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A Practical Approach to Using Statistics in Health Research

From Planning to Reporting
Buch | Hardcover
240 Seiten
2018
John Wiley & Sons Inc (Verlag)
978-1-119-38357-4 (ISBN)
131,56 inkl. MwSt
A hands-on guide to using statistics in health research, from planning, through analysis, and on to reporting

A Practical Approach to Using Statistics in Health Research offers an easy to use, step-by-step guide for using statistics in health research. The authors use their experience of statistics and health research to explain how statistics fit in to all stages of the research process. They explain how to determine necessary sample sizes, interpret whether there are statistically significant difference in outcomes between groups, and use measured effect sizes to decide whether any changes are large enough to be relevant to professional practice.

The text walks you through how to identify the main outcome measure for your study and the factor which you think may influence that outcome and then determine what type of data will be used to record both of these.  It then describes how this information is used to select the most appropriate methods to report and analyze your data.  A step-by-step guide on how to use a range of common statistical procedures are then presented in separate chapters.  To help you make sure that you are using statistics robustly, the authors also explore topics such as multiple testing and how to check whether measured data follows a normal distribution.  Videos showing how to use computer packages to carry out all the various methods mentioned in the book are available on our companion web site. This book:

•    Covers statistical aspects of all the stages of health research from planning to final reporting

•    Explains how to report statistical planning, how analyses were performed, and the results and conclusion

•    Puts the spotlight on consideration of clinical significance and not just statistical significance

•    Explains the importance of reporting 95% confidence intervals for effect size

•    Includes a systematic guide for selection of statistical tests and uses example data sets and videos to help you understand exactly how to use statistics

Written as an introductory guide to statistics for healthcare professionals, students and lecturers in the fields of pharmacy, nursing, medicine, dentistry, physiotherapy, and occupational therapy, A Practical Approach to Using Statistics in Health Research:From Planning to Reporting is a handy reference that focuses on the application of statistical methods within the health research context. 

Adam Mackridge, Ph.D., is a Research Pharmacist at Betsi Cadwaladr University Health Board in North Wales. He has over 15 years of experience in planning, conducting and reporting health research. He received his PhD in Pharmacy Practice from Aston University in Birmingham, UK. Philip Rowe, Ph.D., is a Visiting Research Fellow in the School of Pharmacy and Molecular Sciences at Liverpool John Moores University, Liverpool, UK. He is a Fellow of the Royal Statistical Society and has authored other statistically based books for Wiley.

About the Companion Website xv

1 Introduction 1

1.1 At Whom is This Book Aimed? 1

1.2 At What Scale of Project is This Book Aimed? 2

1.3 Why Might This Book be Useful for You? 2

1.4 How to Use This Book 3

1.5 Computer Based Statistics Packages 4

1.6 Relevant Videos etc. 5

2 Data Types 7

2.1 What Types of Data are There and Why Does it Matter? 7

2.2 Continuous Measured Data 7

2.2.1 Continuous Measured Data – Normal and Non‐Normal Distribution 8

2.2.2 Transforming Non‐Normal Data 13

2.3 Ordinal Data 13

2.4 Categorical Data 14

2.5 Ambiguous Cases 14

2.5.1 A Continuously Varying Measure that has been Divided into a Small Number of Ranges 14

2.5.2 Composite Scores with a Wide Range of Possible Values 15

2.6 Relevant Videos etc. 15

3 Presenting and Summarizing Data 17

3.1 Continuous Measured Data 17

3.1.1 Normally Distributed Data – Using the Mean and Standard Deviation 18

3.1.2 Data With Outliers, e.g. Skewed Data – Using Quartiles and the Median 18

3.1.3 Polymodal Data – Using the Modes 20

3.2 Ordinal Data 21

3.2.1 Ordinal Scales With a Narrow Range of Possible Values 22

3.2.2 Ordinal Scales With a Wide Range of Possible Values 22

3.2.3 Dividing an Ordinal Scale Into a Small Number of Ranges (e.g. Satisfactory/Unsatisfactory or Poor/Acceptable/Good) 22

3.2.4 Summary for Ordinal Data 23

3.3 Categorical Data 23

3.4 Relevant Videos etc. 24

Appendix 1: An Example of the Insensitivity of the Median When Used to Describe Data from an Ordinal Scale With a Narrow Range of Possible Values 25

