Publication: Evaluation of the mandibular canal by CBCT with a deep learning approach
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Abstract
Background/Aim: The mandibular canal including the inferior
alveolar nerve (IAN) is important in the extraction of the mandibular third
molar tooth, which is one of the most frequently performed dentoalveolar
surgical procedures in the mandible, and IAN paralysis is the biggest
complication during this procedure. Today, deep learning, a subset of
artificial intelligence, is in rapid development and has achieved significant
success in the field of dentistry. Employing deep learning algorithms on
CBCT images, a rare but invaluable resource, for precise mandibular
canal identification heralds a significant leap forward in the success of
mandibular third molar extractions, marking a promising evolution in dental
practices. Material and Methods: The CBCT images of 300 patients were
obtained. Labeling the mandibular canal was done and the data sets were
divided into two parts: training (n=270) and test data (n=30) sets. Using
the nnU-Netv2 architecture, training and validation data sets were applied
to estimate and generate appropriate algorithm weight factors. The success
of the model was checked with the test data set, and the obtained DICE
score gave information about the success of the model. Results: DICE score
indicates the overlap between labeled and predicted regions, expresses
how effective the overlap area is in an entire combination. In our study, the
DICE score found to accurately predict the mandibular canal was 0.768
and showed outstanding success. Conclusions: Segmentation and detection
of the mandibular canal on CBCT images allows new approaches applied
in dentistry and help practitioners with the diagnostic preoperative and
postoperative process.
Key Words: Deep Learning, Artificial Intelligence, Mandibular Canal, CBCT
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Ünal S. Y., Namdar P., "Evaluation of the mandibular canal by CBCT with a deep learning approach", Balkan Journal of Dental Medicine, cilt.28, sa.2, ss.122-128, 2024
