Submitted:
31 March 2026
Posted:
01 April 2026
You are already at the latest version
Abstract
Keywords:
Introduction
- Comprehensive overview of database systems use in pharmacy and healthcare
- Explores the role of database systems in managing electronic health records (EHRs and pharmacy information systems.
- Address the challenges that arise with its widespread adoption, such as data security, privacy, scalability, and real-time data access requirements.
- Examine the future directions for adopting advanced database technologies.
Literature Review
Modern Cloud and AI-Integrated Databases
Types of Database Systems
Drug Information Systems
Pharmacy Information Systems (PIS)
Methodology
- Patients table: patient_id, name, age
- Prescriptions table: prescription_id, patient_id, drug_name, dosage
-
Without Indexing (Baseline)
- o
- Query executed on non-indexed columns
-
With Indexing (Optimized)
- o
- Index created on patient_id in prescriptions table
-
Query Execution Time (ms)
- o
- To measure speed of data retrieval
-
CPU Processing Time (ms)
- o
- To measures computational effort required
-
Query Throughput (queries/sec)
- o
- To measure how many queries can be processed per second
Results
Performance Comparison
| Metric | Without Index | With Index |
| Execution Time (ms) | 120 ms | 20 ms |
| CPU Time (ms) | 95 ms | 18 ms |
| Throughput (queries/sec) | 8 | 40 |


- EHR
- Pharmacy information Systems
- Clinical decision support systems
- quicker access to patient records
- reduced waiting time
- improved clinical decision-making
- enhanced patient safety
Conclusion
References
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