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Bayesian network structure for predicting local tumor recurrence in rectal cancer patients treated with neoadjuvant chemoradiation followed by surgery

BACKGROUND AND PURPOSE: Tumor recurrence, a characteristic of malignant tumors, is the biggest concern for rectal cancer survivors. The epidemiology of the disease calls for a pressing need to improve healthcare quality and patient outcomes. Prediction models such as Bayesian networks, which can pro...

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Autores principales: Osong, Biche, Masciocchi, Carlotta, Damiani, Andrea, Bermejo, Inigo, Meldolesi, Elisa, Chiloiro, Giuditta, Berbee, Maaike, Lee, Seok Ho, Dekker, Andre, Valentini, Vincenzo, Gerard, Jean-Pierre, Rödel, Claus, Bujko, Krzysztof, van de Velde, Cornelis, Folkesson, Joakim, Sainato, Aldo, Glynne-Jones, Robert, Ngan, Samuel, Brændengen, Morten, Sebag-Montefiore, David, van Soest, Johan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8968052/
https://www.ncbi.nlm.nih.gov/pubmed/35372704
http://dx.doi.org/10.1016/j.phro.2022.03.002
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author Osong, Biche
Masciocchi, Carlotta
Damiani, Andrea
Bermejo, Inigo
Meldolesi, Elisa
Chiloiro, Giuditta
Berbee, Maaike
Lee, Seok Ho
Dekker, Andre
Valentini, Vincenzo
Gerard, Jean-Pierre
Rödel, Claus
Bujko, Krzysztof
van de Velde, Cornelis
Folkesson, Joakim
Sainato, Aldo
Glynne-Jones, Robert
Ngan, Samuel
Brændengen, Morten
Sebag-Montefiore, David
van Soest, Johan
author_facet Osong, Biche
Masciocchi, Carlotta
Damiani, Andrea
Bermejo, Inigo
Meldolesi, Elisa
Chiloiro, Giuditta
Berbee, Maaike
Lee, Seok Ho
Dekker, Andre
Valentini, Vincenzo
Gerard, Jean-Pierre
Rödel, Claus
Bujko, Krzysztof
van de Velde, Cornelis
Folkesson, Joakim
Sainato, Aldo
Glynne-Jones, Robert
Ngan, Samuel
Brændengen, Morten
Sebag-Montefiore, David
van Soest, Johan
author_sort Osong, Biche
collection PubMed
description BACKGROUND AND PURPOSE: Tumor recurrence, a characteristic of malignant tumors, is the biggest concern for rectal cancer survivors. The epidemiology of the disease calls for a pressing need to improve healthcare quality and patient outcomes. Prediction models such as Bayesian networks, which can probabilistically reason under uncertainty, could assist caregivers with patient management. However, some concerns are associated with the standard approaches to developing these structures in medicine. Therefore, this study aims to compare Bayesian network structures that stem from these two techniques. PATIENTS AND METHODS: A retrospective analysis was performed on 6754 locally advanced rectal cancer (LARC) patients enrolled in 14 international clinical trials. Local tumor recurrence at 2, 3, and 5-years was defined as the endpoints of interest. Five rectal cancer treating physicians from three countries elicited the expert structure. The algorithmic structure was inferred from the data with the hill-climbing algorithm. Structural performance was assessed with calibration plots and area under the curve values. RESULTS: The area under the curve for the expert structure on the training and validation data was above 0.9 and 0.8, respectively, for all the time points. However, the algorithmic structure had superior predictive performance over the expert structure for all time points of interest. CONCLUSION: We have developed and internally validated a Bayesian networks structure from experts’ opinions, which can predict the risk of a LARC patient developing a tumor recurrence at 2, 3, and 5 years. Our result shows that the algorithmic-based structures are more performant and less interpretable than expert-based structures.
