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    Kívánságlista
    Fitting Models to Biological Data Using Linear and Nonlinear Regression: A Practical Guide to Curve Fitting

    Fitting Models to Biological Data Using Linear and Nonlinear Regression by Motulsky, Harvey; Christopoulos, Arthur;

    A Practical Guide to Curve Fitting

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    A termék adatai:

    • Kiadó OUP USA
    • Megjelenés dátuma 2004. február 5.

    • ISBN 9780195171792
    • Kötéstípus Keménykötés
    • Terjedelem352 oldal
    • Méret 179x246x22 mm
    • Súly 717 g
    • Nyelv angol
    • Illusztrációk 150 line illus
    • 0

    Kategóriák

    Rövid leírás:

    Most biologists use nonlinear regression more than any other statistical technique, but there are very few places to learn about curve-fitting. This book, by the author of the very successfulIntuitive Biostatistics, addresses this relatively focused need of an extraordinarily broad range of scientists.

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    Hosszú leírás:

    Most biologists use nonlinear regression more than any other statistical technique, but there are very few places to learn about curve-fitting. This book, by the author of the very successful Intuitive Biostatistics, addresses this relatively focused need of an extraordinarily broad range of scientists. The book will likely be purchased by a high proportion of biological laboratories, for frequent reference. The author gets about 3000 visits per month to his curvefit website, with the average visitor viewing 9 pages.

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    Tartalomjegyzék:

    Fitting data with nonlinear regression
    An example of nonlinear regression
    Preparing data for nonlinear regression
    Nonlinear regression choices
    The first five questions to ask about nonlinear regression results
    The results of nonlinear regression
    Troubleshooting "bad fits"
    Fitting data with linear regression
    Choosing linear regression
    Interpreting the results of linear regression
    Models
    Introducing models
    Tips on choosing a model
    Global models
    Compartmental models and defining a model with a differential equation
    How nonlinear regression works
    Modeling experimental error
    Unequal weighting of data points
    How nonlinear regression minimized the sum-of-squares
    Confidence intervals of the parameters
    Asymptotic standard errors and confidence intervals
    Generating confidence intervals by Monte Carlo simulations
    Generating confidence intervals via model comparison
    comparing the three methods for creating confidence intervals
    Using simulations to understand confidence intervals and plan experiments
    Comparing models
    Approach to comparing models
    Comparing models using the extra sum-of-squares F test
    Comparing models using Akaike's Information Criterion
    How should you compare modes-AICe or F test?
    Examples of comparing the fit of two models to one data set
    Testing whether a parameter differs from a hypothetical value
    How does a treatment change the curve?
    Using global fitting to test a treatment effect in one experiment
    Using two-way ANOVA to compare curves
    Using a paired t test to test for a treatment effect in a series of matched experiments
    Using global fitting to test for a treatment effect in a series of matched experiments
    Using an unpaired t test to test for a treatment effect in a series of unmatched experiments
    Using global fitting to test for a treatment effect in a series of unmatched experiments
    Fitting radioligand and enzyme kinetics data
    The law of mass action
    Analyzing radioligand binding data
    Calculations with radioactivity
    Analyzing saturation radioligand binding data
    Analyzing competitive binding data
    Homologous competitive binding curves
    Analyzing kinetic binding data
    Analyzing enzyme kinetic data
    Fitting does-response curves
    Introduction to dose-response curves
    The operational model of agonist action
    Dose-response curves in the presence of antagonists
    Complex dose-response curves
    Fitting curves with GraphPad Prism
    Nonlinear regression with Prism
    Constraining and sharing parameters
    Prsim's nonlinear regression dialog
    Classic nonlinear models built-in to Prism
    Importing equations and equation libraries
    Writing user-defined models in Prism
    Linear regression with Prism
    Reading unknowns from standard curves
    Graphing a family of theoretical curves
    Fitting curves without regression

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