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Automatic Cephalometric Landmark Identification System Based on the Multi-Stage Convolutional Neural Networks with CBCT Combination Images

Minjung Kim, Yi Liu, Song Hee Oh, Hyo‐Won Ahn, Seong‐Hun Kim, Gerald Nelson

2021Sensors45 citationsDOIOpen Access PDF

Abstract

This study was designed to develop and verify a fully automated cephalometry landmark identification system, based on multi-stage convolutional neural networks (CNNs) architecture, using a combination dataset. In this research, we trained and tested multi-stage CNNs with 430 lateral and 430 MIP lateral cephalograms synthesized by cone-beam computed tomography (CBCT) to make a combination dataset. Fifteen landmarks were manually and respectively identified by experienced examiner, at the preprocessing phase. The intra-examiner reliability was high (ICC = 0.99) in manual identification. The results of prediction of the system for average mean radial error (MRE) and standard deviation (SD) were 1.03 mm and 1.29 mm, respectively. In conclusion, different types of image data might be the one of factors that affect the prediction accuracy of a fully-automated landmark identification system, based on multi-stage CNNs.

Topics & Concepts

LandmarkConvolutional neural networkArtificial intelligencePreprocessorComputer sciencePattern recognition (psychology)Identification (biology)CephalometryCephalometric analysisStage (stratigraphy)Computer visionOrthodonticsMedicineBotanyBiologyPaleontologyDental Radiography and ImagingMedical Imaging and AnalysisForensic Anthropology and Bioarchaeology Studies