Deep learning for sex determination: Analyzing over 200,000 panoramic radiographs |
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Authors: | Ana Claudia Martins Ciconelle BSc,MSc,Renan Lucio Berbel da Silva DDS,MSc,Jun Ho Kim DDS,MSc, PhD,Bruno Aragão Rocha MD,Dênis Gonçalves dos Santos BSc,Luis Gustavo Rocha Vianna BSc,MSc,Luma Gallacio Gomes  Ferreira BSc,Vinícius Henrique Pereira  dos  Santos,Jeferson Orofino Costa DDS,Renato Vicente BSc,MSc, PhD |
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Affiliation: | 1. Machiron Ltd., São Paulo, Brazil;2. Department of Stomatology, School of Dentistry, University of São Paulo, São Paulo, Brazil;3. Papaiz Associados Diagnosticos Por Imagem S.A., São Paulo, Brazil;4. Institute of Mathematics and Statistics, University of São Paulo, São Paulo, Brazil |
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Abstract: | The objective of this study is to assess the performance of an innovative AI-powered tool for sex determination using panoramic radiographs (PR) and to explore factors affecting the performance of the convolutional neural network (CNN). The study involved 207,946 panoramic dental X-rays and their corresponding reports from 15 clinical centers in São Paulo, Brazil. The PRs were acquired with four different devices, and 58% of the patients were female. Data preprocessing included anonymizing the exams, extracting pertinent information from the reports, such as sex, age, type of dentition, and number of missing teeth, and organizing the data into a PostgreSQL database. Two neural network architectures, a standard CNN and a ResNet, were utilized for sex classification, with both undergoing hyperparameter tuning and cross-validation to ensure optimal performance. The CNN model achieved 95.02% accuracy in sex estimation, with image resolution being a significant influencing factor. The ResNet model attained over 86% accuracy in subjects older than 6 years and over 96% in those over 16 years. The algorithm performed better on female images, and the area under the curve (AUC) exceeded 96% for most age groups, except the youngest. Accuracy values were also assessed for different dentition types (deciduous, mixed, and permanent) and missing teeth. This study demonstrates the effectiveness of an AI-driven tool for sex determination using PR and emphasizes the role of image resolution, age, and sex in determining the algorithm's performance. |
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Keywords: | convolutional neural network deep learning machine learning panoramic radiograph sex estimate accuracy sex estimation |
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