Intro to Biostatistics

 
 
 

Staying well-versed in the world of biostatistics is vital for interpreting medical research accurately and making informed clinical decisions

Whether you are new to biostatistics or seeking a refresher, this guide will equip you with the essential knowledge to comprehend statistical analyses, evaluate research findings, and apply evidence-based practices in your clinical practice.

 

I. Overview of Biostatistics

a) What is Biostatistics?

Biostatistics is the application of statistical methods to biological, health, and medical data. It involves collecting, organizing, analyzing, interpreting, and presenting data to draw meaningful conclusions and make informed decisions. It plays a pivotal role in generating evidence for medical research, helping us understand diseases, evaluate treatment outcomes, and improve public health.

Imagine you come across a research paper investigating the effectiveness of a new medication for a particular condition. Biostatistics is what empowers you to assess the reliability of the study's conclusions, determine if the results are statistically significant, and decide if the medication is indeed beneficial for your patients.

b) Practical Applications of Biostatistics in Clinical Practice

Biostatistics plays a critical role in evidence-based medicine, empowering healthcare professionals to make data-driven decisions and improve patient outcomes.

  • Evidence-Based Medicine and Decision-Making: Biostatistics serves as the foundation of EBM by providing the tools to critically appraise research studies and assess the quality of evidence. As a physician assistant, you can use biostatistics to evaluate the effectiveness of treatments, diagnostic tests, and interventions, making well-informed decisions that align with the latest research findings.

  • Assessing Treatment Efficacy and Safety: Biostatistics enables you to evaluate the efficacy and safety of different treatments based on evidence from clinical trials and observational studies. By analyzing the data presented in research papers, you can assess the benefits and potential risks associated with specific treatments, helping you and your patients make informed choices.

  • Implementing Best Practices in Patient Care: The integration of biostatistics into clinical practice fosters the adoption of evidence-based guidelines and best practices. As a physician assistant, you can use statistical evidence to support your treatment recommendations and help your patients understand the rationale behind the proposed management plan.

  • Monitoring and Evaluating Patient Outcomes: Biostatistics allows you to monitor and evaluate patient outcomes over time. By collecting and analyzing data on treatment responses, disease progression, and patient-reported outcomes, you can assess the effectiveness of interventions and adjust treatment plans accordingly. This data-driven approach to patient care enhances the quality of care and contributes to continuous improvement in clinical practice.

  • Participating in Research and Clinical Trials: As a healthcare professional, you may have opportunities to participate in research studies and clinical trials. Biostatistics is a crucial aspect of study design, data analysis, and result interpretation in these endeavors. Understanding statistical concepts equips you to collaborate effectively with researchers, contribute to the research process, and promote advancements in medical knowledge.

c) Key Concepts and Terminology in Biostatistics

Understanding these basic concepts will lay the groundwork for comprehending more advanced statistical techniques as we go through this blog post:

  • Population: The entire group of individuals or subjects that researchers are interested in studying.

  • Sample: A subset of the population from which data is collected. Ideally, the sample should be representative of the entire population.

  • Variables: Characteristics or attributes that are measured or observed in a study. They can be categorical (e.g., gender) or numerical (e.g., age).

  • Data Types: Data can be categorized as categorical (nominal or ordinal) or numerical (continuous or discrete).

  • Measures of Central Tendency: These include the mean (average), median (middle value), and mode (most frequent value) and provide insights into the center of a data set.

  • Measures of Dispersion: These indicate the spread or variability of data and include the range, variance, and standard deviation.

 

II. Types of Data in Medical Research

Understanding the distinction between categorical and numerical data is essential for selecting appropriate statistical methods.

a) Categorical Data

Categorical data consists of distinct categories or groups and cannot be measured on a numerical scale. It is qualitative in nature and often represents attributes or characteristics of subjects in a study.

Common examples of categorical data include gender (male or female), blood types (A, B, AB, or O), and medical conditions (e.g., diabetes, hypertension).

