Development of an image-based Random Forest classifier for prediction of surgery duration of laparoscopic sigmoid resections.
Florian LippenbergerSebastian ZiegelmayerMaximilian BerletHubertus FeussnerMarcus MakowskiPhilipp-Alexander NeumannMarkus GrafGeorgios KaissisDirk WilhelmRickmer BrarenStefan ReischlPublished in: International journal of colorectal disease (2024)
A Random Forest classifier trained on demographic and CT imaging biometric patient data could predict procedure duration outliers of laparoscopic sigmoid resections. Pending validation in a multicenter study, this approach could potentially improve procedure scheduling in visceral surgery and be scaled to other procedures.
Keyphrases
- minimally invasive
- robot assisted
- coronary artery bypass
- climate change
- surgical site infection
- high resolution
- liver metastases
- computed tomography
- case report
- deep learning
- insulin resistance
- magnetic resonance
- big data
- magnetic resonance imaging
- adipose tissue
- resistance training
- image quality
- percutaneous coronary intervention
- coronary artery disease
- dual energy
- high intensity
- photodynamic therapy