基于SVM-ANN优化的乳腺癌数据良恶性分类算法

Nathiya S, Sumitha J, V. M, S. S., Sathana G
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引用次数: 2

摘要

乳腺癌是妇女中第二大最普遍的癌症,也是最致命的癌症,每天造成越来越多的女性死亡。接受晚期诊断的乳腺癌患者死亡的可能性更高,生存的可能性也会降低。正在实施许多研究项目,以改进乳腺癌的快速鉴定。尽管存在许多预测乳腺癌的医学诊断技术,但在早期阶段预测乳腺癌仍然很困难。这项研究的主要目的是建立一种预测模型,能够更早地识别乳腺癌,提高生存率。本研究利用威斯康星乳腺癌(原始)数据集,利用k -最近邻算法(KNN)、支持向量机算法(SVM)和人工神经网络算法(ANN)等数据挖掘技术对乳腺癌进行预测,并提出了一种新的模型SVM-ANN优化算法。为了充分评估这些算法的有效性,我们采用了包括准确率、精密度和召回率在内的各种参数来比较这些算法的结果。最后,SVM-ANN优化算法以97%的准确率显著优于其他现有算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SVM-ANN Optimized Algorithm for the Classification of Breast Cancer Data as Benign and Malignant
The second most widespread cancer in women, breast cancer, is the most lethal and is responsible for an increasing number of daily deaths in females. Breast cancer patients who receive an advanced diagnosis have a higher probability of dying and reduces the probability of surviving. Numerous research projects are being implemented in order to improve breast cancer rapid identification. Despite the existence of numerous medical diagnostic techniques for predicting breast cancer, it remains difficult to anticipate breast cancer at its earliest stages. The major objective of this research is to establish a predictive model that could really identify breast cancer earlier on and increase survival rates. The Wisconsin Breast Cancer (Original) Dataset is utilized in this research to forecast breast cancer utilizing techniques from data mining like K-Nearest Neighbor Algorithm(KNN), Support Vector Machine Algorithm(SVM), and Artificial Neural Network Algorithm(ANN), a new model SVM-ANN optimized algorithm is also proposed. A variety of parameters which including Accuracy, Precision, and Recall, have been employed to compare the results of these algorithms in order to fully evaluate their effectiveness. Finally, with a 97 percent accuracy rate, the proposed algorithm SVM-ANN optimized algorithm significantly outperformed other current algorithms.
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