  1. Nominal Data: Nominal data merely classifies subjects into different categories without any inherent order. For instance, colors of eyes or types of diseases fall under nominal data. Researchers use various statistical tests like chi-square to analyze associations and differences among different categories.

  2. Ordinal Data: Unlike nominal data, ordinal data possesses a meaningful order or ranking among categories. Examples include pain levels (mild, moderate, severe) or patient satisfaction ratings (poor, fair, good, excellent). Ordinal data can be analyzed using non-parametric tests like the Mann-Whitney U test or the Wilcoxon signed-rank test.

b) Numerical Data

Numerical data also referred to as quantitative data, represents measurable quantities on a numerical scale. It involves numeric values that can be subjected to mathematical operations.

Numerical data is further divided into two types:

  1. Continuous Data: Continuous data can take any value within a range and often arises from measurements. Examples include height, weight, blood pressure, and laboratory values. Analyzing continuous data usually involves parametric tests such as t-tests or regression analysis.

  2. Discrete Data: Discrete data comprises whole numbers or counts and cannot take on fractional values. This type of data typically arises from counting observations or events. Examples include the number of hospital admissions, the number of patients in a clinical trial arm, or the number of adverse events. Analyzing discrete data may involve techniques like the chi-square test or Poisson regression.

 

III. Descriptive Statistics: Summarizing and Presenting Data

Raw data alone can be overwhelming and challenging to interpret. This is where descriptive statistics come to the rescue. Descriptive statistics provide us with essential tools to summarize, organize, and present data in a concise and meaningful manner.

a) Measures of Central Tendency

Measures of central tendency help us identify the typical or central value around which data points tend to cluster.

There are three primary measures of central tendency:

  1. Mean: The mean is the arithmetic average of a set of numerical data. It is calculated by summing all values and dividing by the total number of observations. The mean is sensitive to extreme values and provides an accurate representation of the data if it follows a normal distribution.

  2. Median: The median is the middle value in a data set when arranged in ascending or descending order. It is less affected by extreme values and is often preferred when the data is skewed or contains outliers.

  3. Mode: The mode represents the value that occurs most frequently in the data set. In some cases, there may be multiple modes (bimodal or multimodal data). The mode is particularly useful for categorical data.

b) Measures of Dispersion

Measures of dispersion reveal how spread out or clustered the data points are around the central tendency. Understanding the variability of data is crucial for drawing accurate conclusions.

Three common measures of dispersion are:

  1. Range: The range is the difference between the maximum and minimum values in a data set. While easy to calculate, it is sensitive to outliers and may not provide a comprehensive understanding of variability.

  2. Variance: Variance measures how far each data point in the set is from the mean. It considers all data points and provides a more robust measure of dispersion. However, it is in squared units, making it less interpretable.

  3. Standard Deviation: The standard deviation is the square root of the variance. It represents the average amount by which data points deviate from the mean. Standard deviation is widely used due to its interpretability and relevance to the original unit of measurement.

 

IV. Inferential Statistics: Drawing Meaningful Conclusions

Inferential statistics allows us to draw conclusions and make predictions about a population based on a sample of data. It enables researchers to go beyond the immediate observations and make broader inferences about the entire target population.

a) Hypothesis Testing

Hypothesis testing is a fundamental concept in inferential statistics. It involves formulating two competing hypotheses: the null hypothesis (H0) and the alternative hypothesis (Ha). The null hypothesis usually states that there is no significant difference or effect, while the alternative hypothesis suggests the presence of a significant effect or relationship between variables.

Through hypothesis testing, researchers aim to determine whether there is enough evidence in the sample data to reject the null hypothesis in favor of the alternative hypothesis. The result is expressed in terms of statistical significance, typically denoted by a p-value.

b) Confidence Intervals (CI)

Confidence intervals are a range of values that provide a level of certainty that the true population parameter lies within that range. For example, a 95% confidence interval for the mean blood pressure of a population would indicate that we are 95% confident that the true population mean lies within the given interval.

