中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
Can Signal-to-Noise Ratio Perform as a Baseline Indicator for Medical Image Quality Assessment

文献类型:期刊论文

作者SHAODE YU; LEIDA LI; YAOQIN XIE1; ZHICHENG ZHANG; GUANGZHE DAI; XIAOKUN LIANG
刊名IEEE Access
出版日期2018
文献子类期刊论文
英文摘要Natural image quality assessment (NIQA) wins increasing attention, while NIQA models are rarely used in the medical community. A couple of studies employ the NIQA methodologies for medical image quality assessment (MIQA), but building the benchmark data sets necessitates considerable time and professional skills. In particular, the characteristics of synthesized distortions are different from those of clinical distortions, which make the results not so convincing. In clinic, signal-to-noise ratio (SNR) is widely used, which is de ned as the quotient of the mean signal intensity measured in a tissue region of interest (ROI) and the standard deviation of the signal intensity in an air region outside the imaged object, and both regions are outlined by specialists. We take advantage of the knowledge that SNR is routinely used and concern whether SNR measure can perform as a baseline metric for the development of MIQA algorithms. To address the issue, the inter-observer reliability of SNR measure is investigated regarding to different tissue ROIs [white matter (WM); cerebral spinal uid (CSF)] in magnetic resonance (MR) images. A total of 192 T 2, 88 T1, 76 T2 and 55 contrast-enhanced T1 (T1C) weighted images are analyzed. Statistical analysis indicates that SNR values show consistency between different observers to the same ROI in each modality (Wilcoxon rank sum test, pw 0:11; and paired sample t-test, pp 0:28). Moreover, whether off-the-shelf NIQA models can predict MR image quality is considered by using SNR values as the reference scores. Four NIQA models (BIQI, BLIINDS-II, BRISQUE, and NIQE) are evaluated, and the correlation between SNR values and NIQA results is evaluated. Pearson correlation coef cient (rp) shows that WM-based SNR values correlates well with BIQI, BLIINDS-II and BRISQUE in T 2 images (rp 0:77), BRISQUE and NIQE in T1 images (rp 0:75), BLIINDS-II in T2 images (rp 0:67), and BRISQUE and NIQE in T1C images (rp 0:58), while CSF-based SNR values correlates well with BLIINDS-II in T 2 images (rp 0:64) and T2 images (rp 0:60), and all pp < 10 4. The prediction performance analysis further proves the result from the correlation analysis. Conclusively, SNR measure is reliable to different observations and can perform as a baseline indicator for the development of MIQA algorithms. In general, BRISQUE and BLIINDS-II are full of potential to be conditionally used as objective MIQA models toward human brain MR images. This paper presents the rst attempt of using SNR measure to bridge the gap between NIQA and MIQA, and large-scale experiments should be further conducted to con rm the conclusion in this paper.
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语种英语
源URL[http://ir.siat.ac.cn:8080/handle/172644/14242]  
专题深圳先进技术研究院_医工所
推荐引用方式
GB/T 7714
SHAODE YU,LEIDA LI,YAOQIN XIE1,et al. Can Signal-to-Noise Ratio Perform as a Baseline Indicator for Medical Image Quality Assessment[J]. IEEE Access,2018.
APA SHAODE YU,LEIDA LI,YAOQIN XIE1,ZHICHENG ZHANG,GUANGZHE DAI,&XIAOKUN LIANG.(2018).Can Signal-to-Noise Ratio Perform as a Baseline Indicator for Medical Image Quality Assessment.IEEE Access.
MLA SHAODE YU,et al."Can Signal-to-Noise Ratio Perform as a Baseline Indicator for Medical Image Quality Assessment".IEEE Access (2018).

入库方式: OAI收割

来源:深圳先进技术研究院

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