Description

Book Synopsis
Many universities, hospitals, and medical research facilities offer short courses in introductory biostatistics for the clinicians, fellows, nurses, and health practitioners to become familiarized with statistical methods.

Trade Review
"This book should be very useful for its intended readers, but it would be helpful if they had a beginning understanding of basic statistics and terminology." (Doody's, 10 February 2012)

Table of Contents
Preface ix

1. The What, Why, and How of Biostatistics in Medical Research 1

1.1 Defi nition of Statistics and Biostatistics, 1

1.2 Why Study Statistics?, 3

1.3 The Medical Literature, 9

1.4 Medical Research Studies, 11

1.4.1 Cross-sectional studies including surveys, 11

1.4.2 Retrospective studies, 12

1.4.3 Prospective studies other than clinical trials, 12

1.4.4 Controlled clinical trials, 12

1.4.5 Conclusions, 13

1.5 Exercises, 14

2. Sampling from Populations 15

2.1 Definitions of Populations and Samples, 17

2.2 Simple Random Sampling, 18

2.3 Selecting Simple Random Samples, 19

2.4 Other Sampling Methods, 27

2.5 Generating Bootstrap Samples, 28

2.6 Exercises, 32

3. Graphics and Summary Statistics 34

3.1 Continuous and Discrete Data, 34

3.2 Categorical Data, 35

3.3 Frequency Histograms, 35

3.4 Stem-and-Leaf Diagrams, 38

3.5 Box Plots, 39

3.6 Bar and Pie Charts, 39

3.7 Measures of the Center of a Distribution, 42

3.8 Measures of Dispersion, 46

3.9 Exercises, 50

4. Normal Distribution and Related Properties 51

4.1 Averages and the Central Limit Theorem, 51

4.2 Standard Error of the Mean, 53

4.3 Student's t-Distribution, 53

4.4 Exercises, 55

5. Estimating Means and Proportions 58

5.1 The Binomial and Poisson Distributions, 58

5.2 Point Estimates, 59

5.3 Confi dence Intervals, 62

5.4 Sample Size Determination, 65

5.5 Bootstrap Principle and Bootstrap Confidence Intervals, 66

5.6 Exercises, 69

6. Hypothesis Testing 72

6.1 Type I and Type II Errors, 73

6.2 One-Tailed and Two-Tailed Tests, 74

6.3 P-Values, 74

6.4 Comparing Means from Two Independent Samples: Two-Sample t-Test, 75

6.5 Paired t-Test, 76

6.6 Testing a Single Binomial Proportion, 78

6.7 Relationship Between Confi dence Intervals and Hypothesis Tests, 79

6.8 Sample Size Determination, 80

6.9 Bootstrap Tests, 81

6.10 Medical Diagnosis: Sensitivity and Specificity, 82

6.11 Special Tests in Clinical Research, 83

6.11.1 Superiority tests, 84

6.11.2 Equivalence and bioequivalence, 84

6.11.3 Noninferiority tests, 86

6.12 Repeated Measures Analysis of Variance and Longitudinal Data Analysis, 86

6.13 Meta-Analysis, 88

6.14 Exercises, 92

7. Correlation, Regression, and Logistic Regression 95

7.1 Relationship Between Two Variables and the Scatter Plot, 96

7.2 Pearson's Correlation, 99

7.3 Simple Linear Regression and Least Squares Estimation, 101

7.4 Sensitivity to Outliers and Robust Regression, 104

7.5 Multiple Regression, 111

7.6 Logistic Regression, 117

7.7 Exercises, 122

8. Contingency Tables 127

8.1 2 x 2 Tables and Chi-Square, 127

8.2 Simpson's Paradox in the 2 x 2 Table, 129

8.3 The General R x C Table, 132

8.4 Fisher's Exact Test, 133

8.5 Correlated Proportions and McNemar's Test, 136

8.6 Relative Risk and Odds Ratio, 138

8.7 Exercises, 141

9. Nonparametric Methods 145

9.1 Ranking Data, 146

9.2 Wilcoxon Rank-Sum Test, 146

9.3 Sign Test, 149

9.4 Spearman's Rank-Order Correlation Coefficient, 150

9.5 Insensitivity of Rank Tests to Outliers, 153

9.6 Exercises, 154

10. Survival Analysis 158

10.1 Time-to-Event Data and Right Censoring, 159

10.2 Life Tables, 160

10.3 Kaplan–Meier Curves, 164

10.3.1 The Kaplan-Meier curve: a nonparametric estimate of survival, 164

10.3.2 Confidence intervals for the Kaplan-Meier estimate, 165

10.3.3 The logrank and chi-square tests: comparing two or more survival curves, 166

10.4 Parametric Survival Curves, 168

10.4.1 Negative exponential survival distributions, 168

10.4.2 Weibull family of survival distributions, 169

10.5 Cox Proportional Hazard Models, 170

10.6 Cure Rate Models, 171

10.7 Exercises, 173

Solutions to Selected Exercises 175

Appendix: Statistical Tables 192

References 204

Author Index 209

Subject Index 211

The Essentials of Biostatistics for Physicians

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    A Paperback / softback by Michael R. Chernick

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      View other formats and editions of The Essentials of Biostatistics for Physicians by Michael R. Chernick

      Publisher: John Wiley & Sons Inc
      Publication Date: 30/09/2011
      ISBN13: 9780470641859, 978-0470641859
      ISBN10: 0470641851

      Description

      Book Synopsis
      Many universities, hospitals, and medical research facilities offer short courses in introductory biostatistics for the clinicians, fellows, nurses, and health practitioners to become familiarized with statistical methods.