Confidence intervals are crucial in inferential statistics as they provide valuable information about the precision of estimates and help researchers assess the practical significance of their findings.

c) p-values and Statistical Significance

The p-value, short for "probability value," is a fundamental concept in inferential statistics used to assess the strength of evidence against the null hypothesis in a hypothesis test. It quantifies the probability of obtaining the observed results, or more extreme results, if the null hypothesis is true.

In hypothesis testing, researchers formulate two competing hypotheses: the null hypothesis (H0) and the alternative hypothesis (Ha). The null hypothesis typically states that there is no significant difference or effect, while the alternative hypothesis suggests the presence of a significant effect or relationship between variables.

  • A high p-value (closer to 1) indicates weak evidence against the null hypothesis. In other words, the observed results are likely to occur due to random chance, and there is insufficient evidence to reject the null hypothesis. Researchers often interpret a high p-value as a lack of statistical significance, implying that the observed effect or relationship is not statistically different from what would be expected by chance alone.

  • On the other hand, a low p-value (usually less than 0.05) indicates strong evidence against the null hypothesis. The observed results are unlikely to occur by chance, suggesting that there is a significant effect or relationship between variables. Researchers typically interpret a low p-value as evidence to reject the null hypothesis in favor of the alternative hypothesis, implying that there is a meaningful and statistically significant finding.

Example in Clinical Practice:

Let's consider a clinical trial evaluating the effectiveness of a new medication for reducing blood pressure in hypertensive patients. The null hypothesis (H0) states that the new medication has no effect on blood pressure, while the alternative hypothesis (Ha) suggests that the medication does lower blood pressure.

During the trial, researchers collect data and analyze the results. They calculate a p-value of 0.03. In this case, the low p-value (0.03) indicates that there is strong evidence against the null hypothesis. The observed reduction in blood pressure is unlikely to be due to random chance alone, and the new medication appears to have a statistically significant effect on lowering blood pressure.

Based on this result, the researchers would reject the null hypothesis (H0) and accept the alternative hypothesis (Ha). They can conclude that the new medication is effective in reducing blood pressure in hypertensive patients.

It's important to note that while a low p-value indicates statistical significance, it does not necessarily imply clinical significance. Even if a finding is statistically significant, its practical importance and relevance to patient care should always be considered in the context of the specific study and its potential impact on clinical outcomes.

 

V. Study Designs & Sampling Methods

Understanding the strengths and limitations of different study designs and sampling methods is crucial for critically appraising research papers and interpreting their findings.

As a healthcare provider, you can use this knowledge to evaluate the quality of evidence and apply it in clinical practice.

a) Observational Studies

Observational studies are research designs where researchers observe and analyze subjects without any intervention. In these studies, researchers do not assign participants to specific groups or treatments. Instead, they observe and collect data to identify associations or relationships between variables.

Common types of observational studies include:

  1. Cross-sectional Studies: These studies collect data at a single point in time, providing a snapshot of the prevalence of characteristics or conditions in a population. Cross-sectional studies are useful for identifying associations but cannot establish causality.

    • e.g. Example Cross-sectional Study Research Question: What is the prevalence of diabetes in a specific community?
      Study Design: Researchers conduct a cross-sectional study, where they collect data from a representative sample of individuals within the community at a single point in time. They administer a questionnaire and perform blood tests to determine the presence of diabetes in the participants. The data collected provides a snapshot of the prevalence of diabetes in the community.

  2. Cohort Studies: Cohort studies follow a group of individuals (a cohort) over time and compare outcomes between those exposed to a risk factor and those not exposed. Cohort studies allow researchers to study the development of diseases and identify risk factors but may require a significant time investment.

    • e.g. Example Cohort Study Research Question: Does regular physical activity reduce the risk of cardiovascular diseases? Study Design: Researchers enroll a group of individuals without cardiovascular disease and follow them over a period of several years. They assess the participants' physical activity levels and track the development of cardiovascular diseases over time. By comparing the incidence of cardiovascular diseases between those who engage in regular physical activity and those who do not, researchers can determine the relationship between physical activity and the risk of cardiovascular diseases.