4 Choosing a Statistical Test 27

4.1 Identify the Factor and Outcome 27

4.2 Identify the Type of Data Used to Record the Relevant Factor 29

4.3 Statistical Methods Where the Factor is Categorical 30

4.3.1 Identify the Type of Data Used to Record the Outcome 30

4.3.2 Is Continuous Measured Outcome Data Normally Distributed or Can It Be Transformed to Normality? 30

4.3.3 Identify Whether Your Sets of Outcome Data Are Related or Independent 31

4.3.4 For the Factor, How Many Levels Are Being Studied? 32

4.3.5 Determine the Appropriate Statistical Method for Studies with a Categorical Factor 32

4.4 Correlation and Regression with a Measured Factor 34

4.4.1 What Type of Data Was Used to Record Your Factor and Outcome? 34

4.4.2 When Both the Factor and the Outcome Consist of Continuous Measured Values, Select Between Pearson and Spearman Correlation 34

4.5 Relevant Additional Material 38

5 Multiple Testing 39

5.1 What Is Multiple Testing and Why Does It Matter? 39

5.2 What Can We Do to Avoid an Excessive Risk of False Positives? 40

5.2.1 Use of Omnibus Tests 40

5.2.2 Distinguishing Between Primary and Secondary/ Exploratory Analyses 40

5.2.3 Bonferroni Correction 41

6 Common Issues and Pitfalls 43

6.1 Determining Equality of Standard Deviations 43

6.2 How Do I Know, in Advance, How Large My SD Will Be? 43

6.3 One‐Sided Versus Two‐Sided Testing 44

6.4 Pitfalls That Make Data Look More Meaningful Than It Really Is 45

6.4.1 Too Many Decimal Places 45

6.4.2 Percentages with Small Sample Sizes 47

6.5 Discussion of Statistically Significant Results 47

6.6 Discussion of Non‐Significant Results 50

6.7 Describing Effect Sizes with Non‐Parametric Tests 51

6.8 Confusing Association with a Cause and Effect Relationship 52

7 Contingency Chi‐Square Test 55

7.1 When Is the Test Appropriate? 55

7.2 An Example 55

7.3 Presenting the Data 57

7.3.1 Contingency Tables 57

7.3.2 Clustered or Stacked Bar Charts 57

7.4 Data Requirements 59

7.5 An Outline of the Test 59

7.6 Planning Sample Sizes 59

7.7 Carrying Out the Test 60

7.8 Special Issues 61

7.8.1 Yates Correction 61

7.8.2 Low Expected Frequencies – Fisher’s Exact Test 61

7.9 Describing the Effect Size 61

7.9.1 Absolute Risk Difference (ARD) 62

7.9.2 Number Needed to Treat (NNT) 63

7.9.3 Risk Ratio (RR) 63

7.9.4 Odds Ratio (OR) 64

7.9.5 Case: Control Studies 65

7.10 How to Report the Analysis 65

7.10.1 Methods 65

7.10.2 Results 66

7.10.3 Discussion 67

7.11 Confounding and Logistic Regression 67

7.11.1 Reporting the Detection of Confounding 68

7.12 Larger Tables 69

7.12.1 Collapsing Tables 69

7 12.2 Reducing Tables 70

7.13 Relevant Videos etc. 71

8 Independent Samples (Two‐Sample) T‐Test 73

8.1 When Is the Test Applied? 73

8.2 An Example 73

8.3 Presenting the Data 75

8.3.1 Numerically 75

8.3.2 Graphically 75

8.4 Data Requirements 75

8.4.1 Variables Required 75

8.4.2 Normal Distribution of the Outcome Variable Within the Two Samples 75

8.4.3 Equal Standard Deviations 78

8.4.4 Equal Sample Sizes 78

8.5 An Outline of the Test 78

8.6 Planning Sample Sizes 79

8.7 Carrying Out the Test 79

8.8 Describing the Effect Size 79

8.9 How to Describe the Test, the Statistical and Practical Significance of Your Findings in Your Report 80

8.9.1 Methods Section 80

8.9.2 Results Section 80

8.9.3 Discussion Section 81

8.10 Relevant Videos etc. 81

9 Mann–Whitney Test 83

9.1 When Is the Test Applied? 83

9.2 An Example 83

9.3 Presenting the Data 85

9.3.1 Numerically 85

9.3.2 Graphically 85

9.3.3 Divide the Outcomes into Low and High Ranges 85

