Experimental study on the effect of adaptive statistical iterative reconstruction algorithms on image quality and radiation dose in paranasal sinus CT

Lili Zhang, Y. Niu, J. Xian, Yongxian Zhang
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Abstract

Objective To explore the effect of pre- and post-adaptive statistical iterative reconstruction-Veo (ASiR-V) on image quality and radiation dose in paranasal sinus CT, and to find the best combinations. Methods One head specimen was scanned with the routine spiral CT scanning parameters [noise index (NI)=8] and different levels of pre-ASiR-V (0—100%, with an interval of 10%). The images were reconstructed with different post-ASiR-V (0—100%, with an interval of 10%) for the bone algorithm and standard algorithm. All of 242 thin-layer images of paranasal sinuses were obtained. The region of interest (ROI) was selected to measure the CT value to calculate the contrast to noise ratio (CNR) and figure of merit (FOM). The volume CT dose index (CTDIvol) and Smart mA were recorded. The linear regression was conducted to analyze the relationship between CTDIvol, SmartmA, CNR and FOM. And with the same pose-ASiR-V level, the CNR of images which reconstructed by bone and soft algorithms were compared with pair-wise t test. The image quality was subjectively evaluated by three independent experienced radiologists using a 4-point scale (4 was the best). Results As the pre-ASiR-V levels (0—100%) increased, Smart mA and CTDIvol were reduced with a linear negative correlation (r=-0.981, -0.976, both P<0.001). The Smart mA decreased by 72.05% and CTDIvol by 71.22%. Keeping the same pre-ASiR-V level,the CNR increased with the increase of post-ASiR-V level (for the bone algorithm images:R2=0.976, 0.992, 0.982, 0.982, 0.975, 0.975, 0.979, 0.996, 0.952, 0.978, 0.965;for the standard algorithm images: R2=0.944, 0.990, 0.988, 0.993, 0.996, 0.987, 0.984, 0.996, 0.996, 0.990, 0.965).Under the same level of post-ASiR-V, the CNR and FOM fluctuated with the pre-ASiR-V level (for the bone algorithm images:R2=0.335, 0.341, 0.344, 0.364, 0.385, 0.405, 0.418, 0.429, 0.455, 0.474, 0.516; for the standard algorithm images: R2=0.223, 0.278, 0.327, 0.285, 0.309, 0.329, 0.325, 0.346, 0.360, 0.390, 0.380). All subjective image quality could meet the diagnostic requirements (the score≥3). Conclusion At NI=8, for the bone algorithm, the best combination is 80% pre-ASiR-V and 100% post-ASiR-V; for the standard algorithm, the best iteration combination is 100% and 100%. The appropriate choice of pre- and post-ASiR-V levels in paranasal sinus CT scan can effectively reduce the radiation dose under the premise of maintaining the image quality that meets the diagnostic needs. Key words: Paranasal sinuses; Tomography, X-ray computed; Radiation dosage; Image processing, computer-assisted; Image quality
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自适应统计迭代重建算法对鼻窦CT图像质量和辐射剂量影响的实验研究
目的探讨自适应统计迭代重建前后对鼻窦CT图像质量和辐射剂量的影响,并寻找最佳组合。方法采用常规螺旋CT扫描参数[噪声指数(NI)=8]和不同水平的前ASiR-V(0-100%,间隔10%)对1例头部标本进行扫描。对于骨骼算法和标准算法,使用不同的ASiR-V后(0-100%,间隔10%)重建图像。获得了242张鼻窦薄层图像。选择感兴趣区域(ROI)来测量CT值,以计算对比度噪声比(CNR)和品质因数(FOM)。记录体积CT剂量指数(CTDIvol)和Smart mA。采用线性回归分析CTDIvol、SmartmA、CNR与FOM的关系。并在相同的pose-ASiR-V水平下,将骨算法和软算法重建的图像的CNR与配对t检验进行了比较。图像质量由三名经验丰富的独立放射科医生使用4分量表进行主观评估(4分为最佳)。结果随着ASiR-V前水平(0-100%)的升高,Smart mA和CTDIvol呈线性负相关(r=-0.981,-0.976,均<0.001),Smart mA下降72.05%和CTDIvol下降71.22%,CNR随ASiR-V后水平的增加而增加(对于骨骼算法图像:R2=0.976、0.992、0.982、0.982,0.975、0.975、0979、0.996、0.952、0.978、0.965;对于标准算法图像:R2=0.944、0.990、0.988、0.993、0.996,0.987、0.984、0.996和0.996,CNR和FOM随ASiR-V前水平波动(对于骨骼算法图像:R2=0.335、0.341、0.344、0.364、0.385、0.405、0.418、0.429、0.455、0.474、0.516;对于标准算法图像:R2=0.223、0.278、0.327、0.285、0.309、0.325、0.346、0.360、0.390、0.380)。所有主观图像质量均能满足诊断要求(得分≥3)。结论在NI=8时,对于骨算法,最佳组合是ASiR-V前80%和ASiR-V后100%;对于标准算法,最佳迭代组合是100%和100%。在鼻窦CT扫描中适当选择ASiR-V前后的水平,可以在保持符合诊断需求的图像质量的前提下有效降低辐射剂量。关键词:鼻窦;层析成像,X射线计算机;辐射剂量;图像处理,计算机辅助;图像质量
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来源期刊
Zhonghua fang she xue za zhi Chinese journal of radiology
Zhonghua fang she xue za zhi Chinese journal of radiology Medicine-Radiology, Nuclear Medicine and Imaging
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0.30
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10639
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Study progress of cerebrovascular interventional surgery robot Value of chest CT screening in the early COVID-19 outbreak Imaging dynamic observation of cured COVID-19 patients with imported coronavirus pneumonia/ 输入性新型冠状病毒肺炎治愈患者肺内病变的影像学动态观察 The diagnostic value of chest CT imaging in differential diagnosis between common-type COVID-19 and mycoplasma pneumonia/ 胸部CT在普通型新型冠状病毒肺炎与支原体肺炎鉴别诊断中的价值 The role of medical imaging in the diagnosis and treatment of COVID-19
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