| Literature DB >> 25227050 |
Peng Li1, Tingting Bi2, Jiuling Huang2, Siben Li2.
Abstract
The frequent occurrence of breast cancer and its serious consequences have attracted worldwide attention in recent years. Problems such as low rate of accuracy and poor self-adaptability still exist in traditional diagnosis. In order to solve these problems, an AdaBoost-SVM classification algorithm, combined with the cluster boundary sampling preprocessing techniques (CBS-AdaBoost-SVM), is proposed in this paper for the early diagnosis of breast cancer. The algorithm uses machine learning method to diagnose the unknown image data. Moreover, not all of the characteristics play positive roles for classification. To address this issue the paper delete redundant features by using Rough set attribute reduction algorithm based on the genetic algorithm (GA). The effectiveness of the proposed methods are examined on DDSM by calculating its accuracy, confusion matrix, and receiver operating characteristic curves, which give important clues to the physicians for early diagnosis of breast cancer.Entities:
Keywords: Computer-aided diagnosis; clustering sampling; image data mining; support vector machine
Mesh:
Year: 2014 PMID: 25227050 DOI: 10.3233/BME-141163
Source DB: PubMed Journal: Biomed Mater Eng ISSN: 0959-2989 Impact factor: 1.300