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Related Concept Videos

Tooth Anatomy01:21

Tooth Anatomy

1.9K
The human tooth enables us to eat a variety of foods, speak clearly, and even aid in shaping our faces. Teeth are composed of various elements that work together. Here's a detailed look at the anatomy of a human tooth.
The Crown, Neck, and Root
The visible part of the tooth is referred to as the crown. It's covered by enamel, the hardest substance in the human body. The crown is uniquely shaped for each type of tooth, allowing for different functions such as cutting, tearing, or...
1.9K

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Updated: Jan 7, 2026

Author Spotlight: Advancing CBCT and Digital Dental Image Integration with AI-Assisted Digitization
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ToothSeg: Robust Tooth Instance Segmentation and Numbering in CBCT using Deep Learning and Self-Correction.

Niels van Nistelrooij, Lars Kramer, Steven Kempers

    IEEE Journal of Biomedical and Health Informatics
    |January 1, 2026
    PubMed
    Summary
    This summary is machine-generated.

    This study introduces ToothSeg, an automated deep learning method for segmenting and numbering teeth in cone-beam computed tomography (CBCT) scans. ToothSeg improves accuracy and reduces manual work in dental diagnostics.

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    Area of Science:

    • Medical Imaging
    • Artificial Intelligence
    • Oral and Maxillofacial Radiology

    Background:

    • Accurate interpretation of cone-beam computed tomography (CBCT) scans is crucial for dental diagnosis and treatment planning.
    • Current automated tooth segmentation methods in CBCT struggle with imaging artifacts, anatomical variations, and often require manual corrections.
    • These limitations hinder efficient clinical workflows and scalable research in oral health.

    Purpose of the Study:

    • To develop and evaluate ToothSeg, a fully automated deep learning approach for tooth instance segmentation and numbering in CBCT scans.
    • To address the limitations of existing methods by incorporating self-correction for improved accuracy and robustness.
    • To provide a tool that reduces manual workload and supports data-driven research in oral and craniofacial health.

    Main Methods:

    • ToothSeg utilizes a unified deep learning framework combining semantic and instance segmentation.
    • A self-correction mechanism is integrated to resolve segmentation errors like merged or split teeth and optimize tooth numbering.
    • The method was evaluated on a large in-house dataset (1282 scans) and the ToothFairy2 challenge dataset (480 scans), including comparisons with state-of-the-art techniques.

    Main Results:

    • ToothSeg significantly improved tooth segmentation accuracy (True Positive Dice: 93.6% to 94.3%) and tooth detection/numbering (multiclass instance F1: 94.2% to 95.5%) compared to an optimized semantic model.
    • The approach outperformed existing methods on both datasets, showing superior performance especially in challenging cases (TP Dice: ≥ +0.4%, multiclass instance F1: ≥ +1.8%).
    • Ablation studies confirmed the benefits of incorporating instance segmentation and self-correction.

    Conclusions:

    • ToothSeg offers a robust and accurate automated solution for tooth instance segmentation and numbering in CBCT.
    • The method demonstrates significant potential for reducing manual effort in dental image analysis.
    • This advancement facilitates scalable, data-driven research and clinical applications in oral and craniofacial health.