Chen Junning, Ahmad Rohana, Suenaga Hanako, Li Wei, Sasaki Keiichi, Swain Michael, Li Qing
School of Aerospace, Mechanical and Mechatronic Engineering, the University of Sydney, Sydney, NSW 2006, Australia.
Unit of Prosthodontics, Faculty of Dentistry, Shah Alam & Integrative Pharmacogenomics Institute (iPROMISE), Universiti Teknologi MARA, Bandar Puncak Alam, Selangor, 42300, Malaysia.
PLoS One. 2015 Jul 10;10(7):e0132552. doi: 10.1371/journal.pone.0132552. eCollection 2015.
With ever-growing aging population and demand for denture treatments, pressure-induced mucosa lesion and residual ridge resorption remain main sources of clinical complications. Conventional denture design and fabrication are challenged for its labor and experience intensity, urgently necessitating an automatic procedure. This study aims to develop a fully automatic procedure enabling shape optimization and additive manufacturing of removable partial dentures (RPD), to maximize the uniformity of contact pressure distribution on the mucosa, thereby reducing associated clinical complications. A 3D heterogeneous finite element (FE) model was constructed from CT scan, and the critical tissue of mucosa was modeled as a hyperelastic material from in vivo clinical data. A contact shape optimization algorithm was developed based on the bi-directional evolutionary structural optimization (BESO) technique. Both initial and optimized dentures were prototyped by 3D printing technology and evaluated with in vitro tests. Through the optimization, the peak contact pressure was reduced by 70%, and the uniformity was improved by 63%. In vitro tests verified the effectiveness of this procedure, and the hydrostatic pressure induced in the mucosa is well below clinical pressure-pain thresholds (PPT), potentially lessening risk of residual ridge resorption. This proposed computational optimization and additive fabrication procedure provides a novel method for fast denture design and adjustment at low cost, with quantitative guidelines and computer aided design and manufacturing (CAD/CAM) for a specific patient. The integration of digitalized modeling, computational optimization, and free-form fabrication enables more efficient clinical adaptation. The customized optimal denture design is expected to minimize pain/discomfort and potentially reduce long-term residual ridge resorption.
随着老龄化人口的不断增长以及对义齿治疗的需求增加,压力引起的黏膜病变和剩余牙槽嵴吸收仍然是临床并发症的主要来源。传统义齿的设计和制作因其劳动强度大且依赖经验而面临挑战,迫切需要一种自动化程序。本研究旨在开发一种全自动程序,实现可摘局部义齿(RPD)的形状优化和增材制造,以最大化黏膜上接触压力分布的均匀性,从而减少相关临床并发症。通过CT扫描构建了三维非均质有限元(FE)模型,并根据体内临床数据将关键的黏膜组织建模为超弹性材料。基于双向进化结构优化(BESO)技术开发了一种接触形状优化算法。初始义齿和优化后的义齿均通过3D打印技术制作原型,并进行体外测试评估。通过优化,峰值接触压力降低了70%,均匀性提高了63%。体外测试验证了该程序的有效性,并且黏膜中产生的静水压力远低于临床压力疼痛阈值(PPT),有可能降低剩余牙槽嵴吸收的风险。这种提出的计算优化和增材制造程序为低成本快速义齿设计和调整提供了一种新方法,并为特定患者提供了定量指导以及计算机辅助设计和制造(CAD/CAM)。数字化建模、计算优化和自由形式制造的集成实现了更高效的临床适配。定制的最佳义齿设计有望将疼痛/不适降至最低,并有可能减少长期的剩余牙槽嵴吸收。