Skip to main content

Lund University Publications

LUND UNIVERSITY LIBRARIES

Cancer biomarker assessment using evolutionary rough multi-objective optimization algorithm

Sarkar, Anasua LU orcid and Maulik, Ujjwal (2014) p.509-536
Abstract

A hybrid unsupervised learning algorithm, which is termed as Evolutionary Rough Multi-Objective Optimization (ERMOO) algorithm, is proposed in this chapter. It comprises a judicious integration of the principles of the rough sets theory with the archived multi-objective simulated annealing approach. While the concept of boundary approximations of rough sets in this implementation deals with the incompleteness in the dynamic classification method with the quality of classification coefficient as the classificatory competence measurement, it enables faster convergence of the Pareto-archived evolution strategy. It incorporates both the rough set-based dynamic archive classification method in this algorithm. A measure of the amount of... (More)

A hybrid unsupervised learning algorithm, which is termed as Evolutionary Rough Multi-Objective Optimization (ERMOO) algorithm, is proposed in this chapter. It comprises a judicious integration of the principles of the rough sets theory with the archived multi-objective simulated annealing approach. While the concept of boundary approximations of rough sets in this implementation deals with the incompleteness in the dynamic classification method with the quality of classification coefficient as the classificatory competence measurement, it enables faster convergence of the Pareto-archived evolution strategy. It incorporates both the rough set-based dynamic archive classification method in this algorithm. A measure of the amount of domination between two solutions is incorporated in this chapter to determine the acceptance probability of a new solution with an improvement in the spread of the nondominated solutions in the Pareto-front by adopting rough sets theory. The performance is demonstrated on real-life breast cancer dataset for identification of Cancer Associated Fibroblasts (CAFs) within the tumor stroma, and the identified biomarkers are reported. Moreover, biological significance tests are carried out for the obtained markers.

(Less)
Please use this url to cite or link to this publication:
author
and
publishing date
type
Chapter in Book/Report/Conference proceeding
publication status
published
host publication
Handbook of Research on Artificial Intelligence Techniques and Algorithms
pages
509 - 536
publisher
IGI Global
external identifiers
  • scopus:84957071811
ISBN
9781466672598
1466672587
9781466672581
DOI
10.4018/978-1-4666-7258-1.ch016
language
English
LU publication?
no
id
97a6f02d-4dca-43cf-bdaf-510c6b792bca
date added to LUP
2018-10-09 09:50:21
date last changed
2024-10-15 09:02:16
@inbook{97a6f02d-4dca-43cf-bdaf-510c6b792bca,
  abstract     = {{<p>A hybrid unsupervised learning algorithm, which is termed as Evolutionary Rough Multi-Objective Optimization (ERMOO) algorithm, is proposed in this chapter. It comprises a judicious integration of the principles of the rough sets theory with the archived multi-objective simulated annealing approach. While the concept of boundary approximations of rough sets in this implementation deals with the incompleteness in the dynamic classification method with the quality of classification coefficient as the classificatory competence measurement, it enables faster convergence of the Pareto-archived evolution strategy. It incorporates both the rough set-based dynamic archive classification method in this algorithm. A measure of the amount of domination between two solutions is incorporated in this chapter to determine the acceptance probability of a new solution with an improvement in the spread of the nondominated solutions in the Pareto-front by adopting rough sets theory. The performance is demonstrated on real-life breast cancer dataset for identification of Cancer Associated Fibroblasts (CAFs) within the tumor stroma, and the identified biomarkers are reported. Moreover, biological significance tests are carried out for the obtained markers.</p>}},
  author       = {{Sarkar, Anasua and Maulik, Ujjwal}},
  booktitle    = {{Handbook of Research on Artificial Intelligence Techniques and Algorithms}},
  isbn         = {{9781466672598}},
  language     = {{eng}},
  month        = {{11}},
  pages        = {{509--536}},
  publisher    = {{IGI Global}},
  title        = {{Cancer biomarker assessment using evolutionary rough multi-objective optimization algorithm}},
  url          = {{http://dx.doi.org/10.4018/978-1-4666-7258-1.ch016}},
  doi          = {{10.4018/978-1-4666-7258-1.ch016}},
  year         = {{2014}},
}