TY - JOUR
T1 - Uncertainty in multitask learning
T2 - joint representations for probabilistic MR-only radiotherapy planning
AU - Bragman, Felix J. S.
AU - Tanno, Ryutaro
AU - Eaton-Rosen, Zach
AU - Li, Wenqi
AU - Hawkes, David J.
AU - Ourselin, Sebastien
AU - Alexander, Daniel C.
AU - McClelland, Jamie R.
AU - Cardoso, M. Jorge
N1 - Early-accept at MICCAI 2018, 8 pages, 4 figures
PY - 2018/6/18
Y1 - 2018/6/18
N2 - Multi-task neural network architectures provide a mechanism that jointly integrates information from distinct sources. It is ideal in the context of MR-only radiotherapy planning as it can jointly regress a synthetic CT (synCT) scan and segment organs-at-risk (OAR) from MRI. We propose a probabilistic multi-task network that estimates: 1) intrinsic uncertainty through a heteroscedastic noise model for spatially-adaptive task loss weighting and 2) parameter uncertainty through approximate Bayesian inference. This allows sampling of multiple segmentations and synCTs that share their network representation. We test our model on prostate cancer scans and show that it produces more accurate and consistent synCTs with a better estimation in the variance of the errors, state of the art results in OAR segmentation and a methodology for quality assurance in radiotherapy treatment planning.
AB - Multi-task neural network architectures provide a mechanism that jointly integrates information from distinct sources. It is ideal in the context of MR-only radiotherapy planning as it can jointly regress a synthetic CT (synCT) scan and segment organs-at-risk (OAR) from MRI. We propose a probabilistic multi-task network that estimates: 1) intrinsic uncertainty through a heteroscedastic noise model for spatially-adaptive task loss weighting and 2) parameter uncertainty through approximate Bayesian inference. This allows sampling of multiple segmentations and synCTs that share their network representation. We test our model on prostate cancer scans and show that it produces more accurate and consistent synCTs with a better estimation in the variance of the errors, state of the art results in OAR segmentation and a methodology for quality assurance in radiotherapy treatment planning.
KW - cs.CV
M3 - Article
JO - arXiv
JF - arXiv
ER -