Author/Authors :
Qin, RuoXi PLA Strategy Support Force Information Engineering University - Zhengzhou, China , Zhang, Huike Department of Radiology - Henan Provincial People’s Hospital - Zhengzhou, China , Jiang, LingYun PLA Strategy Support Force Information Engineering University - Zhengzhou, China , Qiao, Kai PLA Strategy Support Force Information Engineering University - Zhengzhou, China , Hai, Jinjin PLA Strategy Support Force Information Engineering University - Zhengzhou, China , Chen, Jian PLA Strategy Support Force Information Engineering University - Zhengzhou, China , Xu, Junling Department of Radiology - Henan Provincial People’s Hospital - Zhengzhou, China , Shi, Dapeng Department of Radiology - Henan Provincial People’s Hospital - Zhengzhou, China , Yan, Bin PLA Strategy Support Force Information Engineering University - Zhengzhou, China
Abstract :
To achieve the robust high-performance computer-aided diagnosis systems for lymph nodes, CTimages may be typically collected
from multicenter data, which cause the isolated performance of the model based on different data source centers. The variability
adaptation problem of lymph node data which is related to the problem of domain adaptation in deep learning differs from the
general domain adaptation problem because of the typically larger CT image size and more complex data distributions. Therefore,
domain adaptation for this problem needs to consider the shared feature representation and even the conditioning information of
each domain so that the adaptation network can capture significant discriminative representations in a domain-invariant space.
This paper extracts domain-invariant features based on a cross-domain confounding representation and proposes a cycleconsistency learning framework to encourage the network to preserve class-conditioning information through cross-domain
image translations. Compared with the performance of different domain adaptation methods, the accurate rate of our method
achieves at least 4.4% points higher under multicenter lymph node data. The pixel-level cross-domain image mapping and the
semantic-level cycle consistency provided a stable confounding representation with class-conditioning information to achieve
effective domain adaptation under complex feature distribution.
Keywords :
Multicenter , Cross-Domain , CT , Computer-Aided