Automatically Diagnosing Skin Cancers From Multimodality Images Using Two-Stage Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8081
- @Article{Ain:2022:ieeeTC,
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author = "Qurrat Ul Ain and Harith Al-Sahaf and Bing Xue and
Mengjie Zhang",
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journal = "IEEE Transactions on Cybernetics",
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title = "Automatically Diagnosing Skin Cancers From
Multimodality Images Using Two-Stage Genetic
Programming",
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year = "2022",
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abstract = "Developing a computer-aided diagnostic system for
detecting various skin malignancies from images has
attracted many researchers. Unlike many
machine-learning approaches, such as artificial neural
networks, genetic programming (GP) automatically
evolves models with flexible representation. GP
successfully provides effective solutions using its
intrinsic ability to select prominent features (i.e.,
feature selection) and build new features (i.e.,
feature construction). Existing approaches have used GP
to construct new features from the complete set of
original features and the set of operators. However,
the complete set of features may contain redundant or
irrelevant features that do not provide useful
information for classification. This study aims to
develop a two-stage GP method, where the first stage
selects prominent features, and the second stage
constructs new features from these selected features
and operators, such as multiplication in a wrapper
approach to improve the classification performance. To
include local, global, texture, color, and multiscale
image properties of skin images, GP selects and
constructs features extracted from local binary
patterns and pyramid-structured wavelet decomposition.
The accuracy of this GP method is assessed using two
real-world skin image datasets captured from the
standard camera and specialized instruments, and
compared with commonly used classification algorithms,
three state of the art, and an existing embedded GP
method. The results reveal that this new approach of
feature selection and feature construction effectively
helps improve the performance of the machine-learning
classification algorithms. Unlike other black-box
models, the evolved models by GP are interpretable;
therefore, the proposed method can assist
dermatologists to identify prominent features, which
has been shown by further analysis on the evolved
models.",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/TCYB.2022.3182474",
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ISSN = "2168-2275",
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notes = "Also known as \cite{9819829}",
- }
Genetic Programming entries for
Qurrat Ul Ain
Harith Al-Sahaf
Bing Xue
Mengjie Zhang
Citations