Applied Survival Analysis Using R

Námskeið
- LÝÐ079F Lifunargreining
Lýsing:
Applied Survival Analysis Using R covers the main principles of survival analysis, gives examples of how it is applied, and teaches how to put those principles to use to analyze data using R as a vehicle. Survival data, where the primary outcome is time to a specific event, arise in many areas of biomedical research, including clinical trials, epidemiological studies, and studies of animals. Many survival methods are extensions of techniques used in linear regression and categorical data, while other aspects of this field are unique to survival data.
This text employs numerous actual examples to illustrate survival curve estimation, comparison of survivals of different groups, proper accounting for censoring and truncation, model variable selection, and residual analysis. Because explaining survival analysis requires more advanced mathematics than many other statistical topics, this book is organized with basic concepts and most frequently used procedures covered in earlier chapters, with more advanced topics near the end and in the appendices.
A background in basic linear regression and categorical data analysis, as well as a basic knowledge of calculus and the R system, will help the reader to fully appreciate the information presented. Examples are simple and straightforward while still illustrating key points, shedding light on the application of survival analysis in a way that is useful for graduate students, researchers, and practitioners in biostatistics.
Annað
- Höfundur: Dirk F. Moore
- Útgáfudagur: 2016-05-11
- Hægt að prenta út 2 bls.
- Hægt að afrita 2 bls.
- Format:Page Fidelity
- ISBN 13: 9783319312453
- Print ISBN: 9783319312439
- ISBN 10: 3319312456
Efnisyfirlit
- Preface
- Contents
- 1 Introduction
- 1.1 What Is Survival Analysis?
- 1.2 What You Need to Know to Use This Book
- 1.3 Survival Data and Censoring
- 1.4 Some Examples of Survival Data Sets
- 1.5 Additional Notes
- Exercises
- 2 Basic Principles of Survival Analysis
- 2.1 The Hazard and Survival Functions
- 2.2 Other Representations of a Survival Distribution
- 2.3 Mean and Median Survival Time
- 2.4 Parametric Survival Distributions
- 2.5 Computing the Survival Function from the Hazard Function
- 2.6 A Brief Introduction to Maximum Likelihood Estimation
- 2.7 Additional Notes
- Exercises
- 3 Nonparametric Survival Curve Estimation
- 3.1 Nonparametric Estimation of the Survival Function
- 3.2 Finding the Median Survival and a Confidence Interval for the Median
- 3.3 Median Follow-Up Time
- 3.4 Obtaining a Smoothed Hazard and Survival Function Estimate
- 3.5 Left Truncation
- 3.6 Additional Notes
- Exercises
- 4 Nonparametric Comparison of Survival Distributions
- 4.1 Comparing Two Groups of Survival Times
- 4.2 Stratified Tests
- 4.3 Additional Note
- Exercises
- 5 Regression Analysis Using the Proportional Hazards Model
- 5.1 Covariates and Nonparametric Survival Models
- 5.2 Comparing Two Survival Distributions Using a Partial Likelihood Function
- 5.3 Partial Likelihood Hypothesis Tests
- 5.3.1 The Wald Test
- 5.3.2 The Score Test
- 5.3.3 The Likelihood Ratio Test
- 5.4 The Partial Likelihood with Multiple Covariates
- 5.5 Estimating the Baseline Survival Function
- 5.6 Handling of Tied Survival Times
- 5.7 Left Truncation
- 5.8 Additional Notes
- Exercises
- 6 Model Selection and Interpretation
- 6.1 Covariate Adjustment
- 6.2 Categorical and Continuous Covariates
- 6.3 Hypothesis Testing for Nested Models
- 6.4 The Akaike Information Criterion for Comparing Non-nested Models
- 6.5 Including Smooth Estimates of Continuous Covariates in a Survival Model
- 6.6 Additional Note
- Exercises
- 7 Model Diagnostics
- 7.1 Assessing Goodness of Fit Using Residuals
