Deep learning prediction of proton and photon dose distributions for paediatric abdominal tumours

Publication date

2021-03

Authors

Guerreiro, Filipa
Seravalli, EnricaORCID 0000-0001-5983-2256ISNI 0000000047208248
Janssens, Geert OORCID 0000-0002-0331-713X
Maduro, John H.
Knopf, A.
Langendijk, J A
Raaymakers, BasORCID 0000-0002-8036-6808ISNI 0000000392005337
Kontaxis, Charis

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Article

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Abstract

OBJECTIVE: Dose prediction using deep learning networks prior to radiotherapy might lead tomore efficient modality selections. The study goal was to predict proton and photon dose distributions based on the patient-specific anatomy and to assess their clinical usage for paediatric abdominal tumours. MATERIAL AND METHODS: Data from 80 patients with neuroblastoma or Wilms' tumour was included. Pencil beam scanning (PBS) (5 mm/ 3%) and volumetric-modulated arc therapy (VMAT) plans (5 mm) were robustly optimized on the internal target volume (ITV). Separate 3-dimensional patch-based U-net networks were trained to predict PBS and VMAT dose distributions. Doses, planning-computed tomography images and relevant optimization masks (ITV, vertebra and organs-at-risk) of 60 patients were used for training with a 5-fold cross validation. The networks' performance was evaluated by computing the relative error between planned and predicted dose-volume histogram (DVH) parameters for 20 inference patients. In addition, the organs-at-risk mean dose difference between modalities was calculated using planned and predicted dose distributions (ΔD mean = D VMAT-D PBS). Two radiation oncologists performed a blind PBS/VMAT modality selection based on either planned or predicted ΔD mean. RESULTS: Average DVH differences between planned and predicted dose distributions were ≤ |6%| for both modalities. The networks classified the organs-at-risk D mean difference as a gain (ΔD mean > 0) with 98% precision. An identical modality selection based on planned compared to predicted ΔD mean was made for 18/20 patients. CONCLUSION: Deep learning networks for accurate prediction of proton and photon dose distributions for abdominal paediatric tumours were established. These networks allowing fast dose visualisation might aid in identifying the optimal radiotherapy technique when experience and/or resources are unavailable.

Keywords

Deep learning, Dose prediction, Paediatric abdominal tumours, Patient referral, Photon therapy, Proton therapy, Hematology, Oncology, Radiology Nuclear Medicine and imaging, Journal Article

Citation

Guerreiro, F, Seravalli, E, Janssens, G O, Maduro, J H, Knopf, A C, Langendijk, J A, Raaymakers, B W & Kontaxis, C 2021, 'Deep learning prediction of proton and photon dose distributions for paediatric abdominal tumours', Radiotherapy & Oncology, vol. 156, pp. 36-42. https://doi.org/10.1016/j.radonc.2020.11.026