Quantitative Research Methods for Health Professionals / Edition 1

Quantitative Research Methods for Health Professionals / Edition 1

by Nigel Bruce, Daniel Pope, Debbi Stanistreet
     
 

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ISBN-10: 0470022744

ISBN-13: 9780470022740

Pub. Date: 05/09/2008

Publisher: Wiley

Quantitative Research Methods for Health Professionals: A Practical Interactive Course is a superb introduction to epidemiology, biostatistics, and research methodology for the whole health care community.

Drawing examples from a wide range of health research, this practical handbook covers important contemporary health research methods

Overview

Quantitative Research Methods for Health Professionals: A Practical Interactive Course is a superb introduction to epidemiology, biostatistics, and research methodology for the whole health care community.

Drawing examples from a wide range of health research, this practical handbook covers important contemporary health research methods such as survival analysis, Cox regression, and meta-analysis, the understanding of which go beyond introductory concepts.

The book includes self-assessment exercises throughout to help students explore and reflect on their understanding and a clear distinction is made between a) knowledge and concepts that all students should ensure they understand and b) those that can be pursued by students who wish to do so.

The authors incorporate a program of practical exercises in SPSS using a prepared data set that helps to consolidate the theory and develop skills and confidence in data handling, analysis and interpretation.

Product Details

ISBN-13:
9780470022740
Publisher:
Wiley
Publication date:
05/09/2008
Series:
Wiley Desktop Editions Series
Pages:
552
Product dimensions:
7.70(w) x 9.90(h) x 1.50(d)

Related Subjects

Table of Contents

Preface.

Acknowledgements.

1. Philosophy of science and introduction to epidemiology.

Introduction and learning objectives.

1.1 Approaches to scientific research.

1.2 Formulating a research question.

1.3 Rates: incidence and prevalence.

1.4 Concepts of prevention.

1.5 Answers to self-assessment exercises.

2. Routine data sources and descriptive epidemiology.

Introduction and learning objectives.

2.1 Routine collection of health information.

2.2 Descriptive epidemiology.

2.3 Information on the environment.

2.4 Displaying, describing and presenting data.

2.5 Summary of routinely available data.

2.6 Descriptive epidemiology in action.

2.7 Overview of epidemiological study designs.

2.8 Answers to self-assessment exercises.

3. Standardisation.

Introduction and learning objectives.

3.1 Health inequalities in Merseyside.

3.2 Indirect standardisation: calculation of the standardised mortality ratio (SMR).

3.3 Direct standardisation.

3.4 Standardisation for factors other than age.

3.5 Answers to self-assessment exercises.

4. Surveys.

Introduction and learning objectives.

4.1 Purpose and context.

4.2 Sampling methods.

4.3 The sampling frame.

4.4 Sampling error, confidence intervals and sample size .

4.5 Response.

4.6 Measurement.

4.7 Data types and presentation.

4.8 Answers to self-assessment exercises.

5. Cohort studies.

Introduction and learning objectives.

5.1 Why do a cohort study?.

5.2 Obtaining the sample.

5.3 Measurement.

5.4 Follow-up.

5.5 Basic presentation and analysis of results.

5.6 How large should a cohort study be?.

5.7 Confounding.

5.8 Simple linear regression.

5.9 Introduction to multiple linear regression.

5.10 Answers to self-assessment exercises.

6. Case-control studies.

Introduction and learning objectives.

6.1 Why do a case-control study?.

6.2 Key elements of study design.

6.3 Basic unmatched and matched analysis.

6.4 Sample size for a case-control study.

6.5 Confounding and logistic regression.

6.6 Answers to self-assessment exercises.

7. Intervention studies.

Introduction and learning objectives.

7.1 Why do an intervention study?.

7.2 Key elements of intervention study design.

7.3 The analysis of intervention studies.

7.4 Testing more complex interventions.

7.5 How big should the trial be?.

7.6 Further aspects of intervention study design and analysis.

7.7 Answers to self-assessment exercises.

8. Life tables, survival analysis and Cox regression.

Introduction and learning objectives.

8.1 Survival analysis.

8.2 Cox regression.

8.3 Current life tables.

8.4 Answers to self-assessment exercises.

9. Systematic reviews and meta analysis.

Introduction and learning objectives.

9.1 The why and how of systematic reviews.

9.2 The methodology of meta-analysis.

9.3 Systematic reviews and meta-analyses of observational studies.

9.4 The Cochrane Collaboration.

9.5 Answers to self-assessment exercises.

10. Prevention strategies and evaluation of screening .

Introduction and learning objectives.

10.1 Concepts of risk.

10.2 Strategies of prevention.

10.3 Evaluation of screening programmes.

10.4 Cohort and period effects.

10.5 Answers to self-assessment exercises.

11. Probability distributions, hypothesis testing and Bayesian methods.

Introduction and learning objectives.

11.1 Probability distributions.

11.2 Data that do not ‘fit’ a probability distribution.

11.3 Hypothesis testing.

11.4 Choosing an appropriate hypothesis test.

11.5 Bayesian methods.

11.6 Answers to self-assessment exercises.

Bibliography.

Index.

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