RCFLA-YOLO: a deep learning-driven framework for the automated assessment of root canal filling quality in periapical radiographs

RCFLA-YOLO:一种基于深度学习的框架,用于自动评估根尖周X光片中的根管充填质量

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Abstract

BACKGROUND: Evaluating the quality of root canal filling (RCF) performed by dental students in preclinical settings is a time-consuming process for clinicians and is often subjectively assessed. METHODS: This study proposes deep learning (DL)-based RCFLA-YOLO model for the objective and automatic evaluation of RCF length (RCFL), one of the key parameters in assessing RCF quality from periapical radiographs (PRs). To develop the proposed method, an RCFL dataset comprising 735 PRs labeled by expert clinicians was created. The method uses YOLOv11 architectures, one of the state-of-the-art DL-based object detection techniques, and its performance has been validated with this dataset. RESULTS: Performance evaluations conducted on the RCFL dataset demonstrated that among the tested models, the YOLOv11m architecture achieved the highest performance, with 77.51% precision, 79.03% recall, 78.28% F1-score, and 87.89% mAP50. CONCLUSIONS: A performance comparison with similar studies in the literature indicates that the proposed method is among the top-performing approaches based on the applied evaluation metrics. Furthermore, this study has the potential to be one of the first to assess RCF quality in student procedures. In conclusion, the proposed method, with its notable strong performance, demonstrates its potential as an effective tool for developing decision support systems aimed at the automatic evaluation of RCF quality in preclinical dental education.

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