牙科
搪瓷漆
二硅酸锂
牙冠(牙科)
材料科学
牙齿磨损
陶瓷
医学
同种类的
牙瓷
荟萃分析
口腔正畸科
复合材料
内科学
物理
热力学
作者
Zhen Mao,Florian Beuer,Jeremias Hey,Franziska Schmidt,John A. Sorensen,Elisabeth Prause
标识
DOI:10.1016/j.jdent.2024.104832
摘要
The aim of this study was to evaluate the amount of enamel tooth wear induced by different antagonistic ceramic crown materials in the posterior area within a follow-up period up to 24 months in function. A network meta-analysis was performed to assess the effect of the materials on the mean vertical loss (MVL) of the antagonist enamel tooth surface. Main search terms used in combination: ceramic, dental materials, metal ceramic, tooth wear and dental enamel. An electronic search was conducted in PubMed/Medline, Embase, and Cochrane CENTRAL plus hand-searching. Eligibility criteria included clinical studies reporting on MVL on antagonist's tooth up to 24 months following the permanent crown placement. From a total of 5697 articles, 7 studies reporting on 261 crowns for 177 subjects with 3 ceramic materials (Lithium disilicate, metal-ceramic, monolithic zirconia) were included. Among all, metal-ceramic and zirconia caused significantly higher enamel tooth wear on antagonist teeth, representing 82.5 µm [54.4; 110.6]) and 40.1 µm [22.2; 58.0]) more MVL than natural teeth group. In contrast, lithium disilicate showed only 5.0 µm [-48.2; 58.1]) more MVL than occurs on opposing natural teeth. This systematic review demonstrated that prosthodontic ceramic materials produced significantly more antagonist enamel tooth wear than opposing natural enamel tooth wear, and ceramic material type was correlated to the degree of enamel tooth wear. Additional well-conducted, randomized controlled trials with homogeneous specimens are required due to inadequate sample size and number of the clinical studies included in the analyses. The amount of wear caused by different restorative materials has a high influence on the antagonistic natural teeth and should therefore be evaluated intensively by the dentist.
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