Description

Book Synopsis


Table of Contents

Preface xi

1 Uses and Abuses of Medical Statistics 1

1.1 Introduction 2

1.2 Why Use Statistics? 2

1.3 Statistics is About Common Sense and Good Design 3

1.4 How a Statistician Can Help 5

2 Displaying and Summarising Data 9

2.1 Types of Data 10

2.2 Summarising Categorical Data 13

2.3 Displaying Categorical Data 15

2.4 Summarising Continuous Data 17

2.5 Displaying Continuous Data 24

2.6 Within-Subject Variability 28

2.7 Presentation 30

2.8 Points When Reading the Literature 31

2.9 Technical Details 32

2.10 Exercises 33

3 Summary Measures for Binary Data 37

3.1 Summarising Binary and Categorical Data 38

3.2 Points When Reading the Literature 46

3.3 Exercises 46

4 Probability and Distributions 49

4.1 Types of Probability 50

4.2 The Binomial Distribution 54

4.3 The Poisson Distribution 55

4.4 Probability for Continuous Outcomes 57

4.5 The Normal Distribution 58

4.6 Reference Ranges 63

4.7 Other Distributions 64

4.8 Points When Reading the Literature 66

4.9 Technical Section 66

4.10 Exercises 67

5 Populations, Samples, Standard Errors and Confidence Intervals 71

5.1 Populations 72

5.2 Samples 73

5.3 The Standard Error 74

5.4 The Central Limit Theorem 75

5.5 Standard Errors for Proportions and Rates 77

5.6 Standard Error of Differences 79

5.7 Confidence Intervals for an Estimate 80

5.8 Confidence Intervals for Differences 83

5.9 Points When Reading the Literature 84

5.10 Technical Details 85

5.11 Exercises 86

6 Hypothesis Testing, P-values and Statistical Inference 91

6.1 Introduction 92

6.2 The Null Hypothesis 92

6.3 The Main Steps in Hypothesis Testing 94

6.4 Using Your P-value to Make a Decision About Whether to Reject, or Not Reject, Your Null Hypothesis 96

6.5 Statistical Power 99

6.6 One-sided and Two-sided Tests 101

6.7 Confidence Intervals (CIs) 101

6.8 Large Sample Tests for Two Independent Means or Proportions 104

6.9 Issues with P-values 107

6.10 Points When Reading the Literature 108

6.11 Exercises 108

7 Comparing Two or More Groups with Continuous Data 111

7.1 Introduction 112

7.2 Comparison of Two Groups of Paired Observations – Continuous Outcomes 113

7.3 Comparison of Two Independent Groups – Continuous Outcomes 119

7.4 Comparing More than Two Groups 127

7.5 Non-Normal Distributions 130

7.6 Degrees of Freedom 131

7.7 Points When Reading the Literature 132

7.8 Technical Details 132

7.9 Exercises 140

8 Comparing Groups of Binary and Categorical Data 145

8.1 Introduction 146

8.2 Comparison of Two Independent Groups – Binary Outcomes 146

8.3 Comparing Risks 151

8.4 Comparison of Two Groups of Paired Observations – Categorical Outcomes 152

8.5 Degrees of Freedom 153

8.6 Points When Reading the Literature 154

8.7 Technical Details 154

8.8 Exercises 160

9 Correlation and Linear Regression 163

9.1 Introduction 164

9.2 Correlation 165

9.3 Linear Regression 171

9.4 Comparison of Assumptions Between Correlation and Regression 178

9.5 Multiple Regression 179

9.6 Correlation is not Causation 181

9.7 Points When Reading the Literature 182

9.8 Technical Details 182

9.9 Exercises 190

10 Logistic Regression 193

10.1 Introduction 194

10.2 Binary Outcome Variable 194

10.3 The Multiple Logistic Regression Equation 196

10.4 Conditional Logistic Regression 200

10.5 Reporting the Results of a Logistic Regression 201

10.6 Additional Points When Reading the Literature When Logistic Regression Has Been Used 202

10.7 Technical Details 202

10.8 The Wald Test 204

10.9 Evaluating the Model and its Fit: The Hosmer–Lemeshow Test 204

10.10 Assessing Predictive Efficiency (1): 2 × 2 Classification Table 205

10.11 Assessing Predictive Efficiency (2): The ROC Curve 206

10.12 Investigating Linearity 206

10.13 Exercises 207

11 Survival Analysis 211

