Trainable Multi-Contrast Windowing for Liver CT Segmentation

Authors
Kwon, JanghoChoi, Kihwan
Issue Date
2020
Publisher
IEEE
Citation
IEEE International Conference on Big Data and Smart Computing (BigComp), pp.169 - 172
Abstract
This study proposes a trainable multi-contrast windowing method in order to optimally choose contrast windows for deep learning-based CT segmentation. Existing contrast windowing methods use parameters predefined by radiologists or manufacturers. These predefined contrast windows, however, have not been proven to be optimal set for machine learning based approaches. We therefore propose a trainable multi-contrast windowing module which can be easily integrated into deep convolutional neural networks. For performance evaluation, we investigate the effects of the trainable multi-contrast windows by applying the proposed windowing modules to a deep learning based segmentation network measuring liver tumors. The results show significant performance improvement when the windowing parameters are trainable. The proposed method enhances the performance for medical image analyses compared to rule-based windowing methods.
ISSN
2375-933X
URI
https://pubs.kist.re.kr/handle/201004/113858
DOI
10.1109/BigComp48618.2020.00-80
Appears in Collections:
KIST Conference Paper > 2020
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