Local cover image
Local cover image
Image from Google Jackets

Genetic algorithm optimization of feature selection for medical image classification

By: Contributor(s): Publication details: Chennai ICT Academy 2024Edition: Vol.14(4), AprDescription: 3354-3360pSubject(s): Online resources: In: ICTACT Journal on Soft Computing (IJSC)Summary: Medical image classification plays a pivotal role in diagnosing various diseases. However, selecting informative features from these images remains a challenging task due to the high dimensionality and complexity of the data. Genetic algorithms (GAs) offer a promising approach for feature selection in medical image classification tasks by mimicking the process of natural selection to evolve optimal solutions. This study proposes a genetic algorithm optimization framework for feature selection in medical image classification. The GA iteratively searches the feature space to find the subset of features that maximizes the classification performance. Fitness evaluation is based on a classifier’s performance using selected features, and genetic operators such as crossover and mutation are applied to produce new generations of feature subsets. The proposed framework contributes to enhancing the efficiency and effectiveness of medical image classification by identifying relevant features. By employing GAs, it overcomes the limitations of traditional feature selection methods and adapts to the complexity of medical image data. Experimental results on benchmark medical image datasets demonstrate the effectiveness of the proposed approach. Significant improvements in classification accuracy and computational efficiency are observed compared to baseline methods. Moreover, the selected features exhibit robustness across different classifiers, highlighting the generalizability of the proposed framework.
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Status Barcode
Articles Abstract Database Articles Abstract Database School of Engineering & Technology Archieval Section Not for loan 2025-0666
Total holds: 0

Medical image classification plays a pivotal role in diagnosing various
diseases. However, selecting informative features from these images
remains a challenging task due to the high dimensionality and
complexity of the data. Genetic algorithms (GAs) offer a promising
approach for feature selection in medical image classification tasks by
mimicking the process of natural selection to evolve optimal solutions.
This study proposes a genetic algorithm optimization framework for
feature selection in medical image classification. The GA iteratively
searches the feature space to find the subset of features that maximizes
the classification performance. Fitness evaluation is based on a
classifier’s performance using selected features, and genetic operators
such as crossover and mutation are applied to produce new generations
of feature subsets. The proposed framework contributes to enhancing
the efficiency and effectiveness of medical image classification by
identifying relevant features. By employing GAs, it overcomes the
limitations of traditional feature selection methods and adapts to the
complexity of medical image data. Experimental results on benchmark
medical image datasets demonstrate the effectiveness of the proposed
approach. Significant improvements in classification accuracy and
computational efficiency are observed compared to baseline methods.
Moreover, the selected features exhibit robustness across different
classifiers, highlighting the generalizability of the proposed
framework.

There are no comments on this title.

to post a comment.

Click on an image to view it in the image viewer

Local cover image
Share
Unique Visitors hit counter Total Page Views free counter
Implemented and Maintained by AIKTC-KRRC (Central Library).
For any Suggestions/Query Contact to library or Email: librarian@aiktc.ac.in | Ph:+91 22 27481247
Website/OPAC best viewed in Mozilla Browser in 1366X768 Resolution.