Interaction

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Interaction

Epidemiology

Evaluation of diagnostic tests

Sensitivity and specificity

Positive and negative predictive value

Test precision and accuracy

Epidemiological measurements

Incidence and prevalence

Relative and absolute risk

Odds ratio

Attributable risk (AR)

Mortality rates and case-fatality

DALY and QALY

Direct standardization

Indirect standardization

Study design

Study designs

Ecologic study

Cross sectional study

Case-control study

Cohort study

Randomized control trial

Clinical trials

Sample size

Placebo effect and masking

Causation, validity and bias

Disease causality

Selection bias

Information bias

Confounding

Interaction

Bias in interpreting results of clinical studies

Bias in performing clinical studies

Public health

Modes of infectious disease transmission

Outbreak investigations

Disease surveillance

Vaccination and herd immunity

Prevention

Assessments

Interaction

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USMLE® Step 2 questions

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Interaction

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A randomized controlled trial is conducted to study the effects of baseline BMI on the incidence of gestational hypertension in pregnant women. Initial analysis shows an attributable risk (AR) of 12% in individuals with a BMI of >30 kg/m2 at baseline. Multiparity is considered an important covariable, so a stratified analysis is conducted. Among multiparas with BMI <30 kg/m2, the AR is 6%. Finally, the attributable risk for multiparous women with BMI >30 kg/m2 is 72%. Considering the absolute risk of gestational hypertension to be 3% in nulliparous women with BMI <30 kg/m2, which of the following is the most likely cause of the observed findings?  

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Transcript

Content Reviewers

Rishi Desai, MD, MPH

Contributors

Evan Debevec-McKenney

Justin Ling, MD, MS

The word “interaction” can refer to biological interaction - which is where two exposures like radon gas and toxins in cigarettes work together to influence an outcome - like lung cancer.

But the word “interaction” can also refer to statistical interaction, also called effect modification, which is the statistical methodology used to find out if there’s a biological interaction.

Most diseases are caused by multiple exposures that work together, like our example of radon gas and smoking cigarettes leading to lung cancer.

Radon is a radioactive gas that gets released from the decay of elements like uranium and radium in rocks and soil.

It can be found in dust particles in the air, so most people breathe in a low level of radon every day.

Unfortunately, radon causes mutations in DNA and people who breathe in high levels of radon have an increased risk of lung cancer.

Similarly, people who smoke cigarettes have a higher risk of lung cancer because of tobacco contains various toxins that also mutate the DNA.

In addition, cigarette smoke harms the cilia in the lungs. Those are the little hairlike structures that normally clear out things like mucus, dust particles, and chemicals.

Damaged cilia is a big problem for people who are exposed to high levels of radon, because the lungs can’t get rid of radon-containing dust.

This is an example of biological interaction, because even though radon and smoking can both separately cause lung cancer, they also work together to amplify the risk.

Statistical interaction can help us figure out how much the risk increases for people who are exposed to both factors compared to people who are exposed to one factor or the other.

Statistical interaction can be assessed by comparing the effect of one exposure on the outcome in each strata or level of the other exposure.

For example, you could figure out how smoking affects the risk of lung cancer among people exposed to high levels of radon, and how it affects the risk of lung cancer among people exposed to low levels of radon.

To do this, you might start by looking at the crude or unstratified effect, so you’d recruit 100 people who smoke and 100 people who don’t smoke, and compare the proportion of people in each group who develop lung cancer in the next ten years.

Summary

Interaction can refer to biological interaction - which is where two exposures like radon gas and toxins in cigarettes work together to influence an outcome - like lung cancer. It can also refer to statistical interaction, also called effect modification, which is the statistical methodology used to find out if there's a biological interaction.

Elsevier

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