2024
DOI: 10.1186/s12903-024-05268-5
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Application of artificial intelligence-based detection of furcation involvement in mandibular first molar using cone beam tomography images- a preliminary study

Shishir Shetty,
Wael Talaat,
Sausan AlKawas
et al.

Abstract: Background Radiographs play a key role in diagnosis of periodontal diseases. Deep learning models have been explored for image analysis in periodontal diseases. However, there is lacuna of research in the deep learning model-based detection of furcation involvements [FI]. The objective of this study was to determine the accuracy of deep learning model in the detection of FI in axial CBCT images. Methodology We obtained initial dataset 285 axial CBCT images among which 1… Show more

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