Text-Conditioned Multi-Expert Regression Framework for Fully Automated Multi-Abutment Design

arXiv cs.CV / 4/13/2026

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Key Points

  • The paper proposes TEMAD, a fully automated, text-conditioned multi-expert framework aimed at scaling dental implant abutment design beyond manual or semi-automated workflows.
  • TEMAD combines implant site localization (via an Implant Site Identification Network) with a multi-abutment regression pipeline that predicts compatible abutment parameters.
  • It introduces a Tooth-Conditioned Feature-wise Linear Modulation (TC-FiLM) module that uses tooth embeddings to adapt mesh feature representations in a position-specific manner.
  • A System-Prompted Mixture-of-Experts (SPMoE) mechanism selects and guides expert components using implant system prompts, improving system-aware regression for different implant platforms.
  • Experiments on a large abutment design dataset report state-of-the-art performance, especially for multi-abutment scenarios, supporting TEMAD’s effectiveness for automated dental implant planning.

Abstract

Dental implant abutments serve as the geometric and biomechanical interface between the implant fixture and the prosthetic crown, yet their design relies heavily on manual effort and is time-consuming. Although deep neural networks have been proposed to assist dentists in designing abutments, most existing approaches remain largely manual or semi-automated, requiring substantial clinician intervention and lacking scalability in multi-abutment scenarios. To address these limitations, we propose TEMAD, a fully automated, text-conditioned multi-expert architecture for multi-abutment design. This framework integrates implant site localization and implant system, compatible abutment parameter regression into a unified pipeline. Specifically, we introduce an Implant Site Identification Network (ISIN) to automatically localize implant sites and provide this information to the subsequent multi-abutment regression network. We further design a Tooth-Conditioned Feature-wise Linear Modulation (TC-FiLM) module, which adaptively calibrates mesh representations using tooth embeddings to enable position-specific feature modulation. Additionally, a System-Prompted Mixture-of-Experts (SPMoE) mechanism leverages implant system prompts to guide expert selection, ensuring system-aware regression. Extensive experiments on a large-scale abutment design dataset show that TEMAD achieves state-of-the-art performance compared to existing methods, particularly in multi-abutment settings, validating its effectiveness for fully automated dental implant planning.