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Start 6 June 2026 04:52
Einde 6 June 2026
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28 minutes
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Overzicht
Gain insights into artificial intelligence and machine learning fundamentals through a healthcare lens, exploring key concepts and applications in diagnostic cardiology.
Lesprogramma
- Course Introduction
- Fundamentals of Artificial Intelligence
- Introduction to Machine Learning
- Machine Learning in Healthcare
- Key ML Algorithms in Healthcare
- AI in Diagnostic Cardiology
- Practical Implementation of AI in Healthcare
- Ethical and Regulatory Considerations
- Course Conclusion
- Assessments and Assignments
Overview of AI and ML
Significance of AI in Healthcare
Course Objectives and Structure
Definition and History of AI
Key Components: Algorithms, Data, and Computing Power
Types of AI: Narrow vs. General AI
Definition and Core Concepts
Types of ML: Supervised, Unsupervised, and Reinforcement Learning
ML Workflow: Data Collection, Model Training, and Evaluation
Overview of Healthcare Data Types: EHRs, Imaging, Genomics
Challenges of ML in Healthcare: Privacy, Bias, and Ethical Concerns
Opportunities for ML: Personalized Medicine and Predictive Analytics
Decision Trees and Random Forests
Neural Networks and Deep Learning
Support Vector Machines and Ensemble Methods
Applications of AI in Cardiac Imaging
AI for Predicting Cardiovascular Risk
Case Studies: AI Success Stories in Cardiology
Overview of Tools and Frameworks: TensorFlow, PyTorch
Setting up a Machine Learning Pipeline
Integrating AI Solutions in Clinical Settings
AI in Healthcare Regulations
Addressing Ethical Issues: Fairness, Accountability, and Transparency
Future Directions and Emerging Trends
Recap of Key Concepts
Discussion of Future Trends in AI and ML in Healthcare
Resources for Further Learning
Quizzes and Interactive Labs
Final Project: AI Application in Diagnostic Cardiology
Feedback and Course Evaluation
Vakgebieden
Data Science