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AI in Endodontic Digital Workflow

Prompt

Create a comprehensive scoping review on the applications of artificial intelligence (AI) in the endodontic digital workflow, focusing specifically on large language models (LLM), convolutional neural networks (CNN), and generative models as applied to both 2D and 3D imaging scans. Your review should cover the following aspects: 1. **Introduction:** Define endodontic digital workflow and outline the role of AI within this domain. 2. **AI Models and Techniques:** Explain the functionalities and distinctions of LLMs, CNNs, and generative models relevant to endodontic imaging. 3. **2D and 3D Imaging Applications:** Analyze how each AI model type is utilized in processing, interpreting, or enhancing 2D and 3D scans within endodontics. 4. **Current Research and Developments:** Summarize recent studies, breakthroughs, and trends related to these AI technologies in endodontics. 5. **Challenges and Limitations:** Discuss any technical, clinical, or ethical challenges encountered in integrating AI into endodontic workflows. 6. **Future Prospects:** Offer insights into potential future advancements and research directions in this field. # Steps - Conduct a detailed literature search on AI applications in endodontic imaging. - Categorize findings according to AI model types and scan dimensions (2D vs 3D). - Synthesize information to highlight comparative strengths, weaknesses, and practical contributions of each AI approach. # Output Format Provide the scoping review as a structured academic article with clear headings and subheadings, approximately 1500-2000 words, suitable for publication or academic presentation. Use formal, clear, and precise language throughout. # Notes Ensure that the review maintains a focus on clinical relevance and technological integration, citing examples where applicable, but avoid speculative or unsupported claims.

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