Prediction of Radiation-Related Dental Caries Through PyRadiomics Features and Artificial Neural Network on Panoramic Radiography.
Vanessa De Araujo FariaMehran AzimbagiradGustavo Viani ArrudaJuliana Fernandes PavoniJoaquim Cezar FelipeElza Maria Carneiro Mendes Ferreira Dos SantosLuiz Otavio Murta JuniorPublished in: Journal of digital imaging (2021)
The prediction and detection of radiation-related caries (RRC) are crucial to manage the side effects of the head and the neck cancer (HNC) radiotherapy (RT). Despite the demands for the prediction of RRC, no study proposes and evaluates a prediction method. This study introduces a method based on artificial intelligence neural network to predict and detect either regular caries or RRC in HNC patients under RT using features extracted from panoramic radiograph. We selected fifteen HNC patients (13 men and 2 women) to analyze, retrospectively, their panoramic dental images, including 420 teeth. Two dentists manually labeled the teeth to separate healthy and teeth with either type caries. They also labeled the teeth by resistant and vulnerable, as predictive labels telling about RT aftermath caries. We extracted 105 statistical/morphological image features of the teeth using PyRadiomics. Then, we used an artificial neural network classifier (ANN), firstly, to select the best features (using maximum weights) and then label the teeth: in caries and non-caries while detecting RRC, and resistant and vulnerable while predicting RRC. To evaluate the method, we calculated the confusion matrix, receiver operating characteristic (ROC), and area under curve (AUC), as well as a comparison with recent methods. The proposed method showed a sensibility to detect RRC of 98.8% (AUC = 0.9869) and to predict RRC achieved 99.2% (AUC = 0.9886). The proposed method to predict and detect RRC using neural network and PyRadiomics features showed a reliable accuracy able to perform before starting RT to decrease the side effects on susceptible teeth.
Keyphrases
- neural network
- cone beam computed tomography
- oral health
- artificial intelligence
- end stage renal disease
- deep learning
- newly diagnosed
- chronic kidney disease
- ejection fraction
- peritoneal dialysis
- early stage
- squamous cell carcinoma
- prognostic factors
- young adults
- patient reported outcomes
- drug induced
- lymph node metastasis
- rectal cancer
- real time pcr