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Apprendre Challenge: Age vs. Lab Value Analysis | Medical Data Visualization
Python for Healthcare Professionals
Section 2. Chapitre 7
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bookChallenge: Age vs. Lab Value Analysis

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When you are exploring patient data for potential risk factors, visualizing the relationship between variables like age and lab results can reveal important patterns. Suppose you have a DataFrame with two columns: age and lab_result. Your goal is to create a scatter plot that shows how lab results change with age, add a trendline to highlight the overall relationship, and make the plot readable by labeling the axes and adding a title. This mirrors how healthcare professionals might investigate whether certain lab values tend to increase or decrease as patients get older.

Note
Note

This approach helps you quickly identify possible correlations between patient age and lab values, which can guide further analysis or alert you to potential risk factors worth investigating.

Tâche

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  • Take a DataFrame named df with age and lab_result columns.
  • Create a scatter plot of age versus lab_result.
  • Add a trendline to the plot.
  • Label the x-axis as "Age (years)" and the y-axis as "Lab Result".
  • Set the plot title to "Scatter Plot of Age vs. Lab Result with Trendline".
  • Display the plot.

Your code should use only libraries from the course list.

Solution

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Section 2. Chapitre 7
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