11.1 Time to Event Data 212

11.2 Kaplan–Meier Survival Curve 214

11.3 The Logrank Test 217

11.4 The Hazard Ratio 221

11.5 Modelling Time to Event Data 223

11.6 Points When Reading Literature 226

11.7 Exercises 229

12 Reliability and Method Comparison Studies 233

12.1 Introduction 234

12.2 Repeatability 234

12.3 Agreement 237

12.4 Validity 239

12.5 Method Comparison Studies 240

12.6 Points When Reading the Literature 243

12.7 Technical Details 243

12.8 Exercises 245

13 Evaluation of Diagnostic Tests 249

13.1 Introduction 250

13.2 Diagnostic Tests 250

13.3 Prevalence, Overall Accuracy, Sensitivity, and Specificity 251

13.4 Positive and Negative Predictive Values 252

13.5 The Effect of Prevalence 253

13.6 Confidence Intervals 254

13.7 Functions of a Screening and Diagnostic Test 255

13.8 Likelihood Ratio, Pre-test Odds and Post-test Odds 256

13.9 Receiver Operating Characteristic (ROC) Curve 257

13.10 Points When Reading the Literature About a Diagnostic Test 261

13.11 Exercises 262

14 Observational Studies 265

14.1 Introduction 266

14.2 Risk and Rates 266

14.3 Taking a Random Sample 272

14.4 Questionnaire and Form Design 273

14.5 Cross-sectional Surveys 274

14.6 Non-randomised Studies 275

14.7 Cohort Studies 278

14.8 Case–Control Studies 282

14.9 Association and Causality 287

14.10 Modern Causality Methods and Big Data 287

14.11 Points When Reading the Literature 288

14.12 Technical Details 288

14.13 Exercises 290

15 The Randomised Controlled Trial 293

15.1 Introduction 294

15.2 The Protocol 294

15.3 Why Randomise? 295

15.4 Methods of Randomisation 296

15.5 Design Features 298

15.6 Design Options 303

15.7 Meta-analysis 309

15.8 Checklists for Design, Analysis and Reporting 309

15.9 Consort 311

15.10 Points When Reading the Literature About a Trial 311

15.11 Exercises 311

16 Sample Size Issues 313

16.1 Introduction 314

16.2 Study Size 315

16.3 Continuous Data 318

16.4 Binary Data 319

16.5 Prevalence 321

16.6 Subject Withdrawals 322

16.7 Other Aspects of Sample Size Calculations 323

16.8 Points When Reading the Literature 325

16.9 Technical Details 325

16.10 Exercises 327

17 Other Statistical Methods 331

17.1 Analysing Serial or Longitudinal Data 332

17.2 Poisson Regression 341

17.3 Missing Data 343

17.4 Bootstrap Methods 350

17.5 Points When Reading the Literature 353

17.6 Exercises 353

18 Meta-analysis 355

18.1 Introduction 356

18.2 What is a Meta-analysis? 356

18.3 Meta-analysis Methods 358

18.4 Example: Mobile Phone Based Intervention for Smoking Cessation 359

18.5 Discussion 363

18.6 Technical Details 363

18.7 Exercises 365

19 Common Mistakes and Pitfalls 369

19.1 Introduction 370

19.2 Misleading Graphs and Tables 370

19.3 Plotting Change Against Initial Value 376

19.4 Within Group Versus Between Group Analyses 380

19.5 Analysing Paired Data Ignoring the Matching 381

19.6 Unit of Analysis 382

19.7 Testing for Baseline Imbalances in an RCT 382

19.8 Repeated Measures 383

19.9 Clinical and Statistical Significance 387

19.10 Post Hoc Power Calculations 387

19.11 Predicting or Extrapolating Beyond the Observed Range of Data 388

19.12 Exploratory Data Analysis 390

19.13 Misuse of P-values 391

19.14 Points When Reading the Literature 391

Appendix: Statistical Tables 393

Solutions to Multiple-Choice Exercises 403

References 413

Index 423

Medical Statistics

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    A Paperback / softback by Stephen J. Walters, Michael J. Campbell, David Machin

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      View other formats and editions of Medical Statistics by Stephen J. Walters

      Publisher: John Wiley and Sons Ltd
      Publication Date: 04/02/2021
      ISBN13: 9781119423645, 978-1119423645
      ISBN10: 1119423643
      Also in:
      Mathematics

