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  • Book
    by Ton J. Cleophas, Aeilko H. Zwinderman.
    Summary: This edition is a pretty complete textbook and tutorial for medical and health care students, as well as a recollection/update bench, and help desk for professionals. Novel approaches already applied in published clinical research will be addressed: matrix analyses, alpha spending, gate keeping, kriging, interval censored regressions, causality regressions, canonical regressions, quasi-likelihood regressions, novel non-parametric regressions. Each chapter can be studied as a stand-alone, and covers one field in the fast growing world of regression analyses. The authors, as professors in statistics and machine learning at European universities, are worried, that their students find regression-analyses harder than any other methodology in statistics. This is serious, because almost all of the novel methodologies in current data mining and data analysis include elements of regression-analysis. It is the main incentive for writing this 28 chapter edition, consistent of - 28 major fields of regression analysis, - their condensed maths, - their applications in medical and health research as published so far, - step by step analyses for self-assessment, - conclusion and reference sections. Traditional regression analysis is adequate for epidemiology, but lacks the precision required for clinical investigations. However, in the past two decades modern regression methods have proven to be much more precise. And so it is time, that a book described regression analyses for clinicians. The current edition is the first to do so. It is written for a non-mathematical readership. Self-assessment data-files are provided through Springer' s "Extras Online."

    Contents:
    Preface
    Continuous Outcome Regressions
    Dichotomous Outcome Regressions
    Confirmative Regressions
    Dichotomous Regressions Other than Logistic and Cox
    Polytomous Outcome Regressions
    Time to Event Regressions other than Traditional Cox
    Analysis of Variance (ANOVA)
    Repeated Outcome Regressions
    Methodologies for Better Fit of Categorical Predictors
    Laplace Regressions, Multi- instead of Mono-Exponential Models
    Regressions For Making Extrapolations
    Standardized Regression Coefficients
    Multivariate Analysis of Variance and Canonical Regression
    More on Poisson Regressions
    Regression Trend Testing
    Optimal Scaling and Automatic Linear Regression
    Spline Regressions
    More on Nonlinear Regressions
    Special Forms of Continuous Outcome Regressions
    Regressions for Quantitative Diagnostic Testing
    Regressions, a Panacee or at Least a Widespread Help for Data Analyses
    Regression Trees
    Regressions with Latent Variables
    Partial Correlations
    Functional Data Analysis I
    Functional Data Analysis II
    Index.
    Digital Access Springer 2018