Segmentation of Mental Foramen in Orthopantomographs: A Deep Learning Approach
Haider Raza, Mohsin Ali, Vishal Krishna Singh, Agustin Wahjuningrum,, Rachel Sarig, Akhilanand Chaurasia

TL;DR
This study applies deep learning models, especially the classical UNet, to accurately segment the Mental Foramen in panoramic radiographs, improving dental procedures and patient outcomes.
Contribution
It introduces a novel application of deep learning for precise Mental Foramen segmentation using an in-house dataset and compares multiple models for optimal performance.
Findings
Classical UNet achieved a Dice score of 0.79.
ResUNet++ and UNet Attention models showed competitive results.
LinkNet with transfer learning produced the best outcomes among backbone architectures.
Abstract
Precise identification and detection of the Mental Foramen are crucial in dentistry, impacting procedures such as impacted tooth removal, cyst surgeries, and implants. Accurately identifying this anatomical feature facilitates post-surgery issues and improves patient outcomes. Moreover, this study aims to accelerate dental procedures, elevating patient care and healthcare efficiency in dentistry. This research used Deep Learning methods to accurately detect and segment the Mental Foramen from panoramic radiograph images. Two mask types, circular and square, were used during model training. Multiple segmentation models were employed to identify and segment the Mental Foramen, and their effectiveness was evaluated using diverse metrics. An in-house dataset comprising 1000 panoramic radiographs was created for this study. Our experiments demonstrated that the Classical UNet model performed…
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Taxonomy
MethodsSoftmax · Attention Is All You Need
