TY - GEN
T1 - Expectation-Maximization Regularised Deep Learning for Tumour Segmentation
AU - Li, Chao
AU - Huang, Wenjian
AU - Chen, Xi
AU - Wei, Yiran
AU - Zhang, Lipei
AU - Zhang, Jianguo
AU - Price, Stephen
AU - Schonlieb, Carola-Bibiane
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023/9/1
Y1 - 2023/9/1
N2 - We present an expectation-maximization (EM) regularized deep learning (EMReDL) approach for weakly supervised tumor segmentation using partially labelled MRI. The proposed framework is demonstrated on glioblastoma, characterized by diffusion infiltration. Physiological MRI provides specific information regarding infiltration over structural MRI but is hindered by its low resolution for precise labeling. To exploit partial labels, we design two components in EMReDL: 1) a physiological prior prediction model: a neural network-based binary classifier trained by the labels of core tumor and normal-appearing regions. The trained classifier generates a physiological prior map passed to 2) a segmentation model regularized under an EM framework for weakly supervised learning. We evaluate the performance on a dataset with preoperative multiparametric and recurrence MRI. Results show that EMReDL can effectively segment the infiltrated tumor from the partially labeled MRI, with an accuracy higher than the model trained without physiological MRI and other competing approaches. We will publish the code with example data soon.
AB - We present an expectation-maximization (EM) regularized deep learning (EMReDL) approach for weakly supervised tumor segmentation using partially labelled MRI. The proposed framework is demonstrated on glioblastoma, characterized by diffusion infiltration. Physiological MRI provides specific information regarding infiltration over structural MRI but is hindered by its low resolution for precise labeling. To exploit partial labels, we design two components in EMReDL: 1) a physiological prior prediction model: a neural network-based binary classifier trained by the labels of core tumor and normal-appearing regions. The trained classifier generates a physiological prior map passed to 2) a segmentation model regularized under an EM framework for weakly supervised learning. We evaluate the performance on a dataset with preoperative multiparametric and recurrence MRI. Results show that EMReDL can effectively segment the infiltrated tumor from the partially labeled MRI, with an accuracy higher than the model trained without physiological MRI and other competing approaches. We will publish the code with example data soon.
KW - Expectation Maximization
KW - Tumor Segmentation.
KW - Weakly Supervised Learning
U2 - 10.1109/ISBI53787.2023.10230573
DO - 10.1109/ISBI53787.2023.10230573
M3 - Conference contribution
AN - SCOPUS:85172151645
SN - 9781665473590
T3 - Proceedings - International Symposium on Biomedical Imaging
SP - 1
EP - 5
BT - IEEE International Symposium on Biomedical Imagin
PB - IEEE
T2 - 20th IEEE International Symposium on Biomedical Imaging, ISBI 2023
Y2 - 18 April 2023 through 21 April 2023
ER -