Convolution Neural Networks and Targeted Fluorescent Nanoparticles to Detect and ICDAS Score Caries

In this study, we aimed to evaluate the potential of using artificial intelligence (AI) to detect and score carious lesions using the ICDAS in combination with fluorescent imaging following application of TFSNs on teeth with a range of lesion severities, using ICDAS-labeled images as the reference standard. A total of 130 extracted human teeth with ICDAS scores from 0 to 6 were selected by a calibrated cariologist according to ICDAS. Then, the same surface was imaged with a stereomicroscope under white-light illumination, and blue-light illumination with an orange filter following application of the TFSNs. Both sets of images were labeled by another blinded ICDAS-calibrated cariologist to demarcate lesion position and severity. Convolutional Neural Networks, state-of-the-art models in imaging AI, were trained to determine the presence, location, ICDAS score (severity), and lesion surface porosity (as an indicator of activity) of carious lesions, and tested by 30 k-fold validation for white-light, blue-light, and the combined image sets. The best models showed high performance for the detection of carious lesions (sensitivity 80.26%, PPV 76.36%) and potential for determining the severity via ICDAS scoring (accuracy 72%, SD 5.67%) and the detection of surface porosity as an indicator of the activity of the lesions (accuracy 90%, SD 7.00%). More broadly, the combination of targeted biopolymer nanoparticles with imaging AI is a promising combination of novel technologies that cou...
Source: Caries Research - Category: Dentistry Source Type: research