4.6 Review

Current Applications of Deep Learning and Radiomics on CT and CBCT for Maxillofacial Diseases

Journal

DIAGNOSTICS
Volume 13, Issue 1, Pages -

Publisher

MDPI
DOI: 10.3390/diagnostics13010110

Keywords

artificial intelligence; deep learning; radiomics; computed tomography; cone-beam computed tomography; maxillofacial diseases

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The increasing use of CT and CBCT in oral and maxillofacial imaging has led to the development of deep learning and radiomics applications for maxillofacial disease diagnosis and management. Deep learning models have been developed for automatic diagnosis, segmentation, and classification of various maxillofacial diseases, while radiomics applications mainly focus on diagnosing occult metastasis and osteoarthritis. These models show high performance and have the potential for clinical use, but challenges in generalizability and reproducibility need to be addressed.
The increasing use of computed tomography (CT) and cone beam computed tomography (CBCT) in oral and maxillofacial imaging has driven the development of deep learning and radiomics applications to assist clinicians in early diagnosis, accurate prognosis prediction, and efficient treatment planning of maxillofacial diseases. This narrative review aimed to provide an up-to-date overview of the current applications of deep learning and radiomics on CT and CBCT for the diagnosis and management of maxillofacial diseases. Based on current evidence, a wide range of deep learning models on CT/CBCT images have been developed for automatic diagnosis, segmentation, and classification of jaw cysts and tumors, cervical lymph node metastasis, salivary gland diseases, temporomandibular (TMJ) disorders, maxillary sinus pathologies, mandibular fractures, and dentomaxillofacial deformities, while CT-/CBCT-derived radiomics applications mainly focused on occult lymph node metastasis in patients with oral cancer, malignant salivary gland tumors, and TMJ osteoarthritis. Most of these models showed high performance, and some of them even outperformed human experts. The models with performance on par with human experts have the potential to serve as clinically practicable tools to achieve the earliest possible diagnosis and treatment, leading to a more precise and personalized approach for the management of maxillofacial diseases. Challenges and issues, including the lack of the generalizability and explainability of deep learning models and the uncertainty in the reproducibility and stability of radiomic features, should be overcome to gain the trust of patients, providers, and healthcare organizers for daily clinical use of these models.

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