| Literature DB >> 31515752 |
Robert J Harris1, Shwan Kim2, Jerry Lohr2, Steve Towey2, Zeljko Velichkovich2, Tim Kabachenko2, Ian Driscoll2, Brian Baker2.
Abstract
Aortic dissections and ruptures are life-threatening injuries that must be immediately treated. Our national radiology practice receives dozens of these cases each month, but no automated process is currently available to check for critical pathologies before the images are opened by a radiologist. In this project, we developed a convolutional neural network model trained on aortic dissection and rupture data to assess the likelihood of these pathologies being present in prospective patients. This aortic injury model was used for study prioritization over the course of 4 weeks and model results were compared with clinicians' reports to determine accuracy metrics. The model obtained a sensitivity and specificity of 87.8% and 96.0% for aortic dissection and 100% and 96.0% for aortic rupture. We observed a median reduction of 395 s in the time between study intake and radiologist review for studies that were prioritized by this model. False-positive and false-negative data were also collected for retraining to provide further improvements in subsequent versions of the model. The methodology described here can be applied to a number of modalities and pathologies moving forward.Entities:
Keywords: Aortic; Convolutional neural network; Dissection; Machine learning; Rupture
Mesh:
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Year: 2019 PMID: 31515752 PMCID: PMC6841906 DOI: 10.1007/s10278-019-00281-5
Source DB: PubMed Journal: J Digit Imaging ISSN: 0897-1889 Impact factor: 4.056