Deep Neural Network with Consistency Regularization of Multi-Output Channels for Improved Tumor Detection and Delineation
- Authors
- Seo, Hyun seok; Yu, Lequan; Ren, Hongyi; Li, Xiaomeng; Shen, Liyue; Xing, Lei
- Issue Date
- 2021-12
- Publisher
- Institute of Electrical and Electronics Engineers Inc.
- Citation
- IEEE Transactions on Medical Imaging, v.40, no.12, pp.3369 - 3378
- Abstract
- Deep learning is becoming an indispensable tool for imaging applications, such as image segmentation, classification, and detection. In this work, we reformulate a standard deep learning problem into a new neural network architecture with multi-output channels, which reflects different facets of the objective, and apply the deep neural network to improve the performance of image segmentation. By adding one or more interrelated auxiliary-output channels, we impose an effective consistency regularization for the main task of pixelated classification (i.e., image segmentation). Specifically, multi-output-channel consistency regularization is realized by residual learning via additive paths that connect main-output channel and auxiliary-output channels in the network. The method is evaluated on the detection and delineation of lung and liver tumors with public data. The results clearly show that multi-output-channel consistency implemented by residual learning improves the standard deep neural network. The proposed framework is quite broad and should find widespread applications in various deep learning problems. IEEE
- Keywords
- Deep neural networks; Image classification; Image enhancement; Image segmentation; Network architecture; Neural networks; Tumors; Auxiliary output; Imaging applications; Indispensable tools; Learning problem; Liver tumors; Multi-output; Output channels; Tumor detection; Deep learning; Artificial intelligence; Biomedical imaging; cancer detection; Feature extraction; Image segmentation; Neural networks; neural networks; regularization; residual learning; segmentation; Task analysis; Training; Tumors
- ISSN
- 0278-0062
- URI
- https://pubs.kist.re.kr/handle/201004/116029
- DOI
- 10.1109/TMI.2021.3084748
- Appears in Collections:
- KIST Article > 2021
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