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Main Authors: Davey, Angela, Leroy, Arthur, Osorio, Eliana Vasquez, Vaughan, Kate, Clayton, Peter, van Herk, Marcel, Alvarez, Mauricio A, McCabe, Martin, Aznar, Marianne
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.26814
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author Davey, Angela
Leroy, Arthur
Osorio, Eliana Vasquez
Vaughan, Kate
Clayton, Peter
van Herk, Marcel
Alvarez, Mauricio A
McCabe, Martin
Aznar, Marianne
author_facet Davey, Angela
Leroy, Arthur
Osorio, Eliana Vasquez
Vaughan, Kate
Clayton, Peter
van Herk, Marcel
Alvarez, Mauricio A
McCabe, Martin
Aznar, Marianne
contents Survivors of childhood cancer need lifelong monitoring for side effects from radiotherapy. However, longitudinal data from routine monitoring is often infrequently and irregularly sampled, and subject to inaccuracies. Due to this, measurements are often studied in isolation, or simple relationships (e.g., linear) are used to impute missing timepoints. In this study, we investigated the potential role of Gaussian Processes (GP) modelling to make population-based and individual predictions, using insulin-like growth factor 1 (IGF-1) measurements as a test case. With training data of 23 patients with a median (range) of 4 (1-16) timepoints we identified a trend within the range of literature reported values. In addition, with 8 test cases, individual predictions were made with an average root mean squared error of 31.9 (10.1 - 62.3) ng/ml and 27.4 (0.02 - 66.1) ng/ml for two approaches. GP modelling may overcome limitations of routine longitudinal data and facilitate analysis of late effects of radiotherapy.
format Preprint
id arxiv_https___arxiv_org_abs_2510_26814
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Towards Gaussian processes modelling to study the late effects of radiotherapy in children and young adults with brain tumours
Davey, Angela
Leroy, Arthur
Osorio, Eliana Vasquez
Vaughan, Kate
Clayton, Peter
van Herk, Marcel
Alvarez, Mauricio A
McCabe, Martin
Aznar, Marianne
Applications
Machine Learning
Survivors of childhood cancer need lifelong monitoring for side effects from radiotherapy. However, longitudinal data from routine monitoring is often infrequently and irregularly sampled, and subject to inaccuracies. Due to this, measurements are often studied in isolation, or simple relationships (e.g., linear) are used to impute missing timepoints. In this study, we investigated the potential role of Gaussian Processes (GP) modelling to make population-based and individual predictions, using insulin-like growth factor 1 (IGF-1) measurements as a test case. With training data of 23 patients with a median (range) of 4 (1-16) timepoints we identified a trend within the range of literature reported values. In addition, with 8 test cases, individual predictions were made with an average root mean squared error of 31.9 (10.1 - 62.3) ng/ml and 27.4 (0.02 - 66.1) ng/ml for two approaches. GP modelling may overcome limitations of routine longitudinal data and facilitate analysis of late effects of radiotherapy.
title Towards Gaussian processes modelling to study the late effects of radiotherapy in children and young adults with brain tumours
topic Applications
Machine Learning
url https://arxiv.org/abs/2510.26814