Mathematical Modeling of Complex Biological Systems - A Kinetic Theory Approach

Mathematical Modeling of Complex Biological Systems - A Kinetic Theory Approach

von: Abdelghani Bellouquid, Marcello Delitala

Birkhäuser Basel, 2007

ISBN: 9780817645038 , 188 Seiten

Format: PDF, OL

Kopierschutz: Wasserzeichen

Windows PC,Mac OSX für alle DRM-fähigen eReader Apple iPad, Android Tablet PC's Online-Lesen für: Windows PC,Mac OSX,Linux

Preis: 96,29 EUR

  • Guide to Observing Deep-Sky Objects - A Complete Global Resource for Astronomers
    The Far Side of the Moon - A Photographic Guide
    Patterns of Light - Chasing the Spectrum from Aristotle to LEDs
    Panofsky on Physics, Politics, and Peace - Pief Remembers
    Aurora - Observing and Recording Nature's Spectacular Light Show
    My Heavens! - The Adventures of a Lonely Stargazer Building an Over-the-Top Observatory
  • Jupiter - and How to Observe It
    Quirky Sides of Scientists - True Tales of Ingenuity and Error from Physics and Astronomy
    Supernovae - and How to Observe Them
    Astrophysics is Easy! - An Introduction for the Amateur Astronomer
    Total Solar Eclipses and How to Observe Them
    Astronomical Sketching: A Step-by-Step Introduction
 

Mehr zum Inhalt

Mathematical Modeling of Complex Biological Systems - A Kinetic Theory Approach


 

This book describes the evolution of several socio-biological systems using mathematical kinetic theory. Specifically, it deals with modeling and simulations of biological systems whose dynamics follow the rules of mechanics as well as rules governed by their own ability to organize movement and biological functions. It proposes a new biological model focused on the analysis of competition between cells of an aggressive host and cells of a corresponding immune system. Proposed models are related to the generalized Boltzmann equation. The book may be used for advanced graduate courses and seminars in biological systems modeling.


This book describes the evolution of several socio-biological systems using mathematical kinetic theory. Specifically, it deals with modeling and simulations of biological systems-comprised of large populations of interacting cells-whose dynamics follow the rules of mechanics as well as rules governed by their own ability to organize movement and biological functions. The authors propose a new biological model for the analysis of competition between cells of an aggressive host and cells of a corresponding immune system.

Because the microscopic description of a biological system is far more complex than that of a physical system of inert matter, a higher level of analysis is needed to deal with such complexity. Mathematical models using kinetic theory may represent a way to deal with such complexity, allowing for an understanding of phenomena of nonequilibrium statistical mechanics not described by the traditional macroscopic approach. The proposed models are related to the generalized Boltzmann equation and describe the population dynamics of several interacting elements (kinetic populations models).

The particular models proposed by the authors are based on a framework related to a system of integro-differential equations, defining the evolution of the distribution function over the microscopic state of each element in a given system. Macroscopic information on the behavior of the system is obtained from suitable moments of the distribution function over the microscopic states of the elements involved. The book follows a classical research approach applied to modeling real systems, linking the observation of biological phenomena, collection of experimental data, modeling, and computational simulations to validate the proposed models. Qualitative analysis techniques are used to identify the prediction ability of specific models.

The book will be a valuable resource for applied mathematicians as well as researchers in the field of biological sciences. It may be used for advanced graduate courses and seminars in biological systems modeling with applications to collective social behavior, immunology, and epidemiology.