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Applied Logistic Regression
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Main description:

A new edition of the definitive guide to logistic regressionmodeling for health science and other applications


Praise for the Second Edition


". . . an excellent book that balances many objectives well. . .. Applied Logistic Regression is an ideal choice."
Technometrics


". . . it remains an extremely valuable text for everyoneworking or teaching in fields like epidemiology."
Statistics in Medicine


This thoroughly expanded Third Edition provides an easilyaccessible introduction to the logistic regression (LR) model andhighlights the power of this model by examining the relationshipbetween a dichotomous outcome and a set of covariables.


Applied Logistic Regression, Third Edition emphasizesapplications in the health sciences and handpicks topics that bestsuit the use of modern statistical software. The book providesreaders with state–of–the–art techniques for building,interpreting, and assessing the performance of LR models. New andupdated features include:



  • A chapter on the analysis of correlated outcome data

  • A wealth of additional material for topics ranging fromBayesian methods to assessing model fit

  • Rich data sets from real–world studies that demonstrate eachmethod under discussion

  • Detailed examples and interpretation of the presented resultsas well as exercises throughout


Applied Logistic Regression, Third Edition is a must–haveguide for professionals and researchers who need to model nominalor ordinal scaled outcome variables in public health, medicine, andthe social sciences as well as a wide range of other fields anddisciplines.


Back cover:

A new edition of the definitive guide to logistic regressionmodeling for health science and other applications


Praise for the Second Edition


". . . an excellent book that balances many objectives well. . .. Applied Logistic Regression is an ideal choice."
Technometrics


". . . it remains an extremely valuable text for everyoneworking or teaching in fields like epidemiology."
Statistics in Medicine


This thoroughly expanded Third Edition provides an easilyaccessible introduction to the logistic regression (LR) model andhighlights the power of this model by examining the relationshipbetween a dichotomous outcome and a set of covariables.


Applied Logistic Regression, Third Edition emphasizesapplications in the health sciences and handpicks topics that bestsuit the use of modern statistical software. The book providesreaders with state–of–the–art techniques for building,interpreting, and assessing the performance of LR models. New andupdated features include:



  • A chapter on the analysis of correlated outcome data

  • A wealth of additional material for topics ranging fromBayesian methods to assessing model fit

  • Rich data sets from real–world studies that demonstrate eachmethod under discussion

  • Detailed examples and interpretation of the presented resultsas well as exercises throughout


Applied Logistic Regression, Third Edition is a must–haveguide for professionals and researchers who need to model nominalor ordinal scaled outcome variables in public health, medicine, andthe social sciences as well as a wide range of other fields anddisciplines.


Contents:

