Learning-Curve Bias

Definition: Learning-curve bias refers to distortion in clinical or surgical research results caused by including early cases performed during the operator’s learning phase. Outcomes may reflect lack of experience rather than the true efficacy or safety of the technique or intervention.


  • Innovative surgical techniques (e.g., minimally invasive spine surgery, robotic-assisted procedures)
  • Interventional procedures (e.g., endovascular thrombectomy)
  • Advanced radiologic techniques (e.g., 7T MRI)
  • Implementation of new medical devices or clinical software

  • Underestimation of effectiveness in early-phase studies
  • Overreporting of complications during adoption phase
  • Inaccurate comparisons with standard or established techniques
  • Bias in meta-analyses if learning-phase cases are included without adjustment

  • Exclude the first X cases (e.g., 10–20) per surgeon or center
  • Stratify outcomes by operator experience or phase of adoption
  • Use CUSUM analysis (cumulative sum charts) to detect performance stabilization
  • Multi-center studies can dilute individual learning effects
  • Include simulation-based or supervised training before clinical implementation

A study evaluating a new occipitocervical fusion technique reports a high rate of nonunion. However, most failures occurred in the first 10 patients per surgeon. The bias lies not in the technique itself, but in the operators’ learning curve.


Tags: learning-curve, bias, surgical outcomes, methodology, clinical trials, performance analysis

  • learning‑curve_bias.txt
  • Last modified: 2025/07/05 12:24
  • by administrador