The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
Histopathological Image Analysis in Medical Decision Making: Classification of Histopathological Images Based on Deep Learning Model
|
Author(s): R. Meena Prakash (Sethu Institute of Technology, India)and Shantha Selva Kumari R. (Mepco Schlenk Engineering College, India)
Copyright: 2019
Pages: 15
Source title:
Histopathological Image Analysis in Medical Decision Making
Source Author(s)/Editor(s): Nilanjan Dey (Techno India College of Technology, India), Amira S. Ashour (Tanta University, Egypt), Harihar Kalia (Seemantha Engineering College, India), R.T. Goswami (Techno India College of Technology, India)and Himansu Das (KIIT University, India)
DOI: 10.4018/978-1-5225-6316-7.ch006
Purchase
|
Abstract
Digital pathology is one of the significant methods in the medicine field to diagnose and treat cancer. The cell morphology and architecture distribution of biopsies are analyzed to diagnose the spread and severity of the disease. Manual analyses are time-consuming and subjected to intra- and inter-observer variability. Digital pathology and computer-aided analysis aids in enormous applications including nuclei detection, segmentation, and classification. The major challenges in nuclei segmentation are high variability in images due to differences in preparation of slides, heterogeneous structure, overlapping clusters, artifacts, and noise. The structure of the proposed chapter is as follows. First, an introduction about digital pathology and significance of digital pathology techniques in cancer diagnosis based on literature survey is given. Then, the method of classification of histopathological images using deep learning for different datasets is proposed with experimental results.
Related Content
Amy Moy.
© 2022.
19 pages.
|
Kristen L. Kerber.
© 2022.
11 pages.
|
Kristen L. Kerber.
© 2022.
12 pages.
|
Gayathri Srinivasan.
© 2022.
23 pages.
|
Jacky K. W. Kong.
© 2022.
19 pages.
|
Iason Mantagos.
© 2022.
11 pages.
|
M. H. Esther Han.
© 2022.
29 pages.
|
|
|