Imaging Estimation for Liver Damage Using Automated Approach Based on Genetic Programming
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gp-bibliography.bib Revision:1.8512
- @Article{herrera-sanchez:2025:MaCA,
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author = "David Herrera-Sanchez and
Hector-Gabriel Acosta-Mesa and Efren Mezura-Montes and Socorro Herrera-Meza and
Eduardo Rivadeneyra-Dominguez and
Isaac Zamora-Bello and Maria Fernanda Almanza-Dominguez",
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title = "Imaging Estimation for Liver Damage Using Automated
Approach Based on Genetic Programming",
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journal = "Mathematical and Computational Applications",
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year = "2025",
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volume = "30",
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number = "2",
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pages = "Article No. 25",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2297-8747",
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URL = "
https://www.mdpi.com/2297-8747/30/2/25",
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DOI = "
doi:10.3390/mca30020025",
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abstract = "Computer vision and image processing have become
relevant in recent years due to their capabilities to
support different tasks in several areas. Image
classification, segmentation, and estimation are
relevant issues addressed using various techniques.
Imaging estimation is very important and helpful in
biological applications. This work proposes a new
approach for estimating the damages in the livers of
the Wistar rats, using high-resolution RGB images.
Instead of using invasive methods to determine the
level of damage, the proposal allows us to measure the
damage in the livers. The proposal is based on Genetic
Programming (GP), the paradigm of evolutionary
computing, which has become relevant in recent years
for image-processing tasks. It provides flexibility,
which allows the use of image processing functions to
extract meaningful information from raw images.
Furthermore, it allows the configuration of the
regression model by performing a hyperparameter tuning
to improve estimation performance. The approach
includes a new set of functions through which the
regression model is configured. Additionally, a set of
functions is included to change the colour spaces of
the images to extract meaningful features from them.
The results demonstrate the effectiveness of our
approach when making the hyperparameter tuning and the
efficiency in dealing with different colour spaces,
thus achieving the promised results when estimating
according to the R2, Mean Average Error (MAE), Mean
Squared Error (MSE) and Root Mean Squared Error (RMSE)
indicators. The proposed method achieves values higher
than 0.5 of R2 and lower than 0.51 of MSE, using
different regression models. Additionally, the approach
demonstrates that image preprocessing is necessary for
improving the model's performance, which is better than
only using raw data where the values of RMSE are
greater than 1.5. The lowest MSE value of our proposed
method was 0.51, outperforming the methods without
preprocessing.",
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notes = "also known as \cite{mca30020025}",
- }
Genetic Programming entries for
David Herrera-Sanchez
Hector-Gabriel Acosta-Mesa
Efren Mezura-Montes
Socorro Herrera-Meza
Eduardo Rivadeneyra-Dominguez
Isaac Zamora-Bello
Maria Fernanda Almanza-Dominguez
Citations