  3. Case-Control Studies: Case-control studies are retrospective in nature and compare individuals with a specific outcome (cases) to those without the outcome (controls). These studies are useful for investigating rare diseases or conditions.

    • e.g. Example of Case-Control Study Research Question: Is there an association between exposure to a specific environmental toxin and the development of lung cancer? Study Design: Researchers identify two groups: individuals diagnosed with lung cancer (cases) and individuals without lung cancer (controls). They then collect data on their past exposure to the environmental toxin of interest. By comparing the frequency of exposure to the toxin between cases and controls, researchers can assess whether there is an association between exposure to the toxin and the risk of developing lung cancer.

b) Experimental Studies

Experimental studies involve intervention by researchers, where participants are assigned to different groups, and one or more variables are manipulated to study their effects. These studies are more rigorous in establishing cause-and-effect relationships.

Common types of experimental studies include:

  1. Randomized Controlled Trials (RCTs): RCTs are considered the gold standard for evaluating the effectiveness of medical interventions. Participants are randomly assigned to either the treatment group or the control group, and outcomes are compared between the two groups.

    • Example of an RCT Research Question: Does a new drug improve pain relief in patients with chronic arthritis compared to the current standard treatment? Study Design: Researchers randomly assign eligible patients with chronic arthritis into two groups. One group receives the new drug, while the other group receives the current standard treatment. The patients' pain levels are monitored over a specified period. By comparing the pain relief between the two groups, researchers can determine the efficacy of the new drug compared to the standard treatment.

  2. Quasi-Experimental Studies: Quasi-experimental studies share similarities with RCTs but lack randomization. Researchers assign participants to different groups based on certain criteria but do not use random allocation.

    1. Example of a Quasi-Experimental Study Research Question: Does a specific intervention program improve mental health outcomes in a group of patients with a history of depression? Study Design: Researchers select a group of patients with a history of depression who voluntarily participate in a specific intervention program. Mental health outcomes, such as depression scores, are assessed before and after the intervention. As there is no randomization in this study, researchers use statistical methods to control for potential confounding variables and assess the impact of the intervention on mental health outcomes.

c) Sampling Methods

Sampling refers to the process of selecting a subset (sample) from a larger population for study. Choosing an appropriate sampling method is crucial to ensure the sample is representative of the entire population.

Common sampling methods include:

  1. Random Sampling: In random sampling, each member of the population has an equal chance of being included in the sample. This method helps reduce bias and improve generalizability.

  2. Stratified Sampling: Stratified sampling involves dividing the population into subgroups (strata) based on certain characteristics and then randomly selecting samples from each stratum. This method ensures representation of different subgroups in the sample.

  3. Convenience Sampling: Convenience sampling involves selecting individuals who are readily available and willing to participate. While easy to implement, convenience sampling may lead to biased results.

 

VI. Common Statistical Tests used in Medical Research

Each of these statistical tests serves a specific purpose and requires careful consideration based on the research question and the type of data being analyzed. It is important to remember that the choice of the appropriate statistical test depends on the study design, the nature of data collected, and the hypothesis being tested.

  • Student's t-test: The Student's t-test is used to compare the means of two groups. It is commonly employed in situations where researchers want to determine if there is a statistically significant difference between two independent groups.

    • For example, in a clinical trial, researchers might use the t-test to compare the mean efficacy of a new treatment group to a control group.

  • Chi-square test: The Chi-square test is used for categorical data analysis. It helps researchers assess the association or independence between two categorical variables.

    • For instance, it could be used to analyze whether there is a significant relationship between smoking status (yes or no) and the development of a specific disease.

  • Analysis of Variance (ANOVA): ANOVA is used to compare the means of more than two groups simultaneously. It is an extension of the t-test and is employed when researchers want to assess differences between multiple independent groups.

    • For instance, researchers might use ANOVA to analyze the effectiveness of different doses of a medication on patients with varying degrees of disease severity.

  • Regression Analysis: Regression analysis is a powerful statistical tool used to examine relationships between variables. It can be used for both continuous and categorical data.