Preface to the Third Edition xiii


1 Introduction to the Logistic Regression Model 1


1.1Introduction 1


1.2 Fitting the Logistic Regression Model 8


1.3 Testing for the Significance of the Coefficients 10


1.4 Confidence Interval Estimation 15


1.5 Other Estimation Methods 20


1.6 Data Sets Used in Examples and Exercises 22


1.6.1 The ICU Study 22


1.6.2 The Low Birth Weight Study 24


1.6.3 The Global Longitudinal Study of Osteoporosis in Women24


1.6.4 The Adolescent Placement Study 26


1.6.5 The Burn Injury Study 27


1.6.6 The Myopia Study 29


1.6.7 The NHANES Study 31


1.6.8 The Polypharmacy Study 31


Exercises 32


2 The Multiple Logistic Regression Model 35


2.1 Introduction 35


2.2 The Multiple Logistic Regression Model 35


2.3 Fitting the Multiple Logistic Regression Model 37


2.4 Testing for the Significance of the Model 39


2.5 Confidence Interval Estimation 42


2.6 Other Estimation Methods 45


Exercises 46


3 Interpretation of the Fitted Logistic Regression Model49


3.1 Introduction 49


3.2 Dichotomous Independent Variable 50


3.3 Polychotomous Independent Variable 56


3.4 Continuous Independent Variable 62


3.5 Multivariable Models 64


3.6 Presentation and Interpretation of the Fitted Values 77


3.7 A Comparison of Logistic Regression and Stratified Analysisfor 2 × 2 Tables 82


Exercises 87


4 Model–Building Strategies and Methods for LogisticRegression 89


4.1 Introduction 89


4.2 Purposeful Selection of Covariates 89


4.2.1 Methods to Examine the Scale of a Continuous Covariate inthe Logit 94


4.2.2 Examples of Purposeful Selection 107


4.3 Other Methods for Selecting Covariates 124


4.3.1 Stepwise Selection of Covariates 125


4.3.2 Best Subsets Logistic Regression 133


4.3.3 Selecting Covariates and Checking their Scale UsingMultivariable Fractional Polynomials 139


4.4 Numerical Problems 145


Exercises 150


5 Assessing the Fit of the Model 153


5.1 Introduction 153


5.2 Summary Measures of Goodness of Fit 154


5.2.1 Pearson Chi–Square Statistic Deviance and Sum–of–Squares155


5.2.2 The Hosmer Lemeshow Tests 157


5.2.3 Classification Tables 169


5.2.4 Area Under the Receiver Operating Characteristic Curve173


5.2.5 Other Summary Measures 182


5.3 Logistic Regression Diagnostics 186


5.4 Assessment of Fit via External Validation 202


5.5 Interpretation and Presentation of the Results from a FittedLogistic Regression Model 212


Exercises 223


6 Application of Logistic Regression with Different SamplingModels 227


6.1 Introduction 227


6.2 Cohort Studies 227


6.3 Case–Control Studies 229


6.4 Fitting Logistic Regression Models to Data from ComplexSample Surveys 233


Exercises 242


7 Logistic Regression for Matched Case–Control Studies243


7.1 Introduction 243


7.2 Methods For Assessment of Fit in a 1 M Matched Study248


7.3 An Example Using the Logistic Regression Model in a1 1 Matched Study 251


7.4 An Example Using the Logistic Regression Model in a1 M Matched Study 260


Exercises 267


8 Logistic Regression Models for Multinomial and OrdinalOutcomes 269


8.1 The Multinomial Logistic Regression Model 269


8.1.1 Introduction to the Model and Estimation of ModelParameters 269


8.1.2 Interpreting and Assessing the Significance of theEstimated Coefficients 272


8.1.3 Model–Building Strategies for Multinomial LogisticRegression 278


8.1.4 Assessment of Fit and Diagnostic Statistics for theMultinomial Logistic Regression Model 283


8.2 Ordinal Logistic Regression Models 289


8.2.1 Introduction to the Models Methods for Fitting andInterpretation of Model Parameters 289


8.2.2 Model Building Strategies for Ordinal Logistic RegressionModels 305


Exercises 310


9 Logistic Regression Models for the Analysis of CorrelatedData 313


9.1 Introduction 313


9.2 Logistic Regression Models for the Analysis of CorrelatedData 315


9.3 Estimation Methods for Correlated Data Logistic RegressionModels 318


9.4 Interpretation of Coefficients from Logistic RegressionModels for the Analysis of Correlated Data 323


9.4.1 Population Average Model 324


9.4.2 Cluster–Specific Model 326


9.4.3 Alternative Estimation Methods for the Cluster–SpecificModel 333


9.4.4 Comparison of Population Average and Cluster–SpecificModel 334


9.5 An Example of Logistic Regression Modeling with CorrelatedData 337


9.5.1 Choice of Model for Correlated Data Analysis 338


9.5.2 Population Average Model 339


9.5.3 Cluster–Specific Model 344


9.5.4 Additional Points to Consider when Fitting LogisticRegression Models to Correlated Data 351


9.6 Assessment of Model Fit 354


9.6.1 Assessment of Population Average Model Fit 354


9.6.2 Assessment of Cluster–Specific Model Fit 365


9.6.3 Conclusions 374


Exercises 375


10 Special Topics 377


10.1 Introduction 377


10.2 Application of Propensity Score Methods in LogisticRegression Modeling 377


10.3 Exact Methods for Logistic Regression Models 387


10.4 Missing Data 395


10.5 Sample Size Issues when Fitting Logistic Regression Models401


10.6 Bayesian Methods for Logistic Regression 408


10.6.1 The Bayesian Logistic Regression Model 410


10.6.2 MCMC Simulation 411


10.6.3 An Example of a Bayesian Analysis and Its Interpretation419


10.7 Other Link Functions for Binary Regression Models 434


10.8 Mediation 441


10.8.1 Distinguishing Mediators from Confounders 441


10.8.2 Implications for the Interpretation of an AdjustedLogistic Regression Coefficient 443


10.8.3 Why Adjust for a Mediator? 444


10.8.4 Using Logistic Regression to Assess Mediation:Assumptions 445


10.9 More About Statistical Interaction 448


10.9.1 Additive versus Multiplicative Scale RiskDifference versus Odds Ratios 448


10.9.2 Estimating and Testing Additive Interaction 451


Exercises 456


References 459


Index 479


PRODUCT DETAILS

ISBN-13: 9780470582473
Publisher: John Wiley & Sons Ltd (Wiley–Blackwell)
Publication date: April, 2013
Pages: 528
Dimensions: 164.00 x 239.00 x 33.63
Weight: 898g
Availability: Not available (reason unspecified)
Subcategories: Public Health

MEET THE AUTHOR

DAVID W. HOSMER, Jr., PhD, is Professor Emeritus ofBiostatistics at the School of Public Health and Health Sciences atthe University of Massachusetts Amherst.


STANLEY LEMESHOW, PhD, is Professor of Biostatistics andFounding Dean of the College of Public Health at The Ohio StateUniversity, Columbus, Ohio.


RODNEY X. STURDIVANT, PhD, is Associate Professor andFounding Director of the Center for Data Analysis and Statistics atthe United States Military Academy at West Point, New York.

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