Prediction of mandibular ORN incidence from 3D radiation dose distribution maps using deep learning
Background. Absorbed radiation dose to the mandible is an important risk factor in the development of mandibular osteoradionecrosis (ORN) in head and neck cancer (HNC) patients treated with radiotherapy (RT). The prediction of mandibular ORN may not only guide the RT treatment planning optimisation...
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Zusammenfassung: | Background. Absorbed radiation dose to the mandible is an important risk
factor in the development of mandibular osteoradionecrosis (ORN) in head and
neck cancer (HNC) patients treated with radiotherapy (RT). The prediction of
mandibular ORN may not only guide the RT treatment planning optimisation
process but also identify which patients would benefit from a closer follow-up
post-RT for an early diagnosis and intervention of ORN. Existing mandibular ORN
prediction models are based on dose-volume histogram (DVH) metrics that omit
the spatial localisation and dose gradient and direction information provided
by the clinical mandible radiation dose distribution maps. Methods. We propose
the use of a binary classification 3D DenseNet121 to extract the relevant
dosimetric information directly from the 3D mandible radiation dose
distribution maps and predict the incidence of ORN. We compare the results to a
Random Forest ensemble with DVH-based parameters. Results. The 3D DenseNet121
model was able to discriminate ORN vs. non-ORN cases with an average AUC of
0.71 (0.64-0.79), compared to 0.65 (0.57-0.73) for the RF model. Conclusion.
Obtaining the dosimetric information directly from the clinical radiation dose
distribution maps may enhance the performance and functionality of ORN normal
tissue complication probability (NTCP) models. |
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DOI: | 10.48550/arxiv.2112.11503 |