      Trade Review
      "This book should be very useful for its intended readers, but it would be helpful if they had a beginning understanding of basic statistics and terminology." (Doody's, 10 February 2012)

      Table of Contents
      Preface ix

      1. The What, Why, and How of Biostatistics in Medical Research 1

      1.1 Defi nition of Statistics and Biostatistics, 1

      1.2 Why Study Statistics?, 3

      1.3 The Medical Literature, 9

      1.4 Medical Research Studies, 11

      1.4.1 Cross-sectional studies including surveys, 11

      1.4.2 Retrospective studies, 12

      1.4.3 Prospective studies other than clinical trials, 12

      1.4.4 Controlled clinical trials, 12

      1.4.5 Conclusions, 13

      1.5 Exercises, 14

      2. Sampling from Populations 15

      2.1 Definitions of Populations and Samples, 17

      2.2 Simple Random Sampling, 18

      2.3 Selecting Simple Random Samples, 19

      2.4 Other Sampling Methods, 27

      2.5 Generating Bootstrap Samples, 28

      2.6 Exercises, 32

      3. Graphics and Summary Statistics 34

      3.1 Continuous and Discrete Data, 34

      3.2 Categorical Data, 35

      3.3 Frequency Histograms, 35

      3.4 Stem-and-Leaf Diagrams, 38

      3.5 Box Plots, 39

      3.6 Bar and Pie Charts, 39

      3.7 Measures of the Center of a Distribution, 42

      3.8 Measures of Dispersion, 46

      3.9 Exercises, 50

      4. Normal Distribution and Related Properties 51

      4.1 Averages and the Central Limit Theorem, 51

      4.2 Standard Error of the Mean, 53

      4.3 Student's t-Distribution, 53

      4.4 Exercises, 55

      5. Estimating Means and Proportions 58

      5.1 The Binomial and Poisson Distributions, 58

      5.2 Point Estimates, 59

      5.3 Confi dence Intervals, 62

      5.4 Sample Size Determination, 65

      5.5 Bootstrap Principle and Bootstrap Confidence Intervals, 66

      5.6 Exercises, 69

      6. Hypothesis Testing 72

      6.1 Type I and Type II Errors, 73

      6.2 One-Tailed and Two-Tailed Tests, 74

      6.3 P-Values, 74

      6.4 Comparing Means from Two Independent Samples: Two-Sample t-Test, 75

      6.5 Paired t-Test, 76

      6.6 Testing a Single Binomial Proportion, 78

      6.7 Relationship Between Confi dence Intervals and Hypothesis Tests, 79

      6.8 Sample Size Determination, 80

      6.9 Bootstrap Tests, 81

      6.10 Medical Diagnosis: Sensitivity and Specificity, 82

      6.11 Special Tests in Clinical Research, 83

      6.11.1 Superiority tests, 84

      6.11.2 Equivalence and bioequivalence, 84

      6.11.3 Noninferiority tests, 86

      6.12 Repeated Measures Analysis of Variance and Longitudinal Data Analysis, 86

      6.13 Meta-Analysis, 88

      6.14 Exercises, 92

      7. Correlation, Regression, and Logistic Regression 95

      7.1 Relationship Between Two Variables and the Scatter Plot, 96

      7.2 Pearson's Correlation, 99

      7.3 Simple Linear Regression and Least Squares Estimation, 101

      7.4 Sensitivity to Outliers and Robust Regression, 104

      7.5 Multiple Regression, 111

      7.6 Logistic Regression, 117

      7.7 Exercises, 122

      8. Contingency Tables 127

      8.1 2 x 2 Tables and Chi-Square, 127

      8.2 Simpson's Paradox in the 2 x 2 Table, 129

      8.3 The General R x C Table, 132

      8.4 Fisher's Exact Test, 133

      8.5 Correlated Proportions and McNemar's Test, 136

      8.6 Relative Risk and Odds Ratio, 138

      8.7 Exercises, 141

      9. Nonparametric Methods 145

      9.1 Ranking Data, 146

      9.2 Wilcoxon Rank-Sum Test, 146

      9.3 Sign Test, 149

      9.4 Spearman's Rank-Order Correlation Coefficient, 150

      9.5 Insensitivity of Rank Tests to Outliers, 153

      9.6 Exercises, 154

      10. Survival Analysis 158

      10.1 Time-to-Event Data and Right Censoring, 159

      10.2 Life Tables, 160

      10.3 Kaplan–Meier Curves, 164

      10.3.1 The Kaplan-Meier curve: a nonparametric estimate of survival, 164

      10.3.2 Confidence intervals for the Kaplan-Meier estimate, 165

      10.3.3 The logrank and chi-square tests: comparing two or more survival curves, 166

      10.4 Parametric Survival Curves, 168

      10.4.1 Negative exponential survival distributions, 168

      10.4.2 Weibull family of survival distributions, 169

      10.5 Cox Proportional Hazard Models, 170

      10.6 Cure Rate Models, 171

      10.7 Exercises, 173

      Solutions to Selected Exercises 175

      Appendix: Statistical Tables 192

      References 204

      Author Index 209

      Subject Index 211

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