9.4 Data Requirements 86

9.4.1 Variables Required 86

9.4.2 Normal Distributions and Equality of Standard Deviations 87

9.4.3 Equal Sample Sizes 87

9.5 An Outline of the Test 87

9.6 Statistical Significance 87

9.7 Planning Sample Sizes 87

9.8 Carrying Out the Test 88

9.9 Describing the Effect Size 88

9.10 How to Report the Test 89

9.10.1 Methods Section 89

9.10.2 Results Section 89

9.10.3 Discussion Section 90

9.11 Relevant Videos etc. 91

10 One‐Way Analysis of Variance (ANOVA) – Including Dunnett’s and Tukey’s Follow Up Tests 93

10.1 When Is the Test Applied? 93

10.2 An Example 93

10.3 Presenting the Data 94

10.3.1 Numerically 94

10.3.2 Graphically 94

10.4 Data Requirements 94

10.4.1 Variables Required 94

10.4.2 Normality of Distribution for the Outcome Variable Within the Three Samples 95

10.4.3 Standard Deviations 96

10.4.4 Sample Sizes 98

10.5 An Outline of the Test 98

10.6 Follow Up Tests 98

10.7 Planning Sample Sizes 99

10.8 Carrying Out the Test 100

10.9 Describing the Effect Size 101

10.10 How to Report the Test 101

10.10.1 Methods 101

10.10.2 Results Section 102

10.10.3 Discussion Section 102

10.11 Relevant Videos etc. 103

11 Kruskal–Wallis 105

11.1 When Is the Test Applied? 105

11.2 An Example 105

11.3 Presenting the Data 106

11.3.1 Numerically 106

11.3.2 Graphically 107

11.4 Data Requirements 109

11.4.1 Variables Required 109

11.4.2 Normal Distributions and Standard Deviations 109

11.4.3 Equal Sample Sizes 110

11.5 An Outline of the Test 110

11.6 Planning Sample Sizes 110

11.7 Carrying Out the Test 110

11.8 Describing the Effect Size 111

11.9 Determining Which Group Differs from Which Other 111

11.10 How to Report the Test 111

11.10.1 Methods Section 111

11.10.2 Results Section 112

11.10.3 Discussion Section 113

11.11 Relevant Videos etc. 114

12 McNemar’s Test 115

12.1 When Is the Test Applied? 115

12.2 An Example 115

12.3 Presenting the Data 116

12.4 Data Requirements 116

12.5 An Outline of the Test 118

12.6 Planning Sample Sizes 118

12.7 Carrying Out the Test 119

12.8 Describing the Effect Size 119

12.9 How to Report the Test 119

12.9.1 Methods Section 119

12.9.2 Results Section 120

12.9.3 Discussion Section 120

12.10 Relevant Videos etc. 121

13 Paired T‐Test 123

13.1 When Is the Test Applied? 123

13.2 An Example 125

13.3 Presenting the Data 125

13.3.1 Numerically 125

13.3.2 Graphically 125

13.4 Data Requirements 126

13.4.1 Variables Required 126

13.4.2 Normal Distribution of the Outcome Data 126

13.4.3 Equal Standard Deviations 128

13.4.4 Equal Sample Sizes 128

13.5 An Outline of the Test 128

13.6 Planning Sample Sizes 129

13.7 Carrying Out the Test 129

13.8 Describing the Effect Size 129

13.9 How to Report the Test 130

13.9.1 Methods Section 130

13.9.2 Results Section 130

13.9.3 Discussion Section 131

13.10 Relevant Videos etc. 131

14 Wilcoxon Signed Rank Test 133

14.1 When Is the Test Applied? 133

14.2 An Example 134

14.3 Presenting the Data 134

14.3.1 Numerically 134

14.3.2 Graphically 136

14.4 Data Requirements 136

14.4.1 Variables Required 136

14.4.2 Normal Distributions and Equal Standard Deviations 137

14.4.3 Equal Sample Sizes 137

14.5 An Outline of the Test 137

14.6 Planning Sample Sizes 138

14.7 Carrying Out the Test 139

14.8 Describing the Effect Size 139

14.9 How to Report the Test 140

14.9.1 Methods Section 140

14.9.2 Results Section 140

14.9.3 Discussion Section 141

14.10 Relevant Videos etc. 141

15 Repeated Measures Analysis of Variance 143

15.1 When Is the Test Applied? 143

15.2 An Example 144

15.3 Presenting the Data 144

