| Literature DB >> 34067462 |
Dong-Min Son1, Yeong-Ah Yoon2, Hyuk-Ju Kwon1, Chang-Hyeon An2, Sung-Hak Lee1.
Abstract
Mandibular fracture is one of the most frequent injuries in oral and maxillo-facial surgery. Radiologists diagnose mandibular fractures using panoramic radiography and cone-beam computed tomography (CBCT). Panoramic radiography is a conventional imaging modality, which is less complicated than CBCT. This paper proposes the diagnosis method of mandibular fractures in a panoramic radiograph based on a deep learning system without the intervention of radiologists. The deep learning system used has a one-stage detection called you only look once (YOLO). To improve detection accuracy, panoramic radiographs as input images are augmented using gamma modulation, multi-bounding boxes, single-scale luminance adaptation transform, and multi-scale luminance adaptation transform methods. Our results showed better detection performance than the conventional method using YOLO-based deep learning. Hence, it will be helpful for radiologists to double-check the diagnosis of mandibular fractures.Entities:
Keywords: YOLO; YOLO v4; deep learning; image processing; mandibular fracture; multi-scale luminance adaptation transform (MLAT); object detection; panoramic radiography; single-scale luminance adaptation transform (SLAT)
Year: 2021 PMID: 34067462 DOI: 10.3390/diagnostics11060933
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418