Surrogate-free machine learning-based organ dose reconstruction for pediatric abdominal radiotherapy

Publication date

2020-12-21

Authors

Virgolin, Marco
Wang, Ziyuan
Balgobind, Brian
van Dijk, Irma
Wiersma, Jan
Kroon, Petra S
Janssens, Geert O.ORCID 0000-0002-0331-713X
van Herk, Marcel
Hodgson, David C
Zadravec Zaletel, Lorna

Editors

Advisors

Supervisors

Document Type

Article

Collections

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License

taverne

Abstract

To study radiotherapy-related adverse effects, detailed dose information (3D distribution) is needed for accurate dose-effect modeling. For childhood cancer survivors who underwent radiotherapy in the pre-CT era, only 2D radiographs were acquired, thus 3D dose distributions must be reconstructed from limited information. State-of-the-art methods achieve this by using 3D surrogate anatomies. These can however lack personalization and lead to coarse reconstructions. We present and validate a surrogate-free dose reconstruction method based on Machine Learning (ML). Abdominal planning CTs (n = 142) of recently-treated childhood cancer patients were gathered, their organs at risk were segmented, and 300 artificial Wilms' tumor plans were sampled automatically. Each artificial plan was automatically emulated on the 142 CTs, resulting in 42,600 3D dose distributions from which dose-volume metrics were derived. Anatomical features were extracted from digitally reconstructed radiographs simulated from the CTs to resemble historical radiographs. Further, patient and radiotherapy plan features typically available from historical treatment records were collected. An evolutionary ML algorithm was then used to link features to dose-volume metrics. Besides 5-fold cross validation, a further evaluation was done on an independent dataset of five CTs each associated with two clinical plans. Cross-validation resulted in mean absolute errors ≤ 0.6 Gy for organs completely inside or outside the field. For organs positioned at the edge of the field, mean absolute errors ≤ 1.7 Gy for [Formula: see text], ≤ 2.9 Gy for [Formula: see text], and ≤ 13% for [Formula: see text] and [Formula: see text], were obtained, without systematic bias. Similar results were found for the independent dataset. To conclude, we proposed a novel organ dose reconstruction method that uses ML models to predict dose-volume metric values given patient and plan features. Our approach is not only accurate, but also efficient, as the setup of a surrogate is no longer needed.

Keywords

childhood cancer, dose reconstruction, late adverse effects, machine learning, plan emulation, radiotherapy dosimetry, Taverne, Radiological and Ultrasound Technology, Radiology Nuclear Medicine and imaging, Journal Article

Citation

Virgolin, M, Wang, Z, Balgobind, B, van Dijk, I, Wiersma, J, Kroon, P S, Janssens, G O, van Herk, M, Hodgson, D C, Zadravec Zaletel, L, Rasch, C, Bel, A, Bosman, P A N & Alderliesten, T 2020, 'Surrogate-free machine learning-based organ dose reconstruction for pediatric abdominal radiotherapy', Physics in medicine and biology, vol. 65, no. 24, 245021, pp. 1-16. https://doi.org/10.1088/1361-6560/ab9fcc