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2.1: Introduction

  • Page ID
    140348
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    Once you have collected data, what will you do with it? Data can be described and presented in many different formats. For example, suppose you are interested in analyzing data on the prevalence of diabetes in a community. You may have no clue about the disease burden or risk factors, so you might ask your lead epidemiologist to give you a sample data set of A1C levels. Looking at all the individual blood sugar readings in the sample often is overwhelming. A better way might be to look at the median A1C level and the variation of the scores. The median and variation are just two ways that you will learn to describe data. Your research team might also provide you with a graph of the data.

    In this chapter, you will study numerical and graphical ways to describe and display your data. This area of statistics is called "Descriptive Statistics." You will learn how to calculate, and even more importantly, how to interpret these measurements and graphs as they relate to public health outcomes and physical activity research.

    A statistical graph is a tool that helps you learn about the shape or distribution of a sample or a population. A graph can be a more effective way of presenting data than a mass of numbers because we can see where data clusters and where there are only a few data values. For instance, a public health official can quickly identify the peak age of a flu outbreak from a frequency graph, or a kinesiologist can assess the distribution of VO2 max scores across a group of athletes.Newspapers and the Internet use graphs to show trends and to enable readers to compare facts and figures quickly. Statisticians often graph data first to get a picture of the data. Then, more formal tools may be applied.

    Some of the types of graphs that are used to summarize and organize data are the dot plot, the bar graph, the histogram, the stem-and-leaf plot, the frequency polygon (a type of broken line graph), the pie chart, and the box plot. In this chapter, we will briefly look at stem-and-leaf plots, line graphs, and bar graphs, as well as frequency polygons, and time series graphs. Our emphasis will be on histograms and box plots as they are frequently used to visualize the distribution of continuous health variables like body mass index (BMI), blood pressure, or minutes of physical activity.


    This page titled 2.1: Introduction is shared under a CC BY-NC 4.0 license and was authored, remixed, and/or curated by OpenStax via source content that was edited to the style and standards of the LibreTexts platform.