| Literature DB >> 32432233 |
Fan Zhang1, Junlin Yang1, Nariman Nezami2, Fabian Laage-Gaupp2, Julius Chapiro2, Ming De Lin2,3, James Duncan1,4.
Abstract
In this project, our goal is to classify different types of liver tissue on 3D multi-parameter magnetic resonance images in patients with hepatocellular carcinoma. In these cases, 3D fully annotated segmentation masks from experts are expensive to acquire, thus the dataset available for training a predictive model is usually small. To achieve the goal, we designed a novel deep convolutional neural network that incorporates auto-context elements directly into a U-net-like architecture. We used a patch-based strategy with a weighted sampling procedure in order to train on a sufficient number of samples. Furthermore, we designed a multi-resolution and multi-phase training framework to reduce the learning space and to increase the regularization of the model. Our method was tested on images from 20 patients and yielded promising results, outperforming standard neural network approaches as well as a benchmark method for liver tissue classification.Entities:
Keywords: Convolutional neural network Auto-context; Hepatocellular carcinoma Magnetic resonance imaging; Multi-phase training; Tissue classification
Year: 2018 PMID: 32432233 PMCID: PMC7236808 DOI: 10.1007/978-3-030-00500-9_7
Source DB: PubMed Journal: Patch Based Tech Med Imaging (2018)