Impressive predictive model for Breast Cancer based on Machine Learning

Saravanakumar Selvaraj, S. Thangavel, M. Prabhakaran, T. Sathish
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Abstract

INTRODUCTION: Breast cancer is a major health concern for women all over the world. OBJECTIVES: In order to reduce mortality rates and provide the most effective treatment, Histopathology image prognosis is essential. When a pathologist examines a biopsy specimen under a microscope, they are engaging in histopathology. The pathologist looks for the picture, determines its type, labels it, and assigns a grade. METHODS: Tissue architecture, cell distribution, and cellular form all play a role in determining whether a histopathological scan is benign or malignant. Manual picture classification is the slowest and most error-prone method. Automated diagnosis based on machine learning is necessary for early and precise diagnosis, but this challenge has prevented it from being addressed thus far. In this study, we apply curvelet transform to a picture that has been segmented using k-means clustering to isolate individual cell nuclei. RESULTS: We analysed data from the Wisconsin Diagnosis Breast Cancer database for this article in the context of similar studies in the literature. CONCLUSION: It is demonstrated that compared to another machine learning algorithm, the IICA-ANN IICA-KNN and IICA-SVM-KNN method using the logistic algorithm achieves 98.04% accuracy.
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基于机器学习的乳腺癌预测模型令人印象深刻
简介:乳腺癌是全世界妇女关注的主要健康问题。目的:为了降低死亡率并提供最有效的治疗,组织病理学图像预后至关重要。病理学家在显微镜下检查活检标本时,就是在进行组织病理学检查。病理学家查找图片,确定其类型,贴上标签,并评定等级。方法:组织结构、细胞分布和细胞形态在确定组织病理学扫描结果是良性还是恶性方面都起着重要作用。人工图片分类是最慢且最容易出错的方法。基于机器学习的自动诊断是早期精确诊断的必要条件,但这一难题至今仍未得到解决。在本研究中,我们对使用 k-means 聚类方法分割的图片进行了小曲线变换,以分离出单个细胞核。结果:我们分析了威斯康星诊断乳腺癌数据库中的数据,并结合文献中的类似研究结果撰写了这篇文章。结论:结果表明,与另一种机器学习算法相比,使用逻辑算法的 IICA-ANN IICA-KNN 和 IICA-SVM-KNN 方法达到了 98.04% 的准确率。
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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