15.3.1 Numerical Presentation of the Data 145

15.3.2 Graphical Presentation of the Data 145

15.4 Data Requirements 146

15.4.1 Variables Required 146

15.4.2 Normal Distribution of the Outcome Data 148

15.4.3 Equal Standard Deviations 148

15.4.4 Equal Sample Sizes 148

15.5 An Outline of the Test 148

15.6 Planning Sample Sizes 149

15.7 Carrying Out the Test 150

15.8 Describing the Effect Size 150

15.9 How to Report the Test 151

15.9.1 Methods Section 151

15.9.2 Results Section 151

15.9.3 Discussion Section 152

15.10 Relevant Videos etc. 153

16 Friedman Test 155

16.1 When Is the Test Applied? 155

16.2 An Example 157

16.3 Presenting the Data 157

16.3.1 Bar Charts of the Outcomes at Various Stages 157

16.3.2 Summarizing the Data via Medians or Means 157

16.3.3 Splitting the Data at Some Critical Point in the Scale 159

16.4 Data Requirements 160

16.4.1 Variables Required 160

16.4.2 Normal Distribution and Standard Deviations in the Outcome Data 160

16.4.3 Equal Sample Sizes 160

16.5 An Outline of the Test 160

16.6 Planning Sample Sizes 161

16.7 Follow Up Tests 161

16.8 Carrying Out the Tests 162

16.9 Describing the Effect Size 162

16.9.1 Median or Mean Values Among the Individual Changes 162

16.9.2 Split the Scale 162

16.10 How to Report the Test 162

16.10.1 Methods Section 162

16.10.2 Results Section 163

16.10.3 Discussion Section 164

16.11 Relevant Videos etc. 164

17 Pearson Correlation 165

17.1 Presenting the Data 165

17.2 Correlation Coefficient and Statistical Significance 166

17.3 Planning Sample Sizes 167

17.4 Effect Size and Practical Relevance 167

17.5 Regression 169

17.6 How to Report the Analysis 170

17.6.1 Methods 170

17.6.2 Results 170

17.6.3 Discussion 171

17.7 Relevant Videos etc. 171

18 Spearman Correlation 173

18.1 Presenting the Data 173

18.2 Testing for Evidence of Inappropriate Distributions 174

18.3 Rho and Statistical Significance 174

18.4 An Outline of the Significance Test 175

18.5 Planning Sample Sizes 175

18.6 Effect Size 176

18.7 Where Both Measures Are Ordinal 176

18.7.1 Educational Level and Willingness to Undertake Internet Research – An Example Where Both Measures Are Ordinal 176

18.7.2 Presenting the Data 177

18.7.3 Rho and Statistical Significance 177

18.7.4 Effect Size 178

18.8 How to Report Spearman Correlation Analyses 178

18.8.1 Methods 178

18.8.2 Results 179

18.8.3 Discussion 180

18.9 Relevant Videos etc. 180

19 Logistic Regression 181

19.1 Use of Logistic Regression with Categorical Outcomes 181

19.2 An Outline of the Significance Test 182

19.3 Planning Sample Sizes 182

19.4 Results of the Analysis 184

19.5 Describing the Effect Size 184

19.6 How to Report the Analysis 185

19.6.1 Methods 185

19.6.2 Results 186

19.6.3 Discussion 186

19.7 Relevant Videos etc. 187

20 Cronbach’s Alpha 189

20.1 Appropriate Situations for the Use of Cronbach’s Alpha 189

20.2 Inappropriate Uses of Alpha 190

20.3 Interpretation 190

20.4 Reverse Scoring 191

20.5 An Example 191

20.6 Performing and Interpreting the Analysis 192

20.7 How to Report Cronbach’s Alpha Analyses 193

20.7.1 Methods Section 193

20.7.2 Results 194

20.7.3 Discussion 194

20.7 Relevant Videos etc. 195

Glossary 197

Videos 209

Index 211

Erscheinungsdatum
Verlagsort New York
Sprache englisch
Maße 145 x 221 mm
Gewicht 476 g
Themenwelt Mathematik / Informatik Mathematik
Studium Querschnittsbereiche Epidemiologie / Med. Biometrie
ISBN-10 1-119-38357-9 / 1119383579
ISBN-13 978-1-119-38357-4 / 9781119383574
Zustand Neuware
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