TY - JOUR
T1 - Magnetic Resonance Imaging–Based Machine Learning Model in Classifying Jaw Lesions
T2 - A Preliminary Study
AU - Muraoka, Hirotaka
AU - Kaneda, Takashi
AU - Ito, Kotaro
AU - Otsuka, Kohei
AU - Tokunaga, Satoshi
N1 - Publisher Copyright:
© 2025 Japanese Stomatological Society.
PY - 2025/5
Y1 - 2025/5
N2 - Objectives: This study assessed the efficacy of a demographic data and apparent diffusion coefficient (ADC) value-based machine learning (ML) model in the classification of odontogenic lesions. Methods: The dataset comprises magnetic resonance imaging data from 675 patients with various odontogenic lesions, including ameloblastomas, dentigerous cysts, and odontogenic keratocysts. The dataset includes demographic variables, ADC values, and types of lesions. Various models (random forest, logistic regression, support vector machine, extreme gradient boosting, and linear discriminant analysis) were trained and evaluated using five-fold cross-validation, augmented with synthetic samples. Learning curves and confusion matrices were used to assess the classification performance. Additionally, statistical analyses were performed to compare age, sex, and ADC values among the lesions. Results: The ML analysis revealed that the average recall, precision, and F1 score were all 0.87–0.95. Moreover, the median ADC revealed significant differences among the lesions (p < 0.001), as did sex (p = 0.04), although no age-based differences were observed. Conclusion: Our study demonstrated the efficacy of demographic data and the ADC value-based ML model for the classification of odontogenic lesions.
AB - Objectives: This study assessed the efficacy of a demographic data and apparent diffusion coefficient (ADC) value-based machine learning (ML) model in the classification of odontogenic lesions. Methods: The dataset comprises magnetic resonance imaging data from 675 patients with various odontogenic lesions, including ameloblastomas, dentigerous cysts, and odontogenic keratocysts. The dataset includes demographic variables, ADC values, and types of lesions. Various models (random forest, logistic regression, support vector machine, extreme gradient boosting, and linear discriminant analysis) were trained and evaluated using five-fold cross-validation, augmented with synthetic samples. Learning curves and confusion matrices were used to assess the classification performance. Additionally, statistical analyses were performed to compare age, sex, and ADC values among the lesions. Results: The ML analysis revealed that the average recall, precision, and F1 score were all 0.87–0.95. Moreover, the median ADC revealed significant differences among the lesions (p < 0.001), as did sex (p = 0.04), although no age-based differences were observed. Conclusion: Our study demonstrated the efficacy of demographic data and the ADC value-based ML model for the classification of odontogenic lesions.
KW - jaw
KW - machine learning
KW - magnetic resonance imaging
KW - odontogenic lesions
UR - http://www.scopus.com/inward/record.url?scp=105001572656&partnerID=8YFLogxK
U2 - 10.1002/osi2.70004
DO - 10.1002/osi2.70004
M3 - Article
AN - SCOPUS:105001572656
SN - 1348-8643
VL - 22
JO - Oral Science International
JF - Oral Science International
IS - 2
M1 - e70004
ER -