Efficient Complete Denture Metal Base Design via A Dental Feature-driven Segmentation Network

Cheng Li,Yaming Jin, Yunhan Du, Kaiyuan Luo,Luca Fiorenza,Hu Chen,Sukun Tian,Yuchun Sun

Computers in Biology and Medicine(2024)

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摘要
Background and Objective Complete denture is a common restorative treatment in dental patients and the design of the core components (major connector and retentive mesh) of complete denture metal base (CDMB) is the basis of successful restoration. However, the automated design process of CDMB has become a challenging task primarily due to the complexity of manual interaction, low personalization, and low design accuracy. Methods To solve the existing problems, we develop a computer-aided Segmentation Network-driven CDMB design framework, called CDMB-SegNet, to automatically generate personalized digital design boundaries for complete dentures of edentulous patients. Specifically, CDMB-SegNet consists of a novel upright-orientation adjustment module (UO-AM), a dental feature-driven segmentation network, and a specific boundary-optimization design module (BO-DM). UO-AM automatically identifies key points for locating spatial attitude of the three-dimensional dental model with arbitrary posture, while BO-DM can result in smoother and more personalized designs for complete denture. In addition, to achieve efficient and accurate feature extraction and segmentation of 3D edentulous models with irregular gingival tissues, the light-weight backbone network is also incorporated into CDMB-SegNet. Results Experimental results on a large clinical dataset showed that CDMB-SegNet can achieve superior performance over the state-of-the-art methods. Quantitative evaluation (major connector/retentive mesh) showed improved Accuracy (98.54±0.58%/97.73±0.92%) and IoU (87.42±5.48%/70.42±7.95%), and reduced Maximum Symmetric Surface Distance (4.54±2.06 mm/4.62±1.68 mm), Average Symmetric Surface Distance (1.45±0.63mm/1.28±0.54 mm), Roughness Rate (6.17±1.40%/6.80±1.23%) and Vertices Number (23.22±1.85/43.15±2.72). Moreover, CDMB-SegNet shortened the overall design time to around 4 minutes, which is one tenth of the comparison methods. Conclusions CDMB-SegNet is the first intelligent neural network for automatic CDMB design driven by oral big data and dental features. The designed CDMB is able to couple with patient’s personalized dental anatomical morphology, providing higher clinical applicability compared with the state-of-the-art methods.
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关键词
Complete denture,Dental feature,Segmentation network,Computer-aided design,Metal base
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