      Description

      Book Synopsis


      Table of Contents

      Preface xi

      1 Uses and Abuses of Medical Statistics 1

      1.1 Introduction 2

      1.2 Why Use Statistics? 2

      1.3 Statistics is About Common Sense and Good Design 3

      1.4 How a Statistician Can Help 5

      2 Displaying and Summarising Data 9

      2.1 Types of Data 10

      2.2 Summarising Categorical Data 13

      2.3 Displaying Categorical Data 15

      2.4 Summarising Continuous Data 17

      2.5 Displaying Continuous Data 24

      2.6 Within-Subject Variability 28

      2.7 Presentation 30

      2.8 Points When Reading the Literature 31

      2.9 Technical Details 32

      2.10 Exercises 33

      3 Summary Measures for Binary Data 37

      3.1 Summarising Binary and Categorical Data 38

      3.2 Points When Reading the Literature 46

      3.3 Exercises 46

      4 Probability and Distributions 49

      4.1 Types of Probability 50

      4.2 The Binomial Distribution 54

      4.3 The Poisson Distribution 55

      4.4 Probability for Continuous Outcomes 57

      4.5 The Normal Distribution 58

      4.6 Reference Ranges 63

      4.7 Other Distributions 64

      4.8 Points When Reading the Literature 66

      4.9 Technical Section 66

      4.10 Exercises 67

      5 Populations, Samples, Standard Errors and Confidence Intervals 71

      5.1 Populations 72

      5.2 Samples 73

      5.3 The Standard Error 74

      5.4 The Central Limit Theorem 75

      5.5 Standard Errors for Proportions and Rates 77

      5.6 Standard Error of Differences 79

      5.7 Confidence Intervals for an Estimate 80

      5.8 Confidence Intervals for Differences 83

      5.9 Points When Reading the Literature 84

      5.10 Technical Details 85

      5.11 Exercises 86

      6 Hypothesis Testing, P-values and Statistical Inference 91

      6.1 Introduction 92

      6.2 The Null Hypothesis 92

      6.3 The Main Steps in Hypothesis Testing 94

      6.4 Using Your P-value to Make a Decision About Whether to Reject, or Not Reject, Your Null Hypothesis 96

      6.5 Statistical Power 99

      6.6 One-sided and Two-sided Tests 101

      6.7 Confidence Intervals (CIs) 101

      6.8 Large Sample Tests for Two Independent Means or Proportions 104

      6.9 Issues with P-values 107

      6.10 Points When Reading the Literature 108

      6.11 Exercises 108

      7 Comparing Two or More Groups with Continuous Data 111

      7.1 Introduction 112

      7.2 Comparison of Two Groups of Paired Observations – Continuous Outcomes 113

      7.3 Comparison of Two Independent Groups – Continuous Outcomes 119

      7.4 Comparing More than Two Groups 127

      7.5 Non-Normal Distributions 130

      7.6 Degrees of Freedom 131

      7.7 Points When Reading the Literature 132

      7.8 Technical Details 132

      7.9 Exercises 140

      8 Comparing Groups of Binary and Categorical Data 145

      8.1 Introduction 146

      8.2 Comparison of Two Independent Groups – Binary Outcomes 146

      8.3 Comparing Risks 151

      8.4 Comparison of Two Groups of Paired Observations – Categorical Outcomes 152

      8.5 Degrees of Freedom 153

      8.6 Points When Reading the Literature 154

      8.7 Technical Details 154

      8.8 Exercises 160

      9 Correlation and Linear Regression 163

      9.1 Introduction 164

      9.2 Correlation 165

      9.3 Linear Regression 171

      9.4 Comparison of Assumptions Between Correlation and Regression 178

      9.5 Multiple Regression 179

      9.6 Correlation is not Causation 181

      9.7 Points When Reading the Literature 182

      9.8 Technical Details 182

      9.9 Exercises 190

      10 Logistic Regression 193

      10.1 Introduction 194

      10.2 Binary Outcome Variable 194

      10.3 The Multiple Logistic Regression Equation 196

      10.4 Conditional Logistic Regression 200

      10.5 Reporting the Results of a Logistic Regression 201

      10.6 Additional Points When Reading the Literature When Logistic Regression Has Been Used 202

      10.7 Technical Details 202

      10.8 The Wald Test 204

      10.9 Evaluating the Model and its Fit: The Hosmer–Lemeshow Test 204

