Noncompartmental analyses leverage statistical moment theory to examine time-related changes in macroscopic events, encapsulating the collective outcomes stemming from the constituent elements in play. Statistical moment theory is a mathematical approach used to describe the time course of drug concentration in the body without assuming a specific compartmental model. SMT provides insights into drug absorption, distribution, metabolism, and elimination by treating drug concentration versus time data as a statistical distribution of molecules in time.

Mean residence time (MRT) is a pivotal parameter that describes the movement of drug molecules in and out of the system. It considers the individual movement of molecules within a system based on residence-time considerations. Residence-time considerations refer to analyzing how long individual drug molecules remain within the body or a specific compartment before being eliminated. The residence-time analysis uses statistical approaches to study the behavior of individual molecules as a distribution of times they reside in the body.

Calculating a drug's MRT within the body uses the moment curve obtained by integrating a probability density function of the drug multiplied by time. This yields insights into the distribution's characteristics, facilitating a deeper understanding of the drug's behavior within the biological system.

Substituting the mth moment into the moment curve yields various moment curves, each with distinct implications. For instance, the zero moment corresponds to the area under the curve, while the first moment defines the mean of the distribution via the area under the first moment curve. The second moment characterizes the variance of the distribution, and higher moments represent skewness and kurtosis.

Noncompartmental analysis, underpinned by statistical moment theory, offers a comprehensive framework for unraveling drug molecules' temporal dynamics and distribution characteristics within biological systems.

장에서 7:

article

Now Playing

7.26 : Noncompartmental Analysis: Statistical Moment Theory

Pharmacokinetic Models

28 Views

article

7.1 : 약동학 데이터의 분석 방법: 모델 및 모델 독립적 접근 방식

Pharmacokinetic Models

24 Views

article

7.2 : 약동학 데이터에 대한 모델 접근법: 구획 모델

Pharmacokinetic Models

15 Views

article

7.3 : IV 볼루스 투여를 위한 One-Compartment Open Model: 일반적인 고려 사항

Pharmacokinetic Models

35 Views

article

7.4 : IV 볼루스 투여를 위한 One-compartment open model: 제거율 상수, 반감기 및 분포량 추정

Pharmacokinetic Models

17 Views

article

7.5 : IV 볼루스 투여를 위한 One-compartment open 모델: 청소율 추정

Pharmacokinetic Models

13 Views

article

7.6 : 1격실 모델: IV 주입

Pharmacokinetic Models

50 Views

article

7.7 : 혈관외 투여를 위한 One-compartment open model: zero-order absorption 모델

Pharmacokinetic Models

12 Views

article

7.8 : 혈관외 투여를 위한 One-compartment open model: First-Order Absorption 모델

Pharmacokinetic Models

54 Views

article

7.9 : 1구획 개방 모델: ka 추정을 위한 Wagner-Nelson 및 Loo Riegelman 방법

Pharmacokinetic Models

50 Views

article

7.10 : One-Compartment Open Model: 비뇨기 배설 데이터 및 k의 결정

Pharmacokinetic Models

15 Views

article

7.11 : Multicompartment 모델: 개요

Pharmacokinetic Models

8 Views

article

7.12 : Two-Compartment Open 모델: 개요

Pharmacokinetic Models

27 Views

article

7.13 : 2격실 개방형 모델: IV 볼루스 투여

Pharmacokinetic Models

58 Views

article

7.14 : 2 격실 개방형 모델 : IV 주입

Pharmacokinetic Models

59 Views

See More

JoVE Logo

개인 정보 보호

이용 약관

정책

연구

교육

JoVE 소개

Copyright © 2025 MyJoVE Corporation. 판권 소유