https://journals-sol.sbc.org.br/index.php/jdhbi/issue/feedJournal of Digital Health and Biomedical Informatics2026-05-27T17:29:51+00:00Marcia Itojdhbieditorchefe@gmail.comOpen Journal Systems<p data-start="124" data-end="540">The <em data-start="128" data-end="182">Journal of Digital Health and Biomedical Informatics</em> (JDHBI) is an open-access journal of the Brazilian Computing Society, dedicated to <strong data-start="266" data-end="284">digital health</strong> and the use of technologies to support <strong data-start="324" data-end="340">human health</strong>. It publishes original research and reviews on digital innovations, health information systems, artificial intelligence, telemedicine, data analysis, and other digital technologies applied to human health.</p> <p data-start="547" data-end="754">The journal also accepts studies in the <strong data-start="587" data-end="601">One Health</strong> context, provided they explore the intersection between technology, human health, animal health, and ecosystems, with a direct impact on human health.</p> <p data-start="761" data-end="894"><strong data-start="761" data-end="892">Articles focusing exclusively on animal or veterinary health, without relation to human health or ecosystems, are not accepted.</strong></p>https://journals-sol.sbc.org.br/index.php/jdhbi/article/view/7916Tooth Detection and Segmentation on Occlusal Surfaces in Early Mixed Dentition Using Deep Learning2026-03-24T12:17:11+00:00Bruna Cristine Diasbrunacristined@gmail.comMateus Felipe de Cássio Ferreiramateus.fecassio@gmail.comLuan Matheus Trindade Dalmazoluantrindade@ufpr.brLuciana Reichert da Silva Assunçãolurassuncao@yahoo.com.brLucas Ferrari de Oliveiralferrari@inf.ufpr.br<p><span dir="ltr" role="presentation">Artificial intelligence, particularly Convolutional Neural Networks (CNNs), has shown great </span><span dir="ltr" role="presentation">potential for the detection of oral health conditions, including dental caries. Objectives: To evaluate the performance </span><span dir="ltr" role="presentation">of CNNs in the detection and segmentation of posterior teeth during the early phase of mixed dentition.</span> <span dir="ltr" role="presentation">Materials and </span><span dir="ltr" role="presentation">Methods:</span> <span dir="ltr" role="presentation">A total of 945 images of posterior teeth were collected in a school-based setting. The dataset was divided into </span><span dir="ltr" role="presentation">training and testing subsets. Three CNN architectures — YOLOv11, U-Net, and DeepLabv3 — were compared based on </span><span dir="ltr" role="presentation">precision, recall, and their ability to detect partially erupted teeth.</span> <span dir="ltr" role="presentation">Results:</span> <span dir="ltr" role="presentation">YOLOv11 achieved a precision of 0.967 and a </span><span dir="ltr" role="presentation">recall of 0.938, successfully identifying 96.1% of partially erupted permanent teeth. U-Net demonstrated a precision of </span><span dir="ltr" role="presentation">0.953 and a recall of 0.951, detecting 78.4% of partially erupted teeth, while DeepLabv3 achieved a precision of 0.963 and </span><span dir="ltr" role="presentation">a recall of 0.944, detecting 76.5% of these teeth. Conclusions: All three CNNs demonstrated high accuracy in detecting </span><span dir="ltr" role="presentation">and segmenting posterior teeth in children. However, YOLOv11 outperformed both U-Net and DeepLabv3 in detecting </span><span dir="ltr" role="presentation">partially erupted teeth, highlighting its potential for use in studies involving early mixed dentition.</span> <span dir="ltr" role="presentation">Clinical Relevance: </span><span dir="ltr" role="presentation">Identifying the most suitable CNN architecture for detecting caries in mixed dentition may help standardize diagnosis and </span><span dir="ltr" role="presentation">reduce clinical time.</span></p>2026-05-27T00:00:00+00:00Copyright (c) 2026 Bruna Cristine Dias, Mateus Felipe de Cássio Ferreira, Luan Matheus Trindade Dalmazo, Luciana Reichert da Silva Assunção, Lucas Ferrari de Oliveira