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Apprendre Challenge: Prescription Frequency Analysis | Pharmaceutical Data Handling
Python for Pharmacists

bookChallenge: Prescription Frequency Analysis

In pharmacy practice, it is common to analyze prescription records to identify which medications are most frequently prescribed. Using pandas, you can group data by drug name and count the number of prescriptions for each medication, allowing you to quickly spot trends or high-demand drugs. By sorting these results, you can easily determine which drug tops the prescription list. This kind of data analysis is essential for inventory planning, formulary management, and understanding patient care patterns.

Tâche

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Implement a function to analyze the frequency of prescriptions for each drug in a pandas DataFrame. The DataFrame will contain columns: Patient, Drug, and Date.

  • Group the DataFrame by the Drug column and count the number of prescriptions for each drug.
  • Sort the resulting summary table by prescription count in descending order.
  • Print the drug with the highest number of prescriptions.
  • Print the summary table showing each drug and its prescription count, sorted in descending order.

Solution

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Section 1. Chapitre 7
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bookChallenge: Prescription Frequency Analysis

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In pharmacy practice, it is common to analyze prescription records to identify which medications are most frequently prescribed. Using pandas, you can group data by drug name and count the number of prescriptions for each medication, allowing you to quickly spot trends or high-demand drugs. By sorting these results, you can easily determine which drug tops the prescription list. This kind of data analysis is essential for inventory planning, formulary management, and understanding patient care patterns.

Tâche

Swipe to start coding

Implement a function to analyze the frequency of prescriptions for each drug in a pandas DataFrame. The DataFrame will contain columns: Patient, Drug, and Date.

  • Group the DataFrame by the Drug column and count the number of prescriptions for each drug.
  • Sort the resulting summary table by prescription count in descending order.
  • Print the drug with the highest number of prescriptions.
  • Print the summary table showing each drug and its prescription count, sorted in descending order.

Solution

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Tout était clair ?

Comment pouvons-nous l'améliorer ?

Merci pour vos commentaires !

Section 1. Chapitre 7
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single

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