体素
下颌骨(节肢动物口器)
分割
锥束ct
阶段(地层学)
计算机科学
下颌骨骨折
断裂(地质)
人工智能
锥束ct
口腔正畸科
医学
放射科
计算机断层摄影术
地质学
髁突
古生物学
植物
生物
属
岩土工程
作者
Niels van Nistelrooij,S. Schitter,Pieter van Lierop,K. El Ghoul,Daniela König,Marcel Hanisch,Alessandro Tel,Tong Xi,Daniel G. E. Thiem,Ralf Smeets,L. Dubois,Tabea Flügge,Bram van Ginneken,S. Bergé,Shankeeth Vinayahalingam
标识
DOI:10.1177/00220345241256618
摘要
After nasal bone fractures, fractures of the mandible are the most frequently encountered injuries of the facial skeleton. Accurate identification of fracture locations is critical for effectively managing these injuries. To address this need, JawFracNet, an innovative artificial intelligence method, has been developed to enable automated detection of mandibular fractures in cone-beam computed tomography (CBCT) scans. JawFracNet employs a 3-stage neural network model that processes 3-dimensional patches from a CBCT scan. Stage 1 predicts a segmentation mask of the mandible in a patch, which is subsequently used in stage 2 to predict a segmentation of the fractures and in stage 3 to classify whether the patch contains any fracture. The final output of JawFracNet is the fracture segmentation of the entire scan, obtained by aggregating and unifying voxel-level and patch-level predictions. A total of 164 CBCT scans without mandibular fractures and 171 CBCT scans with mandibular fractures were included in this study. Evaluation of JawFracNet demonstrated a precision of 0.978 and a sensitivity of 0.956 in detecting mandibular fractures. The current study proposes the first benchmark for mandibular fracture detection in CBCT scans. Straightforward replication is promoted by publicly sharing the code and providing access to JawFracNet on grand-challenge.org.
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