Feature subset selection for classification of malignant and benign breast masses in digital mammography

被引:0
作者
Ramzi Chaieb
Karim Kalti
机构
[1] Sousse University,LATIS
来源
Pattern Analysis and Applications | 2019年 / 22卷
关键词
Breast cancer; Computer-aided diagnosis (CAD); Characterization; Selection; Classification; Evaluation;
D O I
暂无
中图分类号
学科分类号
摘要
Computer-aided diagnosis of breast cancer is becoming increasingly a necessity given the exponential growth of performed mammograms. In particular, the breast mass diagnosis and classification arouse nowadays a great interest. Texture and shape are the most important criteria for the discrimination between benign and malignant masses. Various features have been proposed in the literature for the characterization of breast masses. The performance of each feature is related to its ability to discriminate masses from different classes. The feature space may include a large number of irrelevant ones which occupy a lot of storage space and decrease the classification accuracy. Therefore, a feature selection phase is usually needed to avoid these problems. The main objective of this paper is to select an optimal subset of features in order to improve masses classification performance. First, a study of various descriptors which are commonly used in the breast cancer field is conducted. Then, selection techniques are used in order to determine the most relevant features. A comparative study between selected features is performed in order to test their ability to discriminate between malignant and benign masses. The database used for experiments is composed of mammograms from the MiniMIAS database. Obtained results show that Gray-Level Run-Length Matrix features provide the best result.
引用
收藏
页码:803 / 829
页数:26
相关论文
共 78 条
  • [1] Razavi AR(2007)Predicting metastasis in breast cancer: comparing a decision tree with domain experts J Med Syst 31 263-273
  • [2] Gill H(1995)Benefit of mammography screening in women ages 40 to 49 years: current evidence from randomized controlled trials Cancer 75 1619-1626
  • [3] Ahlfeldt H(2001)The life-sparing potential of mammographic screening Cancer 91 1699-1703
  • [4] Shahsavar N(1985)Reduction in mortality from breast cancer after mass screening with mammography Lancet 1 829-832
  • [5] Smart CR(1992)Analysis of cancers missed at screening mammography Radiology 184 613-617
  • [6] Hendrick RE(2009)A survey of image processing algorithms in digital mammography J Recent Adv Multimedia Signal Process Commun 231 631-657
  • [7] Rutledge JH(2010)A review of automatic mass detection and segmentation in mammographic images Med Image Anal 14 87-110
  • [8] Smith RA(2009)Toward breast cancer diagnosis based on automated segmentation of masses in mammograms Pattern Recognit 42 1138-1148
  • [9] Cady B(2009)‘Computer-aided detection and diagnosis of breast cancer with mammography: recent advances Inf Technol Biomed IEEE Trans IEEE 13 236-251
  • [10] Michaelson JS(2009)CADx of mammographic masses and clustered microcalcifications a review Med Phys Am Assoc Phys Med 36 2052-2068