Student Name
Western Governors University
C784 Applied Healthcare Statistics
Prof. Name:
Date
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.
Understanding metric prefixes is fundamental to interpreting measurements in healthcare, such as dosage calculations, laboratory results, and medical imaging data.
| Prefix | Symbol | Value | Meaning/Conversion |
|---|---|---|---|
| kilo | k | 1,000 | One thousand units |
| hecto | h | 100 | One hundred units |
| deka | da | 10 | Ten units |
| base | – | 1 | The base unit (e.g., meter, liter, gram) |
| deci | d | 0.1 | One-tenth of the base unit |
| centi | c | 0.01 | One-hundredth of the base unit |
| milli | m | 0.001 | One-thousandth of the base unit |
A helpful mnemonic for remembering these prefixes is:
“King Henry Danced Basically Drinking Chocolate Milk.”
1 kilogram (kg) = 2.2 pounds (lbs)
This conversion is frequently used in clinical practice to calculate patient weights or medication dosages.
Temperature measurement is critical in patient care. The following equations convert between Celsius and Fahrenheit:
| Conversion Type | Formula | Example |
|---|---|---|
| Celsius to Fahrenheit | F = (1.8 × C) + 32 | 37°C = 98.6°F |
| Fahrenheit to Celsius | C = (F – 32) ÷ 1.8 | 98.6°F = 37°C |
Linear equations and inequalities are essential for modeling relationships between healthcare variables, such as heart rate and exercise intensity.
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).
When solving inequalities, graphical representation helps visualize the solution set.
| Inequality Type | Graphical Representation | Rule |
|---|---|---|
< or > | Open circle | Value not included |
≤ or ≥ | Closed (filled) circle | Value included |
| Multiply or divide by a negative number | Flip inequality sign | Ensures correct relationship |
Statistical measures describe and summarize healthcare data, such as patient outcomes or lab results.
| Measure | Definition |
|---|---|
| Mean | The sum of all data points divided by the total number of data points. |
| Median | The middle value when all data are arranged in order. |
| Mode | The most frequently occurring data point. |
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.
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)
| Measure | Formula/Description |
|---|---|
| Range | Maximum – Minimum |
| Interquartile Range (IQR) | Q3 – Q1 |
| Standard Deviation | Indicates 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
Visual representation of data helps identify trends, relationships, and distributions in healthcare analytics.
| Data Type | Display Method |
|---|---|
| Categorical | Pie Chart, Bar Chart |
| Quantitative | Histogram, Stem Plot, Box Plot, Dot Plot |
| Variable Relationship | Graph Type | Statistical Measure |
|---|---|---|
| Categorical → Categorical (C → C) | Two-way Table | Conditional Percentages |
| Categorical → Quantitative (C → Q) | Side-by-Side Boxplot | Five-Number Summary |
| Quantitative → Quantitative (Q → Q) | Scatterplot | Correlation Coefficient |
The correlation coefficient (r) quantifies the strength and direction of a linear relationship between two variables.
| Correlation Type | Trend | r-Value Range |
|---|---|---|
| Positive | Variables increase together | 0 < r ≤ 1 |
| Negative | One variable increases while the other decreases | –1 ≤ r < 0 |
| No Correlation | No relationship | r ≈ 0 |
Removing outliers often improves the accuracy of the correlation coefficient since extreme data points can distort the trend.
Probability is essential in healthcare for assessing risk, predicting outcomes, and making data-driven decisions.
| Rule | Operation | Formula | Key Words/Indicators |
|---|---|---|---|
| Addition Rule | Add & Subtract overlap | P(A or B) = P(A) + P(B) – P(A and B) | “or,” “either” |
| Multiplication Rule (Independent) | Multiply | P(A and B) = P(A) × P(B) | “and,” “both” |
| Multiplication Rule (Conditional) | Multiply conditional probability | P(A and B) = P(A) × P(B | A) |
| Conditional Probability | Divide | P(B | A) = P(A and B) ÷ P(A) |
| Complement Rule | Subtract | P(not A) = 1 – P(A) | “not” |
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
Khan Academy. (2024). Statistics and probability. https://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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