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3D cephalometric landmark detection by multiple stage deep reinforcement learning

Sung Ho Kang, Kiwan Jeon, Sang‐Hoon Kang, Sang-Hwy Lee

2021Scientific Reports58 citationsDOIOpen Access PDF

Abstract

The lengthy time needed for manual landmarking has delayed the widespread adoption of three-dimensional (3D) cephalometry. We here propose an automatic 3D cephalometric annotation system based on multi-stage deep reinforcement learning (DRL) and volume-rendered imaging. This system considers geometrical characteristics of landmarks and simulates the sequential decision process underlying human professional landmarking patterns. It consists mainly of constructing an appropriate two-dimensional cutaway or 3D model view, then implementing single-stage DRL with gradient-based boundary estimation or multi-stage DRL to dictate the 3D coordinates of target landmarks. This system clearly shows sufficient detection accuracy and stability for direct clinical applications, with a low level of detection error and low inter-individual variation (1.96 ± 0.78 mm). Our system, moreover, requires no additional steps of segmentation and 3D mesh-object construction for landmark detection. We believe these system features will enable fast-track cephalometric analysis and planning and expect it to achieve greater accuracy as larger CT datasets become available for training and testing.

Topics & Concepts

LandmarkComputer scienceArtificial intelligenceSegmentationReinforcement learningComputer visionPattern recognition (psychology)Process (computing)Cephalometric analysisBoundary (topology)OrthodonticsMathematicsMathematical analysisOperating systemMedicineDental Radiography and ImagingOrthodontics and Dentofacial OrthopedicsForensic Anthropology and Bioarchaeology Studies
3D cephalometric landmark detection by multiple stage deep reinforcement learning | Litcius