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spelling pubmed-89680522022-04-01 Bayesian network structure for predicting local tumor recurrence in rectal cancer patients treated with neoadjuvant chemoradiation followed by surgery Osong, Biche Masciocchi, Carlotta Damiani, Andrea Bermejo, Inigo Meldolesi, Elisa Chiloiro, Giuditta Berbee, Maaike Lee, Seok Ho Dekker, Andre Valentini, Vincenzo Gerard, Jean-Pierre Rödel, Claus Bujko, Krzysztof van de Velde, Cornelis Folkesson, Joakim Sainato, Aldo Glynne-Jones, Robert Ngan, Samuel Brændengen, Morten Sebag-Montefiore, David van Soest, Johan Phys Imaging Radiat Oncol Original Research Article BACKGROUND AND PURPOSE: Tumor recurrence, a characteristic of malignant tumors, is the biggest concern for rectal cancer survivors. The epidemiology of the disease calls for a pressing need to improve healthcare quality and patient outcomes. Prediction models such as Bayesian networks, which can probabilistically reason under uncertainty, could assist caregivers with patient management. However, some concerns are associated with the standard approaches to developing these structures in medicine. Therefore, this study aims to compare Bayesian network structures that stem from these two techniques. PATIENTS AND METHODS: A retrospective analysis was performed on 6754 locally advanced rectal cancer (LARC) patients enrolled in 14 international clinical trials. Local tumor recurrence at 2, 3, and 5-years was defined as the endpoints of interest. Five rectal cancer treating physicians from three countries elicited the expert structure. The algorithmic structure was inferred from the data with the hill-climbing algorithm. Structural performance was assessed with calibration plots and area under the curve values. RESULTS: The area under the curve for the expert structure on the training and validation data was above 0.9 and 0.8, respectively, for all the time points. However, the algorithmic structure had superior predictive performance over the expert structure for all time points of interest. CONCLUSION: We have developed and internally validated a Bayesian networks structure from experts’ opinions, which can predict the risk of a LARC patient developing a tumor recurrence at 2, 3, and 5 years. Our result shows that the algorithmic-based structures are more performant and less interpretable than expert-based structures. Elsevier 2022-03-29 /pmc/articles/PMC8968052/ /pubmed/35372704 http://dx.doi.org/10.1016/j.phro.2022.03.002 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Original Research Article
Osong, Biche
Masciocchi, Carlotta
Damiani, Andrea
Bermejo, Inigo
Meldolesi, Elisa
Chiloiro, Giuditta
Berbee, Maaike
Lee, Seok Ho
Dekker, Andre
Valentini, Vincenzo
Gerard, Jean-Pierre
Rödel, Claus
Bujko, Krzysztof
van de Velde, Cornelis
Folkesson, Joakim
Sainato, Aldo
Glynne-Jones, Robert
Ngan, Samuel
Brændengen, Morten
Sebag-Montefiore, David
van Soest, Johan
Bayesian network structure for predicting local tumor recurrence in rectal cancer patients treated with neoadjuvant chemoradiation followed by surgery
title Bayesian network structure for predicting local tumor recurrence in rectal cancer patients treated with neoadjuvant chemoradiation followed by surgery
title_full Bayesian network structure for predicting local tumor recurrence in rectal cancer patients treated with neoadjuvant chemoradiation followed by surgery
title_fullStr Bayesian network structure for predicting local tumor recurrence in rectal cancer patients treated with neoadjuvant chemoradiation followed by surgery
title_full_unstemmed Bayesian network structure for predicting local tumor recurrence in rectal cancer patients treated with neoadjuvant chemoradiation followed by surgery
title_short Bayesian network structure for predicting local tumor recurrence in rectal cancer patients treated with neoadjuvant chemoradiation followed by surgery
title_sort bayesian network structure for predicting local tumor recurrence in rectal cancer patients treated with neoadjuvant chemoradiation followed by surgery
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8968052/
https://www.ncbi.nlm.nih.gov/pubmed/35372704
http://dx.doi.org/10.1016/j.phro.2022.03.002
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