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14.8 : Relative Risk

Relative risk (RR) is a statistical measure commonly used in epidemiology to compare the likelihood of a particular event occurring between two groups. This metric is important for evaluating the relationship between exposure to a specific risk factor and the probability of a particular outcome. It plays a crucial role in medical research, public health studies, and risk assessment. Relative risk quantifies how much more (or less) likely an event is to occur in an exposed group compared to an unexposed group. An RR greater than 1 indicates an increased risk linked to the exposure, while an RR less than 1 suggests a protective effect of the exposure against the outcome. When the relative risk equals 1, it implies no difference in risk between the exposed and control groups.

Calculating relative risk involves dividing the probability (or incidence) of the event occurring in the exposed group by the probability of the event in the unexposed group. This calculation provides a ratio that reflects the strength of the association between exposure and outcome. In addition, understanding relative risk is important for interpreting the results of cohort studies and randomized controlled trials, where the goal is often to assess the effect of interventions or exposures on disease outcomes. However, we need to note that relative risk does not convey information about the actual magnitude of the risk, nor does it indicate causality on its own. Researchers must consider the relative risk in conjunction with other statistical measures and study designs to draw comprehensive conclusions about causality and the generalizability of findings.

Moreover, relative risk is most informative when the baseline risk of the outcome is well understood. In situations where the baseline risk is low, even a high relative risk might not translate to a substantial absolute risk increase. Consequently, in the interpretation of epidemiological findings, relative risk should be considered alongside other measures such as absolute risk and the number needed to treat (NNT) to provide a more complete picture of the implications of the research findings.

From Chapter 14:

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14.8 : Relative Risk

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