CVOCJan 19, 2025

Self-CephaloNet: A Two-stage Novel Framework using Operational Neural Network for Cephalometric Analysis

arXiv:2501.10984v14 citationsh-index: 15Neural computing & applications (Print)
Originality Incremental advance
AI Analysis

This addresses time-consuming manual landmark detection in orthodontic diagnosis, showing strong but incremental improvements over existing deep learning methods.

The paper tackles automated cephalometric landmark detection in dental X-rays by proposing Self-CephaloNet, a two-stage framework using operational neural networks. The model achieved a 70.95% success rate in the first stage and 82.25% in the second stage on the ISBI 2015 dataset within a 2mm range, with 75.95% on an external validation dataset.

Cephalometric 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 performance have been observed. To address this critical issue, we proposed an end-to-end cascaded deep learning framework (Self-CepahloNet) for the task, which demonstrated benchmark performance over the ISBI 2015 dataset in predicting 19 dental landmarks. Due to their adaptive nodal capabilities, Self-ONN (self-operational neural networks) demonstrate superior learning performance for complex feature spaces over conventional convolutional neural networks. To leverage this attribute, we introduced a novel self-bottleneck in the HRNetV2 (High Resolution Network) backbone, which has exhibited benchmark performance on the ISBI 2015 dataset for the dental landmark detection task. Our first-stage results surpassed previous studies, showcasing the efficacy of our singular end-to-end deep learning model, which achieved a remarkable 70.95% success rate in detecting cephalometric landmarks within a 2mm range for the Test1 and Test2 datasets. Moreover, the second stage significantly improved overall performance, yielding an impressive 82.25% average success rate for the datasets above within the same 2mm distance. Furthermore, external validation was conducted using the PKU cephalogram dataset. Our model demonstrated a commendable success rate of 75.95% within the 2mm range.

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