Description

Book Synopsis
STATISTICS FOR DENTAL CLINICIANS Enables clinicians to understand how biostatistics relate and apply to dental clinical practice Statistics for Dental Clinicians helps dental practitioners to understand and interpret the scientific literature and apply the concepts to their clinical practice. Written using clear, accessible language, the book breaks down complex statistical and study design principles and demonstrates how statistics can inform clinical practice. Chapters cover the basic building blocks of statistics, including clinical study designs, descriptive and inferential statistical concepts, and interpretation of study results, including differentiating between clinical and statistical significance. An extensive glossary of statistical terms, as well as graphs, figures, tables, and illustrations are included throughout to improve reader comprehension. Select readings accompany each chapter. Statistics for Dental Clinicians includes information on: How to understand and in

Table of Contents

Preamble xi

1 What is statistics and why do we need it? 1

Selected readings 7

2 Understanding and interpreting measures of association 8

Effect and effect size 8

Dichotomous outcome variables 9

Data presentation and interpretation 9

Absolute risk 9

Absolute risk difference 10

Relative risk or risk ratio 10

Odds ratio 11

Mean difference 11

A few additional notes 12

Selected readings 16

3 Understanding and interpreting a standard deviation and normal distribution 17

A few additional notes 22

Selected readings 23

4 Understanding and interpreting standard error 24

Interpretation of the standard error of the mean 25

Implication of the standard error of the mean 26

A few additional notes 26

Selected readings 29

5 Understanding and interpreting hypothesis testing and p-values 30

Descriptive and inferential statistics 30

Sampling error 31

Hypothesis testing or null hypothesis significance testing 31

Null and alternative hypotheses 32

Significance 33

P-value 34

A few additional notes 36

Selected readings 37

6 Understanding and interpreting a confidence interval 38

Understanding the confidence interval 39

How to interpret a confidence interval 39

A few additional notes 41

Selected readings 44

7 Understanding and interpreting power analysis and sample size 45

Sample size: Why is it important? 45

Components of a sample size calculation 46

Size of the effect 46

Significance level and type I error 47

Power and type II error 49

A few additional notes 50

Selected readings 53

8 Understanding and interpreting a survival analysis 54

Kaplan-Meier or survival curve 55

Comparing two Kaplan-Meier (survival) curves 57

Cox proportional hazard model 58

A few additional notes 59

Selected readings 60

9 Understanding and interpreting a probabilistic-based diagnosis 61

Sensitivity 61

Specificity 63

Positive predictive value 63

Negative predictive value 63

Likelihood ratios 65

Selective readings 68

10 Understanding and interpreting a correlation 69

Pearson product-moment correlation 69

Interpretation of Pearson correlation coefficients and coefficient of determination 71

