Molecular characterization of solitary pulmonary nodules in dual-energy CT nonlinear image fusion technology

成像体模 非线性系统 碘普罗胺 能量(信号处理) 噪音(视频) 数学 核医学 对比度(视觉) 图像融合 双重能量 材料科学 人工智能 医学 计算机科学 图像(数学) 物理 放射科 统计 造影剂 骨矿物 骨质疏松症 量子力学 内分泌学
作者
Qian Li,Huan Tan,Furong Lv
出处
期刊:Journal of Receptors and Signal Transduction [Taylor & Francis]
卷期号:42 (1): 95-99 被引量:7
标识
DOI:10.1080/10799893.2020.1853158
摘要

To investigate the feasibility and to optimize the parameters of nonlinear blending technique in dual-energy CT on solitary pulmonary nodules (SPN).The simulated enhanced SPN were used the mixture of nonionic iodinated contrast agent (Iopromide 370mgI/100 ml) and normal saline and then randomly placed inside an anthropomorphic chest phantom. The phantom was examined on SOMATOM definition flash with dual mode (80/140 kV) and single energy mode (120 kV) (the same CTDIvol). Nonlinear blending images and linear blending images with a weighting factor of 0.3 were generated and the image qualities were analyzed.For different simulated density SPN, when 0 HU was chosen as the Blending Center (BC) and 0 to 30 HU were chosen as the Blending width (BW), the nonlinear blending images yielded a higher contrast-to-noise (CNR). There were significant differences in the image noise and signal-to-noise (SNR) of different simulated density SPN at non-linear blending images, linear blending images and 120 kV images (p < .05); But the differences of CNR between the three groups were not statistically significant (p > .05). The SNR of different simulated density SPN at non-linear blending images was significantly increased compared with it at linear blending images and 120 kV images (p < .05); And the image noise at non-linear blending was lower than it at linear blending images (p < .05).Nonlinear blending technique in dual-energy CT can increase the SNR of enhanced SPN, and it is helpful in diagnosis of SPN.

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