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可注射型及计算机辅助设计/计算机辅助制造研磨树脂复合薄咬合贴面的表面特性与耐磨性

Surface Properties and Wear Resistance of Injectable and Computer-Aided Design/Computer Aided Manufacturing-Milled Resin Composite Thin Occlusal Veneers.

作者信息

Elsahn Nesrine A, El-Damanhoury Hatem M, Shirazi Zainab, Saleh Abdul Rahman M

机构信息

Department of Clinical Sciences, College of Dentistry, Ajman University, Ajman, United Arab Emirates.

Center of Medical and Bio-allied Health Sciences Research, Ajman University, Ajman, United Arab Emirates.

出版信息

Eur J Dent. 2023 Jul;17(3):663-672. doi: 10.1055/s-0042-1750769. Epub 2022 Oct 11.

Abstract

OBJECTIVES

This study was conducted to investigate the microhardness, surface roughness (Ra), and wear behavior of thin occlusal veneers (TOV) fabricated from different injectable composite materials and compare them to a Computer-Aided Design (CAD)/Computer-Aided Manufacturing (CAM) resin-based material.

MATERIALS AND METHODS

A 1-mm occusal veneer preparation was done in a mandibular right second molar typodont tooth. The prepared model was duplicated to fabricate 32 replicas and divided into four groups ( = 8). Standard TOV were fabricated either indirectly from Cerasmart blocks, Cerasmart, GC (CS), or directly from Beautifil Injectable X, Shofu (BF), G-ænial Universal injectable, GC (GU), or SonicFill 2, Kerr (SF) using the injection molding technique. All the specimens were subjected to both thermomechanical cyclic loading (TMC) in a chewing simulator. Wear measurement was conducted by three-dimensional (3D) scanning of the veneered models before and after TMC, and the difference in the volume of the sample was recorded as the volumetric material loss due to wear. Ra before and after TMC and Vickers microhardness (VHN) of the tested materials were measured using standardized samples ( = 8). Representative samples from each group were investigated under a stereomicroscope and a scanning electron microscope.

STATISTICAL ANALYSIS

One-way analysis of variance (ANOVA) was applied to detect the effect of material on VHN and wear. Two-way ANOVA was utilized to examine the impact of material and TMC on Ra. Multiple comparisons between the groups were conducted using Tukey's post hoc test ( = 0.05). The Pearson's correlation coefficient was used to determine the relationship between hardness and wear and between roughness and wear ( = 0.05).

RESULTS

CS exhibited the highest mean VHN ( ≤ 0.001), followed by GU and SF which were statistically similar ( = 0.883) but significantly higher than BF ( < 0.001). After TMC, GU revealed the lowest Ra and volumetric wear (VW), followed by CS, BF, and SF ( < 0.5). A highly significant correlation existed between Ra and VW ( = 0.001,  = 0.9803).

CONCLUSION

The effect of TMC on the surface properties and wear resistance of the investigated TOV is material-dependent. GU injectable TOV are less influenced by TMC than CS milled TOV. In contrast, BF and SF demonstrated significant VW and Ra which might limit their clinical use as TOV.

摘要

目的

本研究旨在调查由不同可注射复合材料制成的薄咬合贴面(TOV)的显微硬度、表面粗糙度(Ra)和磨损行为,并将其与计算机辅助设计(CAD)/计算机辅助制造(CAM)树脂基材料进行比较。

材料与方法

在下颌右侧第二磨牙模型牙上制备1mm的咬合贴面。将制备好的模型复制以制作32个复制品,并分为四组(每组 = 8个)。标准TOV要么间接由Cerasmart块材、Cerasmart、GC(CS)制成,要么直接由Beautifil Injectable X、Shofu(BF)、G-ænial Universal可注射材料、GC(GU)或SonicFill 2、Kerr(SF)使用注射成型技术制成。所有标本在咀嚼模拟器中均经受热机械循环加载(TMC)。在TMC前后通过对贴面模型进行三维(3D)扫描来进行磨损测量,样品体积的差异记录为由于磨损导致的体积材料损失。使用标准化样品(每组 = 8个)测量TMC前后的Ra以及测试材料的维氏显微硬度(VHN)。在立体显微镜和扫描电子显微镜下对每组的代表性样品进行研究。

统计分析

应用单因素方差分析(ANOVA)来检测材料对VHN和磨损的影响。使用双因素ANOVA来检验材料和TMC对Ra的影响。使用Tukey事后检验(α = 0.05)在各组之间进行多重比较。使用Pearson相关系数来确定硬度与磨损之间以及粗糙度与磨损之间的关系(α = 0.05)。

结果

CS表现出最高的平均VHN(P ≤ 0.001),其次是GU和SF,它们在统计学上相似(P = 0.883),但显著高于BF(P < 0.001)。在TMC后,GU显示出最低的Ra和体积磨损(VW),其次是CS、BF和SF(P < 0.5)。Ra与VW之间存在高度显著的相关性(P = 0.001,r = 0.9803)。

结论

TMC对所研究的TOV的表面性能和耐磨性的影响取决于材料。与CS铣削的TOV相比,GU可注射TOV受TMC的影响较小。相比之下,BF和SF表现出显著的VW和Ra,这可能会限制它们作为TOV的临床应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bba5/10569885/1df7a2a1fff2/10-1055-s-0042-1750769-i2242060-1.jpg

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