    • Simple linear regression assesses the relationship between one dependent variable and one independent variable.

    • Multiple linear regression, on the other hand, examines the relationships between multiple independent variables and one dependent variable. Regression analysis allows researchers to make predictions and identify factors influencing an outcome.

As you encounter research papers in your medical journey, pay close attention to the statistical methods used. Understanding the statistical tests applied in a study will help you assess the validity of the conclusions drawn by the researchers.

 

VII. Recommended Resources for Biostatistics for Clinicians

a) Free Online Courses to Learn Biostatistics

  • Coursera (coursera.org) - Intro to Biostatistics: Coursera offers various biostatistics courses from top universities and institutions. You can access the course materials and lectures for free. Look for courses from institutions like Johns Hopkins University or the University of California, Berkeley, which offer excellent biostatistics courses.

  • Khan Academy (khanacademy.org) - Statistics and Probability: Khan Academy provides free video lectures and interactive exercises on a wide range of subjects, including biostatistics. Their biostatistics content covers essential topics, making it an excellent resource for beginners.

  • OpenIntro (openintro.org) - Statistics : OpenIntro offers free, open-source textbooks and resources on biostatistics and statistics. Their "OpenIntro Statistics" textbook is widely used and accessible online for free, providing a solid foundation in statistical concepts.

  • YouTube - Biostatistics Tutorials: YouTube hosts numerous channels that offer biostatistics tutorials and lectures. Channels like "StatQuest" and "Zedstatistics" provide engaging explanations of biostatistics concepts.

b) Helpful Books for Biostatistics

  • "Medical Statistics Made Easy" by Michael Harris and Gordon Taylor: Geared towards medical professionals, this book offers a simplified approach to understanding key statistical concepts commonly used in medical research. It emphasizes practical applications and real-world examples.

  • An Introduction to Medical Statistics by Martin Bland: is a comprehensive and approachable textbook that serves as an excellent introduction to the field of medical statistics. The book covers essential statistical concepts, study design, data analysis, and interpretation of results, all within the context of medical and healthcare research. It is designed for medical students, healthcare professionals, and researchers with little or no prior background in statistics.

  • Biostatistics for Dummies” by John Pezzullo: A beginner-friendly and hands-on introduction to biostatistics. This book is designed for individuals with little to no prior experience in statistics, especially those working in the field of health and life sciences.

  • "Biostatistics: A Foundation for Analysis in the Health Sciences" by Wayne W. Daniel and Chad L. Cross This classic textbook is widely used in health sciences and provides a strong foundation in biostatistics. It covers basic statistical concepts, study design, hypothesis testing, and regression analysis.

 

Final notes

Your ability to interpret statistical analyses with confidence and precision is crucial in providing high-quality, evidence-based patient care. Biostatistics empowers you to make informed decisions, assess treatment efficacy, and monitor patient outcomes effectively.

Remember that evidence-based medicine relies on integrating the best available evidence from medical research with clinical expertise, and biostatistics is a fundamental tool that bridges these aspects of healthcare.

 

References

  • Bland, M. (2015). An Introduction to Medical Statistics. Oxford University Press.

  • Pezzullo, J. (2019). Biostatistics for Dummies. Wiley.

  • Chan, B. K. C. (n.d.). Biostatistics for Epidemiology and Public Health Using R. Springer Nature.

  • Daniel, W. W., & Cross, C. L. (2018). Biostatistics: A Foundation for Analysis in the Health Sciences. Wiley.

  • Gerstman, B. B. (2019). Basic Biostatistics: Statistics for Public Health Practice. Jones & Bartlett Learning.

  • Harris, M., & Taylor, G. (2014). Medical Statistics Made Easy. Scion Publishing Ltd.

  • OpenIntro. (n.d.). OpenIntro Statistics. Retrieved from https://www.openintro.org/

Anne

I am a Canadian trained and certified Physician Assistant working in Orthopaedic Surgery. I founded the Canadian PA blog as a way to raise awareness about the role and impact on the health care system.

http://canadianpa.ca
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