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Challenge: Lab Result Comparison
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In clinical practice, comparing lab results across different patient groups can reveal important trends and differences that guide diagnosis and treatment. Suppose you have a DataFrame with two columns: diagnosis, which indicates each patient's diagnosis group, and glucose_level, which records their blood glucose measurement. To visually compare glucose levels between these diagnosis groups, you can use a boxplot, a powerful tool for summarizing the distribution of lab values within each category. This approach helps you quickly spot differences, outliers, and trends among patient populations.
12345678910111213141516171819202122import pandas as pd import seaborn as sns import matplotlib.pyplot as plt # Example DataFrame: each row is a patient with a diagnosis and glucose level data = { "diagnosis": ["Diabetes", "Diabetes", "Healthy", "Healthy", "Prediabetes", "Diabetes", "Prediabetes", "Healthy"], "glucose_level": [180, 175, 95, 90, 130, 200, 140, 100] } df = pd.DataFrame(data) # Create a boxplot comparing glucose levels for each diagnosis group plt.figure(figsize=(8, 6)) sns.boxplot(x="diagnosis", y="glucose_level", data=df) # Add a title and axis labels plt.title("Glucose Level Comparison by Diagnosis") plt.xlabel("Diagnosis Group") plt.ylabel("Glucose Level (mg/dL)") # Display the plot plt.show()
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Write a Python script that:
- Uses a DataFrame with 'diagnosis' and 'glucose_level' columns.
- Creates a boxplot comparing glucose levels for each diagnosis group.
- Adds a title and axis labels.
- Displays the plot.
Oplossing
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