# AI-enabled predictive, preventive and personalised oral health management: a lightweight patient-centred model for automated assessment of dental plaque and gingival inflammation

**Authors:** Camila Lindoni Azevedo, Ryan Banks, Vishal Thengane, Teresa Cristina Alves da Silva Gonzalez Carvalho, Fausto Medeiros Mendes, Yunpeng Li, Edgard Michel Crosato

PMC · DOI: 10.1007/s13167-025-00432-5 · 2026-02-24

## TL;DR

This paper introduces a lightweight AI model that automatically detects dental plaque and gum inflammation, aiming to improve personalized and preventive oral health care.

## Contribution

A novel AI model for automated dental plaque and gingival inflammation detection, enabling predictive and personalized oral health management.

## Key findings

- The model achieved moderate segmentation performance with higher accuracy for tooth regions.
- Plaque index classification showed strong performance, while gingival inflammation detection had clinically meaningful accuracy.
- The model supports early identification of inflammatory burden and can be integrated into mobile platforms for longitudinal monitoring.

## Abstract

Periodontal diseases are highly prevalent and largely preventable. The challenge of ensuring sustained adherence to preventive measures, such as mechanical plaque control, remains unresolved despite their strong scientific support. Embedding emerging strategies within the framework of predictive, preventive, and personalised medicine (PPPM) offers a promising path to improve adherence, enable early risk prediction, and tailor interventions. Within this paradigm, digital image biomarkers are increasingly recognised as essential tools for supporting proactive, system-oriented oral health management.

This study hypothesised that a patient-centered artificial intelligence (AI) model could automatically detect dental plaque and gingival inflammation, advancing predictive and preventive strategies for oral health. To verify the working hypothesis, a calibrated periodontist annotated 504 intraoral images, generating target masks (TM) as ground truth. A YOLOv8Seg-based deep learning model was trained for simultaneously segmented teeth, dental plaque, and gingival health status (healthy vs. inflamed), generating predicted masks (PM) that were subsequently used for classification tasks, including the calculation of gingival and plaque indices.

The model achieved moderate segmentation performance (IoU = 47%, DSC = 61%), with higher accuracy for tooth regions (mAP = 71% and 77%). Detection of dental plaque, healthy gingiva, and inflamed gingiva showed moderate precision (52%). Plaque index classification performed strongly (DSC = 95%, recall = 91%), whereas gingival inflammation showed moderate but clinically meaningful accuracy (DSC = 70%, recall = 92%), supporting early identification of inflammatory burden.

The proposed model functions as a practical digital tool for predictive oral healthcare by generating actionable, image-based biomarkers for patient phenotyping, early risk flagging, and site-specific behavioural reinforcement. Its lightweight architecture enables future integration into mobile platforms for longitudinal digital health monitoring and precision prevention. Expert recommendations include embedding AI-based plaque and gingivitis assessment into mobile health tools to enhance participatory self-monitoring; integrating imaging-derived biomarkers with behavioural, microbiological and socioeconomic information to support multimodal diagnostics and more accurate patient profiling; operationalising targeted prevention through site-specific alerts and personalised recall strategies; and deploying lightweight AI solutions in community-level screening programmes to reduce the burden of chronic inflammatory oral conditions. This work supports the transition from reactive treatment to a proactive, system-oriented PPPM.

The online version contains supplementary material available at 10.1007/s13167-025-00432-5.

## Full-text entities

- **Diseases:** Periodontal diseases (MESH:D010510), gingival inflammation (MESH:D007249), Plaque (MESH:D003773), dental (MESH:D009057), gingivitis (MESH:D005891)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

5 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12976221/full.md

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Source: https://tomesphere.com/paper/PMC12976221