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4.15: Types of Population Studies

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    124750
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    In public health, we use studies to draw conclusions about where health intervention is needed most, and by doing so, we are able to allocate resources efficiently, implement preventive measures, and address health disparities with the goal of improving health outcomes. The three types of studies most used in public health are:

    Population comparison studies: it examines differences in health outcomes between different populations; it compares health outcomes (i.e., disease rates, mortality) across different groups of populations (i.e., different geographic areas, ethnic groups, socioeconomic groups). The data used is often from existing sources like census data, vital statistics, or health surveys. The purpose is to identify health status between populations, potentially highlighting areas for targeted interventions or further investigation.

    Observational studies: come in many forms, but the researcher is always recording and analyzing information on the subjects, never interfering in any way. The many types of observational studies are ecological, cross-sectional, case-control, cohort and prospective studies. These studies will be covered in more detail in the following pages.

    Experimental studies: The researcher's primary goal is to determine whether a specific intervention causes a measurable outcome or not. Experimental studies are often referred to as clinical trials or randomized clinical trials.

    In order to fully understand the studies we will be covering in the following pages, it is important to have an understanding of causation and association (also known as correlation):

    Association (also known as correlation) is when studies can show a relationship between two or more variables being studied. Sometimes, this relationship is by coincidence or it could be a causation; however, to infer causation, more studies will need to be done to replicate it (Sudden Unexplained Death in Childhood Foundation, n.d.).

    Causation is when studies can show one variable has a direct effect on another and this effect can be replicated. The most accepted studies that infer causation are the randomized clinical trials (Sudden Unexplained Death in Childhood Foundation, n.d.).

    Reference

    Sudden Unexplained Death in Childhood Foundation. (n.d.). May being a critical consumer of medical research: understanding association versus causation. https://sudc.org/being-a-critical-co...sus-causation/.


    4.15: Types of Population Studies is shared under a not declared license and was authored, remixed, and/or curated by LibreTexts.

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