A Genetic Programming Approach to Radiomic-Based Feature Construction for Survival Prediction in Non-Small Cell Lung Cancer
Created by W.Langdon from
gp-bibliography.bib Revision:1.8528
- @Article{scalco:2024:AS,
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author = "Elisa Scalco and Wilfrido Gomez-Flores and
Giovanna Rizzo",
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title = "A Genetic Programming Approach to Radiomic-Based
Feature Construction for Survival Prediction in
Non-Small Cell Lung Cancer",
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journal = "Applied Sciences",
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year = "2024",
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volume = "14",
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number = "16",
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pages = "Article No. 6923",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2076-3417",
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URL = "
https://www.mdpi.com/2076-3417/14/16/6923",
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DOI = "
doi:10.3390/app14166923",
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abstract = "Machine learning (ML) is commonly used to develop
survival-predictive radiomic models in non-small cell
lung cancer (NSCLC) patients, which helps assist
treatment decision making. Radiomic features derived
from computer tomography (CT) lung images aim to
capture quantitative tumour characteristics. However,
these features are determined by humans, which poses a
risk of including irrelevant or redundant variables,
thus reducing the model's generalisation. To address
this issue, we propose using genetic programming (GP)
to automatically construct new features with higher
discriminant power than the original radiomic features.
To achieve this goal, we introduce a fitness function
that measures the classification performance ratio of
output to input. The constructed features are then
input for various classifiers to predict the two-year
survival of NSCLC patients from two public CT datasets.
Our approach is compared against two popular feature
selection methods in radiomics to choose relevant
radiomic features, and two GP-based feature
construction methods whose fitness functions are based
on measuring the constructed features' quality. The
experimental results show that survival prediction
models trained on GP-based constructed features
outperform feature selection methods. Also, maximizing
the classification performance gain output-to-input
ratio produces features with higher discriminative
power than only maximizing the classification accuracy
from constructed features. Furthermore, a survival
analysis demonstrated statistically significant
differences between survival and non-survival groups in
the Kaplan-Meier curves. Therefore, the proposed
approach can be used as a complementary method for
oncologists in determining the clinical management of
NSCLC patients.",
-
notes = "also known as \cite{app14166923}",
- }
Genetic Programming entries for
Elisa Scalco
Wilfrido Gomez-Flores
Giovanna Rizzo
Citations