Image Processing & Neural Network Based Breast Cancer Detection

Marwan Abo Zanona
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引用次数: 2

Abstract

A large percentage of cancer patients are breast cancer patients. The main available methodology to examine the breast cancer is the Mammography. It detects the signs of breast cancer as different signs supports the experts’ decision. Actually, the Mammography is based on human perception and observations. So, build an AI computerized system will take major role in early signs detection. This paper presents an image processing with aid of artificial neural networks computations for computerized signs detection and exploration of breast cancer. The input material is the mammogram images, and the output helps the pathologists to take a decision. A set of input mammogram images was used for development, testing, and evaluation. The mammographic image will be preprocessed and then the features will be extracted using discrete wavelet transformation with aid of Weiner filtration. A historical data of extracted features were used to train a neural network, while the historical extracted features contains both Cancer and non-Cancer images. The combination of neural network machine learning, and rigid image processing techniques resulted accurate outputs. The methodology and results are showed and discussed later in this paper.
基于图像处理和神经网络的乳腺癌检测
很大一部分癌症患者是乳腺癌患者。检查乳腺癌的主要方法是乳房x光检查。它检测乳腺癌的迹象,因为不同的迹象支持专家的决定。实际上,乳房x光检查是基于人类的感知和观察。因此,建立一个人工智能计算机系统将在早期症状检测中发挥重要作用。本文提出了一种基于人工神经网络计算的图像处理方法,用于乳腺癌的计算机体征检测和探查。输入材料是乳房x光片图像,输出帮助病理学家做出决定。一组输入的乳房x线照片用于开发、测试和评估。对乳房x线图像进行预处理,然后利用离散小波变换结合维纳滤波提取特征。提取的历史特征数据用于训练神经网络,而历史提取的特征同时包含癌症和非癌症图像。神经网络机器学习和严格的图像处理技术的结合产生了准确的输出。本文稍后将展示和讨论方法和结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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