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Fluence-map generation for prostate intensity-modulated radiotherapy planning using a deep-neural-network.

Hoyeon LeeHojin KimJungwon KwakYoung Seok KimSang Wook LeeSeungryong ChoByungchul Cho
Published in: Scientific reports (2019)
A deep-neural-network (DNN) was successfully used to predict clinically-acceptable dose distributions from organ contours for intensity-modulated radiotherapy (IMRT). To provide the next step in the DNN-based plan automation, we propose a DNN that directly generates beam fluence maps from the organ contours and volumetric dose distributions, without inverse planning. We collected 240 prostate IMRT plans and used to train a DNN using organ contours and dose distributions. After training was done, we made 45 synthetic plans (SPs) using the generated fluence-maps and compared them with clinical plans (CP) using various plan quality metrics including homogeneity and conformity indices for the target and dose constraints for organs at risk, including rectum, bladder, and bowel. The network was able to generate fluence maps with small errors. The qualities of the SPs were comparable to the corresponding CPs. The homogeneity index of the target was slightly worse in the SPs, but there was no difference in conformity index of the target, V60Gy of rectum, the V60Gy of bladder and the V45Gy of bowel. The time taken for generating fluence maps and qualities of SPs demonstrated the proposed method will improve efficiency of the treatment planning and help maintain the quality of plans.
Keyphrases
  • neural network
  • prostate cancer
  • health insurance
  • early stage
  • radiation therapy
  • locally advanced
  • high resolution
  • mass spectrometry
  • high speed
  • functional connectivity
  • electronic health record