首页> 外文会议>International Conference on Advances in Electrical and Computer Technologies >Accurate Detection and Diagnosis of Breast Cancer Using Scaled Conjugate Gradient Back Propagation Algorithm and Advanced Deep Learning Techniques
【24h】

Accurate Detection and Diagnosis of Breast Cancer Using Scaled Conjugate Gradient Back Propagation Algorithm and Advanced Deep Learning Techniques

机译:使用缩放共轭梯度背传播算法和高级深度学习技术准确检测和诊断乳腺癌

获取原文

摘要

Purpose Development of breast cancer detection and its usage by different health care industries in their diagnostic center is a very much serious task for classifying cancer cells based on its specific characteristics. As a consequence, the classification process of the cancer becomes incredibly complicated for the potential users because they have a large set of attributes and parameters of the cancer cells which are available at their disposal in laboratory for diagnosis. Moreover, the proposed work gives the efficient decision for the classification of the cancer cells to diagnose the patients at there earlier stage of breast cancer. Design Methodology/approach: In this chapter, it has been proposed a layered neural network model which uses this back propagation algorithm along with scaled conjugate gradient for optimized way of classification of cancer cells by considering the appropriate parameters. Findings: The classification of cancer cells is evaluated using the proposed algorithm by designing a layered neural network model. For training the model, 70% of instances are used, for verification, 15% instances and for testing, 15% instances are used of 699 samples. After successful training of the model, the model classifies the cancers as benign (2) or malignant (4). Originality/value: The proposed methodology is an original scientific work and the algorithm used is an efficient algorithm for the classification of cancer cells. In this work, eleven data attributes are used for the classification from cancer data set.
机译:目的乳腺癌检测的目的培养及其不同医疗产业在诊断中心的用法是基于其特定特征对癌细胞进行分类的非常严重的任务。因此,癌症的分类过程对潜在用户变得非常复杂,因为它们具有大量的癌细胞的属性和参数,这些属性和参数可在实验室进行诊断。此外,所提出的作品为癌细胞进行了有效的决定,以诊断患者在早期的乳腺癌阶段。设计方法/方法:在本章中,已经提出了一种层状神经网络模型,其使用该后传播算法以及通过考虑适当的参数而具有缩放的缀合物梯度,以便通过考虑适当的参数进行癌细胞的分类方式。结果:通过设计分层神经网络模型,使用所提出的算法评估癌细胞的分类。对于培训模型,使用70%的实例,用于验证,15%的实例和测试,使用699个样本的15%实例。在成功培训模型后,该模型将癌症分类为良性(2)或恶性(4)。原创性/值:所提出的方法是原始的科学工作,使用的算法是癌细胞分类的有效算法。在这项工作中,11个数据属性用于癌症数据集的分类。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号