      10.10 Assessing Predictive Efficiency (1): 2 × 2 Classification Table 205

      10.11 Assessing Predictive Efficiency (2): The ROC Curve 206

      10.12 Investigating Linearity 206

      10.13 Exercises 207

      11 Survival Analysis 211

      11.1 Time to Event Data 212

      11.2 Kaplan–Meier Survival Curve 214

      11.3 The Logrank Test 217

      11.4 The Hazard Ratio 221

      11.5 Modelling Time to Event Data 223

      11.6 Points When Reading Literature 226

      11.7 Exercises 229

      12 Reliability and Method Comparison Studies 233

      12.1 Introduction 234

      12.2 Repeatability 234

      12.3 Agreement 237

      12.4 Validity 239

      12.5 Method Comparison Studies 240

      12.6 Points When Reading the Literature 243

      12.7 Technical Details 243

      12.8 Exercises 245

      13 Evaluation of Diagnostic Tests 249

      13.1 Introduction 250

      13.2 Diagnostic Tests 250

      13.3 Prevalence, Overall Accuracy, Sensitivity, and Specificity 251

      13.4 Positive and Negative Predictive Values 252

      13.5 The Effect of Prevalence 253

      13.6 Confidence Intervals 254

      13.7 Functions of a Screening and Diagnostic Test 255

      13.8 Likelihood Ratio, Pre-test Odds and Post-test Odds 256

      13.9 Receiver Operating Characteristic (ROC) Curve 257

      13.10 Points When Reading the Literature About a Diagnostic Test 261

      13.11 Exercises 262

      14 Observational Studies 265

      14.1 Introduction 266

      14.2 Risk and Rates 266

      14.3 Taking a Random Sample 272

      14.4 Questionnaire and Form Design 273

      14.5 Cross-sectional Surveys 274

      14.6 Non-randomised Studies 275

      14.7 Cohort Studies 278

      14.8 Case–Control Studies 282

      14.9 Association and Causality 287

      14.10 Modern Causality Methods and Big Data 287

      14.11 Points When Reading the Literature 288

      14.12 Technical Details 288

      14.13 Exercises 290

      15 The Randomised Controlled Trial 293

      15.1 Introduction 294

      15.2 The Protocol 294

      15.3 Why Randomise? 295

      15.4 Methods of Randomisation 296

      15.5 Design Features 298

      15.6 Design Options 303

      15.7 Meta-analysis 309

      15.8 Checklists for Design, Analysis and Reporting 309

      15.9 Consort 311

      15.10 Points When Reading the Literature About a Trial 311

      15.11 Exercises 311

      16 Sample Size Issues 313

      16.1 Introduction 314

      16.2 Study Size 315

      16.3 Continuous Data 318

      16.4 Binary Data 319

      16.5 Prevalence 321

      16.6 Subject Withdrawals 322

      16.7 Other Aspects of Sample Size Calculations 323

      16.8 Points When Reading the Literature 325

      16.9 Technical Details 325

      16.10 Exercises 327

      17 Other Statistical Methods 331

      17.1 Analysing Serial or Longitudinal Data 332

      17.2 Poisson Regression 341

      17.3 Missing Data 343

      17.4 Bootstrap Methods 350

      17.5 Points When Reading the Literature 353

      17.6 Exercises 353

      18 Meta-analysis 355

      18.1 Introduction 356

      18.2 What is a Meta-analysis? 356

      18.3 Meta-analysis Methods 358

      18.4 Example: Mobile Phone Based Intervention for Smoking Cessation 359

      18.5 Discussion 363

      18.6 Technical Details 363

      18.7 Exercises 365

      19 Common Mistakes and Pitfalls 369

      19.1 Introduction 370

      19.2 Misleading Graphs and Tables 370

      19.3 Plotting Change Against Initial Value 376

      19.4 Within Group Versus Between Group Analyses 380

      19.5 Analysing Paired Data Ignoring the Matching 381

      19.6 Unit of Analysis 382

      19.7 Testing for Baseline Imbalances in an RCT 382

      19.8 Repeated Measures 383

      19.9 Clinical and Statistical Significance 387

      19.10 Post Hoc Power Calculations 387

      19.11 Predicting or Extrapolating Beyond the Observed Range of Data 388

      19.12 Exploratory Data Analysis 390

      19.13 Misuse of P-values 391

      19.14 Points When Reading the Literature 391

      Appendix: Statistical Tables 393

      Solutions to Multiple-Choice Exercises 403

      References 413

      Index 423

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