Automated methods for sella turcica segmentation on cephalometric radiographic data using deep learning (CNN) techniques.
Kaushlesh Singh ShakyaAmit LaddiManoj Kumar JaiswalPublished in: Oral radiology (2022)
The obtained findings suggest that the VGG19 and Resnet34 architectures (mean IoU and dice coefficient > 75%) comparatively outperformed the InceptionV3 and ResNext50 architectures (mean IoU and dice coefficients is around 45%) for considered cephalometric radiographic dataset. The study findings can be used as a reference model for future investigation of non-linear ST morphological characteristics and related biological anomalies.