改进超声乳腺肿瘤分类的卷积神经网络深度学习模型

Hiba Alrubaie, Hadeel K. Aljobouri, Zainab J. AL-Jobawi, Ilyas Çankaya
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引用次数: 1

摘要

乳腺癌是伊拉克女性中最常见的肿瘤之一。医学超声成像因其易用性、低成本和安全性已成为乳腺肿瘤成像的常用方式。本研究采用卷积神经网络(CNN)特征提取方法对乳腺超声图像进行分类。使用的CNN模型由四层组成,用于乳腺癌超声图像分析。使用了两种类型的免费数据集。将这些数据分为A组和B组。A组分为良性、恶性和正常三组,B组分为良性和恶性两组。根据准确率、精密度、F1评分和召回率对该方法进行了评价。该模型对数据A的分类准确率为96%,对数据B的分类准确率为100%。
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Convolutional Neural Network Deep Learning Model for Improved Ultrasound Breast Tumor Classification
Breast cancer is one of the greatest frequent tumours among females in Iraq. Medical ultrasound imaging has become a common modality for breast tumour imaging because of its ease of use, low cost, and safety. In the present study, Convolutional Neural Network (CNN) feature extraction approaches were used to classify breast ultrasound imaging. The CNN model used is composed of four-layer for breast cancer ultrasound image analysis. Two types of free datasets were used. These data were divided into groups A and B. Group A has three classes, namely benign, malignant and normal, while group B has two classes, namely, benign and malignant. The proposed technique was assessed based on its accuracy, precision, F1 score and recall. The model's classification accuracy for data A was 96%, whereas for data B was 100%.
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