# Clinician-Led Development and Feasibility of a Neural Network for Assessing 3D Dental Cavity Preparations Assisted by Conversational AI

**Authors:** Mohammed El-Hakim, Haitham Khaled, Amr Fawzy, Robert Anthonappa

PMC · DOI: 10.3390/dj13110531 · Dentistry Journal · 2025-11-13

## TL;DR

This paper shows how a dentist can build a low-cost AI system with ChatGPT's help to assess dental cavity preparations using 3D scans.

## Contribution

Demonstrates clinician-led AI development for dental cavity scoring without coding expertise.

## Key findings

- The model achieved strong alignment with expert scores (Pearson’s r = 0.92 on test data).
- 66.7% of predictions were within ±5% of examiner scores during training.
- 100% of test predictions were within ±10% of examiner scores.

## Abstract

Introduction: Artificial intelligence is emerging in dental education, but its use in preclinical assessment remains limited. Large language models like ChatGPT® V4.5 enable non-programmers to build AI models through real-time guidance, addressing the coding barrier. Aim: This study aims to empower clinician-led, low-cost, AI-driven assessment models in preclinical restorative dentistry and to evaluate the technical feasibility of using a neural network to score 3D cavity preparations. Methods: Twenty mandibular molars (tooth 46), each with two carious lesions, were prepared and scored by two expert examiners using a 20-point rubric. The teeth were scanned with a Medit i700® and exported as .OBJ files. Using Open3D, the models were processed into point clouds. With ChatGPT’s guidance, the clinician built a PointNet-based neural model in PyTorch, training it on 20 cases and testing it on 10 unseen preparations. Results: In training, the model achieved an MAE of 0.82, RMSE of 1.02, and Pearson’s r = 0.88, with 66.7% and 93.3% of the predictions within ±5% and ±10% of the examiner scores, respectively. On the test set, it achieved an MAE of 0.97, RMSE of 1.16, and r = 0.92, with 50% and 100% of scores within ±5% and ±10%, respectively. These results show a strong alignment with examiner scores and an early generalizability for scoring preclinical cavity preparations. Conclusions: This study confirms the feasibility of clinician-led, low-cost AI development for 3D cavity assessment using ChatGPT, even without prior coding expertise.

## Full-text entities

- **Diseases:** carious lesions (MESH:D003731)

## Full text

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## Figures

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## References

17 references — full list in the complete paper: https://tomesphere.com/paper/PMC12651764/full.md

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Source: https://tomesphere.com/paper/PMC12651764