Misinterpretation of correlations 73

A few additional notes 74

Selected readings 74

11 Understanding and interpreting a regression analysis 76

Estimation 76

Prediction 77

Linear regression 77

Multiple (or multivariable) linear (MLR) regression 79

Logistic regression 79

Predicting risk and odds 80

A hypothetical example: predicting risk and odds of an outcome 80

Estimating odds ratios 81

A hypothetical example--estimating an odds ratio 81

Nonindependence of observations 82

Building a regression model 82

A few additional notes 82

Selected readings 85

12 Understanding and interpreting confounding and effect modification 86

Counterfactual framework and causal reasoning 86

Causal inference and confounding bias 87

Strategies to deal with confounding in the study design phase 89

1. Randomization 90

2. Specification 90

3. Matching 90

Strategies to deal with confounding in the analysis phase 92

1. Stratification 92

2. Propensity score 92

3. Traditional regression modeling 93

Effect modification 94

A few additional notes 95

Selected readings 97

13 Understanding and interpreting bias 98

Random error versus systematic error (bias) 98

What does it really mean? 99

Distinguishing risk of bias, methodological quality, and reporting quality 100

Assessing risk of bias in primary studies 101

A few additional notes 104

Selected readings 105

14 Understanding and interpreting patient-reported outcomes 106

Identifying optimal patient-reported outcome measures 108

Validity 108

Reliability 109

A hypothetical scenario--Cohen's kappa (k) 109

Responsiveness 110

A few additional notes 111

Selected readings 112

15 Understanding and interpreting a cross-sectional study 113

Bias in cross-sectional studies 113

Response rate and avoiding nonresponse 114

Analysis of cross-sectional studies 115

Advantages and limitations of a cross-sectional study 116

A few additional notes 116

Selected readings 119

16 Understanding and interpreting a case-control study 120

Selection of the study population 120

Identifying cases 120

Identifying controls 122

Retrospective assessment of the exposure 122

Strengths and limitations 124

Selected readings 125

17 Understanding and interpreting a cohort study 126

Types of cohort study designs 126

Selection of the study population 127

Measuring exposures 128

Measuring outcome frequency 129

Measures of association 129

Bias in cohort studies 130

Selection bias 130

Nonparticipation and nonresponse 130

Loss to follow-up or attrition bias 130

Information bias: Dissimilar information between exposed and unexposed participants 130

Confounding 131

Strengths and limitations 131

Suggested readings 132

18 Understanding and interpreting a randomized controlled trial 133

Study arms 135

Type of outcomes 135

Methodological strategies in randomized controlled trials 137

Nonadherence to study protocol 137

Missing data 139

Subgroup analysis or effect modification 140

A few additional notes 142

Selected readings 144

19 Understanding and interpreting meta-analyses 145

The value of meta-analysis 145

Pairwise meta-analysis 146

Fixed effect meta-analysis 146

Random effects meta-analysis 147

Weight of each study in a meta-analysis 147

Forest plots 147

Heterogeneity 149

Network meta-analysis 151

Sensitivity analysis 152

Certainty of the evidence 152

A few additional notes 153

Selected readings 154

20 Understanding and interpreting statistical and clinical significance 155

A few additional notes 158

Selected readings 158

Appendix 1 Formulas and equations 160

Appendix 2 Z-table 183

Appendix 3 T-table 185

Glossary 189

Index 210

Statistics for Dental Clinicians

    Product form

    £58.05

    Includes FREE delivery

    RRP £64.50 – you save £6.45 (10%)

    Order before 4pm today for delivery by Wed 1 Jul 2026.

    2 in stock

      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of Statistics for Dental Clinicians by

      Publisher:
      Publication Date:
      ISBN13: ,
      ISBN10:

      Description

      Book Synopsis
      STATISTICS FOR DENTAL CLINICIANS Enables clinicians to understand how biostatistics relate and apply to dental clinical practice Statistics for Dental Clinicians helps dental practitioners to understand and interpret the scientific literature and apply the concepts to their clinical practice. Written using clear, accessible language, the book breaks down complex statistical and study design principles and demonstrates how statistics can inform clinical practice. Chapters cover the basic building blocks of statistics, including clinical study designs, descriptive and inferential statistical concepts, and interpretation of study results, including differentiating between clinical and statistical significance. An extensive glossary of statistical terms, as well as graphs, figures, tables, and illustrations are included throughout to improve reader comprehension. Select readings accompany each chapter. Statistics for Dental Clinicians includes information on: How to understand and in

