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A deep learning framework for automated detection and quantitative assessment of liver trauma.

Negar FarzanehErica B SteinReza SoroushmehrJonathan GryakKayvan Najarian
Published in: BMC medical imaging (2022)
The proposed algorithms are able to accurately segment the liver and the regions affected by trauma. This pipeline demonstrates an accurate performance in estimating the percentage of liver parenchyma that is affected by trauma. Such a system can aid critical care medical personnel by providing a reproducible quantitative assessment of liver trauma as an alternative to the sometimes subjective AAST grading system that is used currently.
Keyphrases
  • deep learning
  • machine learning
  • trauma patients
  • healthcare
  • high throughput
  • label free
  • single cell