乳腺癌数据挖掘算法的比较评价

Fuad A. M. Al-Yarimi
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引用次数: 0

摘要

不受控制的乳腺细胞生长是全球妇女死亡的主要原因之一,也是导致乳腺癌的原因。避免乳腺癌相关死亡的唯一方法是通过早期发现和治疗。恶性肿瘤的正确分类是医疗行业最重大的挑战之一。由于其高精度和准确性,机器学习技术被广泛用于识别和分类各种形式的癌症。本综述的作者研究并实施了几种数据挖掘算法,并将它们与目前各种乳腺癌诊断算法的参数和准确性进行了比较,以便临床医生可以使用它们在早期准确检测癌细胞。本文介绍了几种技术,包括支持向量机(SVM)、K星(K*)分类器、加性回归(AR)、反向传播神经网络(BP)和Bagging。这些算法使用一组包含乳腺癌患者肿瘤参数的数据进行训练。对比结果,笔者发现支持向量机和Bagging分别具有最高的精度和准确度。此外,评估为乳腺癌检测提供机器学习技术的研究数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Evaluation of Data Mining Algorithms in Breast Cancer
Unchecked breast cell growth is one of the leading causes of death in women globally and is the cause of breast cancer. The only method to avoid breast cancer-related deaths is through early detection and treatment. The proper classification of malignancies is one of the most significant challenges in the medical industry. Due to their high precision and accuracy, machine learning techniques are extensively employed for identifying and classifying various forms of cancer. Several data mining algorithms were studied and implemented by the author of this review and compared them to the present parameters and accuracy of various algorithms for breast cancer diagnosis such that clinicians might use them to accurately detect cancer cells early on. This article introduces several techniques, including support vector machine (SVM), K star (K*) classifier, Additive Regression (AR), Back Propagation Neural Network (BP), and Bagging. These algorithms are trained using a set of data that contains tumor parameters from breast cancer patients. Comparing the results, the author found that Support Vector Machine and Bagging had the highest precision and accuracy, respectively. Also, assess the number of studies that provide machine learning techniques for breast cancer detection.
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