- 7.1.1 Martingale and Deviance Residuals
- 7.1.2 Case Deletion Residuals
- 7.2 Checking the Proportion Hazards Assumption
- 7.2.1 Log Cumulative Hazard Plots
- 7.2.2 Schoenfeld Residuals
- 7.3 Additional Note
- Exercises
- 7.1 Assessing Goodness of Fit Using Residuals
- 8 Time Dependent Covariates
- 8.1 Introduction
- 8.2 Predictable Time Dependent Variables
- 8.2.1 Using the Time Transfer Function
- 8.2.2 Time Dependent Variables That Increase Linearly with Time
- 8.3 Additional Note
- Exercises
- 9 Multiple Survival Outcomes and Competing Risks
- 9.1 Clustered Survival Times and Frailty Models
- 9.1.1 Marginal Survival Models
- 9.1.2 Frailty Survival Models
- 9.1.3 Accounting for Family-Based Clusters in the ``ashkenazi'' Data
- 9.1.4 Accounting for Within-Person Pairing of Eye Observations in the Diabetes Data
- 9.2 Cause-Specific Hazards
- 9.2.1 Kaplan-Meier Estimation with Competing Risks
- 9.2.2 Cause-Specific Hazards and Cumulative Incidence Functions
- 9.2.3 Cumulative Incidence Functions for ProstateCancer Data
- 9.2.4 Regression Methods for Cause-Specific Hazards
- 9.2.5 Comparing the Effects of Covariates on Different Causes of Death
- 9.3 Additional Notes
- Exercises
- 9.1 Clustered Survival Times and Frailty Models
- 10 Parametric Models
- 10.1 Introduction
- 10.2 The Exponential Distribution
- 10.3 The Weibull Model
- 10.3.1 Assessing the Weibull Distribution as a Model for Survival Data in a Single Sample
- 10.3.2 Maximum Likelihood Estimation of Weibull Parameters for a Single Group of Survival Data
- 10.3.3 Profile Weibull Likelihood
- 10.3.4 Selecting a Weibull Distribution to Model Survival Data
- 10.3.5 Comparing Two Weibull Distributions Using the Accelerated Failure Time and Proportional Hazar
- 10.3.6 A Regression Approach to the Weibull Model
- 10.3.7 Using the Weibull Distribution to Model Survival Data with Multiple Covariates
- 10.3.8 Model Selection and Residual Analysis with Weibull Survival Data
- 10.4 Other Parametric Survival Distributions
- 10.5 Additional Note
- Exercises
- 11 Sample Size Determination for Survival Studies
- 11.1 Power and Sample Size for a Single Arm Study
- 11.2 Determining the Probability of Death in a Clinical Trial
- 11.3 Sample Size for Comparing Two Exponential Survival Distributions
- 11.4 Sample Size for Comparing Two Survival Distributions Using the Log-Rank Test
- 11.5 Determining the Probability of Death from a Non-parametric Survival Curve Estimate
- 11.6 Example: Calculating the Required Number of Patients for a Randomized Study of Advanced Gastric
- 11.7 Example: Calculating the Required Number of Patients for a Randomized Study of Patients with Me
- 11.8 Using Simulations to Estimate Power
- 11.9 Additional Notes
- Exercises
- 12 Additional Topics
- 12.1 Using Piecewise Constant Hazards to Model Survival Data
- 12.2 Interval Censoring
- 12.3 The Lasso Method for Selecting Predictive Biomarkers
- Exercises
- Erratum to
- A A Basic Guide to Using R for Survival Analysis
- A.1 The R System
- A.1.1 A First R Session
- A.1.2 Scatterplots and Fitting Linear Regression Models
- A.1.3 Accommodating Non-linear Relationships
- A.1.4 Data Frames and the Search Path for Variable Names
- A.1.5 Defining Variables Within a Data Frame
- A.1.6 Importing and Exporting Data Frames
- A.2 Working with Dates in R
- A.2.1 Dates and Leap Years
- A.2.2 Using the ``as.date'' Function
- A.3 Presenting Coefficient Estimates Using Forest Plots
- A.4 Extracting the Log Partial Likelihood and Coefficient Estimates from a coxph Object
- References
- A.1 The R System
- Index
- R Package Index
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- Gerð : 208
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- Útgáfuár : 2016
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