Veng-Pedersen P, Modi N B
College of Pharmacy, University of Iowa, Iowa City 52242.
J Pharm Sci. 1993 Sep;82(9):918-26. doi: 10.1002/jps.2600820910.
Neural networks (NN) are computational systems implemented in software or hardware that attempt to simulate the neurological processing abilities of biological systems. A synopsis is presented of the operational characteristics, structures, and applications of NN. The NN technology has primarily been aimed at recognition science (e.g., handwriting, voice, signal, picture, image, pattern, etc.). It is pointed out that NN may also be particularly suitable to deal with pharmacokinetic (PK) and pharmacodynamic (PD) systems, especially in cases such as multivariate PK/PD population kinetics when the systems are so complex that modeling by a conventional structured model building technique is very troublesome. The main practical advantage of NN is the intrinsic ability to closely emulate virtually any multivariate system, including nonlinear systems, independently of structural/physiologic relevance. Thus, NN are most suitable to model the behavior of complex kinetic systems and unsuitable to model the structure. In a practical sense, this structure limitation may be inconsequential because NN in its multivariate formulation may consider any physiologic, clinical, or population variable that may influence the kinetic behavior. The application of NN in PD is demonstrated in terms of the ability of an NN to predict, by extrapolation, the central nervous system (CNS) activity of alfentanil. The drug was infused by a complex computer-controlled infusion scheme over 180 min with simultaneous recording of the CNS effect quantified by a fast Fourier transform power spectrum analysis. The NN was trained to recognize (emulate) the drug input-drug effect behavior of the PD system with the input-effect data for the 180 min as a training set.(ABSTRACT TRUNCATED AT 250 WORDS)
神经网络(NN)是通过软件或硬件实现的计算系统,旨在模拟生物系统的神经处理能力。本文概述了神经网络的操作特性、结构和应用。神经网络技术主要针对识别科学(如手写、语音、信号、图片、图像、模式等)。需要指出的是,神经网络可能也特别适合处理药代动力学(PK)和药效动力学(PD)系统,尤其是在多变量PK/PD群体动力学等情况下,当系统非常复杂以至于用传统的结构化模型构建技术进行建模非常麻烦时。神经网络的主要实际优势在于其内在能力,能够紧密模拟几乎任何多变量系统,包括非线性系统,而无需考虑结构/生理相关性。因此,神经网络最适合对复杂动力学系统的行为进行建模,而不适合对结构进行建模。从实际意义上讲,这种结构限制可能并不重要,因为多变量形式的神经网络可以考虑任何可能影响动力学行为的生理、临床或群体变量。通过神经网络通过外推预测阿芬太尼中枢神经系统(CNS)活性的能力,展示了神经网络在药效动力学中的应用。通过复杂的计算机控制输注方案在180分钟内输注该药物,同时通过快速傅里叶变换功率谱分析对CNS效应进行量化记录。使用180分钟的输入-效应数据作为训练集,对神经网络进行训练,以识别(模拟)PD系统的药物输入-药物效应行为。(摘要截短为250字)