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AuthorSumon, Md. Shaheenur Islam
AuthorIslam, Khandaker Reajul
AuthorHossain, Sakib Abrar
AuthorRafique, Tanzila
AuthorGhosh, Ranjit
AuthorHassan, Gazi Shamim
AuthorPodder, Kanchon Kanti
AuthorBarhom, Noha
AuthorTamimi, Faleh
AuthorChowdhury, Muhammad E. H.
Available date2025-05-27T05:41:26Z
Publication Date2025
Publication NameNeural Computing and Applications
ResourceScopus
Identifierhttp://dx.doi.org/10.1007/s00521-025-11097-6
ISSN9410643
URIhttp://hdl.handle.net/10576/65247
AbstractCephalometric analysis is essential for the diagnosis and treatment planning of orthodontics. In lateral cephalograms, however, the manual detection of anatomical landmarks is a time-consuming procedure. Deep learning solutions hold the potential to address the time constraints associated with certain tasks; however, concerns regarding their performances have been observed. To address this critical issue, we propose an end-to-end cascaded deep learning framework (Self-CephaloNet) for the task, which demonstrates benchmark performance over the ISBI 2015 dataset in predicting 19 cephalometric landmarks. Due to their adaptive nodal capabilities, Self-ONN (self-operational neural networks) demonstrates superior learning performance for complex feature spaces over conventional convolutional neural networks. To leverage this attribute, we introduce a novel self-bottleneck in the HRNetV2 (high-resolution network) backbone, which has exhibited benchmark performance on our landmark detection task. Our first-stage result surpasses previous studies, showcasing the efficacy of our singular end-to-end deep learning model, which achieves a remarkable 70.95% success rate in detecting cephalometric landmarks within a 2-mm range for the Test1 and Test2 datasets which are part of ISBI 2015 dataset. Moreover, the second stage significantly improves overall performance, yielding an impressive 82.25% average success rate for the datasets above within the same 2-mm distance. Furthermore, external validation has been conducted using the PKU cephalogram dataset. Our model demonstrates a commendable success rate of 75.95% within the 2-mm range.
Languageen
PublisherSpringer Science and Business Media Deutschland GmbH
SubjectAnatomical landmarks
Orthodontic diagnosis
Self-CephaloNet
Treatment planning
TitleSelf-CephaloNet: a two-stage novel framework using operational neural network for cephalometric analysis
TypeArticle
dc.accessType Open Access


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