Data Interpretation
Medication dosages, IV drip rates, vital monitoring
Discounts, tax, tips, profit margins
Data interpretation is the process of reviewing data, identifying patterns, and drawing meaningful conclusions. Raw numbers on their own rarely tell a story — data interpretation is what turns them into actionable information. Whether you’re reading a patient’s lab results, reviewing monthly sales figures, or analyzing survey responses, the skills are the same: read accurately, calculate key values, compare across categories, and spot what matters.
Reading Multi-Column Data Tables
Most real-world data comes in tables with multiple columns. The key to reading them accurately is understanding what each column represents and how the rows relate to one another.
Example 1: Weekly Sales by Department
| Department | Mon | Tue | Wed | Thu | Fri | Total |
|---|---|---|---|---|---|---|
| Electronics | $1,200 | $980 | $1,050 | $1,100 | $2,400 | ? |
| Clothing | $800 | $750 | $720 | $690 | $1,500 | ? |
| Grocery | $3,100 | $2,900 | $3,000 | $3,050 | $4,200 | ? |
Step 1: Calculate the row totals.
Step 2: Calculate the grand total.
Step 3: Find each department’s share of total sales.
Conclusion: Grocery drives nearly 60% of total weekly revenue. All three departments saw a significant spike on Friday, suggesting end-of-week shopping patterns.
Calculating Percentages from Raw Data
Converting raw numbers to percentages makes comparison easier, especially when the totals differ across groups.
Example 2: Student Test Results
A class of 40 students took an exam. The score distribution was:
| Score Range | Number of Students |
|---|---|
| 90-100 | 8 |
| 80-89 | 14 |
| 70-79 | 10 |
| 60-69 | 5 |
| Below 60 | 3 |
What percentage of students scored 80 or above?
Answer: 55% of students scored 80 or above.
What percentage scored below 70?
Answer: 20% of students scored below 70.
Identifying Trends Over Time
When data is collected at regular intervals, you can look for trends — consistent increases, decreases, or turning points.
Example 3: Monthly Revenue Trend
| Month | Revenue |
|---|---|
| Jan | $42,000 |
| Feb | $44,500 |
| Mar | $47,200 |
| Apr | $46,800 |
| May | $49,100 |
| Jun | $52,300 |
Month-over-month change:
Interpretation: Revenue shows a strong upward trend overall. April was a slight dip (), but growth resumed immediately. This single-month dip is likely seasonal or temporary — it does not indicate a negative trend.
Spotting Outliers
An outlier is a data point that is significantly different from the rest of the data. Outliers can signal errors, unusual events, or important findings.
In Example 1 above, Friday sales in Electronics (1,080. That’s an outlier worth investigating — was there a sale event? A product launch? Outliers should be identified, but not automatically removed. Always ask why the value is different.
Real-World Application: Nursing — Interpreting a Patient’s Lab Results
A nurse reviews a patient’s complete blood count (CBC) results over three days:
| Test | Day 1 | Day 2 | Day 3 | Normal Range |
|---|---|---|---|---|
| WBC (×10³/µL) | 11.2 | 13.5 | 16.8 | 4.5 - 11.0 |
| Hemoglobin (g/dL) | 13.1 | 12.4 | 11.8 | 12.0 - 17.5 |
| Platelets (×10³/µL) | 245 | 238 | 230 | 150 - 400 |
Step 1: Compare each value to the normal range.
- WBC: Day 1 (11.2) is already slightly above the normal upper limit of 11.0. By Day 3 (16.8), it is well above normal.
- Hemoglobin: Day 1 (13.1) and Day 2 (12.4) are normal. Day 3 (11.8) has dropped below the normal lower limit of 12.0.
- Platelets: All three days are within normal range.
Step 2: Identify trends.
- WBC is rising steadily: . That’s a increase over three days.
- Hemoglobin is falling: , a decrease.
Step 3: Draw conclusions.
Rising WBC combined with falling hemoglobin suggests a possible infection or bleeding event. The nurse should flag this pattern for the physician immediately — neither value alone might seem alarming, but the trend across both tests tells a critical story.
Data Interpretation Reference
| Task | Method |
|---|---|
| Calculate a percentage | |
| Find percent change | |
| Calculate a category’s share | |
| Spot an outlier | Look for values far above or below the rest of the data |
| Identify a trend | Check whether values are consistently increasing, decreasing, or stable |
Practice Problems
Test your understanding with these problems. Click to reveal each answer.
Problem 1: A store sold 120 units in Q1, 145 units in Q2, 138 units in Q3, and 160 units in Q4. What was the total for the year, and what percentage of annual sales occurred in Q4?
Answer: 563 total units; Q4 was approximately 28.4% of annual sales.
Problem 2: A patient’s blood pressure readings over four visits were 128/82, 134/88, 140/90, and 142/92. Describe the trend and state whether this is concerning.
Both systolic (128, 134, 140, 142) and diastolic (82, 88, 90, 92) are steadily rising. Under current ACC/AHA guidelines, the initial reading of 128/82 already qualifies as Stage 1 hypertension (130-139/80-89 for the diastolic component), and the later readings of 140/90 and 142/92 have progressed into Stage 2 hypertension (140+/90+). This is a concerning upward trend that should be discussed with the physician.
Answer: Consistently rising blood pressure over four visits, now in the hypertension range. This trend requires medical attention.
Problem 3: In a dataset of daily tips, a server earned: 52, 50, 180, $51. Which value is likely an outlier, and what is the mean with and without it?
$180 is far above the other values and is likely an outlier.
Answer: 67.57**. Mean without: **19.
Problem 4: A retail store’s revenue was 92,000 in February. What was the percent change?
Answer: Revenue increased by approximately 8.2% from January to February.
Key Takeaways
- Read tables carefully — identify what each column and row represents before doing any calculations
- Convert raw numbers to percentages to make comparisons meaningful, especially when totals differ
- Look for trends across time by computing percent changes between periods
- Outliers deserve investigation, not automatic removal — ask why the value is different
- Combine multiple data points to draw conclusions — a single value in isolation can be misleading, but patterns across values tell a story
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All Statistics topicsLast updated: March 28, 2026