Login / Signup

Pneumothorax detection in chest radiographs: optimizing artificial intelligence system for accuracy and confounding bias reduction using in-image annotations in algorithm training.

Johannes RueckelChristian HuemmerAndreas FieselmannFlorin-Cristian GhesuAwais MansoorBalthasar SchachtnerPhilipp WespLena TrappmannBasel MunawwarJens RickeMichael IngrischBastian O Sabel
Published in: European radiology (2021)
• Established pneumothorax-detecting artificial intelligence algorithms trained on public training data are strongly limited and biased by confounding thoracic tubes. • We used high-quality in-image annotated training data to effectively boost algorithm performance and suppress the impact of confounding thoracic tubes. • Based on our results, we hypothesize that even hidden confounders might be effectively addressed by in-image annotations of pathology-related image features.
Keyphrases
  • deep learning
  • artificial intelligence
  • big data
  • machine learning
  • virtual reality
  • electronic health record
  • spinal cord
  • healthcare
  • emergency department
  • mental health
  • data analysis
  • quantum dots
  • real time pcr