基于ABC-ELM算法的乳腺肿瘤检测与分类

Haymanot Derebe Bizuneh, Satyasis Mishra, Workineh Geleta Negassa
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摘要

分析医学图像和决定健康问题需要一个混合智能系统。今天,癌症是全世界死亡人数最多的疾病。最常见的肿瘤疾病是乳腺癌。以前用于检测和分类乳腺肿瘤的算法不断改进,直到产生成功的结果。用于检测和分类乳腺肿瘤的机器学习技术一直是许多研究的主题。针对乳腺肿瘤的识别与分类,我们提出了人工蜂群极限学习机(ABC-ELM)算法。本文旨在改进乳腺肿瘤识别与分类算法,利用Morlet小波变换进行特征提取和肿瘤分割。通过提取相关特征并使用ABC算法改进ELM分类器的参数,将乳房图像分类为恶性或非癌性。结果表明,该方法的准确度为98.2%,灵敏度为98.5%,精密度为98.5%。
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Breast Tumor Detection and Classification Using ABC-ELM Algorithm
Analyzing medical images and deciding on health issues require a hybrid intelligence system. Today, cancer is the illness that kills the most people worldwide. The most common type of tumor sickness is breast cancer. The previously employed algorithms for detecting and classifying breast tumors kept getting better until they produced successful results. Machine learning techniques for detecting and classifying breast tumors have been the subject of numerous studies. For breast tumor identification and classification, we proposed the Artificial Bee Colony Extreme Learning Machine (ABC-ELM) algorithm. We aim to improve the breast tumor identification and classification algorithm using the Morlet wavelet transform for feature extraction and tumor segmentation. Breast images are classified as malignant or non-cancerous by extracting pertinent features and improving the ELM classifier's parameters using the ABC algorithm. As a result, the proposed method performs best compared to earlier comparative research, achieving an accuracy of 98.2%, Sensitivity is 98.5%, and precision 98.5%.
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