Uncertainty Aware Deep Reinforcement Learning for Anatomical Landmark Detection in Medical Images

2021 ◽  
pp. 636-644
Author(s):  
James Browning ◽  
Micha Kornreich ◽  
Aubrey Chow ◽  
Jayashri Pawar ◽  
Li Zhang ◽  
...  
2019 ◽  
Vol 53 ◽  
pp. 156-164 ◽  
Author(s):  
Amir Alansary ◽  
Ozan Oktay ◽  
Yuanwei Li ◽  
Loic Le Folgoc ◽  
Benjamin Hou ◽  
...  

Author(s):  
Guang-Quan Zhou ◽  
Juzheng Miao ◽  
Xin Yang ◽  
Rui Li ◽  
En-Ze Huo ◽  
...  

Author(s):  
Florin C. Ghesu ◽  
Bogdan Georgescu ◽  
Tommaso Mansi ◽  
Dominik Neumann ◽  
Joachim Hornegger ◽  
...  

2021 ◽  
Author(s):  
Runnan Chen ◽  
Yuexin Ma ◽  
Lingjie Liu ◽  
Nenglun Chen ◽  
Zhiming Cui ◽  
...  

2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Sung Ho Kang ◽  
Kiwan Jeon ◽  
Sang-Hoon Kang ◽  
Sang-Hwy Lee

AbstractThe 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.


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