      Table of Contents

      Preamble xi

      1 What is statistics and why do we need it? 1

      Selected readings 7

      2 Understanding and interpreting measures of association 8

      Effect and effect size 8

      Dichotomous outcome variables 9

      Data presentation and interpretation 9

      Absolute risk 9

      Absolute risk difference 10

      Relative risk or risk ratio 10

      Odds ratio 11

      Mean difference 11

      A few additional notes 12

      Selected readings 16

      3 Understanding and interpreting a standard deviation and normal distribution 17

      A few additional notes 22

      Selected readings 23

      4 Understanding and interpreting standard error 24

      Interpretation of the standard error of the mean 25

      Implication of the standard error of the mean 26

      A few additional notes 26

      Selected readings 29

      5 Understanding and interpreting hypothesis testing and p-values 30

      Descriptive and inferential statistics 30

      Sampling error 31

      Hypothesis testing or null hypothesis significance testing 31

      Null and alternative hypotheses 32

      Significance 33

      P-value 34

      A few additional notes 36

      Selected readings 37

      6 Understanding and interpreting a confidence interval 38

      Understanding the confidence interval 39

      How to interpret a confidence interval 39

      A few additional notes 41

      Selected readings 44

      7 Understanding and interpreting power analysis and sample size 45

      Sample size: Why is it important? 45

      Components of a sample size calculation 46

      Size of the effect 46

      Significance level and type I error 47

      Power and type II error 49

      A few additional notes 50

      Selected readings 53

      8 Understanding and interpreting a survival analysis 54

      Kaplan-Meier or survival curve 55

      Comparing two Kaplan-Meier (survival) curves 57

      Cox proportional hazard model 58

      A few additional notes 59

      Selected readings 60

      9 Understanding and interpreting a probabilistic-based diagnosis 61

      Sensitivity 61

      Specificity 63

      Positive predictive value 63

      Negative predictive value 63

      Likelihood ratios 65

      Selective readings 68

      10 Understanding and interpreting a correlation 69

      Pearson product-moment correlation 69

      Interpretation of Pearson correlation coefficients and coefficient of determination 71

      Misinterpretation of correlations 73

      A few additional notes 74

      Selected readings 74

      11 Understanding and interpreting a regression analysis 76

      Estimation 76

      Prediction 77

      Linear regression 77

      Multiple (or multivariable) linear (MLR) regression 79

      Logistic regression 79

      Predicting risk and odds 80

      A hypothetical example: predicting risk and odds of an outcome 80

      Estimating odds ratios 81

      A hypothetical example--estimating an odds ratio 81

      Nonindependence of observations 82

      Building a regression model 82

      A few additional notes 82

      Selected readings 85

      12 Understanding and interpreting confounding and effect modification 86

      Counterfactual framework and causal reasoning 86

      Causal inference and confounding bias 87

      Strategies to deal with confounding in the study design phase 89

      1. Randomization 90

      2. Specification 90

      3. Matching 90

      Strategies to deal with confounding in the analysis phase 92

      1. Stratification 92

      2. Propensity score 92

      3. Traditional regression modeling 93

      Effect modification 94

      A few additional notes 95

      Selected readings 97

      13 Understanding and interpreting bias 98

      Random error versus systematic error (bias) 98

      What does it really mean? 99

      Distinguishing risk of bias, methodological quality, and reporting quality 100

      Assessing risk of bias in primary studies 101

      A few additional notes 104

      Selected readings 105

      14 Understanding and interpreting patient-reported outcomes 106

      Identifying optimal patient-reported outcome measures 108

      Validity 108

      Reliability 109

      A hypothetical scenario--Cohen's kappa (k) 109

      Responsiveness 110

      A few additional notes 111

      Selected readings 112

      15 Understanding and interpreting a cross-sectional study 113

      Bias in cross-sectional studies 113

      Response rate and avoiding nonresponse 114

      Analysis of cross-sectional studies 115

      Advantages and limitations of a cross-sectional study 116

      A few additional notes 116

      Selected readings 119

      16 Understanding and interpreting a case-control study 120

      Selection of the study population 120

      Identifying cases 120

      Identifying controls 122

      Retrospective assessment of the exposure 122

      Strengths and limitations 124

      Selected readings 125

      17 Understanding and interpreting a cohort study 126

      Types of cohort study designs 126

      Selection of the study population 127

      Measuring exposures 128

      Measuring outcome frequency 129

      Measures of association 129

      Bias in cohort studies 130

      Selection bias 130

      Nonparticipation and nonresponse 130

      Loss to follow-up or attrition bias 130

      Information bias: Dissimilar information between exposed and unexposed participants 130

      Confounding 131

      Strengths and limitations 131

      Suggested readings 132

      18 Understanding and interpreting a randomized controlled trial 133

      Study arms 135

      Type of outcomes 135

      Methodological strategies in randomized controlled trials 137

      Nonadherence to study protocol 137

      Missing data 139

      Subgroup analysis or effect modification 140

      A few additional notes 142

      Selected readings 144

      19 Understanding and interpreting meta-analyses 145

      The value of meta-analysis 145

      Pairwise meta-analysis 146

      Fixed effect meta-analysis 146

      Random effects meta-analysis 147

      Weight of each study in a meta-analysis 147

      Forest plots 147

      Heterogeneity 149

      Network meta-analysis 151

      Sensitivity analysis 152

      Certainty of the evidence 152

      A few additional notes 153

      Selected readings 154

      20 Understanding and interpreting statistical and clinical significance 155

      A few additional notes 158

      Selected readings 158

      Appendix 1 Formulas and equations 160

      Appendix 2 Z-table 183

      Appendix 3 T-table 185

      Glossary 189

      Index 210

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account