Word count: 5000 words

Objectives to cover:

    1. Introduction to Predictive Analytics in Healthcare: AI enhances chronic disease management through data-driven insights.
    2. Impact of Chronic Diseases on Healthcare: Chronic diseases challenge healthcare with economic and social costs.
    3. AI Techniques for Predictive Analytics: Machine learning and NLP improve disease prediction.
    4. Data Sources in Predictive Analytics: EHRs, wearables, and genetic data fuel AI models.
    5. AI Models and Frameworks: Regression and neural networks drive predictive analytics.
    6. Benefits and Challenges: AI boosts accuracy but raises ethical and privacy issues.
    7. Case Studies and Applications: Successful AI use cases show improved predictions.
    8. Future Prospects: Emerging technologies expand AI’s role in healthcare.
    9. Conclusion: AI revolutionizes chronic disease management with better outcomes.

Reference:  APA style