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Introduction: Dental age estimation plays a key role in forensic identification, clinical diagnosis, treatment planning, and prognosis in fields such as pediatric dentistry and orthodontics. Large language models (LLM) are increasingly being recognized for their potential applications in Dentistry. This study aimed to compare the performance of currently available generative artificial intelligence LLM technologies in estimating dental age using the Demirjian's scores.
Methods: Panoramic radiographs were analyzed using Demirjian's method (1973), with each left permanent mandibular tooth classified from stage A to H. Untrained LLM, ChatGPT (GPT-4-turbo), Gemini 2.0 Flash, and DeepSeek-V3 were tasked with estimating dental age based on the patient's Demirjian score for each tooth. Due to the probabilistic nature of ChatGPT, Gemini, and DeepSeek, which can produce varying responses to the same question, three responses were collected per case per day (three different computers) from each model on three separate days. The age estimates obtained from LLM were compared to the individuals' chronological ages. Intra- and inter-examiner reliability was assessed using the Intraclass Correlation Coefficient (ICC). Model performance was evaluated using Mean Absolute Error (MAE), Root Mean Squared Error (RMSE), Coefficient of Determination ( ), and Bias.
Results: Thirty panoramic radiographs (40% female, 60% male; mean age 10.4 ± 2.32 years) were included. Both intra- and inter-examiner ICC values exceeded 0.85. ChatGPT and DeepSeek exhibited comparable but suboptimal performance, with higher errors (MAE: 1.98-2.05 years; RMSE: 2.33-2.35 years), negative values (-0.069 to -0.049), and substantial overestimation biases (1.90-1.91 years), indicating poor model fit and systematic flaws. Gemini demonstrated intermediate results, with a moderate MAE (1.57 years) and RMSE (1.81 years), a positive (0.367), and a lower bias (1.32 years).
Discussion: This study demonstrated that, although LLM like ChatGPT, Gemini, and DeepSeek can estimate dental age using Demirjian's scores, their performance remains inferior to the traditional method. Among them, DeepSeek-V3 showed the best results, but all models require task-specific training and validation before clinical application.
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http://dx.doi.org/10.3389/fdmed.2025.1634006 | DOI Listing |
Age Ageing
August 2025
Department of Nursing Health Services Research, Graduate School of Health Care Sciences, Institute of Science Tokyo, Yushima, Bunkyo-ku, Tokyo, Japan.
Background: Little is known about how ambulatory care sensitive condition (ACSC)-related readmissions can be reduced in acute care settings.
Objective: This study examined the association between transitional care for hospitalised older patients with ACSC and ACSC-related readmissions.
Methods: This retrospective observational cohort study included patients aged 65 years and older admitted with ACSC as the primary diagnosis from 1 April 2022 to 31 January 2023, using linked data from the Diagnosis Procedure Combination and the medical functions of the hospital beds database.
Minerva Dent Oral Sci
September 2025
Division of Implant Prosthodontics, Department of Surgical Sciences, University of Genoa, Genoa, Italy.
Background: The purpose of the study is to evaluate the use of a magnetodynamic instrument (Magnetic Mallet, Metaergonomica, Turbigo, Milan, Italy) to perform a horizontal bone expansion in edentulous sites that need to be rehabilitated with a dental implant.
Methods: A sample of 15 patients, 11 men and 4 women, age between 39 and 78 years, was analyzed. A total of 18 conical-shaped implants with a diameter of 3.
J Oral Rehabil
September 2025
Department of Prosthodontics, Dental School, National and Kapodistrian University of Athens, Athens, Greece.
Background: Although oral diseases and frailty can be met earlier in life, there is limited information on their association across the lifespan.
Objectives: To scope for the association of oral factors with physical frailty in Greek community-dwelling adults.
Methods: Participants were over 18 years of age with ≥ 20 natural teeth, ≥ 10 occlusal contacts, and no removable dentures.
J Oral Rehabil
September 2025
Division of Functional Oral Neuro Science, Graduate School of Dentistry, The University of Osaka, Osaka, Japan.
Background: Older adults have decreased swallowing-related muscle mass, which may lead to decreased swallowing function. One of the causes of this decrease in muscle mass in older adults is a decrease in swallowing frequency.
Objective: The purpose of this study was to evaluate the relationship between swallowing frequency and swallowing-related muscle mass.
Cureus
August 2025
Department of Oral and Maxillofacial Surgery, University College of Medicine and Dentistry, The University of Lahore, Lahore, PAK.
Background And Aim: The incisive (nasopalatine) canal is an important anatomical structure of the anterior maxilla. It holds significance for surgeries and implant placement in the central incisor region. The size, shape, and relation with surrounding bones may vary by age, gender, and ethnicity.
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