Higher Order Statistical Analysis in Multiresolution Domain - Application to Breast Cancer Histopathology

被引:0
|
作者
Vaishali, Durgamahanthi [1 ]
Priya, P. Vishnu [1 ]
Govind, Nithyasri [1 ]
Prabha, K. Venkat Ratna [1 ]
机构
[1] SRM Inst Sci & Technol, Dept Elect & Commun Engn, Chennai 600026, Tamil Nadu, India
来源
关键词
Computer assisted diagnostics; CAD; Grey Level Run Length Matrix; GLRLM; Support vector machine; SVM; Texture analysis; Multiresolution analysis; Wavelet transforms; WAVELET; CLASSIFICATION;
D O I
10.1007/978-3-030-76352-7_45
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Objective is to analyze textures in breast histopathology images for cancer diagnosis. Background: It is observed that breast cancer has second highest mortality rate in women. Detection of cancer in early stages can give more treatment options and thus reduce the mortality rate. In cancer diagnosis using histopathology images, histologists examine biopsy samples based on cell morphology, tissue distribution, randomness in their growth or placements. These methods are time taking and sometime leads to incorrect diagnosis. These methods are highly subjective/arbitrary. The new techniques use computers, archived data and standard algorithms to provide fast and accurate results. Material & Methods: In this work we have proposed a multiresolution statistical model in wavelet domain. The primary idea is to study complex random field of histopathology images which contain long-range and nonlinear spatial interactions in wavelet domain. This model emphasizes the contribution of Gray level Run LengthMatrix (GLRLM) and related higher order statistical features in wavelet subbands. The image samples are taken from `BreaKhis' database. The standard database generated in collaboration with the P&D Laboratory-Pathological Anatomy and Cytopathology, Parana, Brazil. This study has been designed for breast cancer histopathology images of ductal carcinoma. GLRLM feature dataset further classified by SVM classifier with linear kernel. The classification accuracies of signal resolution and multiresolution have been compared. Results: The results show that the GLRLM based features provides exceptional distinguishing features for multiresolution analysis of histopathology images. Apart from recent deep learning method this study proposes use of higher order statistics to gain stronger image features. These features carry inherent discriminative properties. This higher order statistical model will be suitable for cancer detection. Conclusion: This work proposes automated diagnosis. Tumor spatial heterogeneity is the main concern in analyzing, diagnosing and grading cancer. This model focuses on Long range spatial dependencies in heterogeneous spatial process and offers solutions for accurate classification in two class problems. The work describes an innovative way of using GLRLM based textural features to extract underlying information in breast cancer images.
引用
收藏
页码:495 / 508
页数:14
相关论文
共 50 条
  • [41] POINTS CLASSIFICATION BY A SEQUENTIAL HIGHER - ORDER MOMENTS STATISTICAL ANALYSIS OF LIDAR DATA
    Crosilla, F.
    Macorig, D.
    Sebastianutti, I.
    Visintini, D.
    ISPRS WORKSHOP LASER SCANNING 2011, 2011, 38-5 (W12): : 1 - 6
  • [42] Multiresolution and Multiscale Geometric Analysis based Breast Cancer Diagnosis using weighted SVM
    Wang, Yang
    Yin, Miaomiao
    PROCEEDINGS OF THE 2015 INTERNATIONAL CONFERENCE ON MECHANICAL SCIENCE AND ENGINEERING, 2016, 66
  • [43] Breast Cancer Detection, Segmentation and Classification on Histopathology Images Analysis: A Systematic Review
    Krithiga, R.
    Geetha, P.
    ARCHIVES OF COMPUTATIONAL METHODS IN ENGINEERING, 2021, 28 (04) : 2607 - 2619
  • [44] Breast Cancer Detection, Segmentation and Classification on Histopathology Images Analysis: A Systematic Review
    R. Krithiga
    P. Geetha
    Archives of Computational Methods in Engineering, 2021, 28 : 2607 - 2619
  • [45] First order statistical feature for breast cancer detection using thermal images
    Nurhayati, Oky Dwi
    Widodo, Thomas Sri
    Susanto, Adhi
    Tjokronagoro, Maesadji
    World Academy of Science, Engineering and Technology, 2010, 46 : 424 - 426
  • [46] Assessing Domain Adaptation Techniques for Mitosis Detection in Multi-scanner Breast Cancer Histopathology Images
    Breen, Jack
    Zucker, Kieran
    Orsi, Nicolas M.
    Ravikumar, Nishant
    BIOMEDICAL IMAGE REGISTRATION, DOMAIN GENERALISATION AND OUT-OF-DISTRIBUTION ANALYSIS, 2022, 13166 : 14 - 22
  • [47] Category-weight instance fusion learning for unsupervised domain adaptation on breast cancer histopathology images
    Zhang, Chenrui
    Chen, Ping
    Lei, Tao
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2025, 99
  • [48] Time domain analysis of UWB breast cancer detection
    Liu, W.
    Jafari, H. M.
    Hranilovic, S.
    Deen, M. J.
    2006 23RD BIENNIAL SYMPOSIUM ON COMMUNICATIONS, 2006, : 336 - +
  • [49] STABILITY ANALYSIS OF HIGHER-ORDER TIME-DOMAIN PARAXIAL EQUATIONS
    ORCHARD, BJ
    SIEGMANN, WL
    HABETLER, GJ
    JACOBSON, MJ
    JOURNAL OF THE ACOUSTICAL SOCIETY OF AMERICA, 1993, 93 (03): : 1335 - 1346
  • [50] EFFICIENT TIME-DOMAIN ANALYSIS OF WAVEGUIDE DISCONTINUITIES USING HIGHER ORDER FEM IN FREQUENCY DOMAIN
    Klopf, E. M.
    Manic, S. B.
    Ilic, M. M.
    Notaros, B. M.
    PROGRESS IN ELECTROMAGNETICS RESEARCH-PIER, 2011, 120 : 215 - 234