Temel Kavramlar
Developing a global optimization method using a branch-and-bound algorithm to identify parameters minimizing prediction errors in the PK/PD model for anesthetic drugs.
Özet
The content discusses the challenges of identifying parameters in the PK/PD model for anesthetic drugs, focusing on anesthesia depth regulation and patient safety. It introduces a branch-and-bound method for global optimization, ensuring accurate parameter identification despite non-convexity issues. The article details simulation results based on patient data and highlights the importance of precise parameter estimation for effective anesthesia control.
I. Introduction
- Anesthesia depth regulation is crucial in preventing awareness and postoperative complications.
- Model-based control techniques leverage pharmacokinetic/pharmacodynamic models.
- The PK/PD model describes drug dynamics and clinical effects in anesthesia.
II. Problem Formulation
- Reinterpretation as a Wiener model with ARX structure.
- Formulation of the identification problem using nonlinear regression.
- Reduction to a nonlinear regression problem for parameter estimation.
III. A BNB Method for Solving Problem (8)
- Proposal of a Branch and Bound method for solving nonlinear regression problems.
- Utilization of lower bound functions to optimize parameter identification globally.
- Application to Wiener models, including the PK/PD model for hypnotic agents.
IV. Application to the Identification of the Wiener Model
- Experimental results from patient database analysis with varying parameters.
- Numerical tests show successful identification with minimal error.
- Plot analysis demonstrates optimal order selection for accurate identifications.
V. Experimental Results
- Patients' data analyzed with different ARX model orders.
- Numerical tests reveal successful identifications with minimal errors.
VI. Conclusions and Future Works
- Proposed method enhances anesthesia procedures through precise parameter estimations.
- Future works include applying the method to other drugs or medical scenarios and validating through clinical trials.
İstatistikler
"age", "height", "weight", "gender", "Ce50", "γob", "E0", "Emax,ob"
Alıntılar
"We address the problem of parameter identification for the standard pharmacokinetic/pharmacodynamic (PK/PD) model."
"The main contribution is developing a global optimization method that minimizes prediction errors."
"Our approach allows tailoring anesthesia procedures more effectively to individual patients."