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Machine learning-based risk prediction of hypoxemia for outpatients undergoing sedation colonoscopy: a practical clinical tool.

Wei LuYulan TongXiuxiu ZhaoYue FengYi ZhongZhaojing FangChen ChenKaizong HuangYanna SiXiaoMing Dai
Published in: Postgraduate medicine (2024)
Our study selected the XGBoost as the first model especially for colonoscopy, with over 95% accuracy and excellent specificity. The XGBoost includes four variables that can be quickly obtained. Moreover, an online prediction practical tool has been provided, which helps screen high-risk outpatients with hypoxemia swiftly and conveniently.
Keyphrases
  • machine learning
  • colorectal cancer screening
  • artificial intelligence
  • big data
  • mechanical ventilation
  • extracorporeal membrane oxygenation
  • acute respiratory distress syndrome
  • single cell
  • structural basis