Deep convolutional networks for automated detection of posterior-element fractures on spine CT
Holger R. Roth, Yinong Wang, Jianhua Yao, Le Lu, Joseph E. Burns,, Ronald M. Summers

TL;DR
This paper demonstrates that deep convolutional networks can effectively detect posterior-element spine fractures in CT images, achieving high accuracy and sensitivity, which could assist radiologists in trauma diagnosis.
Contribution
The study introduces a novel application of ConvNets with edge map analysis for automated spine fracture detection in CT scans, showing promising results.
Findings
Achieved an AUC of 0.857 in fracture detection
Sensitivity of 71% at 5 false positives per patient
Sensitivity of 81% at 10 false positives per patient
Abstract
Injuries of the spine, and its posterior elements in particular, are a common occurrence in trauma patients, with potentially devastating consequences. Computer-aided detection (CADe) could assist in the detection and classification of spine fractures. Furthermore, CAD could help assess the stability and chronicity of fractures, as well as facilitate research into optimization of treatment paradigms. In this work, we apply deep convolutional networks (ConvNets) for the automated detection of posterior element fractures of the spine. First, the vertebra bodies of the spine with its posterior elements are segmented in spine CT using multi-atlas label fusion. Then, edge maps of the posterior elements are computed. These edge maps serve as candidate regions for predicting a set of probabilities for fractures along the image edges using ConvNets in a 2.5D fashion (three orthogonal patches…
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