Verotta D
Department of Biopharmaceutical Sciences, and Pharmaceutical Chemistry, University of California San Francisco 94143-0446, USA.
Crit Rev Biomed Eng. 1996;24(2-3):73-139. doi: 10.1615/critrevbiomedeng.v24.i2-3.10.
The response at time t (R(t)) of a (causal linear time invariant) system to an input A(t) is represented by: [equation: see text] where K(t) is called the unit impulse response function of the system, and the integration on the right side of the equation (above) is called the convolution (from the latin cum volvere: to interwine) of A(t) and K(t). The system described by this equation is at zero (initial conditions) when t = 0. Although it does not even begin to describe the incredible variety of possible responses of biological systems to inputs, this representation has large applicability in biology. One of the most frequently used applications is known as deconvolution: to deinterwine R(t) given a known K(t) (or A(t)) and observations of R(t), to obtain A(t) (or K(t)). In this paper attention is focused on a greater variety of aspects associated with the use of linear systems to describe biological systems. In particular I define causal linear time-invariant systems and their properties and review the most important classes of methods to solve the deconvolution problem, address. The problem of model selection, the problem of obtaining statistics and in particular confidence bands for the estimated A(t) (and K(t)), and the problem of deconvolution in a population context is also addressed, and so is the application of linear system analysis to determine fraction of input absorbed (bioavailability). A general model to do so in a multiinput-site linear system is presented. Finally the application of linear system analysis to control a biological system, and in particular to target a desired response level, is described, and a general method to do so is presented. Applications to simulated, endocrinology, and pharmacokinetics data are reported.
(因果线性时不变)系统在时刻(t)对输入(A(t))的响应(R(t))由以下公式表示:[公式:见原文],其中(K(t))称为系统的单位脉冲响应函数,等式右侧(上述)的积分称为(A(t))与(K(t))的卷积(源自拉丁语cum volvere:缠绕)。当(t = 0)时,此方程描述的系统处于零(初始条件)状态。尽管它甚至都没有开始描述生物系统对输入可能产生的令人难以置信的各种响应,但这种表示在生物学中具有广泛的适用性。最常用的应用之一称为反卷积:在已知(K(t))(或(A(t)))以及(R(t))观测值的情况下,解开(R(t))以获得(A(t))(或(K(t)))。在本文中,注意力集中在与使用线性系统描述生物系统相关的更多方面。特别是,我定义了因果线性时不变系统及其属性,并回顾了解决反卷积问题的最重要方法类别。还讨论了模型选择问题、获取估计的(A(t))(和(K(t)))的统计量特别是置信区间的问题,以及群体背景下的反卷积问题,并且还讨论了线性系统分析在确定输入吸收分数(生物利用度)方面的应用。提出了在多输入位点线性系统中进行此操作的通用模型。最后,描述了线性系统分析在控制生物系统,特别是在达到期望响应水平方面的应用,并提出了一种通用方法。报告了在模拟数据、内分泌学数据和药代动力学数据方面的应用。