Mechanistic models play a crucial role in algorithms for numerical problem-solving, particularly in nonlinear mixed effects modeling (NMEM). These models aim to minimize specific objective functions by evaluating various parameter estimates, leading to the development of systematic algorithms. In some cases, linearization techniques approximate the model using linear equations.

In individual population analyses, different algorithms are employed, such as Cauchy's method, which uses a first-order Taylor series expansion; Newton-based methods, which use a second-order Taylor series expansion; and the Gauss-Newton method, which iteratively uses multiple linear regressions via a first-order Taylor series expansion. The Levenberg-Marquardt method modifies the Gauss-Newton method, while the Nelder-Mead simplex approach does not involve linearization procedures but instead examines the response surface using a series of moving and contracting or expanding polyhedra.

Algorithms used within NMEM include the FO (First-Order), FOCE (first-order conditional estimation), SAEM (stochastic approximation expectation-maximization), and MLEM (maximum likelihood estimation methods). In the context of NONMEM, FO and FOCE algorithms seek to minimize the objective function through linearization using first-order Taylor series expansions of the error model. Notably, the FOCE algorithm estimates interindividual variability simultaneously with the population mean and variance, unlike the FO algorithm, which does so in a post hoc step. The Laplacian FOCE method within NONMEM also utilizes a second-order Taylor series instead of the first-order expansion. In contrast, the MLEM algorithm maximizes a likelihood function through an iterative series of E-steps and M-steps without relying on linearization techniques. This involves computing conditional means and covariances in the E-step and updating population mean, covariance, and error variance parameters in the M-step to maximize the likelihood from the previous step. These algorithms demonstrate different approaches to numerical problem-solving, each tailored to specific applications and methodologies.

Dal capitolo 7:

article

Now Playing

7.19 : Mechanistic Models: Compartment Models in Algorithms for Numerical Problem Solving

Pharmacokinetic Models

17 Visualizzazioni

article

7.1 : Analysis Methods of Pharmacokinetic Data: Model and Model-Independent Approaches

Pharmacokinetic Models

32 Visualizzazioni

article

7.2 : Model Approaches for Pharmacokinetic Data: Compartment Models

Pharmacokinetic Models

21 Visualizzazioni

article

7.3 : One-Compartment Open Model for IV Bolus Administration: General Considerations

Pharmacokinetic Models

45 Visualizzazioni

article

7.4 : One-Compartment Open Model for IV Bolus Administration: Estimation of Elimination Rate Constant, Half-Life and Volume of Distribution

Pharmacokinetic Models

27 Visualizzazioni

article

7.5 : One-Compartment Open Model for IV Bolus Administration: Estimation of Clearance

Pharmacokinetic Models

19 Visualizzazioni

article

7.6 : One-Compartment Model: IV Infusion

Pharmacokinetic Models

67 Visualizzazioni

article

7.7 : One-Compartment Open Model for Extravascular Administration: Zero-Order Absorption Model

Pharmacokinetic Models

18 Visualizzazioni

article

7.8 : One-Compartment Open Model for Extravascular Administration: First-Order Absorption Model

Pharmacokinetic Models

72 Visualizzazioni

article

7.9 : One-Compartment Open Model: Wagner-Nelson and Loo Riegelman Method for ka Estimation

Pharmacokinetic Models

90 Visualizzazioni

article

7.10 : One-Compartment Open Model: Urinary Excretion Data and Determination of k

Pharmacokinetic Models

23 Visualizzazioni

article

7.11 : Multicompartment Models: Overview

Pharmacokinetic Models

14 Visualizzazioni

article

7.12 : Two-Compartment Open Model: Overview

Pharmacokinetic Models

41 Visualizzazioni

article

7.13 : Two-Compartment Open Model: IV Bolus Administration

Pharmacokinetic Models

76 Visualizzazioni

article

7.14 : Two-Compartment Open Model: IV Infusion

Pharmacokinetic Models

77 Visualizzazioni

See More

JoVE Logo

Riservatezza

Condizioni di utilizzo

Politiche

Ricerca

Didattica

CHI SIAMO

Copyright © 2025 MyJoVE Corporation. Tutti i diritti riservati