Machine learning for automatic construction of pediatric abdominal phantoms for radiation dose reconstruction
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Virgolin:2020:MI,
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author = "Marco Virgolin and Ziyuan Wang and
Tanja Alderliesten and Peter A. N. Bosman",
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title = "Machine learning for automatic construction of
pediatric abdominal phantoms for radiation dose
reconstruction",
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booktitle = "Medical Imaging 2020: Imaging Informatics for
Healthcare, Research, and Applications",
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year = "2020",
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month = mar # "~02",
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editor = "P-H. Chen and T. M. Deserno",
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volume = "11318",
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series = "SPIE",
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keywords = "genetic algorithms, genetic programming, dose
reconstruction, machine learning, pediatric cancer,
phantom, radiation treatment",
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bibsource = "OAI-PMH server at ir.cwi.nl",
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language = "en",
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oai = "oai:cwi.nl:29558",
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URL = "https://ir.cwi.nl/pub/29558",
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URL = "https://ir.cwi.nl/pub/29558/29558.pdf",
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URL = "https://www.spiedigitallibrary.org/conference-proceedings-of-spie",
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DOI = "doi:10.1117/12.2548969",
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size = "9 pages",
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abstract = "The advent of Machine Learning (ML) is proving
extremely beneficial in many healthcare applications.
In pediatric oncology, retrospective studies that
investigate the relationship between treatment and late
adverse effects still rely on simple heuristics. To
capture the effects of radiation treatment, treatment
plans are typically simulated on virtual surrogates of
patient anatomy called phantoms. Currently, phantoms
are built to represent categories of patients based on
reasonable yet simple criteria. This often results in
phantoms that are too generic to accurately represent
individual anatomies. We present a novel approach that
combines imaging data and ML to build individualized
phantoms automatically. We design a pipeline that,
given features of patients treated in the pre-3D
planning era when only 2D radiographs were available,
as well as a database of 3D Computed Tomography (CT)
imaging with organ segmentations, uses ML to predict
how to assemble a patient-specific phantom. Using 60
abdominal CTs of pediatric patients between 2 to 6
years of age, we find that our approach delivers
significantly more representative phantoms compared to
using current phantom building criteria, in terms of
shape and location of two considered organs (liver and
spleen), and shape of the abdomen. Furthermore, as
interpretability is often central to trust ML models in
medical contexts, among other ML algorithms we consider
the Gene-pool Optimal Mixing Evolutionary Algorithm for
Genetic Programming (GP-GOMEA), that learns readable
mathematical expression models. We find that the
readability of its output does not compromise
prediction performance as GP-GOMEA delivered the best
performing models.",
- }
Genetic Programming entries for
Marco Virgolin
Ziyuan Wang
Tanja Alderliesten
Peter A N Bosman
Citations