Application of deep learning image reconstruction combined with metal artifact reduction algorithm in maxillofacial CT images
10.3969/j.issn.1002-1671.2024.08.033
- VernacularTitle:深度学习图像重建联合去金属伪影算法在颌面部CT图像的应用
- Author:
Li TANG
1
;
Yijuan WEI
;
Ping HOU
;
Kaiji ZHA
;
Jianbo GAO
Author Information
1. 郑州大学第一附属医院放射科,河南 郑州 450052
- Keywords:
computed tomography;
deep learning image reconstruction;
metal artifact;
maxillofacial region
- From:
Journal of Practical Radiology
2024;40(8):1363-1366
- CountryChina
- Language:Chinese
-
Abstract:
Objective To explore the application value of deep learning image reconstruction(DLIR)combined with Smart metal artifact reduction(Smart MAR)algorithm in maxillofacial CT images.Methods A total of 34 patients with maxillofacial lesions affected by oral metal implants who underwent maxillofacial enhanced CT scans were included.The images of four groups in venous phase were reconstructed with 50%adaptive statistical iterative reconstruction(ASIR-V)(IR group),50%ASIR-V combined with Smart MAR(IR+S group),DLIR(at medium strength)combined with Smart MAR(D-M+S group)and DLIR(at high strength)combined with Smart MAR(D-H+S group)respectively.The artifact index(AI)was worked out by measuring the standard deviation(SD)of CT values in maxillofacial lesions and longhead muscle.The subjective scores of overall image quality,lesion conspicuity and diagnostic confidence were assessed.The image quality of different algorithms was compared.Results Compared with IR+S group,the AI value of IR group was significantly increased(P<0.05),while the noise had no significant difference(P>0.05).Compared with IR+S group,the AI value and noise of D-M+S group and D-H+S group both were significantly decreased(P<0.05),and the AI value of D-M+S group and D-H+S group reduced by 13.70%and 19.06%respectively,the noise reduced by 16.37%and 30.78%respectively.The subjective scores of overall image quality,lesion conspicuity and diagnostic confidence in IR+S group were significantly lower than those in D-M+S group and D-H+S group,but significantly higher than those in IR group(P<0.05).There were 6 patients'(17.64%)lesions were detected only in the groups with Smart MAR algorithm,while 9 patients(26.47%)had introduced new artifacts in the tongue with Smart MAR algorithm.Conclusion DLIR combined with Smart MAR can improve the CT image quality of maxillofacial region,enhance the conspicuity and diagnosis confidence of maxillofacial lesions in patients with oral metal implants.Smart MAR algorithm may produce new artifacts that need to be analyzed along with the images not added Smart MAR algorithm.