Executive Development Programme in Drug Safety Technologies for Pharma
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⢠Introduction to Drug Safety Technologies: Overview of drug safety, pharmacovigilance, and the role of technology in ensuring drug safety. Understanding the importance of data management and analysis.
⢠Pharmacovigilance Regulations and Guidelines: Examining global regulations and guidelines, including the FDA, EMA, and ICH, and their impact on drug safety technology.
⢠Data Management and Analysis in Drug Safety: Exploring the latest tools and techniques for managing and analyzing drug safety data, with a focus on data quality and accuracy.
⢠Signal Detection and Risk Management: Identifying and managing safety signals, with a focus on risk management strategies and communication.
⢠Social Media and Real-World Data in Pharmacovigilance: Understanding the opportunities and challenges of using social media and real-world data for pharmacovigilance.
⢠Artificial Intelligence and Machine Learning in Drug Safety: Examining the role of AI and ML in drug safety, including their potential to improve data analysis and signal detection.
⢠Cybersecurity and Data Privacy in Drug Safety: Protecting drug safety data from cyber threats, while ensuring compliance with data privacy regulations.
⢠Case Studies in Drug Safety Technology: Analyzing real-world examples of successful drug safety technology implementation, including best practices and lessons learned.
⢠Future Trends in Drug Safety Technologies: Exploring emerging trends and technologies, and their implications for drug safety.
Note: This list of units is not exhaustive and may be adjusted based on the specific needs and goals of the Executive Development Programme.
Keywords: Drug Safety, Pharmacovigilance, Data Management, Data Analysis, Signal Detection, Risk Management, Social Media, Real-World Data, Artificial Intelligence, Machine Learning, Cybersecurity, Data Privacy, Case Studies, Future
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