DC<SUP>2</SUP>Anet: Generating Lumbar Spine MR Images from CT Scan Data Based on Semi-Supervised Learning

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초록

Magnetic resonance imaging (MRI) plays a significant role in the diagnosis of lumbar disc disease. However, the use of MRI is limited because of its high cost and significant operating and processing time. More importantly, MRI is contraindicated for some patients with claustrophobia or cardiac pacemakers due to the possibility of injury. In contrast, computed tomography (CT) scans are much less expensive, are faster, and do not face the same limitations. In this paper, we propose a method for estimating lumbar spine MR images based on CT images using a novel objective function and a dual cycle-consistent adversarial network (DC2 Anet) with semi-supervised learning. The objective function includes six independent loss terms to balance quantitative and qualitative losses, enabling the generation of a realistic and accurate synthetic MR image. DC(2)Anet is also capable of semi-supervised learning, and the network is general enough for supervised or unsupervised setups. Experimental results prove that the method is accurate, being able to construct MR images that closely approximate reference MR images, while also outperforming four other state-of-the-art methods.

키워드

image cross-modality synthesislumbar spinedual cycle-consistent adversarial networksemi-supervised learningadversarial trainingAUTO-CONTEXTRADIOTHERAPY
제목
DC<SUP>2</SUP>Anet: Generating Lumbar Spine MR Images from CT Scan Data Based on Semi-Supervised Learning
저자
Jin, Cheng-BinKim, HakilLiu, MingjieHan, In HoLee, Jae IlLee, Jung HwanJoo, SeongsuPark, EunsikAhn, Young SaemCui, Xuenan
DOI
10.3390/app9122521
발행일
2019-06-02
유형
Article
저널명
APPLIED SCIENCES-BASEL
9
12