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用于减少儿童骨科假体金属伪影的迭代算法:初步结果

Iterative algorithms for metal artifact reduction in children with orthopedic prostheses: preliminary results.

作者信息

Toso Seema, Laurent Meryle, Lozeron Elise Dupuis, Brindel Pauline, Lacalamita Marirosa Cristallo, Hanquinet Sylviane

机构信息

Paediatric Radiology Unit, Division of Radiology, Geneva Children's Hospitals, Rue Willy-Donzé 6, 1211, Geneva, Switzerland.

Division of Clinical Epidemiology, Geneva University Hospitals, Geneva, Switzerland.

出版信息

Pediatr Radiol. 2018 Dec;48(13):1884-1890. doi: 10.1007/s00247-018-4217-6. Epub 2018 Jul 28.

Abstract

BACKGROUND

Increased computational power allows computed tomography (CT) software to process very advanced mathematical algorithms to generate better quality images at lower doses. One such algorithm, iterative metal artifact reduction (iMAR) has proven to decrease metal artifacts seen in CT images of adults with orthopedic implants.

OBJECTIVES

To evaluate artifact reduction capability of the algorithm in lower-dose pediatric CT compared to our routine third-generation advanced modeled iterative reconstruction (ADMIRE) algorithm.

MATERIALS AND METHODS

Thirteen children (11-17 years old) with metal implants underwent routine clinically indicated CT. Data sets were reconstructed with an iMAR algorithm. Hounsfield units and image noise were measured in bone, muscle and fat in the streak artifact (near the implant) and at the greatest distance from the artifact (far from the implant). A regression model compared the effects of the algorithm (standard ADMIRE vs. iMAR) near and far from the implant.

RESULTS

Near the implant, Hounsfield units with iMAR were significantly different in our standard ADMIRE vs. iMAR for bone, muscle and fat (P<0.001). Noise was significantly different in standard ADMIRE vs. iMAR in bone (P<0.003). Far from the implant, Hounsfield units and noise were not significantly different for ADMIRE vs. iMAR, for the three tissue types.

CONCLUSION

These preliminary results demonstrate that iMAR algorithms improves Hounsfield units near the implant and decreases image noise in bone in low-dose pediatric CT. It does this without changing baseline tissue density or noise far from the implant.

摘要

背景

计算能力的提升使计算机断层扫描(CT)软件能够处理非常先进的数学算法,从而以更低剂量生成质量更高的图像。一种这样的算法,即迭代金属伪影减少(iMAR),已被证明可减少在有骨科植入物的成人CT图像中出现的金属伪影。

目的

与我们常规的第三代高级模型迭代重建(ADMIRE)算法相比,评估该算法在低剂量儿科CT中的伪影减少能力。

材料与方法

13名有金属植入物的儿童(11 - 17岁)接受了常规临床指示的CT检查。数据集用iMAR算法重建。在条纹伪影(靠近植入物处)以及距伪影最远的距离(远离植入物处)的骨、肌肉和脂肪中测量亨氏单位和图像噪声。一个回归模型比较了该算法(标准ADMIRE与iMAR)在靠近和远离植入物处的效果。

结果

在靠近植入物处,对于骨、肌肉和脂肪,标准ADMIRE与iMAR相比,iMAR的亨氏单位有显著差异(P<0.001)。标准ADMIRE与iMAR相比,骨中的噪声有显著差异(P<0.003)。在远离植入物处,对于三种组织类型,ADMIRE与iMAR的亨氏单位和噪声无显著差异。

结论

这些初步结果表明,iMAR算法在低剂量儿科CT中改善了靠近植入物处的亨氏单位,并降低了骨中的图像噪声。它在不改变远离植入物处的基线组织密度或噪声的情况下做到了这一点。

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