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David Sterratt

Kirjat ja teokset yhdessä paikassa: 3 kirjaa, julkaisuja vuosilta 2011-2023, suosituimpien joukossa Principles of Computational Modelling in Neuroscience. Vertaile teosten hintoja ja tarkista saatavuus suomalaisista kirjakaupoista.

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Kirjojen julkaisuhaarukka 2011-2023.

Principles of Computational Modelling in Neuroscience

Principles of Computational Modelling in Neuroscience

David Sterratt; Bruce Graham; Andrew Gillies; Gaute Einevoll; David Willshaw

Cambridge University Press
2023
pokkari
Taking a step-by-step approach to modelling neurons and neural circuitry, this textbook teaches students how to use computational techniques to understand the nervous system at all levels, using case studies throughout to illustrate fundamental principles. Starting with a simple model of a neuron, the authors gradually introduce neuronal morphology, synapses, ion channels and intracellular signalling. This fully updated new edition contains additional examples and case studies on specific modelling techniques, suggestions on different ways to use this book, and new chapters covering plasticity, modelling extracellular influences on brain circuits, modelling experimental measurement processes, and choosing appropriate model structures and their parameters. The online resources offer exercises and simulation code that recreate many of the book's figures, allowing students to practice as they learn. Requiring an elementary background in neuroscience and high-school mathematics, this is an ideal resource for a course on computational neuroscience.
Principles of Computational Modelling in Neuroscience

Principles of Computational Modelling in Neuroscience

David Sterratt; Bruce Graham; Andrew Gillies; Gaute Einevoll; David Willshaw

Cambridge University Press
2023
sidottu
Taking a step-by-step approach to modelling neurons and neural circuitry, this textbook teaches students how to use computational techniques to understand the nervous system at all levels, using case studies throughout to illustrate fundamental principles. Starting with a simple model of a neuron, the authors gradually introduce neuronal morphology, synapses, ion channels and intracellular signalling. This fully updated new edition contains additional examples and case studies on specific modelling techniques, suggestions on different ways to use this book, and new chapters covering plasticity, modelling extracellular influences on brain circuits, modelling experimental measurement processes, and choosing appropriate model structures and their parameters. The online resources offer exercises and simulation code that recreate many of the book's figures, allowing students to practice as they learn. Requiring an elementary background in neuroscience and high-school mathematics, this is an ideal resource for a course on computational neuroscience.
Principles of Computational Modelling in Neuroscience

Principles of Computational Modelling in Neuroscience

David Sterratt; Bruce Graham; Andrew Gillies; David Willshaw

Cambridge University Press
2011
sidottu
The nervous system is made up of a large number of interacting elements. To understand how such a complex system functions requires the construction and analysis of computational models at many different levels. This book provides a step-by-step account of how to model the neuron and neural circuitry to understand the nervous system at all levels, from ion channels to networks. Starting with a simple model of the neuron as an electrical circuit, gradually more details are added to include the effects of neuronal morphology, synapses, ion channels and intracellular signalling. The principle of abstraction is explained through chapters on simplifying models, and how simplified models can be used in networks. This theme is continued in a final chapter on modelling the development of the nervous system. Requiring an elementary background in neuroscience and some high school mathematics, this textbook is an ideal basis for a course on computational neuroscience.