Oliveira Matheus L, Schaub Susanne, Dagassan-Berndt Dorothea, Bieder Florentin, Cattin Philippe C, Bornstein Michael M
Department of Oral Diagnosis, Division of Oral Radiology, Piracicaba Dental School, University of Campinas, Piracicaba, 13414-903, Brazil.
Department of Oral Health & Medicine,University Center for Dental Medicine Basel UZB, University of Basel, Basel, 4058, Switzerland.
Dentomaxillofac Radiol. 2025 Feb 1;54(2):109-117. doi: 10.1093/dmfr/twae062.
To develop and evaluate a deep learning (DL) model to reduce metal artefacts originating from the exomass in cone-beam CT (CBCT) of the jaws.
Five porcine mandibles, each featuring six tubes filled with a radiopaque solution, were scanned using four CBCT units before and after the incremental insertion of up to three titanium, titanium-zirconium, and zirconia dental implants in the exomass of a small field of view. A conditional denoising diffusion probabilistic model, using DL techniques, was employed to correct axial images from exomass-related metal artefacts across the CBCT units and implant scenarios. Three examiners independently scored the image quality of all datasets, including those without an implant (ground truth), with implants in the exomass (original), and DL-generated ones. Quantitative analysis compared contrast-to-noise ratio (CNR) to validate artefact reduction using repeated measures analysis of variance in a factorial design followed by Tukey test (α = .05).
The visualisation of the hard tissues and overall image quality was reduced in the original and increased in the DL-generated images. The score variation observed in the original images was not observed in the DL-generated images, which generally scored higher than the original images. DL-generated images revealed significantly greater CNR than both the ground truth and their corresponding original images, regardless of the material and quantity of dental implants and the CBCT unit (P < .05). Original images revealed significantly lower CNR than the ground truth (P < .05).
The developed DL model using porcine mandibles demonstrated promising performance in correcting exomass-related metal artefacts in CBCT, serving as a proof-of-principle for future applications of this approach.
开发并评估一种深度学习(DL)模型,以减少颌骨锥形束CT(CBCT)中外质体产生的金属伪影。
使用四个CBCT设备对五个猪下颌骨进行扫描,每个下颌骨有六个填充不透射线溶液的管,在小视野外质体中逐步植入多达三颗钛、钛锆和氧化锆牙种植体之前和之后进行扫描。采用使用DL技术的条件去噪扩散概率模型,校正来自CBCT设备和种植体场景中外质体相关金属伪影的轴向图像。三名检查人员独立对所有数据集的图像质量进行评分,包括没有植入物的数据集(真实情况)、外质体中有植入物的数据集(原始图像)以及DL生成的图像。定量分析比较对比噪声比(CNR),使用析因设计的重复测量方差分析,随后进行Tukey检验(α = 0.05)来验证伪影减少情况。
原始图像中硬组织的可视化和整体图像质量降低,而DL生成的图像中则有所提高。在原始图像中观察到的评分差异在DL生成的图像中未观察到,DL生成的图像评分通常高于原始图像。无论牙种植体的材料和数量以及CBCT设备如何,DL生成的图像显示出比真实情况及其相应原始图像显著更高的CNR(P < 0.05)。原始图像显示出比真实情况显著更低 的CNR(P < 0.05)。
使用猪下颌骨开发的DL模型在校正CBCT中外质体相关金属伪影方面表现出有前景的性能,为该方法未来的应用提供了原理验证。