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C784 Final Exam Formulas and Key Concepts in Healthcare Statistics C784 Pre-Assessment Guide

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Western Governors University

C784 Applied Healthcare Statistics

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C784: Formulas Applied in Healthcare Statistics

Healthcare professionals frequently rely on mathematical and statistical formulas to analyze data, interpret results, and make informed clinical decisions. The following sections summarize key formulas, conversions, and statistical principles essential for success in the C784: Applied Healthcare Statistics course. Memorizing these formulas is crucial for the objective assessment.

Module 2: Commonly Used Metric Prefixes

Understanding metric prefixes is fundamental to interpreting measurements in healthcare, such as dosage calculations, laboratory results, and medical imaging data.

Metric Prefixes Table

PrefixSymbolValueMeaning/Conversion
kilok1,000One thousand units
hectoh100One hundred units
dekada10Ten units
base1The base unit (e.g., meter, liter, gram)
decid0.1One-tenth of the base unit
centic0.01One-hundredth of the base unit
millim0.001One-thousandth of the base unit

A helpful mnemonic for remembering these prefixes is:
“King Henry Danced Basically Drinking Chocolate Milk.”

Unit Conversion Example

  • 1 kilogram (kg) = 2.2 pounds (lbs)

This conversion is frequently used in clinical practice to calculate patient weights or medication dosages.

Temperature Conversions

Temperature measurement is critical in patient care. The following equations convert between Celsius and Fahrenheit:

Conversion TypeFormulaExample
Celsius to FahrenheitF = (1.8 × C) + 3237°C = 98.6°F
Fahrenheit to CelsiusC = (F – 32) ÷ 1.898.6°F = 37°C

Module 3: Linear Equations and Inequalities

Linear equations and inequalities are essential for modeling relationships between healthcare variables, such as heart rate and exercise intensity.

Slope-Intercept Form

The general form of a linear equation is:
y = mx + b

Where:

  • m represents the slope, or rate of change (rise/run).

  • b represents the y-intercept, or the point where the line crosses the y-axis (0, b).

Inequalities in One Variable

When solving inequalities, graphical representation helps visualize the solution set.

Inequality TypeGraphical RepresentationRule
< or >Open circleValue not included
 or Closed (filled) circleValue included
Multiply or divide by a negative numberFlip inequality signEnsures correct relationship

Module 4: Measures of Central Tendency and Spread

Statistical measures describe and summarize healthcare data, such as patient outcomes or lab results.

Measures of Center

MeasureDefinition
MeanThe sum of all data points divided by the total number of data points.
MedianThe middle value when all data are arranged in order.
ModeThe most frequently occurring data point.

Five-Number Summary

A five-number summary includes:

  • Minimum value

  • First quartile (Q1)

  • Median (Q2)

  • Third quartile (Q3)

  • Maximum value

These values assist in identifying data spread and outliers.

Identifying Outliers

To detect outliers:

  • Calculate the interquartile range (IQR = Q3 – Q1)

  • A data point is considered an outlier if:

    • It is less than Q1 – 1.5(IQR), or

    • Greater than Q3 + 1.5(IQR)

Measures of Spread

MeasureFormula/Description
RangeMaximum – Minimum
Interquartile Range (IQR)Q3 – Q1
Standard DeviationIndicates how spread out the data is around the mean

In a normal distribution:

  • 68% of data fall within 1 standard deviation of the mean

  • 95% within 2 standard deviations

  • 99.7% within 3 standard deviations

Module 5: Graphical Displays for Data Sets

Visual representation of data helps identify trends, relationships, and distributions in healthcare analytics.

One-Variable Data

Data TypeDisplay Method
CategoricalPie Chart, Bar Chart
QuantitativeHistogram, Stem Plot, Box Plot, Dot Plot

Two-Variable Data

Variable RelationshipGraph TypeStatistical Measure
Categorical → Categorical (C → C)Two-way TableConditional Percentages
Categorical → Quantitative (C → Q)Side-by-Side BoxplotFive-Number Summary
Quantitative → Quantitative (Q → Q)ScatterplotCorrelation Coefficient

Module 6: Correlation and the Correlation Coefficient

The correlation coefficient (r) quantifies the strength and direction of a linear relationship between two variables.

Correlation TypeTrendr-Value Range
PositiveVariables increase together0 < r ≤ 1
NegativeOne variable increases while the other decreases–1 ≤ r < 0
No CorrelationNo relationshipr ≈ 0

Removing outliers often improves the accuracy of the correlation coefficient since extreme data points can distort the trend.

Module 7: Probability Formulas

Probability is essential in healthcare for assessing risk, predicting outcomes, and making data-driven decisions.

RuleOperationFormulaKey Words/Indicators
Addition RuleAdd & Subtract overlapP(A or B) = P(A) + P(B) – P(A and B)“or,” “either”
Multiplication Rule (Independent)MultiplyP(A and B) = P(A) × P(B)“and,” “both”
Multiplication Rule (Conditional)Multiply conditional probabilityP(A and B) = P(A) × P(BA)
Conditional ProbabilityDivideP(BA) = P(A and B) ÷ P(A)
Complement RuleSubtractP(not A) = 1 – P(A)“not”

References

American Psychological Association. (2020). Publication manual of the American Psychological Association (7th ed.). APA.

OpenStax. (2023). Introductory statistics. OpenStax. https://openstax.org/details/books/introductory-statistics

C784 Final Exam Formulas and Key Concepts in Healthcare Statistics C784 Pre-Assessment Guide

Khan Academy. (2024). Statistics and probabilityhttps://www.khanacademy.org/math/statistics-probability

WGU C784 Course Materials. (2024). Applied healthcare statistics: Course resources and formula guide. Western Governors University.


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