrasound images is built in this paper. The proposed and implemented design comprises into its modules state of the art techniques and methods. The implemented design includes preprocessing/filtering of the input ultrasound image, segmentation of the region of interest from the background image and feature set calculation/extraction. Machine learning algorithms were implemented for classification of the tumour. Successful implementation with satisfactory run time is achieved with a final accuracy improved by 10% from previous work using the same set of features. Additional evaluation metrics like precision-recall plots and confusion matrices were also used to test and evaluate the system overall balanced performance.
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