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Related Concept Videos

Pharmacodynamic Models: Emax Drug–Concentration Effect Model01:18

Pharmacodynamic Models: Emax Drug–Concentration Effect Model

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The Emax drug-concentration effect model is central to pharmacodynamics in drug discovery and development. This model is predicated on the receptor occupancy theory, which posits that the effect of a drug is directly related to the number of receptors occupied by the drug and the resultant complex formation.The model describes the reversible interaction between a drug (C) and a receptor (R) to form a drug-receptor complex (RC). The kinetics of this interaction are quantified by an equation that...
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Pharmacodynamic Models: Direct Effect Model and Indirect Response Model01:29

Pharmacodynamic Models: Direct Effect Model and Indirect Response Model

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Pharmacodynamic models are essential tools in understanding the relationship between drug concentrations and their effects on biological systems. By characterizing the dynamics of drug action, these models guide dose selection, optimize therapeutic efficacy, and inform the development of new drugs. Two major classes of pharmacodynamic models include direct effect and indirect response models.Direct Effect ModelsDirect effect models describe the immediate relationship between drug concentration...
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Pharmacokinetic Models: Comparison and Selection Criterion01:26

Pharmacokinetic Models: Comparison and Selection Criterion

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Physiological and compartmental models are valuable tools used in studying biological systems. These models rely on differential equations to maintain mass balance within the system, ensuring an accurate representation of the dynamic processes at play.
Physiological models take a detailed approach by considering specific molecular processes. They can predict drug distribution, metabolism, and elimination changes, providing a comprehensive understanding of how drugs interact with the body.
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Mechanistic Models: Compartment Models in Individual and Population Analysis01:23

Mechanistic Models: Compartment Models in Individual and Population Analysis

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Mechanistic models are utilized in individual analysis using single-source data, but imperfections arise due to data collection errors, preventing perfect prediction of observed data. The mathematical equation involves known values (Xi), observed concentrations (Ci), measurement errors (εi), model parameters (ϕj), and the related function (ƒi) for i number of values. Different least-squares metrics quantify differences between predicted and observed values. The ordinary least...
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Pharmacodynamic Models: Additive and Proportional Drug Effect Model01:09

Pharmacodynamic Models: Additive and Proportional Drug Effect Model

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Drug response models describe how pharmacological agents interact with biological systems to produce measurable effects. Baseline responses are inherent physiological activities without a drug significantly influencing the observed pharmacological outcomes. Depending on the drug response model employed, these baseline responses may combine with the drug's effect in either an additive or proportional manner.Additive Drug Response ModelIn the additive model, the drug effect is independent of the...
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Pharmacodynamic Models: Linear Concentration–Effect Model01:15

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The linear concentration–effect model, underpinned by the principle that pharmacological effect (E) is directly proportional to plasma drug concentration (C), emerges as a pivotal simplification of the Emax model for conditions where C is significantly less than EC50. This model portrays a linear trajectory of the concentration–effect relationship when drug levels are markedly below the EC50 threshold.Despite its inherent assumption of continuous effect augmentation with increasing...
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Variable selection models based on multiple imputation with an application for predicting median effective dose and

Y Wan1, S Datta1, D J Conklin2

  • 1Department of Bioinformatics and Biostatistics, University of Louisville, Louisville, KY, USA.

Journal of Statistical Computation and Simulation
|September 29, 2015
PubMed
Summary
This summary is machine-generated.

This study introduces a novel MI-WENet method to address missing data challenges in statistical variable selection and prediction. The MI-WENet method effectively combines multiple imputation with a weighted elastic net for improved accuracy and reliability.

Keywords:
elastic netmultiple imputationpenalized least squaresvariable selection

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Area of Science:

  • Statistics
  • Biostatistics
  • Data Science

Background:

  • Missing covariates pose significant challenges for statistical variable selection and prediction.
  • Combining results from multiple imputation (MI) for variable selection remains unclear due to potential discrepancies across imputations.
  • Existing methods like sparse partial least-squares (SPLS) and elastic net (ENet) have limitations with missing data.

Purpose of the Study:

  • To propose a novel MI-based weighted elastic net (MI-WENet) method to handle missing covariate data.
  • To develop a robust approach for variable selection and prediction in the presence of missing data.
  • To evaluate the performance of MI-WENet against existing methods.

Main Methods:

  • The proposed MI-WENet method utilizes stacked MI data with a specific weighting scheme for each observation.
  • MI in MI-WENet accounts for sampling and imputation uncertainty.
  • A weighting scheme is incorporated to consider observed information within the stacked data.

Main Results:

  • Extensive numerical simulations demonstrated the effectiveness of MI-WENet.
  • MI-WENet showed superior performance compared to competing alternatives like SPLS and ENet.
  • The method was successfully applied to identify predictor variables for endothelial function (ED50 and Emax).

Conclusions:

  • The MI-WENet method provides a robust solution for variable selection and prediction with missing covariates.
  • This approach effectively integrates multiple imputation and weighted elastic net for enhanced statistical analysis.
  • MI-WENet offers a valuable tool for biological and medical research involving complex datasets.