Advancing Cephalometric Soft-Tissue Landmark Detection: An Integrated AdaBoost Learning Approach Incorporating Haar-Like and Spatial Features

The detection of cephalometric landmarks in radiographic imagery is pivotal to an extensive array of medical applications, notably within orthodontics and maxillofacial surgery. Manual annotation of these landmarks, however, is not only labour-intensive but also subject to potential inaccuracies. To...

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Veröffentlicht in:Traitement du signal 2023-12, Vol.40 (6), p.2879-2886
Hauptverfasser: Elaiwat, Said, Azad, Mohammad, Alam, Mohammad Khursheed, Abo-zanona, Marwan, Elzaghmouri, Bassam, Omar, Hani
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Sprache:eng
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Zusammenfassung:The detection of cephalometric landmarks in radiographic imagery is pivotal to an extensive array of medical applications, notably within orthodontics and maxillofacial surgery. Manual annotation of these landmarks, however, is not only labour-intensive but also subject to potential inaccuracies. To address these challenges, we propose a robust, fully automated method for detecting soft-tissue landmarks. This innovative method effectively integrates two disparate types of descriptors: Haar-like features, which are primarily employed to capture local edges and lines, and spatial features, designed to encapsulate the spatial information of landmarks. The integration of these descriptors facilitates the construction of a potent classifier using the AdaBoost technique. To validate the efficacy of the proposed method, a novel dataset for the task of soft-tissue landmark detection is introduced, accompanied by two distinct evaluation protocols to determine the detection rate. The first protocol quantifies the detection rate within the Mean Radial Error (MRE), while the second protocol measures the detection rate within a predefined confidence region R. The conducted experiments demonstrated the proposed method's superiority over existing state-of-the-art techniques, yielding average detection rates of 76.7% and 94% within a 2mm radial distance and within the confidence region R, respectively. This study's findings underscore the potential of this innovative approach in enhancing the accuracy and efficiency of cephalometric landmark detection.
ISSN:0765-0019
1958-5608
DOI:10.18280/ts.400649