# Basic Statistics: A Primer for the Biomedical Sciences, 4th Edition

# Basic Statistics: A Primer for the Biomedical Sciences, 4th Edition

ISBN: 978-0-470-24879-9 July 2009 272 Pages

**Hardcover**

In Stock

$137.00

## Description

**New Edition of a Classic Guide to Statistical Applications in the Biomedical Sciences**

In the last decade, there have been significant changes in the way statistics is incorporated into biostatistical, medical, and public health research. Addressing the need for a modernized treatment of these statistical applications, Basic Statistics, Fourth Edition presents relevant, up-to-date coverage of research methodology using careful explanations of basic statistics and how they are used to address practical problems that arise in the medical and public health settings. Through concise and easy-to-follow presentations, readers will learn to interpret and examine data by applying common statistical tools, such as sampling, random assignment, and survival analysis.

Continuing the tradition of its predecessor, this new edition outlines a thorough discussion of different kinds of studies and guides readers through the important, related decision-making processes such as determining what information is needed and planning the collections process. The book equips readers with the knowledge to carry out these practices by explaining the various types of studies that are commonly conducted in the fields of medical and public health, and how the level of evidence varies depending on the area of research. Data screening and data entry into statistical programs is explained and accompanied by illustrations of statistical analyses and graphs. Additional features of the Fourth Edition include:

- A new chapter on data collection that outlines the initial steps in planning biomedical and public health studies
- A new chapter on nonparametric statistics that includes a discussion and application of the Sign test, the Wilcoxon Signed Rank test, and the Wilcoxon Rank Sum test and its relationship to the Mann-Whitney U test
- An updated introduction to survival analysis that includes the Kaplan Meier method for graphing the survival function and a brief introduction to tests for comparing survival functions
- Incorporation of modern statistical software, such as SAS, Stata, SPSS, and Minitab into the presented discussion of data analysis
- Updated references at the end of each chapter

*Basic Statistics*, Fourth Edition is an ideal book for courses on biostatistics, medicine, and public health at the upper-undergraduate and graduate levels. It is also appropriate as a reference for researchers and practitioners who would like to refresh their fundamental understanding of statistical techniques.

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**1 Initial Steps**.

1.1 Reasons for Studying Biostatistics.

1.2 Initial Steps in Designing a Biomedical Study.

1.3 Common Types of Biomedical Studies.

Problems.

References.

**2 Populations and Samples.**

2.1 Basic Concepts.

2.2 Definitions of Types of Samples.

2.3 Methods of Selecting Simple Random Samples.

2.4 Application of Sampling Methods in Biomedical Studies.

Problems.

References.

**3 Collecting and Entering Data.**

3.1 Initial Steps.

3.2 Data Entry.

3.3 Screening the Data.

3.4 Code Book.

Problems.

References.

**4 Frequency Tables and Their Graphs.**

4.1 Numerical Methods of Organizing Data.

4.2 Graphs.

Problems.

References.

**5 Measures of Location and Variability.**

5.1 Measures of Location.

5.2 Measures of Variability.

5.3 Sampling Properties of the Mean and Variance.

5.4 Considerations in Selecting Appropriate Statistics.

5.5 A Common Graphical Method for Displaying Statistics.

Problems.

References.

**6 The Normal Distribution.**

6.1 Properties of the Normal Distribution.

6.2 Areas Under the Normal Curve.

6.3 Importance of the Normal Distribution.

6.4 Examining Data for Normality.

6.5 Transformations.

Problems.

References.

**7 Estimation of Population Means: Confidence Intervals.**

7.1 Confidence Intervals.

7.2 Sample Size Needed for a Desired Confidence Interval.

7.3 The t Distribution.

7.4 Confidence Interval for the Mean, Using the t Distribution.

7.5 Estimating the Difference Between Two Means: Unpaired Data.

7.6 Estimating the Difference Between Two Means: Paired Comparison.

Problems.

References.

**8 Tests of Hypotheses on Population Means.**

8.1 Tests of Hypotheses for a Single Mean.

8.2 Tests for Equality of two Means: Unpaired Data.

8.3 Testing for Equality of Means: Paired Data.

8.4 Concepts Used in Statistical Testing.

8.5 Sample Size.

8.6 Confidence Intervals Versus Tests.

8.7 Correcting for Multiple Testing.

8.8 Reporting the Results.

Problems.

References.

**9 Variances: Estimation and Tests.**

9.1 Point Estimates for Variances and Standard Deviations.

9.2 Testing Whether Two Variances Are Equal: F Test.

9.3 Approximate t Test.

9.4 Other Tests.

Problems.

References.

**10 Categorical Data: Proportions.**

10.1 Single Population Proportion.

10.2 Samples from Categorical Data.

10.3 The Normal Approximation to the Binomial.

10.4 Confidence Intervals for a Single Population Proportion.

10.5 Confidence Intervals for the Difference in Two Proportions.

10.6 Tests of Hypothesis for Population Proportions.

10.7 Sample Size for Testing Two Proportions.

10.8 Data Entry and Analysis Using Statistical Programs.

Problems.

References.

**11 Categorical Data: Analysis of Two-Way Frequency Tables.**

11.1 Different Types of Tables.

11.2 Relative Risk and Odds Ratio.

11.3 Chi-Square Tests for Frequency Tables: two-by-two Tables.

11.4 Chi-Square Tests for Larger Tables.

11.5 Remarks.

Problems.

References.

**12 Regression and Correlation.**

12.1 The Scatter Diagram: Single Sample.

12.2 Linear Regression: Single Sample.

12.3 The Correlation Coefficient for two Variables from a Single Sample.

12.4 Linear Regression Assuming the Fixed-X Model.

12.5 Other Topics in Linear Regression.

Problems.

References.

**13 Nonparametric Statistics.**

13.1 The Sign Test.

13.2 The Wilcoxon Signed Rank Test.

13.3 The Wilcoxon-Mann-Whitney Test.

13.4 Spearman’s Rank Correlation.

Problems.

References.

**14 Introduction to Survival Analysis.**

14.1 Survival Analysis Data.

14.2 Survival Functions.

14.3 Computing Estimates of f(t), S(t), and h(t).

14.4 Comparison of Clinical Life Tables and the Kaplan-Meier Method.

14.5 Additional Analyses Using Survival Data.

Problems.

References.

Appendix A: Statistical Tables.

Appendix B: Answers to Selected Problems.

Appendix C: Computer Statistical Program Resources.

C.1 Computer Systems for Biomedical Education and Research.

C.2 A Brief Indication of Statistics Computer Program Advances and Some Relevant Publications Since 2000.

C.3 Choices of Computer Statistical Software.

Bibliography.

Index.

- Describes major types of biomedical studies and how to design them
- Presents the samples used in different types of biomedical studies
- Emphasizes the use of confidence intervals in data analysis
- Substantiates with examples some of the major statistical theorems

"The book is ideal for courses on biostatistics, medicine, and public health at the upper-undergraduate and graduate levels. It is also appropriate as a reference for researchers and practitioners who would like to refresh their fundamental understanding of statistical techniques." (*Zentralblatt MATH*, 1 August 2013)

- Offers a new introduction to survival analysis, including clinical

life tables; data collection; nonparametric tests; and multiple regression - Discusses using statistical computer programs (such as SAS, Stata, Minitab, and R) in data analysis
- Adds new graphs, figures, problem sets, and bibliographic references