Artificial Intelligence Clinical Trial
Official title:
A Deep Learning Approach to Submerged Deciduous Teeth Classification and Detection
Objectives: The study aimed to compare the success and reliability of an artificial
intelligence application in the detection and classification of submerged teeth in
orthopantomography (OPG).
Methods: Convolutional neural networks (CNN) algorithms were used to detect and classify
submerged molars. The detection module, which is based on the state-of-the-art Faster R-CNN
architecture, processed the radiograph to define the boundaries of submerged molars. A
separate testing set was used to evaluate the diagnostic performance of the system and
compare it to the expert level.
Results: The success rate of classification and identification of the system is high when
evaluated according to the reference standard. The system was extremely accurate in
performance comparison with observers.
Conclusions: The performance of the proposed computer-aided diagnosis solution is comparable
to that of experts. It is useful to diagnose submerged molars with an artificial intelligence
application to prevent errors. Also, it will facilitate pediatric dentists' diagnoses.
Pre-processing, Training, and Classification The study was conducted with balanced data sets.
The case and control data sets were randomly divided into two parts, the training group (27
case group/27 control group) and the test group (10 case group/10 control group) to prevent
the use of the visuals in the training group for retesting. The testing data set was not seen
by the system during the training phase.
All 2943-by-1435 pixel images in the data set were resized to 971 by 474 pixels prior to
training. All OPG images used include the whole dentitions. The training and test data sets
were used to estimate and generate weight factors for the optimal CNN algorithm. An arbitrary
sequence was generated using open-source Python programming (Python 3.6.1, Python Software
Foundation, Wilmington, DE, USA, https://www.python.org/) language and OpenCV, NumPy, Pandas,
and Matplotlib libraries. In this study, Tensorflow for model development was used to
classify submerged primary molars. InceptionV3 architecture was used as transfer learning,
and the transfer values were saved in the cache. Then, fully connected layer and softmax
classifiers were combined to form the final model layers. The training was carried out using
7000 steps with 16G RAM and a PC equipped with NVIDIA GeForce GTX 1050.
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