Uncertainty in Biology

This book PDF is perfect for those who love Technology & Engineering genre, written by Liesbet Geris and published by Springer which was released on 26 October 2015 with total hardcover pages 478. You could read this book directly on your devices with pdf, epub and kindle format, check detail and related Uncertainty in Biology books below.

Uncertainty in Biology
Author : Liesbet Geris
File Size : 52,8 Mb
Publisher : Springer
Language : English
Release Date : 26 October 2015
ISBN : 9783319212968
Pages : 478 pages
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Uncertainty in Biology by Liesbet Geris Book PDF Summary

Computational modeling allows to reduce, refine and replace animal experimentation as well as to translate findings obtained in these experiments to the human background. However these biomedical problems are inherently complex with a myriad of influencing factors, which strongly complicates the model building and validation process. This book wants to address four main issues related to the building and validation of computational models of biomedical processes: 1. Modeling establishment under uncertainty 2. Model selection and parameter fitting 3. Sensitivity analysis and model adaptation 4. Model predictions under uncertainty In each of the abovementioned areas, the book discusses a number of key-techniques by means of a general theoretical description followed by one or more practical examples. This book is intended for graduate students and researchers active in the field of computational modeling of biomedical processes who seek to acquaint themselves with the different ways in which to study the parameter space of their model as well as its overall behavior.

Uncertainty in Biology

Computational modeling allows to reduce, refine and replace animal experimentation as well as to translate findings obtained in these experiments to the human background. However these biomedical problems are inherently complex with a myriad of influencing factors, which strongly complicates the model building and validation process. This book wants to

Get Book
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Scientific knowledge is the most solid and robust kind of knowledge that humans have because of the self-correcting character inherent in its own processes. Nevertheless, anti-evolutionists, climate denialists, and anti-vaxxers, among others, question some of the best-established scientific findings, making claims that are unsupported by empirical evidence. A common aspect

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